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HK40014991A - Method for using gene expression to determine prognosis of prostate cancer - Google Patents

Method for using gene expression to determine prognosis of prostate cancer Download PDF

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Publication number
HK40014991A
HK40014991A HK42020005558.0A HK42020005558A HK40014991A HK 40014991 A HK40014991 A HK 40014991A HK 42020005558 A HK42020005558 A HK 42020005558A HK 40014991 A HK40014991 A HK 40014991A
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Hong Kong
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hsa
mir
genes
gene
expression
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HK42020005558.0A
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German (de)
French (fr)
Chinese (zh)
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HK40014991B (en
Inventor
Steven Shak
Frederick L. Baehner
Tara Maddala
Mark Lee
Robert PELHAM
Wayne Cowens
Diana Cherbavaz
Michael C. Kiefer
Michael Crager
Audrey Goddard
Joffre B. Baker
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Genomic Health, Inc.
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Publication of HK40014991A publication Critical patent/HK40014991A/en
Publication of HK40014991B publication Critical patent/HK40014991B/en

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Description

TECHNICAL FIELD
The present disclosure relates to molecular diagnostic assays that provide information concerning methods to use gene expression profiles to determine prognostic information for cancer patients. Specifically, the present disclosure provides genes and microRNAs, the expression levels of which may be used to determine the likelihood that a prostate cancer patient will experience a local or distant cancer recurrence.
INTRODUCTION
Prostate cancer is the most common solid malignancy in men and the second most common cause of cancer-related death in men in North America and the European Union (EU). In 2008, over 180,000 patients will be diagnosed with prostate cancer in the United States alone and nearly 30,000 will die of this disease. Age is the single most important risk factor for the development of prostate cancer, and applies across all racial groups that have been studied. With the aging of the U.S. population, it is projected that the annual incidence of prostate cancer will double by 2025 to nearly 400,000 cases per year.
Since the introduction of prostate-specific antigen (PSA) screening in the 1990's, the proportion of patients presenting with clinically evident disease has fallen dramatically such that patients categorized as "low risk" now constitute half of new diagnoses today. PSA is used as a tumor marker to determine the presence of prostate cancer as high PSA levels are associated with prostate cancer. Despite a growing proportion of localized prostate cancer patients presenting with low-risk features such as low stage (T1) disease, greater than 90% of patients in the US still undergo definitive therapy, including prostatectomy or radiation. Only about 15% of these patients would develop metastatic disease and die from their prostate cancer, even in the absence of definitive therapy. A. Bill-Axelson, et al., J Nat'l Cancer Inst. 100(16): 1144-1154 (2008). Therefore, the majority of prostate cancer patients are being over-treated.
Estimates of recurrence risk and treatment decisions in prostate cancer are currently based primarily on PSA levels and/or tumor stage. Although tumor stage has been demonstrated to have significant association with outcome sufficient to be included in pathology reports, the College of American Pathologists Consensus Statement noted that variations in approach to the acquisition, interpretation, reporting, and analysis of this information exist. C. Compton, et al., Arch Pathol Lab Med 124:979-992 (2000). As a consequence, existing pathologic staging methods have been criticized as lacking reproducibility and therefore may provide imprecise estimates of individual patient risk.
WO 2010/056993 relates to biomarkers for prognosis of prostate cancer.
Descazeaud Aurelien et al, Prostate, vol 66, no 10, 2006, pp1037-1043 relates to a method for characterisation of prostate cancer.
WO 2006/091776 relates to use of the ZAG gene as a marker for prostate cancer.
WO 2008/067065 relates to proteins for cancer prognosis.
SUMMARY
The invention is defined in the claims.
This application discloses molecular assays that involve measurement of expression level(s) of one or more genes, gene subsets, microRNAs, or one or more microRNAs in combination with one or more genes or gene subsets, from a biological sample obtained from a prostate cancer patient, and analysis of the measured expression levels to provide information concerning the likelihood of cancer recurrence. For example, the likelihood of cancer recurrence could be described in terms of a score based on clinical or biochemical recurrence-free interval.
In addition, this application discloses molecular assays that involve measurement of expression level(s) of one or more genes, gene subsets, microRNAs, or one or more microRNAs in combination with one or more genes or gene subsets, from a biological sample obtained to identify a risk classification for a prostate cancer patient. For example, patients may be stratified using expression level(s) of one or more genes or microRNAs associated, positively or negatively, with cancer recurrence or death from cancer, or with a prognostic factor. In an exemplary embodiment, the prognostic factor is Gleason pattern.
The biological sample may be obtained from standard methods, including surgery, biopsy, or bodily fluids. It may comprise tumor tissue or cancer cells, and, in some cases, histologically normal tissue, e.g., histologically normal tissue adjacent the tumor tissue. In exemplary embodiments, the biological sample is positive or negative for a TMPRSS2 fusion.
In exemplary embodiments, expression level(s) of one or more genes and/or microRNAs that are associated, positively or negatively, with a particular clinical outcome in prostate cancer are used to determine prognosis and appropriate therapy. The genes disclosed herein may be used alone or arranged in functional gene subsets, such as cell adhesion/migration, immediate-early stress response, and extracellular matrix-associated. Each gene subset comprises the genes disclosed herein, as well as genes that are co-expressed with one or more of the disclosed genes. The calculation may be performed on a computer, programmed to execute the gene expression analysis. The microRNAs disclosed herein may also be used alone or in combination with any one or more of the microRNAs and/or genes disclosed.
In exemplary embodiments, the molecular assay may involve expression levels for at least two genes. The genes, or gene subsets, may be weighted according to strength of association with prognosis or tumor microenvironment. In another exemplary embodiment, the molecular assay may involve expression levels of at least one gene and at least one microRNA. The gene-microRNA combination may be selected based on the likelihood that the gene-microRNA combination functionally interact.
BRIEF DESCRIPTION OF THE DRAWING
Figure 1 shows the distribution of clinical and pathology assessments of biopsy Gleason score, baseline PSA level, and clinical T-stage.
DEFINITIONS
Unless defined otherwise, technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which this invention belongs. Singleton et al., Dictionary of Microbiology and Molecular Biology 2nd ed., J. Wiley & Sons (New York, NY 1994), and March, Advanced Organic Chemistry Reactions, Mechanisms and Structure 4th ed., John Wiley & Sons (New York, NY 1992), provide one skilled in the art with a general guide to many of the terms used in the present application.
The terms "tumor" and "lesion" as used herein, refer to all neoplastic cell growth and proliferation, whether malignant or benign, and all pre-cancerous and cancerous cells and tissues. Those skilled in the art will realize that a tumor tissue sample may comprise multiple biological elements, such as one or more cancer cells, partial or fragmented cells, tumors in various stages, surrounding histologically normal-appearing tissue, and/or macro or micro-dissected tissue.
The terms "cancer" and "cancerous" refer to or describe the physiological condition in mammals that is typically characterized by unregulated cell growth. Examples of cancer in the present disclosure include cancer of the urogenital tract, such as prostate cancer.
The "pathology" of cancer includes all phenomena that compromise the well-being of the patient. This includes, without limitation, abnormal or uncontrollable cell growth, metastasis, interference with the normal functioning of neighboring cells, release of cytokines or other secretory products at abnormal levels, suppression or aggravation of inflammatory or immunological response, neoplasia, premalignancy, malignancy, invasion of surrounding or distant tissues or organs, such as lymph nodes, etc.
As used herein, the term "prostate cancer" is used interchangeably and in the broadest sense refers to all stages and all forms of cancer arising from the tissue of the prostate gland.
According to the tumor, node, metastasis (TNM) staging system of the American Joint Committee on Cancer (AJCC), AJCC Cancer Staging Manual (7th Ed., 2010), the various stages of prostate cancer are defined as follows: Tumor: T1: clinically inapparent tumor not palpable or visible by imaging, T1a: tumor incidental histological finding in 5% or less of tissue resected, T1b: tumor incidental histological finding in more than 5% of tissue resected, T1c: tumor identified by needle biopsy; T2: tumor confined within prostate, T2a: tumor involves one half of one lobe or less, T2b: tumor involves more than half of one lobe, but not both lobes, T2c: tumor involves both lobes; T3: tumor extends through the prostatic capsule, T3a: extracapsular extension (unilateral or bilateral), T3b: tumor invades seminal vesicle(s); T4: tumor is fixed or invades adjacent structures other than seminal vesicles (bladder neck, external sphincter, rectum, levator muscles, or pelvic wall). Node: NO: no regional lymph node metastasis; N1: metastasis in regional lymph nodes. Metastasis: M0: no distant metastasis; M1: distant metastasis present.
The Gleason Grading system is used to help evaluate the prognosis of men with prostate cancer. Together with other parameters, it is incorporated into a strategy of prostate cancer staging, which predicts prognosis and helps guide therapy. A Gleason "score" or "grade" is given to prostate cancer based upon its microscopic appearance. Tumors with a low Gleason score typically grow slowly enough that they may not pose a significant threat to the patients in their lifetimes. These patients are monitored ("watchful waiting" or "active surveillance") over time. Cancers with a higher Gleason score are more aggressive and have a worse prognosis, and these patients are generally treated with surgery (e.g., radical prostectomy) and, in some cases, therapy (e.g., radiation, hormone, ultrasound, chemotherapy). Gleason scores (or sums) comprise grades of the two most common tumor patterns. These patterns are referred to as Gleason patterns 1-5, with pattern 1 being the most well-differentiated. Most have a mixture of patterns. To obtain a Gleason score or grade, the dominant pattern is added to the second most prevalent pattern to obtain a number between 2 and10. The Gleason Grades include: G1: well differentiated (slight anaplasia) (Gleason 2-4); G2: moderately differentiated (moderate anaplasia) (Gleason 5-6); G3-4: poorly differentiated/undifferentiated (marked anaplasia) (Gleason 7-10).
Stage groupings: Stage I: Tla N0 M0 G1; Stage II: (Tla N0 M0 G2-4) or (T1b, c, T1, T2, N0 M0 Any G); Stage III: T3 N0 M0 Any G; Stage IV: (T4 N0 M0 Any G) or (Any T N1 M0 Any G) or (Any T Any N M1 Any G).
As used herein, the term "tumor tissue" refers to a biological sample containing one or more cancer cells, or a fraction of one or more cancer cells. Those skilled in the art will recognize that such biological sample may additionally comprise other biological components, such as histologically appearing normal cells (e.g., adjacent the tumor), depending upon the method used to obtain the tumor tissue, such as surgical resection, biopsy, or bodily fluids.
As used herein, the term "AUA risk group" refers to the 2007 updated American Urological Association (AUA) guidelines for management of clinically localized prostate cancer, which clinicians use to determine whether a patient is at low, intermediate, or high risk of biochemical (PSA) relapse after local therapy.
As used herein, the term "adjacent tissue (AT)" refers to histologically "normal" cells that are adjacent a tumor. For example, the AT expression profile may be associated with disease recurrence and survival.
As used herein "non-tumor prostate tissue" refers to histologically normal-appearing tissue adjacent a prostate tumor.
Prognostic factors are those variables related to the natural history of cancer, which influence the recurrence rates and outcome of patients once they have developed cancer. Clinical parameters that have been associated with a worse prognosis include, for example, increased tumor stage, PSA level at presentation, and Gleason grade or pattern. Prognostic factors are frequently used to categorize patients into subgroups with different baseline relapse risks.
The term "prognosis" is used herein to refer to the likelihood that a cancer patient will have a cancer-attributable death or progression, including recurrence, metastatic spread, and drug resistance, of a neoplastic disease, such as prostate cancer. For example, a "good prognosis" would include long term survival without recurrence and a "bad prognosis" would include cancer recurrence.
As used herein, the term "expression level" as applied to a gene refers to the normalized level of a gene product, e.g. the normalized value determined for the RNA expression level of a gene or for the polypeptide expression level of a gene.
The term "gene product" or "expression product" are used herein to refer to the RNA (ribonucleic acid) transcription products (transcripts) of the gene, including mRNA, and the polypeptide translation products of such RNA transcripts. A gene product can be, for example, an unspliced RNA, an mRNA, a splice variant mRNA, a microRNA, a fragmented RNA, a polypeptide, a post-translationally modified polypeptide, a splice variant polypeptide, etc.
The term "RNA transcript" as used herein refers to the RNA transcription products of a gene, including, for example, mRNA, an unspliced RNA, a splice variant mRNA, a microRNA, and a fragmented RNA.
The term "microRNA" is used herein to refer to a small, non-coding, single-stranded RNA of -18 - 25 nucleotides that may regulate gene expression. For example, when associated with the RNA-induced silencing complex (RISC), the complex binds to specific mRNA targets and causes translation repression or cleavage of these mRNA sequences.
Unless indicated otherwise, each gene name used herein corresponds to the Official Symbol assigned to the gene and provided by Entrez Gene (URL: www.ncbi.nlm.nih.gov/sites/entrez) as of the filing date of this application.
The terms "correlated" and "associated" are used interchangeably herein to refer to the association between two measurements (or measured entities). The disclosure provides genes,gene subsets, microRNAs, or microRNAs in combination with genes or gene subsets, the expression levels of which are associated with tumor stage. For example, the increased expression level of a gene or microRNA may be positively correlated (positively associated) with a good or positive prognosis. Such a positive correlation may be demonstrated statistically in various ways, e.g. by a cancer recurrence hazard ratio less than one. In another example, the increased expression level of a gene or microRNA may be negatively correlated (negatively associated) with a good or positive prognosis. In that case, for example, the patient may experience a cancer recurrence.
The terms "good prognosis" or "positive prognosis" as used herein refer to a beneficial clinical outcome, such as long-term survival without recurrence. The terms "bad prognosis" or "negative prognosis" as used herein refer to a negative clinical outcome, such as cancer recurrence.
The term "risk classification" means a grouping of subjects by the level of risk (or likelihood) that the subject will experience a particular clinical outcome. A subject may be classified into a risk group or classified at a level of risk based on the methods of the present disclosure, e.g. high, medium, or low risk. A "risk group" is a group of subjects or individuals with a similar level of risk for a particular clinical outcome.
The term "long-term" survival is used herein to refer to survival for a particular time period, e.g., for at least 5 years, or for at least 10 years.
The term "recurrence" is used herein to refer to local or distant recurrence (i.e., metastasis) of cancer. For example, prostate cancer can recur locally in the tissue next to the prostate or in the seminal vesicles. The cancer may also affect the surrounding lymph nodes in the pelvis or lymph nodes outside this area. Prostate cancer can also spread to tissues next to the prostate, such as pelvic muscles, bones, or other organs. Recurrence can be determined by clinical recurrence detected by, for example, imaging study or biopsy, or biochemical recurrence detected by, for example, sustained follow-up prostate-specific antigen (PSA) levels ≥ 0.4 ng/mL or the initiation of salvage therapy as a result of a rising PSA level.
The term "clinical recurrence-free interval (cRFI)" is used herein as time (in months) from surgery to first clinical recurrence or death due to clinical recurrence of prostate cancer. Losses due to incomplete follow-up, other primary cancers or death prior to clinical recurrence are considered censoring events; when these occur, the only information known is that up through the censoring time, clinical recurrence has not occurred in this subject. Biochemical recurrences are ignored for the purposes of calculating cRFI.
The term "biochemical recurrence-free interval (bRFI)" is used herein to mean the time (in months) from surgery to first biochemical recurrence of prostate cancer. Clinical recurrences, losses due to incomplete follow-up, other primary cancers, or death prior to biochemical recurrence are considered censoring events.
The term "Overall Survival (OS)" is used herein to refer to the time (in months) from surgery to death from any cause. Losses due to incomplete follow-up are considered censoring events. Biochemical recurrence and clinical recurrence are ignored for the purposes of calculating OS.
The term "Prostate Cancer-Specific Survival (PCSS)" is used herein to describe the time (in years) from surgery to death from prostate cancer. Losses due to incomplete follow-up or deaths from other causes are considered censoring events. Clinical recurrence and biochemical recurrence are ignored for the purposes of calculating PCSS.
The term "upgrading" or "upstaging" as used herein refers to a change in Gleason grade from 3+3 at the time of biopsy to 3+4 or greater at the time of radical prostatectomy (RP), or Gleason grade 3+4 at the time of biopsy to 4+3 or greater at the time of RP, or seminal vessical involvement (SVI), or extracapsular involvement (ECE) at the time of RP.
In practice, the calculation of the measures listed above may vary from study to study depending on the definition of events to be considered censored.
The term "microarray" refers to an ordered arrangement of hybridizable array elements, e.g. oligonucleotide or polynucleotide probes, on a substrate.
The term "polynucleotide" generally refers to any polyribonucleotide or polydeoxribonucleotide, which may be unmodified RNA or DNA or modified RNA or DNA. Thus, for instance, polynucleotides as defined herein include, without limitation, single- and double-stranded DNA, DNA including single- and double-stranded regions, single- and double-stranded RNA, and RNA including single- and double-stranded regions, hybrid molecules comprising DNA and RNA that may be single-stranded or, more typically, double-stranded or include single- and double-stranded regions. In addition, the term "polynucleotide" as used herein refers to triple-stranded regions comprising RNA or DNA or both RNA and DNA. The strands in such regions may be from the same molecule or from different molecules. The regions may include all of one or more of the molecules, but more typically involve only a region of some of the molecules. One of the molecules of a triple-helical region often is an oligonucleotide. The term "polynucleotide" specifically includes cDNAs. The term includes DNAs (including cDNAs) and RNAs that contain one or more modified bases. Thus, DNAs or RNAs with backbones modified for stability or for other reasons, are "polynucleotides" as that term is intended herein. Moreover, DNAs or RNAs comprising unusual bases, such as inosine, or modified bases, such as tritiated bases, are included within the term "polynucleotides" as defined herein. In general, the term "polynucleotide" embraces all chemically, enzymatically and/or metabolically modified forms of unmodified polynucleotides, as well as the chemical forms of DNA and RNA characteristic of viruses and cells, including simple and complex cells.
The term "oligonucleotide" refers to a relatively short polynucleotide, including, without limitation, single-stranded deoxyribonucleotides, single- or double-stranded ribonucleotides, RNArDNA hybrids and double-stranded DNAs. Oligonucleotides, such as single-stranded DNA probe oligonucleotides, are often synthesized by chemical methods, for example using automated oligonucleotide synthesizers that are commercially available. However, oligonucleotides can be made by a variety of other methods, including in vitro recombinant DNA-mediated techniques and by expression of DNAs in cells and organisms.
The term "Ct" as used herein refers to threshold cycle, the cycle number in quantitative polymerase chain reaction (qPCR) at which the fluorescence generated within a reaction well exceeds the defined threshold, i.e. the point during the reaction at which a sufficient number of amplicons have accumulated to meet the defined threshold.
The term "Cp" as used herein refers to "crossing point." The Cp value is calculated by determining the second derivatives of entire qPCR amplification curves and their maximum value. The Cp value represents the cycle at which the increase of fluorescence is highest and where the logarithmic phase of a PCR begins.
The terms "threshold" or "thresholding" refer to a procedure used to account for non-linear relationships between gene expression measurements and clinical response as well as to further reduce variation in reported patient scores. When thresholding is applied, all measurements below or above a threshold are set to that threshold value. Non-linear relationship between gene expression and outcome could be examined using smoothers or cubic splines to model gene expression in Cox PH regression on recurrence free interval or logistic regression on recurrence status. D. Cox, Journal of the Royal Statistical Society, Series B 34:187-220 (1972). Variation in reported patient scores could be examined as a function of variability in gene expression at the limit of quantitation and/or detection for a particular gene.
As used herein, the term "amplicon," refers to pieces of DNA that have been synthesized using amplification techniques, such as polymerase chain reactions (PCR) and ligase chain reactions.
"Stringency" of hybridization reactions is readily determinable by one of ordinary skill in the art, and generally is an empirical calculation dependent upon probe length, washing temperature, and salt concentration. In general, longer probes require higher temperatures for proper annealing, while shorter probes need lower temperatures. Hybridization generally depends on the ability of denatured DNA to re-anneal when complementary strands are present in an environment below their melting temperature. The higher the degree of desired homology between the probe and hybridizable sequence, the higher the relative temperature which can be used. As a result, it follows that higher relative temperatures would tend to make the reaction conditions more stringent, while lower temperatures less so. For additional details and explanation of stringency of hybridization reactions, see Ausubel et al., Current Protocols in Molecular Biology (Wiley Interscience Publishers, 1995).
"Stringent conditions" or "high stringency conditions", as defined herein, typically: (1) employ low ionic strength and high temperature for washing, for example 0.015 M sodium chloride/0.0015 M sodium citrate/0.1% sodium dodecyl sulfate at 50°C; (2) employ during hybridization a denaturing agent, such as formamide, for example, 50% (v/v) formamide with 0.1% bovine serum albumin/0.1% Ficoll/0.1% polyvinylpyrrolidone/50mM sodium phosphate buffer at pH 6.5 with 750 mM sodium chloride, 75 mM sodium citrate at 42°C; or (3) employ 50% formamide, 5 x SSC (0.75 M NaCl, 0.075 M sodium citrate), 50 mM sodium phosphate (pH 6.8), 0.1% sodium pyrophosphate, 5 x Denhardt's solution, sonicated salmon sperm DNA (50 µg/ml), 0.1 % SDS, and 10% dextran sulfate at 42°C, with washes at 42°C in 0.2 x SSC (sodium chloride/sodium citrate) and 50% formamide, followed by a high-stringency wash consisting of 0.1 x SSC containing EDTA at 55°C.
"Moderately stringent conditions" may be identified as described by Sambrook et al., Molecular Cloning: A Laboratory Manual, New York: Cold Spring Harbor Press, 1989, and include the use of washing solution and hybridization conditions (e.g., temperature, ionic strength and %SDS) less stringent that those described above. An example of moderately stringent conditions is overnight incubation at 37°C in a solution comprising: 20% formamide, 5 x SSC (150 mM NaCl, 15 mM trisodium citrate), 50 mM sodium phosphate (pH 7.6), 5 x Denhardt's solution, 10% dextran sulfate, and 20 mg/ml denatured sheared salmon sperm DNA, followed by washing the filters in 1 x SSC at about 37-500C. The skilled artisan will recognize how to adjust the temperature, ionic strength, etc. as necessary to accommodate factors such as probe length and the like.
The terms "splicing" and "RNA splicing" are used interchangeably and refer to RNA processing that removes introns and joins exons to produce mature mRNA with continuous coding sequence that moves into the cytoplasm of an eukaryotic cell.
The terms "co-express" and "co-expressed", as used herein, refer to a statistical correlation between the amounts of different transcript sequences across a population of different patients. Pairwise co-expression may be calculated by various methods known in the art, e.g., by calculating Pearson correlation coefficients or Spearman correlation coefficients. Co-expressed gene cliques may also be identified using graph theory. An analysis of co-expression may be calculated using normalized expression data. A gene is said to be co-expressed with a particular disclosed gene when the expression level of the gene exhibits a Pearson correlation coefficient greater than or equal to 0.6.
A "computer-based system" refers to a system of hardware, software, and data storage medium used to analyze information. The minimum hardware of a patient computer-based system comprises a central processing unit (CPU), and hardware for data input, data output (e.g., display), and data storage. An ordinarily skilled artisan can readily appreciate that any currently available computer-based systems and/or components thereof are suitable for use in connection with the methods of the present disclosure. The data storage medium may comprise any manufacture comprising a recording of the present information as described above, or a memory access device that can access such a manufacture.
To "record" data, programming or other information on a computer readable medium refers to a process for storing information, using any such methods as known in the art. Any convenient data storage structure may be chosen, based on the means used to access the stored information. A variety of data processor programs and formats can be used for storage, e.g. word processing text file, database format, etc.
A "processor" or "computing means" references any hardware and/or software combination that will perform the functions required of it. For example, a suitable processor may be a programmable digital microprocessor such as available in the form of an electronic controller, mainframe, server or personal computer (desktop or portable). Where the processor is programmable, suitable programming can be communicated from a remote location to the processor, or previously saved in a computer program product (such as a portable or fixed computer readable storage medium, whether magnetic, optical or solid state device based). For example, a magnetic medium or optical disk may carry the programming, and can be read by a suitable reader communicating with each processor at its corresponding station.
As used herein, the terms "active surveillance" and "watchful waiting" mean closely monitoring a patient's condition without giving any treatment until symptoms appear or change. For example, in prostate cancer, watchful waiting is usually used in older men with other medical problems and early-stage disease.
As used herein, the term "surgery" applies to surgical methods undertaken for removal of cancerous tissue, including pelvic lymphadenectomy, radical prostatectomy, transurethral resection of the prostate (TURP), excision, dissection, and tumor biopsy/removal. The tumor tissue or sections used for gene expression analysis may have been obtained from any of these methods.
As used herein, the term "therapy" includes radiation, hormonal therapy, cryosurgery, chemotherapy, biologic therapy, and high-intensity focused ultrasound.
As used herein, the term "TMPRSS fusion" and "TMPRSS2 fusion" are used interchangeably and refer to a fusion of the androgen-driven TMPRSS2 gene with the ERG oncogene, which has been demonstrated to have a significant association with prostate cancer. S. Perner, et al., Urologe A. 46(7):754-760 (2007); S.A. Narod, et al., Br J Cancer 99(6):847-851 (2008). As used herein, positive TMPRSS fusion status indicates that the TMPRSS fusion is present in a tissue sample, whereas negative TMPRSS fusion status indicates that the TMPRSS fusion is not present in a tissue sample. Experts skilled in the art will recognize that there are numerous ways to determine TMPRSS fusion status, such as real-time, quantitative PCR or high-throughput sequencing. See, e.g., K. Mertz, et al., Neoplasis 9(3):200-206 (2007); C. Maher, Nature 458(7234):97-101 (2009).
GENE EXPRESSION METHODS USING GENES, GENE SUBSETS, AND MICRORNAS
The present disclosure provides molecular assays that involve measurement of expression level(s) of one or more genes, gene subsets, microRNAs, or one or more microRNAs in combination with one or more genes or gene subsets, from a biological sample obtained from a prostate cancer patient, and analysis of the measured expression levels to provide information concerning the likelihood of cancer recurrence.
The present disclosure further provides methods to classify a prostate tumor based on expression level(s) of one or more genes and/or microRNAs. The disclosure further provides genes and/or microRNAs that are associated, positively or negatively, with a particular prognostic outcome. In exemplary embodiments, the clinical outcomes include cRFI and bRFI. In another embodiment, patients may be classified in risk groups based on the expression level(s) of one or more genes and/or microRNAs that are associated, positively or negatively, with a prognostic factor. In an exemplary embodiment, that prognostic factor is Gleason pattern.
Various technological approaches for determination of expression levels of the disclosed genes and microRNAs are set forth in this specification, including, without limitation, RT-PCR, microarrays, high-throughput sequencing, serial analysis of gene expression (SAGE) and Digital Gene Expression (DGE), which will be discussed in detail below. In particular aspects, the expression level of each gene or microRNA may be determined in relation to various features of the expression products of the gene including exons, introns, protein epitopes and protein activity.
The expression level(s) of one or more genes and/or microRNAs may be measured in tumor tissue. For example, the tumor tissue may obtained upon surgical removal or resection of the tumor, or by tumor biopsy. The tumor tissue may be or include histologically "normal" tissue, for example histologically "normal" tissue adjacent to a tumor. The expression level of genes and/or microRNAs may also be measured in tumor cells recovered from sites distant from the tumor, for example circulating tumor cells, body fluid (e.g., urine, blood, blood fraction, etc.).
The expression product that is assayed can be, for example, RNA or a polypeptide. The expression product may be fragmented. For example, the assay may use primers that are complementary to target sequences of an expression product and could thus measure full transcripts as well as those fragmented expression products containing the target sequence. Further information is provided in Table A (inserted in specification prior to claims).
The RNA expression product may be assayed directly or by detection of a cDNA product resulting from a PCR-based amplification method, e.g., quantitative reverse transcription polymerase chain reaction (qRT-PCR). (See e.g., U.S. Patent No. 7,587,279 ). Polypeptide expression product may be assayed using immunohistochemistry (IHC). Further, both RNA and polypeptide expression products may also be is assayed using microarrays.
CLINICAL UTILITY
Prostate cancer is currently diagnosed using a digital rectal exam (DRE) and Prostate-specific antigen (PSA) test. If PSA results are high, patients will generally undergo a prostate tissue biopsy. The pathologist will review the biopsy samples to check for cancer cells and determine a Gleason score. Based on the Gleason score, PSA, clinical stage, and other factors, the physician must make a decision whether to monitor the patient, or treat the patient with surgery and therapy.
At present, clinical decision-making in early stage prostate cancer is governed by certain histopathologic and clinical factors. These include: (1) tumor factors, such as clinical stage (e.g. T1, T2), PSA level at presentation, and Gleason grade, that are very strong prognostic factors in determining outcome; and (2) host factors, such as age at diagnosis and co-morbidity. Because of these factors, the most clinically useful means of stratifying patients with localized disease according to prognosis has been through multifactorial staging, using the clinical stage, the serum PSA level, and tumor grade (Gleason grade) together. In the 2007 updated American Urological Association (AUA) guidelines for management of clinically localized prostate cancer, these parameters have been grouped to determine whether a patient is at low, intermediate, or high risk of biochemical (PSA) relapse after local therapy. 1. Thompson, et al., Guideline for the management of clinically localized prostate cancer, J Urol. 177(6):2106-31 (2007).
Although such classifications have proven to be helpful in distinguishing patients with localized disease who may need adjuvant therapy after surgery/radiation, they have less ability to discriminate between indolent cancers, which do not need to be treated with local therapy, and aggressive tumors, which require local therapy. In fact, these algorithms are of increasingly limited use for deciding between conservative management and definitive therapy because the bulk of prostate cancers diagnosed in the PSA screening era now present with clinical stage T1c and PSA ≤10 ng/mL.
Patients with T1 prostate cancer have disease that is not clinically apparent but is discovered either at transurethral resection of the prostate (TURP, T1a, T1b) or at biopsy performed because of an elevated PSA (> 4 ng/mL, T1c). Approximately 80% of the cases presenting in 2007 are clinical T1 at diagnosis. In a Scandinavian trial, OS at 10 years was 85% for patients with early stage prostate cancer (T1/T2) and Gleason score ≤ 7, after radical prostatectomy.
Patients with T2 prostate cancer have disease that is clinically evident and is organ confined; patients with T3 tumors have disease that has penetrated the prostatic capsule and/or has invaded the seminal vesicles. It is known from surgical series that clinical staging underestimates pathological stage, so that about 20% of patients who are clinically T2 will be pT3 after prostatectomy. Most of patients with T2 or T3 prostate cancer are treated with local therapy, either prostatectomy or radiation. The data from the Scandinavian trial suggest that for T2 patients with Gleason grade ≤7, the effect of prostatectomy on survival is at most 5% at 10 years; the majority of patients do not benefit from surgical treatment at the time of diagnosis. For T2 patients with Gleason > 7 or for T3 patients, the treatment effect of prostatectomy is assumed to be significant but has not been determined in randomized trials. It is known that these patients have a significant risk (10-30%) of recurrence at 10 years after local treatment, however, there are no prospective randomized trials that define the optimal local treatment (radical prostatectomy, radiation) at diagnosis, which patients are likely to benefit from neo-adjuvant/adjuvant androgen deprivation therapy, and whether treatment (androgen deprivation, chemotherapy) at the time of biochemical failure (elevated PSA) has any clinical benefit.
Accurately determining Gleason scores from needle biopsies presents several technical challenges. First, interpreting histology that is "borderline" between Gleason pattern is highly subjective, even for urologic pathologists. Second, incomplete biopsy sampling is yet another reason why the "predicted" Gleason score on biopsy does not always correlate with the actual "observed" Gleason score of the prostate cancer in the gland itself. Hence, the accuracy of Gleason scoring is dependent upon not only the expertise of the pathologist reading the slides, but also on the completeness and adequacy of the prostate biopsy sampling strategy. T. Stamey, Urology 45:2-12 (1995). The gene/microRNA expression assay and associated information provided by the practice of the methods disclosed herein provide a molecular assay method to facilitate optimal treatment decision-making in early stage prostate cancer. An exemplary embodiment provides genes and microRNAs, the expression levels of which are associated (positively or negatively) with prostate cancer recurrence. For example, such a clinical tool would enable physicians to identify T2/T3 patients who are likely to recur following definitive therapy and need adjuvant treatment.
In addition, the methods disclosed herein may allow physicians to classify tumors, at a molecular level, based on expression level(s) of one or more genes and/or microRNAs that are significantly associated with prognostic factors, such as Gleason pattern and TMPRSS fusion status. These methods would not be impacted by the technical difficulties of intra-patient variability, histologically determining Gleason pattern in biopsy samples, or inclusion of histologically normal appearing tissue adjacent to tumor tissue. Multi-analyte gene/microRNA expression tests can be used to measure the expression level of one or more genes and/or microRNAs involved in each of several relevant physiologic processes or component cellular characteristics. The methods disclosed herein may group the genes and/or microRNAs. The grouping of genes and microRNAs may be performed at least in part based on knowledge of the contribution of those genes and/or microRNAs according to physiologic functions or component cellular characteristics, such as in the groups discussed above. Furthermore, one or more microRNAs may be combined with one or moregenes. The gene-microRNA combination may be selected based on the likelihood that the gene-microRNA combination functionally interact. The formation of groups (or gene subsets), in addition, can facilitate the mathematical weighting of the contribution of various expression levels to cancer recurrence. The weighting of a gene/microRNA group representing a physiological process or component cellular characteristic can reflect the contribution of that process or characteristic to the pathology of the cancer and clinical outcome.
Optionally, the methods disclosed may be used to classify patients by risk, for example risk of recurrence. Patients can be partitioned into subgroups (e.g., tertiles or quartiles) and the values chosen will define subgroups of patients with respectively greater or lesser risk.
The utility of a disclosed gene marker in predicting prognosis may not be unique to that marker. An alternative marker having an expression pattern that is parallel to that of a disclosed gene may be substituted for, or used in addition to, that co-expressed gene or microRNA. Due to the co-expression of such genes or microRNAs, substitution of expression level values should have little impact on the overall utility of the test. The closely similar expression patterns of two genes or microRNAs may result from involvement of both genes or microRNAs in the same process and/or being under common regulatory control in prostate tumor cells. The present disclosure thus contemplates the use of such co-expressed genes,gene subsets, or microRNAs as substitutes for, or in addition to, genes of the present disclosure.
METHODS OF ASSAYING EXPRESSION LEVELS OF A GENE PRODUCT
The methods and compositions of the present disclosure will employ, unless otherwise indicated, conventional techniques of molecular biology (including recombinant techniques), microbiology, cell biology, and biochemistry, which are within the skill of the art. Exemplary techniques are explained fully in the literature, such as, "Molecular Cloning: A Laboratory Manual", 2nd edition (Sambrook et al., 1989); "Oligonucleotide Synthesis" (M.J. Gait, ed., 1984); "Animal Cell Culture" (R.I. Freshney, ed., 1987); "Methods in Enzymology" (Academic Press, Inc.); "Handbook of Experimental Immunology", 4th edition (D.M. Weir & C.C. Blackwell, eds., Blackwell Science Inc., 1987); "Gene Transfer Vectors for Mammalian Cells" (J.M. Miller & M.P. Calos, eds., 1987); "Current Protocols in Molecular Biology" (F.M. Ausubel et al., eds., 1987); and "PCR: The Polymerase Chain Reaction", (Mullis et al., eds., 1994).
Methods of gene expression profiling include methods based on hybridization analysis of polynucleotides, methods based on sequencing of polynucleotides, and proteomics-based methods. Exemplary methods known in the art for the quantification of RNA expression in a sample include northern blotting and in situ hybridization (Parker & Barnes, Methods in Molecular Biology 106:247-283 (1999)); RNAse protection assays (Hod, Biotechniques 13:852-854 (1992)); and PCR-based methods, such as reverse transcription PCT (RT-PCR) (Weis et al., Trends in Genetics 8:263-264 (1992)). Antibodies may be employed that can recognize sequence-specific duplexes, including DNA duplexes, RNA duplexes, and DNA-RNA hybrid duplexes or DNA-protein duplexes. Representative methods for sequencing-based gene expression analysis include Serial Analysis of Gene Expression (SAGE), and gene expression analysis by massively parallel signature sequencing (MPSS).
Reverse Transcriptase PCR (RT-PCR)
Typically, mRNA or microRNA is isolated from a test sample. The starting material is typically total RNA isolated from a human tumor, usually from a primary tumor. Optionally, normal tissues from the same patient can be used as an internal control. Such normal tissue can be histologically-appearing normal tissue adjacent a tumor. mRNA or microRNA can be extracted from a tissue sample, e.g., from a sample that is fresh, frozen (e.g. fresh frozen), or paraffin-embedded and fixed (e.g. formalin-fixed).
General methods for mRNA and microRNA extraction are well known in the art and are disclosed in standard textbooks of molecular biology, including Ausubel et al., Current Protocols of Molecular Biology, John Wiley and Sons (1997). Methods for RNA extraction from paraffin embedded tissues are disclosed, for example, in Rupp and Locker, Lab Invest. 56:A67 (1987), and De Andrés et al., BioTechniques 18:42044 (1995). In particular, RNA isolation can be performed using a purification kit, buffer set and protease from commercial manufacturers, such as Qiagen, according to the manufacturer's instructions. For example, total RNA from cells in culture can be isolated using Qiagen RNeasy mini-columns. Other commercially available RNA isolation kits include MasterPure Complete DNA and RNA Purification Kit (EPICENTRE®, Madison, WI), and Paraffin Block RNA Isolation Kit (Ambion, Inc.). Total RNA from tissue samples can be isolated using RNA Stat-60 (Tel-Test). RNA prepared from tumor can be isolated, for example, by cesium chloride density gradient centrifugation.
The sample containing the RNA is then subjected to reverse transcription to produce cDNA from the RNA template, followed by exponential amplification in a PCR reaction. The two most commonly used reverse transcriptases are avilo myeloblastosis virus reverse transcriptase (AMV-RT) and Moloney murine leukemia virus reverse transcriptase (MMLV-RT). The reverse transcription step is typically primed using specific primers, random hexamers, or oligo-dT primers, depending on the circumstances and the goal of expression profiling. For example, extracted RNA can be reverse-transcribed using a GeneAmp RNA PCR kit (Perkin Elmer, CA, USA), following the manufacturer's instructions. The derived cDNA can then be used as a template in the subsequent PCR reaction.
PCR-based methods use a thermostable DNA-dependent DNA polymerase, such as a Taq DNA polymerase. For example, TaqMan® PCR typically utilizes the 5'-nuclease activity of Taq or Tth polymerase to hydrolyze a hybridization probe bound to its target amplicon, but any enzyme with equivalent 5' nuclease activity can be used. Two oligonucleotide primers are used to generate an amplicon typical of a PCR reaction product. A third oligonucleotide, or probe, can be designed to facilitate detection of a nucleotide sequence of the amplicon located between the hybridization sites the two PCR primers. The probe can be detectably labeled, e.g., with a reporter dye, and can further be provided with both a fluorescent dye, and a quencher fluorescent dye, as in a Taqman® probe configuration. Where a Taqman® probe is used, during the amplification reaction, the Taq DNA polymerase enzyme cleaves the probe in a template-dependent manner. The resultant probe fragments disassociate in solution, and signal from the released reporter dye is free from the quenching effect of the second fluorophore. One molecule of reporter dye is liberated for each new molecule synthesized, and detection of the unquenched reporter dye provides the basis for quantitative interpretation of the data.
TaqMan® RT-PCR can be performed using commercially available equipment, such as, for example, high-throughput platforms such as the ABI PRISM 7700 Sequence Detection System® (Perkin-Elmer-Applied Biosystems, Foster City, CA, USA), or Lightcycler (Roche Molecular Biochemicals, Mannheim, Germany). In a preferred embodiment, the procedure is run on a LightCycler® 480 (Roche Diagnostics) real-time PCR system, which is a microwell plate-based cycler platform.
5'-Nuclease assay data are commonly initially expressed as a threshold cycle ("CT"). Fluorescence values are recorded during every cycle and represent the amount of product amplified to that point in the amplification reaction. The threshold cycle (CT) is generally described as the point when the fluorescent signal is first recorded as statistically significant. Alternatively, data may be expressed as a crossing point ( "Cp"). The Cp value is calculated by determining the second derivatives of entire qPCR amplification curves and their maximum value. The Cp value represents the cycle at which the increase of fluorescence is highest and where the logarithmic phase of a PCR begins.
To minimize errors and the effect of sample-to-sample variation, RT-PCR is usually performed using an internal standard. The ideal internal standard gene (also referred to as a reference gene) is expressed at a quite constant level among cancerous and non-cancerous tissue of the same origin (i.e., a level that is not significantly different among normal and cancerous tissues), and is not significantly affected by the experimental treatment (i.e., does not exhibit a significant difference in expression level in the relevant tissue as a result of exposure to chemotherapy), and expressed at a quite constant level among the same tissue taken from different patients. For example, reference genes useful in the methods disclosed herein should not exhibit significantly different expression levels in cancerous prostate as compared to normal prostate tissue. RNAs frequently used to normalize patterns of gene expression are mRNAs for the housekeeping genes glyceraldehyde-3-phosphate-dehydrogenase (GAPDH) and β-actin. Exemplary reference genes used for normalization comprise one or more of the following genes: AAMP, ARF1, ATP5E, CLTC, GPS1, and PGK1. Gene expression measurements can be normalized relative to the mean of one or more (e.g., 2, 3, 4, 5, or more) reference genes. Reference-normalized expression measurements can range from 2 to 15, where a one unit increase generally reflects a 2-fold increase in RNA quantity.
Real time PCR is compatible both with quantitative competitive PCR, where internal competitor for each target sequence is used for normalization, and with quantitative comparative PCR using a normalization gene contained within the sample, or a housekeeping gene for RT-PCR. For further details see, e.g. Held et al., Genome Research 6:986-994 (1996).
The steps of a representative protocol for use in the methods of the present disclosure use fixed, paraffin-embedded tissues as the RNA source. For example, mRNA isolation, purification, primer extension and amplification can be performed according to methods available in the art. (see, e.g., Godfrey et al. J. Molec. Diagnostics 2: 84-91 (2000); Specht et al., Am. J. Pathol. 158: 419-29 (2001)). Briefly, a representative process starts with cutting about 10 µm thick sections of paraffin-embedded tumor tissue samples. The RNA is then extracted, and protein and DNA depleted from the RNA-containing sample. After analysis of the RNA concentration, RNA is reverse transcribed using gene specific primers followed by RT-PCR to provide for cDNA amplification products.
Design of Intron-Based PCR Primers and Probes
PCR primers and probes can be designed based upon exon or intron sequences present in the mRNA transcript of the gene of interest. Primer/probe design can be performed using publicly available software, such as the DNA BLAT software developed by Kent, W.J., Genome Res. 12(4):656-64 (2002), or by the BLAST software including its variations.
Where necessary or desired, repetitive sequences of the target sequence can be masked to mitigate non-specific signals. Exemplary tools to accomplish this include the Repeat Masker program available on-line through the Baylor College of Medicine, which screens DNA sequences against a library of repetitive elements and returns a query sequence in which the repetitive elements are masked. The masked intron sequences can then be used to design primer and probe sequences using any commercially or otherwise publicly available primer/probe design packages, such as Primer Express (Applied Biosystems); MGB assay-by-design (Applied Biosystems); Primer3 (Steve Rozen and Helen J. Skaletsky (2000) Primer3 on the WWW for general users and for biologist programmers. See S. Rrawetz, S. Misener, Bioinformatics Methods and Protocols: Methods in Molecular Biology, pp. 365-386 (Humana Press).
Other factors that can influence PCR primer design include primer length, melting temperature (Tm), and G/C content, specificity, complementary primer sequences, and 3 '-end sequence. In general, optimal PCR primers are generally 17-30 bases in length, and contain about 20-80%, such as, for example, about 50-60% G+C bases, and exhibit Tm's between 50 and 80 0C, e.g. about 50 to 70 0C.
For further guidelines for PCR primer and probe design see, e.g. Dieffenbach, CW. et al, "General Concepts for PCR Primer Design" in: PCR Primer, A Laboratory Manual, Cold Spring Harbor Laboratory Press,. New York, 1995, pp. 133-155; Innis and Gelfand, "Optimization of PCRs" in: PCR Protocols, A Guide to Methods and Applications, CRC Press, London, 1994, pp. 5-11; and Plasterer, T.N. Primerselect: Primer and probe design. Methods Mol. Biol. 70:520-527 (1997).
Table A provides further information concerning the primer, probe, and amplicon sequences associated with the Examples disclosed herein.
MassARRAY® System
In MassARRAY-based methods, such as the exemplary method developed by Sequenom, Inc. (San Diego, CA) following the isolation of RNA and reverse transcription, the obtained cDNA is spiked with a synthetic DNA molecule (competitor), which matches the targeted cDNA region in all positions, except a single base, and serves as an internal standard. The cDNA/competitor mixture is PCR amplified and is subjected to a post-PCR shrimp alkaline phosphatase (SAP) enzyme treatment, which results in the dephosphorylation of the remaining nucleotides. After inactivarion of the alkaline phosphatase, the PC products from the competitor and cDNA are subjected to primer extension, which generates distinct mass signals for the competitor- and cDNA-derives PCR products. After purification, these products are dispensed on a chip array, which is pre-loaded with components needed for analysis with matrix-assisted laser desorption ionization time-of-flight mass spectrometry (MALDI-TOF MS) analysis. The cDNA present in the reaction is then quantified by analyzing the ratios of the peak areas in the mass spectrum generated. For further details see, e.g. Ding and Cantor, Proc. Natl. Acad. Sci. USA 100:3059-3064 (2003).
Other PCR-based Methods
Further PCR-based techniques that can find use in the methods disclosed herein include, for example, BeadArray® technology (Illumina, San Diego, CA; Oliphant et al., Discovery of Markers for Disease (Supplement to Biotechniques), June 2002; Ferguson et al., Analytical Chemistry 72:5618 (2000)); BeadsArray for Detection of Gene Expression® (BADGE), using the commercially available LuminexlOO LabMAP® system and multiple color-coded microspheres (Luminex Corp., Austin, TX) in a rapid assay for gene expression (Yang et al., Genome Res. 11:1888-1898 (2001)); and high coverage expression profiling (HiCEP) analysis (Fukumura et al., Nucl. Acids. Res. 31(16) e94 (2003).
Microarrays
Expression levels of a gene or microArray of interest can also be assessed using the microarray technique. In this method, polynucleotide sequences of interest (including cDNAs and oligonucleotides) are arrayed on a substrate. The arrayed sequences are then contacted under conditions suitable for specific hybridization with detectably labeled cDNA generated from RNA of a test sample. As in the RT-PCR method, the source of RNA typically is total RNA isolated from a tumor sample, and optionally from normal tissue of the same patient as an internal control or cell lines. RNA can be extracted, for example, from frozen or archived paraffin-embedded and fixed (e.g. formalin-fixed) tissue samples.
For example, PCR amplified inserts of cDNA clones of a gene to be assayed are applied to a substrate in a dense array. Usually at least 10,000 nucleotide sequences are applied to the substrate. For example, the microarrayed genes, immobilized on the microchip at 10,000 elements each, are suitable for hybridization under stringent conditions. Fluorescently labeled cDNA probes may be generated through incorporation of fluorescent nucleotides by reverse transcription of RNA extracted from tissues of interest. Labeled cDNA probes applied to the chip hybridize with specificity to each spot of DNA on the array. After washing under stringent conditions to remove non-specifically bound probes, the chip is scanned by confocal laser microscopy or by another detection method, such as a CCD camera. Quantitation of hybridization of each arrayed element allows for assessment of corresponding RNA abundance.
With dual color fluorescence, separately labeled cDNA probes generated from two sources of RNA are hybridized pair wise to the array. The relative abundance of the transcripts from the two sources corresponding to each specified gene is thus determined simultaneously. The miniaturized scale of the hybridization affords a convenient and rapid evaluation of the expression pattern for large numbers of genes. Such methods have been shown to have the sensitivity required to detect rare transcripts, which are expressed at a few copies per cell, and to reproducibly detect at least approximately two-fold differences in the expression levels (Schena et at, Proc. Natl. Acad. ScL USA 93(2): 106-149 (1996)). Microarray analysis can be performed by commercially available equipment, following manufacturer's protocols, such as by using the Affymetrix GenChip® technology, or Incyte's microarray technology.
Serial Analysis of Gene Expression (SAGE)
Serial analysis of gene expression (SAGE) is a method that allows the simultaneous and quantitative analysis of a large number of gene transcripts, without the need of providing an individual hybridization probe for each transcript. First, a short sequence tag (about 10-14 bp) is generated that contains sufficient information to uniquely identify a transcript, provided that the tag is obtained from a unique position within each transcript. Then, many transcripts are linked together to form long serial molecules, that can be sequenced, revealing the identity of the multiple tags simultaneously. The expression pattern of any population of transcripts can be quantitatively evaluated by determining the abundance of individual tags, and identifying the gene corresponding to each tag. For more details see, e.g. Velculescu et al., Science 270:484-487 (1995); and Velculescu et al., Cell 88:243-51 (1997).
Gene Expression Analysis by Nucleic Acid Sequencing
Nucleic acid sequencing technologies are suitable methods for analysis of gene expression. The principle underlying these methods is that the number of times a cDNA sequence is detected in a sample is directly related to the relative expression of the RNA corresponding to that sequence. These methods are sometimes referred to by the term Digital Gene Expression (DGE) to reflect the discrete numeric property of the resulting data. Early methods applying this principle were Serial Analysis of Gene Expression (SAGE) and Massively Parallel Signature Sequencing (MPSS). See, e.g., S. Brenner, et al., Nature Biotechnology 18(6):630-634 (2000). More recently, the advent of "next-generation" sequencing technologies has made DGE simpler, higher throughput, and more affordable. As a result, more laboratories are able to utilize DGE to screen the expression of more genes in more individual patient samples than previously possible. See, e.g., J. Marioni, Genome Research 18(9):1509-1517 (2008); R. Morin, Genome Research 18(4):610-621 (2008); A. Mortazavi, Nature Methods 5(7):621-628 (2008); N. Cloonan, Nature Methods 5(7):613-619 (2008).
Isolating RNA from Body Fluids
Methods of isolating RNA for expression analysis from blood, plasma and serum (see, e.g., K. Enders, et al., Clin Chem 48,1647-53 (2002) (and references cited therein) and from urine (see, e.g., R. Boom, et al., J Clin Microbiol. 28, 495-503 (1990) and references cited therein) have been described.
Immunohistochemistrv
Immunohistochemistry methods are also suitable for detecting the expression levels of genes and applied to the method disclosed herein. Antibodies (e.g., monoclonal antibodies) that specifically bind a gene product of a gene of interest can be used in such methods. The antibodies can be detected by direct labeling of the antibodies themselves, for example, with radioactive labels, fluorescent labels, hapten' labels such as, biotin, or an enzyme such as horse radish peroxidase or alkaline phosphatase. Alternatively, unlabeled primary antibody can be used in conjunction with a labeled secondary antibody specific for the primary antibody. Immunohistochemistry protocols and kits are well known in the art and are commercially available.
Proteomics
The term "proteome" is defined as the totality of the proteins present in a sample (e.g. tissue, organism, or cell culture) at a certain point of time. Proteomics includes, among other things, study of the global changes of protein expression in a sample (also referred to as "expression proteomics"). Proteomics typically includes the following steps: (1) separation of individual proteins in a sample by 2-D gel electrophoresis (2-D PAGE); (2) identification of the individual proteins recovered from the gel, e.g. my mass spectrometry or N- terminal sequencing, and (3) analysis of the data using bioinformatics.
General Description of the mRNA/microRNA Isolation, Purification and Amplification
The steps of a representative protocol for profiling gene expression using fixed, paraffin-embedded tissues as the RNA source, including mRNA or microRNA isolation, purification, primer extension and amplification are provided in various published journal articles. (See, e.g., T.E. Godfrey, et al,. J. Molec. Diagnostics 2: 84-91 (2000); K. Specht et al., Am. J. Pathol. 158: 419-29 (2001), M. Cronin, et al., Am J Pathol 164:35-42 (2004)). Briefly, a representative process starts with cutting a tissue sample section (e.g.about 10 µm thick sections of a paraffin-embedded tumor tissue sample). The RNA is then extracted, and protein and DNA are removed. After analysis of the RNA concentration, RNA repair is performed if desired. The sample can then be subjected to analysis, e.g., by reverse transcribed using gene specific promoters followed by RT-PCR.
STATISTICAL ANALYSIS OF EXPRESSION LEVELS IN IDENTIFICATION OF GENES AND MICRORNAs
One skilled in the art will recognize that there are many statistical methods that may be used to determine whether there is a significant relationship between a parameter of interest (e.g., recurrence) and expression levels of a marker gene/microRNA as described here. In an exemplary embodiment, the present invention provides a stratified cohort sampling design (a form of case-control sampling) using tissue and data from prostate cancer patients. Selection of specimens was stratified by T stage (T1, T2), year cohort (<1993, ≥1993), and prostatectomy Gleason Score (low/intermediate, high). All patients with clinical recurrence were selected and a sample of patients who did not experience a clinical recurrence was selected. For each patient, up to two enriched tumor specimens and one normal-appearing tissue sample was assayed.
All hypothesis tests were reported using two-sided p-values. To investigate if there is a significant relationship of outcomes (clinical recurrence-free interval (cRFI), biochemical recurrence-free interval (bRFI), prostate cancer-specific survival (PCSS), and overall survival (OS)) with individual genes and/or microRNAs, demographic or clinical covariates Cox Proportional Hazards (PH) models using maximum weighted pseudo partial-likelihood estimators were used and p-values from Wald tests of the null hypothesis that the hazard ratio (HR) is one are reported. To investigate if there is a significant relationship between individual genes and/or microRNAs and Gleason pattern of a particular sample, ordinal logistic regression models using maximum weighted likelihood methods were used and p-values from Wald tests of the null hypothesis that the odds ratio (OR) is one are reported.
COEXPRESSION ANALYSIS
The present disclosure provides a method to determine tumor stage based on the expression of staging genes, or genes that co-express with particular staging genes. To perform particular biological processes, genes often work together in a concerted way, i.e. they are co-expressed. Co-expressed gene groups identified for a disease process like cancer can serve as biomarkers for tumor status and disease progression. Such co-expressed genes can be assayed in lieu of, or in addition to, assaying of the staging gene with which they are co-expressed.
In an exemplary embodiment, the joint correlation of gene expression levels among prostate cancer specimens under study may be assessed. For this purpose, the correlation structures among genes and specimens may be examined through hierarchical cluster methods. This information may be used to confirm that genes that are known to be highly correlated in prostate cancer specimens cluster together as expected. Only genes exhibiting a nominally significant (unadjusted p < 0.05) relationship with cRFI in the univariate Cox PH regression analysis will be included in these analyses.
One skilled in the art will recognize that many co-expression analysis methods now known or later developed will fall within the scope and spirit of the present invention. These methods may incorporate, for example, correlation coefficients, co-expression network analysis, clique analysis, etc., and may be based on expression data from RT-PCR, microarrays, sequencing, and other similar technologies. For example, gene expression clusters can be identified using pair-wise analysis of correlation based on Pearson or Spearman correlation coefficients. (See, e.g., Pearson K. and Lee A., Biometrika 2, 357 (1902); C. Spearman, Amer. J. Psychol 15:72-101 (1904); J. Myers, A. Well, Research Design and Statistical Analysis, p. 508 (2nd Ed., 2003).)
NORMALIZATION OF EXPRESSION LEVELS
The expression data used in the methods disclosed herein can be normalized. Normalization refers to a process to correct for (normalize away), for example, differences in the amount of RNA assayed and variability in the quality of the RNA used, to remove unwanted sources of systematic variation in Ct or Cp measurements, and the like. With respect to RT-PCR experiments involving archived fixed paraffin embedded tissue samples, sources of systematic variation are known to include the degree of RNA degradation relative to the age of the patient sample and the type of fixative used to store the sample. Other sources of systematic variation are attributable to laboratory processing conditions.
Assays can provide for normalization by incorporating the expression of certain normalizing genes, which do not significantly differ in expression levels under the relevant conditions. Exemplary normalization genes disclosed herein include housekeeping genes. (See, e.g., E. Eisenberg, et al., Trends in Genetics 19(7):362-365 (2003).) Normalization can be based on the mean or median signal (Ct or Cp) of all of the assayed genes or a large subset thereof (global normalization approach). In general, the normalizing genes, also referred to as reference genes should be genes that are known not to exhibit significantly different expression in prostate cancer as compared to non-cancerous prostate tissue, and are not significantly affected by various sample and process conditions, thus provide for normalizing away extraneous effects.
In exemplary embodiments, one or more of the following genes are used as references by which the mRNA or microRNA expression data is normalized: AAMP, ARF1, ATP5E, CLTC, GPS1, and PGK1. In another exemplary embodiment, one or more of the following microRNAs are used as references by which the expression data of microRNAs are normalized: hsa-miR-106a; hsa-miR-146b-5p; hsa-miR-191; hsa-miR-19b; and hsa-miR-92a. The calibrated weighted average CT or Cp measurements for each of the prognostic and predictive genes or microRNAs may be normalized relative to the mean of five or more reference genes or microRNAs.
Those skilled in the art will recognize that normalization may be achieved in numerous ways, and the techniques described above are intended only to be exemplary, not exhaustive.
STANDARDIZATION OF EXPRESSION LEVELS
The expression data used in the methods disclosed herein can be standardized. Standardization refers to a process to effectively put all the genes or microRNAs on a comparable scale. This is performed because some genes or microRNAs will exhibit more variation (a broader range of expression) than others. Standardization is performed by dividing each expression value by its standard deviation across all samples for that gene or microRNA. Hazard ratios are then interpreted as the relative risk of recurrence per 1 standard deviation increase in expression.
Kits
The materials for use in the methods of the present invention are suited for preparation of kits produced in accordance with well-known procedures. The present disclosure thus provides kits comprising agents, which may include gene (or microRNA)-specific or gene (or microRNA)-selective probes and/or primers, for quantifying the expression of the disclosed genes or microRNAs for predicting prognostic outcome or response to treatment. Such kits may optionally contain reagents for the extraction of RNA from tumor samples, in particular fixed paraffin-embedded tissue samples and/or reagents for RNA amplification. In addition, the kits may optionally comprise the reagent(s) with an identifying description or label or instructions relating to their use in the methods of the present invention. The kits may comprise containers (including microliter plates suitable for use in an automated implementation of the method), each with one or more of the various materials or reagents (typically in concentrated form) utilized in the methods, including, for example, chromatographic columns, pre-fabricated microarrays, buffers, the appropriate nucleotide triphosphates (e.g., dATP, dCTP, dGTP and dTTP; or rATP, rCTP, rGTP and UTP), reverse transcriptase, DNA polymerase, RNA polymerase, and one or more probes and primers of the present invention (e.g., appropriate length poly(T) or random primers linked to a promoter reactive with the RNA polymerase). Mathematical algorithms used to estimate or quantify prognostic or predictive information are also properly potential components of kits.
Reports
The methods, when practiced for commercial diagnostic purposes, generally produce a report or summary of information obtained from the herein-described methods. For example, a report may include information concerning expression levels of one or more genes and /or microRNAs, classification of the tumor or the patient's risk of recurrence, the patient's likely prognosis or risk classification, clinical and pathologic factors, and/or other information. The methods and reports can further include storing the report in a database. The method can create a record in a database for the subject and populate the record with data. The report may be a paper report, an auditory report, or an electronic record. The report may be displayed and/or stored on a computing device (e.g., handheld device, desktop computer, smart device, website, etc.). It is contemplated that the report is provided to a physician and/or the patient. The receiving of the report can further include establishing a network connection to a server computer that includes the data and report and requesting the data and report from the server computer.
Computer program
The values from the assays described above, such as expression data, can be calculated and stored manually. Alternatively, the above-described steps can be completely or partially performed by a computer program product. The computer program product includes a computer readable storage medium having a computer program stored on it. The program can, when read by a computer, execute relevant calculations based on values obtained from analysis of one or more biological sample from an individual (e.g., gene expression levels, normalization, standardization, thresholding, and conversion of values from assays to a score and/or text or graphical depiction of tumor stage and related information). The computer program product has stored therein a computer program for performing the calculation.
The present disclosure provides systems for executing the program described above, which system generally includes: a) a central computing environment; b) an input device, operatively connected to the computing environment, to receive patient data, wherein the patient data can include, for example, expression level or other value obtained from an assay using a biological sample from the patient, or microarray data, as described in detail above; c) an output device, connected to the computing environment, to provide information to a user (e.g., medical personnel); and d) an algorithm executed by the central computing environment (e.g., a processor), where the algorithm is executed based on the data received by the input device, and wherein the algorithm calculates an expression score, thresholding, or other functions described herein. The methods provided by the present invention may also be automated in whole or in part.
EXAMPLES EXAMPLE 1: RNA YIELD AND GENE EXPRESSION PROFILES IN PROSTATE CANCER BIOPSY CORES
Clinical tools based on prostate needle core biopsies are needed to guide treatment planning at diagnosis for men with localized prostate cancer. Limiting tissue in needle core biopsy specimens poses significant challenges to the development of molecular diagnostic tests. This study examined RNA extraction yields and gene expression profiles using an RT-PCR assay to characterize RNA from manually micro-dissected fixed paraffin embedded (FPE) prostate cancer needle biopsy cores. It also investigated the association of RNA yields and gene expression profiles with Gleason score in these specimens.
Patients and Samples
This study determined the feasibility of gene expression profile analysis in prostate cancer needle core biopsies by evaluating the quantity and quality of RNA extracted from fixed paraffin-embedded (FPE) prostate cancer needle core biopsy specimens. Forty-eight (48) formalin-fixed blocks from prostate needle core biopsy specimens were used for this study. Classification of specimens was based on interpretation of the Gleason score (2005 Int'l Society of Urological Pathology Consensus Conference) and percentage tumor (<33%, 33-66%, >66%) involvement as assessed by pathologists. Table 1: Distribution of cases
Low (≤6) 5 5 6
Intermediate (7) 5 5 6
High (8, 9, 10) 5 5 6
Total 15 15 18
Assay Methods
Fourteen (14) serial 5 µm unstained sections from each FPE tissue block were included in the study. The first and last sections for each case were H&E stained and histologically reviewed to confirm the presence of tumor and for tumor enrichment by manual micro-dissection.
RNA from enriched tumor samples was extracted using a manual RNA extraction process. RNA was quantitated using the RiboGreen® assay and tested for the presence of genomic DNA contamination. Samples with sufficient RNA yield and free of genomic DNA tested for gene expression levels of a 24-gene panel of reference and cancer-related genes using quantitative RT-PCR. The expression was normalized to the average of 6 reference genes (AAMP, ARF1, ATP5E, CLTC, EEF1A1, and GPX1).
Statistical Methods
Descriptive statistics and graphical displays were used to summarize standard pathology metrics and gene expression, with stratification for Gleason Score category and percentage tumor involvement category. Ordinal logistic regression was used to evaluate the relationship between gene expression and Gleason Score category.
Results
The RNA yield per unit surface area ranged from 16 to 2406 ng/mm2. Higher RNA yield was observed in samples with higher percent tumor involvement (p=0.02) and higher Gleason score (p=0.01). RNA yield was sufficient (> 200ng) in 71% of cases to permit 96-well RT-PCR, with 87% of cases having >100ng RNA yield. The study confirmed that gene expression from prostate biopsies, as measured by qRT-PCR, was comparable to FPET samples used in commercial molecular assays for breast cancer. In addition, it was observed that greater biopsy RNA yields are found with higher Gleason score and higher percent tumor involvement. Nine genes were identified as significantly associated with Gleason score (p < 0.05) and there was a large dynamic range observed for many test genes.
EXAMPLE 2: GENE EXPRESSION ANALYSIS FOR GENES ASSOCIATED WITH PROGNOSIS IN PROSTATE CANCER Patients and Samples
Approximately 2600 patients with clinical stage T1/T2 prostate cancer treated with radical prostatectomy (RP) at the Cleveland Clinic between 1987 and 2004 were identified. Patients were excluded from the study design if they received neo-adjuvant and/or adjuvant therapy, if pre-surgical PSA levels were missing, or if no tumor block was available from initial diagnosis. 127 patients with clinical recurrence and 374 patients without clinical recurrence after radical prostatectomy were randomly selected using a cohort sampling design. The specimens were stratified by T stage (T1, T2), year cohort (<1993, ≥1993), and prostatectomy Gleason score (low/intermediate, high). Of the 501 sampled patients, 51 were excluded for insufficient tumor; 7 were excluded due to clinical ineligibility; 2 were excluded due to poor quality of gene expression data; and 10 were excluded because primary Gleason pattern was unavailable. Thus, this gene expression study included tissue and data from 111 patients with clinical recurrence and 330 patients without clinical recurrence after radical prostatectomies performed between 1987 and 2004 for treatment of early stage (T1, T2) prostate cancer.
Two fixed paraffin embedded (FPE) tissue specimens were obtained from prostate tumor specimens in each patient. The sampling method (sampling method A or B) depended on whether the highest Gleason pattern is also the primary Gleason pattern. For each specimen selected, the invasive cancer cells were at least 5.0 mm in dimension, except in the instances of pattern 5, where 2.2 mm was accepted. Specimens were spatially distinct where possible. Table 2: Sampling Methods
For patients whose prostatectomy primary Gleason pattern is also the highest Gleason pattern For patients whose prostatectomy primary Gleason pattern is not the highest Gleason pattern
Specimen 1 (A1) = primary Gleason pattern Specimen 1 (B1) = highest Gleason pattern
Select and mark largest focus (greatest cross-sectional area) of primary Gleason pattern tissue. Invasive cancer area ≥ 5.0 mm. Select highest Gleason pattern tissue from spatially distinct area from specimen B2, if possible. Invasive cancer area at least 5.0 mm if selecting secondary pattern, at least 2.2 mm if selecting Gleason pattern 5.
Specimen 2 (A2) = secondary Gleason pattern Specimen 2 (B2) = primary Gleason pattern
Select and mark secondary Gleason pattern tissue from spatially distinct area from specimen A1. Invasive cancer area ≥ 5.0 mm. Select largest focus (greatest cross-sectional area) of primary Gleason pattern tissue. Invasive cancer area ≥ 5.0 mm.
Histologically normal appearing tissue (NAT) adjacent to the tumor specimen (also referred to in these Examples as "non-tumor tissue") was also evaluated. Adjacent tissue was collected 3 mm from the tumor to 3 mm from the edge of the FPET block. NAT was preferentially sampled adjacent to the primary Gleason pattern. In cases where there was insufficient NAT adjacent to the primary Gleason pattern, then NAT was sampled adjacent to the secondary or highest Gleason pattern (A2 or B1) per the method set forth in Table 2. Six (6) 10 µm sections with beginning H&E at 5 µm and ending unstained slide at 5 µm were prepared from each fixed paraffin-embedded tumor (FPET) block included in the study. All cases were histologically reviewed and manually micro-dissected to yield two enriched tumor samples and, where possible, one normal tissue sample adjacent to the tumor specimen.
Assay Method
In this study, RT-PCR analysis was used to determine RNA expression levels for 738 genes and chromosomal rearrangements (e.g., TMPRSS2-ERG fusion or other ETS family genes) in prostate cancer tissue and surrounding NAT in patients with early-stage prostate cancer treated with radical prostatectomy.
The samples were quantified using the RiboGreen assay and a subset tested for presence of genomic DNA contamination. Samples were taken into reverse transcription (RT) and quantitative polymerase chain reaction (qPCR). All analyses were conducted on reference-normalized gene expression levels using the average of the of replicate well crossing point (CP) values for the 6 reference genes (AAMP, ARF1, ATP5E, CLTC, GPS1, PGK1).
Statistical Analysis and Results
Primary statistical analyses involved 111 patients with clinical recurrence and 330 patients without clinical recurrence after radical prostatectomy for early-stage prostate cancer stratified by T-stage (T1, T2), year cohort (<1993, ≥1993), and prostatectomy Gleason score (low/intermediate, high). Gleason score categories are defined as follows: low (Gleason score ≤ 6), intermediate (Gleason score = 7), and high (Gleason score ≥ 8). A patient was included in a specified analysis if at least one sample for that patient was evaluable. Unless otherwise stated, all hypothesis tests were reported using two-sided p-values. The method of Storey was applied to the resulting set of p-values to control the false discovery rate (FDR) at 20%. J. Storey, R. Tibshirani, Estimating the Positive False Discovery Rate Under Dependence, with Applications to DNA Microarrays, Dept. of Statistics, Stanford Univ. (2001).
Analysis of gene expression and recurrence-free interval was based on univariate Cox Proportional Hazards (PH) models using maximum weighted pseudo-partial-likelihood estimators for each evaluable gene in the gene list (727 test genes and 5 reference genes). P-values were generated using Wald tests of the null hypothesis that the hazard ratio (HR) is one. Both unadjusted p-values and the q-value (smallest FDR at which the hypothesis test in question is rejected) were reported. Un-adjusted p-values <0.05 were considered statistically significant. Since two tumor specimens were selected for each patient, this analysis was performed using the 2 specimens from each patient as follows: (1) analysis using the primary Gleason pattern specimen from each patient (Specimens A1 and B2 as described in Table 2); (2) analysis using the highest Gleason pattern specimen from each patient (Specimens A1 and B1 as described in Table 2).
Analysis of gene expression and Gleason pattern (3, 4, 5) was based on univariate ordinal logistic regression models using weighted maximum likelihood estimators for each gene in the gene list (727 test genes and 5 reference genes). P-values were generated using a Wald test of the null hypothesis that the odds ratio (OR) is one. Both unadjusted p-values and the q-value (smallest FDR at which the hypothesis test in question is rejected) were reported. Un-adjusted p-values <0.05 were considered statistically significant. Since two tumor specimens were selected for each patient, this analysis was performed using the 2 specimens from each patient as follows: (1) analysis using the primary Gleason pattern specimen from each patient (Specimens A1 and B2 as described in Table 2); (2) analysis using the highest Gleason pattern specimen from each patient (Specimens A1 and B1 as described in Table 2).
It was determined whether there is a significant relationship between cRFI and selected demographic, clinical, and pathology variables, including age, race, clinical tumor stage, pathologic tumor stage, location of selected tumor specimens within the prostate (peripheral versus transitional zone), PSA at the time of surgery, overall Gleason score from the radical prostatectomy, year of surgery, and specimen Gleason pattern. Separately for each demographic or clinical variable, the relationship between the clinical covariate and cRFI was modeled using univariate Cox PH regression using weighted pseudo partial-likelihood estimators and a p-value was generated using Wald's test of the null hypothesis that the hazard ratio (HR) is one. Covariates with unadjusted p-values <0.2 may have been included in the covariate-adjusted analyses.
It was determined whether there was a significant relationship between each of the individual cancer-related genes and cRFI after controlling for important demographic and clinical covariates. Separately for each gene, the relationship between gene expression and cRFI was modeled using multivariate Cox PH regression using weighted pseudo partial-likelihood estimators including important demographic and clinical variables as covariates. The independent contribution of gene expression to the prediction of cRFI was tested by generating a p-value from a Wald test using a model that included clinical covariates for each nodule (specimens as defined in Table 2). Un-adjusted p-values <0.05 were considered statistically significant.
Tables 3A and 3B provide genes significantly associated (p<0.05), positively or negatively, with Gleason pattern in the primary and/or highest Gleason pattern. Increased expression of genes in Table 3A is positively associated with higher Gleason score, while increased expression of genes in Table 3B are negatively associated with higher Gleason score.
ALCAM 1.73 <.001 1.36 0.009
ANLN 1.35 0.027
APOC I 1.47 0.005 1.61 <.001
APOE 1.87 <.001 2.15 <.001
ASAP2 1.53 0.005
ASPN 2.62 <.001 2.13 <.001
ATP5E 1.35 0.035
AURKA 1.44 0.010
AURKB 1.59 <.001 1.56 <.001
BAX 1.43 0.006
BGN 2.58 <.001 2.82 <.001
BIRC5 1.45 0.003 1.79 <.001
BMP6 2.37 <.001 1.68 <.001
BMPR1B 1.58 0.002
BRCA2 1.45 0.013
BUB1 1.73 <.001 1.57 <.001
CACNA1D 1.31 0.045 1.31 0.033
CADPS 1.30 0.023
CCNB1 1.43 0.023
CCNE2 1.52 0.003 1.32 0.035
CD276 2.20 <.001 1.83 <.001
CD68 1.36 0.022
CDC20 1.69 <.001 1.95 <.001
CDC6 1.38 0.024 1.46 <.001
CDH11 1.30 0.029
CDKN2B 1.55 0.001 1.33 0.023
CDKN2C 1.62 <.001 1.52 <.001
CDKN3 1.39 0.010 1.50 0.002
CENPF 1.96 <.001 1.71 <.001
CHRAC1 1.34 0.022
CLDN3 1.37 0.029
COL1A1 2.23 <.001 2.22 <.001
COL1A2 1.42 0.005
COL3A1 1.90 <.001 2.13 <.001
COL8A1 1.88 <.001 2.35 <.001
CRISP3 1.33 0.040 1.26 0.050
CTHRC1 2.01 <.001 1.61 <.001
CTNND2 1.48 0.007 1.37 0.011
DAPK1 1.44 0.014
DIAPH1 1.34 0.032 1.79 <.001
DIO2 1.56 0.001
DLL4 1.38 0.026 1.53 <.001
ECE1 1.54 0.012 1.40 0.012
ENY2 1.35 0.046 1.35 0.012
EZH2 1.39 0.040
F2R 2.37 <.001 2.60 <.001
FAM49B 1.57 0.002 1.33 0.025
FAP 2.36 <.001 1.89 <.001
FCGR3A 2.10 <.001 1.83 <.001
GNPTAB 1.78 <.001 1.54 <.001
GSK3B 1.39 0.018
HRAS 1.62 0.003
HSD17B4 2.91 <.001 1.57 <.001
HSPA8 1.48 0.012 1.34 0.023
IFI30 1.64 <.001 1.45 0.013
IGFBP3 1.29 0.037
IL11 1.52 0.001 1.31 0.036
INHBA 2.55 <.001 2.30 <.001
ITGA4 1.35 0.028
JAG1 1.68 <.001 1.40 0.005
KCNN2 1.50 0.004
KCTD12 1.38 0.012
KHDRBS3 1.85 <.001 1.72 <.001
KIF4A 1.50 0.010 1.50 <.001
KLK14 1.49 0.001 1.35 <.001
KPNA2 1.68 0.004 1.65 0.001
KRT2 1.33 0.022
KRT75 1.27 0.028
LAMC1 1.44 0.029
LAPTM5 1.36 0.025 1.31 0.042
LTBP2 1.42 0.023 1.66 <.001
MANF 1.34 0.019
MAOA 1.55 0.003 1.50 <.001
MAP3K5 1.55 0.006 1.44 0.001
MDK 1.47 0.013 1.29 0.041
MDM2 1.31 0.026
MELK 1.64 <.001 1.64 <.001
MMP11 2.33 <.001 1.66 <.001
MYBL2 1.41 0.007 1.54 <.001
MYO6 1.32 0.017
NET02 1.36 0.018
NOX4 1.84 <.001 1.73 <.001
NPM1 1.68 0.001
NRIP3 1.36 0.009
NRP1 1.80 0.001 1.36 0.019
OSM 1.33 0.046
PATE1 1.38 0.032
PECAM1 1.38 0.021 1.31 0.035
PGD 1.56 0.010
PLK1 1.51 0.004 1.49 0.002
PLOD2 1.29 0.027
POSTN 1.70 0.047 1.55 0.006
PPP3CA 1.38 0.037 1.37 0.006
PTK6 1.45 0.007 1.53 <.001
PTTG1 1.51 <.001
RAB31 1.31 0.030
RAD21 2.05 <.001 1.38 0.020
RAD51 1.46 0.002 1.26 0.035
RAF1 1.46 0.017
RALBP1 1.37 0.043
RHOC 1.33 0.021
ROBO2 1.52 0.003 1.41 0.006
RRM2 1.77 <.001 1.50 <.001
SAT1 1.67 0.002 1.61 <.001
SDC1 1.66 0.001 1.46 0.014
SEC14L1 1.53 0.003 1.62 <.001
SESN3 1.76 <.001 1.45 <.001
SFRP4 2.69 <.001 2.03 <.001
SHMT2 1.69 0.007 1.45 0.003
SKIL 1.46 0.005
SOX4 1.42 0.016 1.27 0.031
SPARC 1.40 0.024 1.55 <.001
SPINK 1 1.29 0.002
SPP1 1.51 0.002 1.80 <.001
TFDP1 1.48 0.014
THBS2 1.87 <.001 1.65 <.001
THY1 1.58 0.003 1.64 <.001
TK1 1.79 <.001 1.42 0.001
top2A 2.30 <.001 2.01 <.001
TPD52 1.95 <.001 1.30 0.037
TPX2 2.12 <.001 1.86 <.001
TYMP 1.36 0.020
TYMS 1.39 0.012 1.31 0.036
UBE2C 1.66 <.001 1.65 <.001
UBE2T 1.59 <.001 1.33 0.017
UGDH 1.28 0.049
UGT2B 15 1.46 0.001 1.2 5 0.045
UHRF1 1.95 <.001 1.62 <.001
VDR 1.43 0.010 1.39 0.018
WNT5A 1.54 0.001 1.44 0.013
Table 3B.
ABCA5 0.78 0.041
ABCG2 0.65 0.001 0.72 0.012
ACOX2 0.44 <.001 0.53 <.001
ADH5 0.45 <.001 0.42 <.001
AFAP1 0.79 0.038
AIG1 0.77 0.024
AKAP1 0.63 0.002
AKR1C1 0.66 0.003 0.63 <.001
AKT3 0.68 0.006 0.77 0.010
ALDH1A2 0.28 <.001 0.33 <.001
ALKBH3 0.77 0.040 0.77 0.029
AMPD3 0.67 0.007
ANPEP 0.68 0.008 0.59 <.001
ANXA2 0.72 0.018
APC 0.69 0.002
AXIN2 0.46 <.001 0.54 <.001
AZGP1 0.52 <.001 0.53 <.001
BIK 0.69 0.006 0.73 0.003
BIN1 0.43 <.001 0.61 <.001
BTG3 0.79 0.030
BTRC 0.48 <.001 0.62 <.001
C7 0.37 <.001 0.55 <.001
CADM1 0.56 <.001 0.69 0.001
CAV1 0.58 0.002 0.70 0.009
CAV2 0.65 0.029
CCNH 0.67 0.006 0.77 0.048
CD164 0.59 0.003 0.57 <.001
CDC25B 0.77 0.035
CDH1 0.66 <.001
CDK2 0.71 0.003
CDKN1C 0.58 <.001 0.57 <.001
CDS2 0.69 0.002
CHN1 0.66 0.002
COL6A1 0.44 <.001 0.66 <.001
COL6A3 0.66 0.006
CSRP1 0.42 0.006
CTGF 0.74 0.043
CTNNA1 0.70 0.043 <.001 0.83 0.018
CTNNB1 0.70 0.019
CTNND1 0.75 0.028
CUL1 0.74 0.011
CXCL12 0.54 <.001 0.74 0.006
CYP3A5 0.52 <.001 0.66 0.003
CYR61 0.64 0.004 0.68 0.005
DDR2 0.57 0.002 0.73 0.004
DES 0.34 <.001 0.58 <.001
DLGAP 1 0.54 <.001 0.62 <.001
DNM3 0.67 0.004
DPP4 0.41 <.001 0.53 <.001
DPT 0.28 <.001 0.48 <.001
DUSP1 0.59 <.001 0.63 <.001
EDNRA 0.64 0.004 0.74 0.008
EGF 0.71 0.012
EGR1 0.59 <.001 0.67 0.009
EGR3 0.72 0.026 0.71 0.025
EIF5 0.76 0.025
ELK4 0.58 0.001 0.70 0.008
ENPP2 0.66 0.002 0.70 0.005
EPHA3 0.65 0.006
EPHB2 0.60 <.001 0.78 0.023
EPHB4 0.75 0.046 0.73 0.006
ERBB3 0.76 0.040 0.75 0.013
ERBB4 0.74 0.023
ERCC1 0.63 <.001 0.77 0.016
FAAH 0.67 0.003 0.71 0.010
FAM107A 0.35 <.001 0.59 <.001
FAM13C 0.37 <.001 0.48 <.001
FAS 0.73 0.019 0.72 0.008
FGF10 0.53 <.001 0.58 <.001
FGF7 0.52 <.001 0.59 <.001
FGFR2 0.60 <.001 0.59 <.001
FKBP5 0.70 0.039 0.68 0.003
FLNA 0.39 <.001 0.56 <.001
FLNC 0.33 <.001 0.52 <.001
FOS 0.58 <.001 0.66 0.005
FOXO1 0.57 <.001 0.67 <.001
FOXQ1 0.74 0.023
GADD45B 0.62 0.002 0.71 0.010
GHR 0.62 0.002 0.72 0.009
GNRH1 0.74 0.049 0.75 0.026
GPM6B 0.48 <.001 0.68 <.001
GPS1 0.68 0.003
GSN 0.46 <.001 0.77 0.027
GSTM1 0.44 <.001 0.62 <.001
GSTM2 0.29 <.001 0.49 <.001
HGD 0.77 0.020
HIRIP3 0.75 0.034
HK1 0.48 <.001 0.66 0.001
HLF 0.42 <.001 0.55 <.001
HNF1B 0.67 0.006 0.74 0.010
HPS1 0.66 0.001 0.65 <.001
HSP90AB 1 0.75 0.042
HSPA5 0.70 0.011
HSPB2 0.52 <.001 0.70 0.004
IGF1 0.35 <.001 0.59 <.001
IGF2 0.48 <.001 0.70 0.005
IGFBP2 0.61 <.001 0.77 0.044
IGFBP5 0.63 <.001
IGFBP6 0.45 <.001 0.64 <.001
IL6ST 0.55 0.004 0.63 <.001
ILK 0.40 <.001 0.57 <.001
ING5 0.56 <.001 0.78 0.033
ITGA1 0.56 0.004 0.61 <.001
ITGA3 0.78 0.035
ITGA5 0.71 0.019 0.75 0.017
ITGA7 0.37 <.001 0.52 <.001
ITGB3 0.63 0.003 0.70 0.005
ITPR1 0.46 <.001 0.64 <.001
ITPR3 0.70 0.013
ITSN1 0.62 0.001
JUN 0.48 <.001 0.60 <.001
JUNB 0.72 0.025
KIT 0.51 <.001 0.68 0.007
KLC1 0.58 <.001
KLK1 0.69 0.028 0.66 0.003
KLK2 0.60 <.001
KLK3 0.63 <.001 0.69 0.012
KRT15 0.56 <.001 0.60 <.001
KRT18 0.74 0.034
KRT5 0.64 <.001 0.62 <.001
LAMA4 0.47 <.001 0.73 0.010
LAMB3 0.73 0.018 0.69 0.003
LGALS3 0.59 0.003 0.54 <.001
LIG3 0.75 0.044
MAP3K7 0.66 0.003 0.79 0.031
MCM3 0.73 0.013 0.80 0.034
MGMT 0.61 0.001 0.71 0.007
MGST1 0.75 0.017
MLXIP 0.70 0.013
MMP2 0.57 <.001 0.72 0.010
MMP7 0.69 0.009
MPPED2 0.70 0.009 0.59 <.001
MSH6 0.78 0.046
MTA1 0.69 0.007
MTSS1 0.55 <.001 0.54 <.001
MYBPC1 0.45 <.001 0.45 <.001
NCAM1 0.51 <.001 0.65 <.001
NCAPD3 0.4 <.001 0.53 <.001
NCOR2 0.68 0.002
NDUFS5 0.66 0.001 0.70 0.013
NEXN 0.48 <.001 0.62 <.001
NFAT5 0.55 <.001 0.67 0.001
NFKBIA 0.79 0.048
NRG1 0.58 0.001 0.62 0.001
OLFML3 0.42 <.001 0.58 <.001
OMD 0.67 0.004 0.71 0.004
OR51E2 0.65 <.001 0.76 0.007
PAGE4 0.27 <.001 0.46 <.001
PCA3 0.68 0.004
PCDHGB7 0.70 0.025 0.65 <.001
PGF 0.62 0.001
PGR 0.63 0.028
PHTF2 0.69 0.033
PLP2 0.54 <.001 0.71 0.003
PPAP2B 0.41 <.001 0.54 <.001
PPP1R12A 0.48 <.001 0.60 <.001
PRIMA1 0.62 0.003 0.65 <.001
PRKAR1B 0.70 0.009
PRKAR2B 0.79 0.038
PRKCA 0.37 <.001 0.55 <.001
PRKCB 0.47 <.001 0.56 <.001
PTCH1 0.70 0.021
PTEN 0.66 0.010 0.64 <.001
PTGER3 0.76 0.015
PTGS2 0.70 0.013 0.68 0.005
PTH1R 0.48 <.001
PTK2B 0.67 0.014 0.69 0.002
PYCARD 0.72 0.023
RAB27A 0.76 0.017
RAGE 0.77 0.040 0.57 <.001
RARB 0.66 0.002 0.69 0.002
RECK 0.65 <.001
RHOA 0.73 0.043
RHOB 0.61 0.005 0.62 <.001
RND3 0.63 0.006 0.66 <.001
SDHC 0.69 0.002
SEC23A 0.61 <.001 0.74 0.010
SEMA3A 0.49 <.001 0.55 <.001
SERPINA3 0.70 0.034 0.75 0.020
SH3RF2 0.33 <.001 0.42 <.001
SLC22A3 0.23 <.001 0.37 <.001
SMAD4 0.33 <.001 0.39 <.001
SMARCC2 0.62 0.003 0.74 0.008
SMO 0.53 <.001 0.73 0.009
SORBS 1 0.40 <.001 0.55 <.001
SPARCL1 0.42 <.001 0.63 <.001
SRD5A2 0.28 <.001 0.37 <.001
ST5 0.52 <.001 0.63 <.001
STAT5A 0.60 <.001 0.75 0.020
STAT5B 0.54 <.001 0.65 <.001
STS 0.78 0.035
SUMO1 0.75 0.017 0.71 0.002
SVIL 0.45 <.001 0.62 <.001
TARP 0.72 0.017
TGFB1I1 0.37 <.001 0.53 <.001
TGFB2 0.61 0.025 0.59 <.001
TGFB3 0.46 <.001 0.60 <.001
TIMP2 0.62 0.001
TIMP3 0.55 <.001 0.76 0.019
TMPRSS2 0.71 0.014
TNF 0.65 0.010
TNFRSF10A 0.71 0.014 0.74 0.010
TNFRSF10B 0.74 0.030 0.73 0.016
TNFSF10 0.69 0.004
TP53 0.73 0.011
TP63 0.62 <.001 0.68 0.003
TPM1 0.43 <.001 0.47 <.001
TPM2 0.30 <.001 0.47 <.001
TPP2 0.58 <.001 0.69 0.001
TRA2A 0.71 0.006
TRAF3IP2 0.50 <.001 0.63 <.001
TRO 0.40 <.001 0.59 <.001
TRPC6 0.73 0.030
TRPV6 0.80 0.047
VCL 0.44 <.001 0.55 <.001
VEGFB 0.73 0.029
VIM 0.72 0.013
VTI1B 0.78 0.046
WDR19 0.65 <.001
WFDC1 0.50 <.001 0.72 0.010
YY1 0.75 0.045
ZFHX3 0.52 <.001 0.54 <.001
ZFP36 0.65 0.004 0.69 0.012
ZNF827 0.59 <.001 0.69 0.004
To identify genes associated with recurrence (cRFI, bRFI) in the primary and the highest Gleason pattern, each of 727 genes were analyzed in univariate models using specimens A1 and B2 (see Table 2, above). Tables 4A and 4B provide genes that were associated, positively or negatively, with cRFI and/or bRFI in the primary and/or highest Gleason pattern. Increased expression of genes in Table 4A is negatively associated with good prognosis, while increased expression of genes in Table 4B is positively associated with good prognosis.
AKR1C3 1.304 0.022 1.312 0.013
ANLN 1.379 0.002 1.579 <.001 1.465 <.001 1.623 <.001
AQP2 1.184 0.027 1.276 <.001
ASAP2 1.442 0.006
ASPN 2.272 <.001 2.106 <.001 1.861 <.001 1.895 <.001
ATP5E 1.414 0.013 1.538 <.001
BAG5 1.263 0.044
BAX 1.332 0.026 1.327 0.012 1.438 0.002
BGN 1.947 <.001 2.061 <.001 1.339 0.017
BIRC5 1.497 <.001 1.567 <.001 1.478 <.001 1.575 <.001
BMP6 1.705 <.001 2.016 <.001 1.418 0.004 1.541 <.001
BMPR1B 1.401 0.013 1.325 0.016
BRCA2 1.259 0.007
BUB1 1.411 <.001 1.435 <.001 1.352 <.001 1.242 0.002
CADPS 1.387 0.009 1.294 0.027
CCNB1 1.296 0.016 1.376 0.002
CCNE2 1.468 <.001 1.649 <.001 1.729 <.001 1.563 <.001
CD276 1.678 <.001 1.832 <.001 1.581 <.001 1.385 0.002
CDC20 1.547 <.001 1.671 <.001 1.446 <.001 1.540 <.001
CDC6 1.400 0.003 1.290 0.030 1.403 0.002 1.276 0.019
CDH7 1.403 0.003 1.413 0.002
CDKN2B 1.569 <.001 1.752 <.001 1.333 0.017 1.347 0.006
CDKN2C 1.612 <.001 1.780 <.001 1.323 0.005 1.335 0.004
CDKN3 1.384 <.001 1.255 0.024 1.285 0.003 1.216 0.028
CENPF 1.578 <.001 1.692 <.001 1.740 <.001 1.705 <.001
CKS2 1.390 0.007 1.418 0.005 1.291 0.018
CLTC 1.368 0.045
COL1A1 1.873 <.001 2.103 <.001 1.491 <.001 1.472 <.001
COL1A2 1.462 0.001
COL3A1 1.827 <.001 2.005 <.001 1.302 0.012 1.298 0.018
COL4A1 1.490 0.002 1.613 <.001
COL8A1 1.692 <.001 1.926 <.001 1.307 0.013 1.317 0.010
CRISP3 1.425 0.001 1.467 <.001 1.242 0.045
CTHRC1 1.505 0.002 2.025 <.001 1.425 0.003 1.369 0.005
CTNND2 1.412 0.003
CXCR4 1.312 0.023 1.355 0.008
DDIT4 1.543 <.001 1.763 <.001
DYNLL1 1.290 0.039 1.201 0.004
EIF3H 1.428 0.012
ENY2 1.361 0.014 1.392 0.008 1.371 0.001
EZH2 1.311 0.010
F2R 1.773 <.001 1.695 <.001 1.495 <.001 1.277 0.018
FADD 1.292 0.018
FAM171B 1.285 0.036
FAP 1.455 0.004 1.560 0.001 1.298 0.022 1.274 0.038
FASN 1.263 0.035
FCGR3A 1.654 <.001 1.253 0.033 1.350 0.007
FGF5 1.219 0.030
GNPTAB 1.388 0.007 1.503 0.003 1.355 0.005 1.434 0.002
GPR68 1.361 0.008
GREM1 1.470 0.003 1.716 <.001 1.421 0.003 1.316 0.017
HDAC1 1.290 0.025
HDAC9 1.395 0.012
HRAS 1.424 0.006 1.447 0.020
HSD17B4 1.342 0.019 1.282 0.026 1.569 <.001 1.390 0.002
HSPA8 1.290 0.034
IGFBP3 1.333 0.022 1.442 0.003 1.253 0.040 1.323 0.005
INHBA 2.368 <.001 2.765 <.001 1.466 0.002 1.671 <.001
JAG1 1.359 0.006 1.367 0.005 1.259 0.024
KCNN2 1.361 0.011 1.413 0.005 1.312 0.017 1.281 0.030
KHDRBS3 1.387 0.006 1.601 <.001 1.573 <.001 1.353 0.006
KIAA0196 1.249 0.037
KIF4A 1.212 0.016 1.149 0.040 1.278 0.003
KLK14 1.167 0.023 1.180 0.007
KPNA2 1.425 0.009 1.353 0.005 1.305 0.019
KRT75 1.164 0.028
LAMA3 1.327 0.011
LAMB1 1.347 0.019
LAMC1 1.555 0.001 1.310 0.030 1.349 0.014
LIMS1 1.275 0.022
LOX 1.358 0.003 1.410 <.001
LTBP2 1.396 0.009 1.656 <.001 1.278 0.022
LUM 1.315 0.021
MANF 1.660 <.001 1.323 0.011
MCM2 1.345 0.011 1.387 0.014
MCM6 1.307 0.023 1.352 0.008 1.244 0.039
MELK 1.293 0.014 1.401 <.001 1.501 <.001 1.256 0.012
MMP11 1.680 <.001 1.474 <.001 1.489 <.001 1.257 0.030
MRPL13 1.260 0.025
MSH2 1.295 0.027
MYBL2 1.664 <.001 1.670 <.001 1.399 <.001 1.431 <.001
MYO6 1.301 0.033
NETO2 1.412 0.004 1.302 0.027 1.298 0.009
NFKB1 1.236 0.050
NOX4 1.492 <.001 1.507 0.001 1.555 <.001 1.262 0.019
NPM1 1.287 0.036
NRIP3 1.219 0.031 1.218 0.018
NRP1 1.482 0.002 1.245 0.041
OLFML2B 1.362 0.015
OR51E1 1.531 <.001 1.488 0.003
PAK6 1.269 0.033
PATE1 1.308 <.001 1.332 <.001 1.164 0.044
PCNA 1.278 0.020
PEX10 1.436 0.005 1.393 0.009
PGD 1.298 0.048 1.579 <.001
PGK1 1.274 0.023 1.262 0.009
PLA2G7 1.315 0.011 1.346 0.005
PLAU 1.319 0.010
PLK1 1.309 0.021 1.563 <.001 1.410 0.002 1.372 0.003
PLOD2 1.284 0.019 1.272 0.014 1.332 0.005
POSTN 1.599 <.001 1.514 0.002 1.391 0.005
PPP3CA 1.402 0.007 1.316 0.018
PSMD13 1.278 0.040 1.297 0.033 1.279 0.017 1.373 0.004
PTK6 1.640 <.001 1.932 <.001 1.369 0.001 1.406 <.001
PTTG1 1.409 <.001 1.510 <.001 1.347 0.001 1.558 <.001
RAD21 1.315 0.035 1.402 0.004 1.589 <.001 1.439 <.001
RAF1 1.503 0.002
RALA 1.521 0.004 1.403 0.007 1.563 <.001 1.229 0.040
RALBP1 1.277 0.033
RGS7 1.154 0.015 1.266 0.010
RRM1 1.570 0.001 1.602 <.001
RRM2 1.368 <.001 1.289 0.004 1.396 <.001 1.230 0.015
SAT1 1.482 0.016 1.403 0.030
SDC1 1.340 0.018 1.396 0.018
SEC14L1 1.260 0.048 1.360 0.002
SESN3 1.485 <.001 1.631 <.001 1.232 0.047 1.292 0.014
SFRP4 1.800 <.001 1.814 <.001 1.496 <.001 1.289 0.027
SHMT2 1.807 <.001 1.658 <.001 1.673 <.001 1.548 <.001
SKIL 1.327 0.008
SLC25A21 1.398 0.001 1.285 0.018
SOX4 1.286 0.020 1.280 0.030
SPARC 1.539 <.001 1.842 <.001 1.269 0.026
SPP1 1.322 0.022
SOLE 1.359 0.020 1.270 0.036
STMN1 1.402 0.007 1.446 0.005 1.279 0.031
SULF1 1.587 <.001
TAF2 1.273 0.027
TFDP1 1.328 0.021 1.400 0.005 1.416 0.001
THBS2 1.812 <.001 1.960 <.001 1.320 0.012 1.256 0.038
THY1 1.362 0.020 1.662 <.001
TK1 1.251 0.011 1.377 <.001 1.401 <.001
top2A 1.670 <.001 1.920 <.001 1.869 <.001 1.927 <.001
TPD52 1.324 0.011 1.366 0.002 1.351 0.005
TPX2 1.884 <.001 2.154 <.001 1.874 <.001 1.794 <.001
UAP1 1.244 0.044
UBE2C 1.403 <.001 1.541 <.001 1.306 0.002 1.323 <.001
UBE2T 1.667 <.001 1.282 0.023 1.502 <.001 1.298 0.005
UGT2B15 1.295 0.001 1.275 0.002
UGT2B17 1.294 0.025
UHRF1 1.454 <.001 1.531 <.001 1.257 0.029
VCPIP1 1.390 0.009 1.414 0.004 1.294 0.021 1.283 0.021
WNT5A 1.274 0.038 1.298 0.020
XIAP 1.464 0.006
ZMYND8 1.277 0.048
ZWINT 1.259 0.047
Table 4B.
AAMP 0.564 <.001 0.571 <.001 0.764 0.037 0.786 0.034
ABCA5 0.755 <.001 0.695 <.001 0.800 0.006
ABCB1 0.777 0.026
ABCG2 0.788 0.033 0.784 0.040 0.803 0.018 0.750 0.004
ABHD2 0.734 0.011
ACE 0.782 0.048
ACOX2 0.639 <.001 0.631 <.001 0.713 <.001 0.716 0.002
ADH5 0.625 <.001 0.637 <.001 0.753 0.026
AKAP1 0.764 0.006 0.800 0.005 0.837 0.046
AKR1C1 0.773 0.033 0.802 0.032
AKT1 0.714 0.005
AKT3 0.811 0.015 0.809 0.021
ALDH1A2 0.606 <.001 0.498 <.001 0.613 <.001 0.624 <.001
AMPD3 0.793 0.024
ANPEP 0.584 <.001 0.493 <.001
ANXA2 0.753 0.013 0.781 0.036 0.762 0.008 0.795 0.032
APRT 0.758 0.026 0.780 0.044 0.746 0.008
ATXN1 0.673 0.001 0.776 0.029 0.809 0.031 0.812 0.043
AXIN2 0.674 <.001 0.571 <.001 0.776 0.005 0.757 0.005
AZGP1 0.585 <.001 0.652 <.001 0.664 <.001 0.746 <.001
BAD 0.765 0.023
BCL2 0.788 0.033 0.778 0.036
BDKRB1 0.728 0.039
BIK 0.712 0.005
BIN1 0.607 <.001 0.724 0.002 0.726 <.001 0.834 0.034
BTG3 0.847 0.034
BTRC 0.688 0.001 0.713 0.003
C7 0.589 <.001 0.639 <.001 0.629 <.001 0.691 <.001
CADM1 0.546 <.001 0.529 <.001 0.743 0.008 0.769 0.015
CASP1 0.769 0.014 0.799 0.028 0.799 0.010 0.815 0.018
CAV1 0.736 0.011 0.711 0.005 0.675 <.001 0.743 0.006
CAV2 0.636 0.010 0.648 0.012 0.685 0.012
CCL2 0.759 0.029 0.764 0.024
CCNH 0.689 <.001 0.700 <.001
CD164 0.664 <.001 0.651 <.001
CD1A 0.687 0.004
CD44 0.545 <.001 0.600 <.001 0.788 0.018 0.799 0.023
CD82 0.771 0.009 0.748 0.004
CDC25B 0.755 0.006 0.817 0.025
CDK14 0.845 0.043
CDK2 0.819 0.032
CDK3 0.733 0.005 0.772 0.006 0.838 0.017
CDKN1A 0.766 0.041
CDKN1C 0.662 <.001 0.712 0.002 0.693 <.001 0.761 0.009
CHN1 0.788 0.036
COL6A1 0.608 <.001 0.767 0.013 0.706 <.001 0.775 0.007
CSF1 0.626 <.001 0.709 0.003
CSK 0.837 0.029
CSRP1 0.793 0.024 0.782 0.019
CTNNB1 0.898 0.042 0.885 <.001
CTSB 0.701 0.004 0.713 0.007 0.715 0.002 0.803 0.038
CTSK 0.815 0.042
CXCL12 0.652 <.001 0.802 0.044 0.711 0.001
CYP3A5 0.463 <.001 0.436 <.001 0.727 0.003
CYR61 0.652 0.002 0.676 0.002
DAP 0.761 0.026 0.775 0.025 0.802 0.048
DARC 0.725 0.005 0.792 0.032
DDR2 0.719 0.001 0.763 0.008
DES 0.619 <.001 0.737 0.005 0.638 <.001 0.793 0.017
DHRS9 0.642 0.003
DHX9 0.888 <.001
DLC1 0.710 0.007 0.715 0.009
DLGAP1 0.613 <.001 0.551 <.001 0.779 0.049
DNM3 0.679 <.001 0.812 0.037
DPP4 0.591 <.001 0.613 <.001 0.761 0.003
DPT 0.613 <.001 0.576 <.001 0.647 <.001 0.677 <.001
DUSP1 0.662 0.001 0.665 0.001 0.785 0.024
DUSP6 0.713 0.005 0.668 0.002
EDNRA 0.702 0.002 0.779 0.036
EGF 0.738 0.028
EGR1 0.569 <.001 0.577 <.001 0.782 0.022
EGR3 0.601 <.001 0.619 <.001 0.800 0.038
EIF2S3 0.756 0.015 .
EIF5 0.776 0.023 0.787 0.028
ELK4 0.628 <.001 0.658 <.001
EPHA2 0.720 0.011 0.663 0.004
EPHA3 0.727 0.003 0.772 0.005
ERBB2 0.786 0.019 0.738 0.003 0.815 0.041
ERBB3 0.728 0.002 0.711 0.002 0.828 0.043 0.813 0.023
ERCC 0.771 0.023 0.725 0.007 0.806 0.049 0.704 0.002
EREG 0.754 0.016 0.777 0.034
ESR2 0.731 0.026
FAAH 0.708 0.004 0.758 0.012 0.784 0.031 0.774 0.007
FAM107A 0.517 <.001 0.576 <.001 0.642 <.001 0.656 <.001
FAM13C 0.568 <.001 0.526 <.001 0.739 0.002 0.639 <.001
FAS 0.755 0.014
FASLG 0.706 0.021
FGF10 0.653 <.001 0.685 <.001 0.766 0.022
FGF17 0.746 0.023 0.781 0.015 0.805 0.028
FGF7 0.794 0.030 0.820 0.037 0.811 0.040
FGFR2 0.683 <.001 0.686 <.001 0.674 <.001 0.703 <.001
FKBP5 0.676 0.001
FLNA 0.653 <.001 0.741 0.010 0.682 <.001 0.771 0.016
FLNC 0.751 0.029 0.779 0.047 0.663 <.001 0.725 <.001
FLT1 0.799 0.044
FOS 0.566 <.001 0.543 <.001 0.757 0.006
FOXO1 0.816 0.039 0.798 0.023
FOXQ1 0.753 0.017 0.757 0.024 0.804 0.018
FYN 0.779 0.031
GADD45B 0.590 <.001 0.619 <.001
GDF15 0.759 0.019 0.794 0.048
GHR 0.702 0.005 0.630 <.001 0.673 <.001 0.590 <.001
GNRH1 0.742 0.014
GPM6B 0.653 <.001 0.633 <.001 0.696 <.001 0.768 0.007
GSN 0.570 <.001 0.697 0.001 0.697 <.001 0.758 0.005
GSTM1 0.612 <.001 0.588 <.001 0.718 <.001 0.801 0.020
GSTM2 0.540 <.001 0.630 <.001 0.602 <.001 0.706 <.001
HGD 0.796 0.020 0.736 0.002
HIRIP3 0.753 0.011 0.824 0.050
HK1 0.684 <.001 0.683 <.001 0.799 0.011 0.804 0.014
HLA-G 0.726 0.022
HLF 0.555 <.001 0.582 <.001 0.703 <.001 0.702 <.001
HNF1B 0.690 <.001 0.585 <.001
HPS1 0.744 0.003 0.784 0.020 0.836 0.047
HSD3B2 0.733 0.016
HSP90AB1 0.801 0.036
HSPA5 0.776 0.034
HSPB1 0.813 0.020
HSPB2 0.762 0.037 0.699 0.002 0.783 0.034
HSPG2 0.794 0.044
ICAM1 0.743 0.024 0.768 0.040
IER3 0.686 0.002 0.663 <.001
IFIT1 0.649 <.001 0.761 0.026
IGF1 0.634 <.001 0.537 <.001 0.696 <.001 0.688 <.001
IGF2 0.732 0.004
IGFBP2 0.548 <.001 0.620 <.001
IGFBP5 0.681 <.001
IGFBP6 0.577 <.001 0.675 <.001
IL1B 0.712 0.005 0.742 0.009
IL6 0.763 0.028
IL6R 0.791 0.039
IL6ST 0.585 <.001 0.639 <.001 0.730 0.002 0.768 0.006
IL8 0.624 <.001 0.662 0.001
ILK 0.712 0.009 0.728 0.012 0.790 0.047 0.790 0.042
ING5 0.625 <.001 0.658 <.001 0.728 0.002
ITGA5 0.728 0.006 0.803 0.039
ITGA6 0.779 0.007 0.775 0.006
ITGA7 0.584 <.001 0.700 0.001 0.656 <.001 0.786 0.014
ITGAD 0.657 0.020
ITGB4 0.718 0.007 0.689 <.001 0.818 0.041
ITGB5 0.801 0.050
ITPR1 0.707 0.001
JUN 0.556 <.001 0.574 <.001 0.754 0.008
JUNB 0.730 0.017 0.715 0.010
KIT 0.644 0.004 0.705 0.019 0.605 <.001 0.659 0.001
KLC1 0.692 0.003 0.774 0.024 0.747 0.008
KLF6 0.770 0.032 0.776 0.039
KLK1 0.646 <.001 0.652 0.001 0.784 0.037
KLK10 0.716 0.006
KLK2 0.647 <.001 0.628 <.001 0.786 0.009
KLK3 0.706 <.001 0.748 <.001 0.845 0.018
KRT1 0.734 0.024
KRT15 0.627 <.001 0.526 <.001 0.704 <.001 0.782 0.029
KRT18 0.624 <.001 0.617 <.001 0.738 0.005 0.760 0.005
KRT5 0.640 <.001 0.550 <.001 0.740 <.001 0.798 0.023
KRT8 0.716 0.006 0.744 0.008
L1CAM 0.738 0.021 0.692 0.009 0.761 0.036
LAG3 0.741 0.013 0.729 0.011
LAMA4 0.686 0.011 0.592 0.003
LAMA5 0.786 0.025
LAMB3 0.661 <.001 0.617 <.001 0.734 <.001
LGALS3 0.618 <.001 0.702 0.001 0.734 0.001 0.793 0.012
LIG3 0.705 0.008 0.615 <.001
LRP1 0.786 0.050 0.795 0.023 0.770 0.009
MAP3K7 0.789 0.003
MGMT 0.632 <.001 0.693 <.001
MICA 0.781 0.014 0.653 <.001 0.833 0.043
MPPED2 0.655 <.001 0.597 <.001 0.719 <.001 0.759 0.006
MSH6 0.793 0.015
MTSS1 0.613 <.001 0.746 0.008
MVP 0.792 0.028 0.795 0.045 0.819 0.023
MYBPC1 0.648 <.001 0.496 <.001 0.701 <.001 0.629 <.001
NCAM1 0.773 0.015
NCAPD3 0.574 <.001 0.463 <.001 0.679 <.001 0.640 <.001
NEXN 0.701 0.002 0.791 0.035 0.725 0.002 0.781 0.016
NFAT5 0.515 <.001 0.586 <.001 0.785 0.017
NFATC2 0.753 0.023
NFKBIA 0.778 0.037
NRG1 0.644 0.004 0.696 0.017 0.698 0.012
OAZ1 0.777 0.034 0.775 0.022
OLFML3 0.621 <.001 0.720 0.001 0.600 <.001 0.626 <.001
OMD 0.706 0.003
OR51E2 0.820 0.037 0.798 0.027
PAGE4 0.549 <.001 0.613 <.001 0.542 <.001 0.628 <.001
PCA3 0.684 <.001 0.635 <.001
PCDHGB7 0.790 0.045 0.725 0.002 0.664 <.001
PGF 0.753 0.017
PGR 0.740 0.021 0.728 0.018
PIK3CG 0.803 0.024
PLAUR 0.778 0.035
PLG 0.728 0.028
PPAP2B 0.575 <.001 0.629 <.001 0.643 <.001 0.699 <.001
PPP1R12A 0.647 <.001 0.683 0.002 0.782 0.023 0.784 0.030
PRIMA1 0.626 <.001 0.658 <.001 0.703 0.002 0.724 0.003
PRKCA 0.642 <.001 0.799 0.029 0.677 0.001 0.776 0.006
PRKCB 0.675 0.001 0.648 <.001 0.747 0.006
PROM1 0.603 0.018 0.659 0.014 0.493 0.008
PTCH1 0.680 0.001 0.753 0.010 0.789 0.018
PTEN 0.732 0.002 0.747 0.005 0.744 <.001 0.765 0.002
PTGS2 0.596 <.001 0.610 <.001
PTH1R 0.767 0.042 0.775 0.028 0.788 0.047
PTHLH 0.617 0.002 0.726 0.025 0.668 0.002 0.718 0.007
PTK2B 0.744 0.003 0.679 <.001 0.766 0.002 0.726 <.001
PTPN1 0.760 0.020 0.780 0.042
PYCARD 0.748 0.012
RAB27A 0.708 0.004
RAB30 0.755 0.008
RAGE 0.817 0.048
RAP1B 0.818 0.050
RARB 0.757 0.007 0.677 <.001 0.789 0.007 0.746 0.003
RASSF1 0.816 0.035
RHOB 0.725 0.009 0.676 0.001 0.793 0.039
RLN1 0.742 0.033 0.762 0.040
RND3 0.636 <.001 0.647 <.001
RNF114 0.749 0.011
SDC2 0.721 0.004
SDHC 0.725 0.003 0.727 0.006
SEMA3A 0.757 0.024 0.721 0.010
SERPINA3 0.716 0.008 0.660 0.001
SERPINB5 0.747 0.031 0.616 0.002
SH3RF2 0.577 <.001 0.458 <.001 0.702 <.001 0.640 <.001
SLC22A3 0.565 <.001 0.540 <.001 0.747 0.004 0.756 0.007
SMAD4 0.546 <.001 0.573 <.001 0.636 <.001 0.627 <.001
SMARCD1 0.718 <.001 0.775 0.017
SMO 0.793 0.029 0.754 0.021 0.718 0.003
SOD1 0.757 0.049 0.707 0.006
SORBS1 0.645 <.001 0.716 0.003 0.693 <.001 0.784 0.025
SPARCL1 0.821 0.028 0.829 0.014 0.781 0.030
SPDEF 0.778 <.001
SPINT1 0.732 0.009 0.842 0.026
SRC 0.647 <.001 0.632 <.001
SRD5A1 0.813 0.040
SRD5A2 0.489 <.001 0.533 <.001 0.544 <.001 0.611 <.001
ST5 0.713 0.002 0.783 0.011 0.725 <.001 0.827 0.025
STAT3 0.773 0.037 0.759 0.035
STAT5A 0.695 <.001 0.719 0.002 0.806 0.020 0.783 0.008
STAT5B 0.633 <.001 0.655 <.001 0.814 0.028
SUMO1 0.790 0.015
SVIL 0.659 <.001 0.713 0.002 0.711 0.002 0.779 0.010
TARP 0.800 0.040
TBP 0.761 0.010
TFF3 0.734 0.010 0.659 <.001
TGFB1I1 0.618 <.001 0.693 0.002 0.637 <.001 0.719 0.004
TGFB2 0.679 <.001 0.747 0.005 0.805 0.030
TGFB3 0.791 0.037
TGFBR2 0.778 0.035
TIMP3 0.751 0.011
TMPRSS2 0.745 0.003 0.708 <.001
TNF 0.670 0.013 0.697 0.015
TNFRSF10A 0.780 0.018 0.752 0.006 0.817 0.032
TNFRSF10B 0.576 <.001 0.655 <.001 0.766 0.004 0.778 0.002
TNFRSF18 0.648 0.016 0.759 0.034
TNFSF10 0.653 <.001 0.667 0.004
TP53 0.729 0.003
TP63 0.759 0.016 0.636 <.001 0.698 <.001 0.712 0.001
TPM1 0.778 0.048 0.743 0.012 0.783 0.032 0.811 0.046
TPM2 0.578 <.001 0.634 <.001 0.611 <.001 0.710 0.001
TPP2 0.775 0.037
TRAF3IP2 0.722 0.002 0.690 <.001 0.792 0.021 0.823 0.049
TRO 0.744 0.003 0.725 0.003 0.765 0.002 0.821 0.041
TUBB2A 0.639 <.001 0.625 <.001
TYMP 0.786 0.039
VCL 0.594 <.001 0.657 0.001 0.682 <.001
VEGFA 0.762 0.024
VEGFB 0.795 0.037
VIM 0.739 0.009 0.791 0.021
WDR19 0.776 0.015
WFDC1 0.746 <.001
YY1 0.683 0.001 0.728 0.002
ZFHX3 0.684 <.001 0.661 <.001 0.801 0.010 0.762 0.001
ZFP36 0.605 <.001 0.579 <.001 0.815 0.043
ZNF827 0.624 <.001 0.730 0.007 0.738 0.004
Tables 5A and 5B provide genes that were significantly associated (p<0.05), positively or negatively, with recurrence (cRFI, bRFI) after adjusting for AUA risk group in the primary and/or highest Gleason pattern. Increased expression of genes in Table 5A is negatively associated with good prognosis, while increased expression of genes in Table 5B is positively associated with good prognosis. Table 5A.
AKR1C3 1.315 0.018 1.283 0.024
ALOX12 1.198 0.024
ANLN 1.406 <.001 1.519 <.001 1.485 <.001 1.632 <.001
AQP2 1.209 <.001 1.302 <.001
ASAP2 1.582 <.001 1.333 0.011 1.307 0.019
ASPN 1.872 <.001 1.741 <.001 1.638 <.001 1.691 <.001
ATP5E 1.309 0.042 1.369 0.012
BAG5 1.291 0.044
BAX 1.298 0.025 1.420 0.004
BGN 1.746 <.001 1.755 <.001
BIRC5 1.480 <.001 1.470 <.001 1.419 <.001 1.503 <.001
BMP6 1.536 <.001 1.815 <.001 1.294 0.033 1.429 0.001
BRCA2 1.184 0.037
BUB1 1.288 0.001 1.391 <.001 1.254 <.001 1.189 0.018
CACNA1D 1.313 0.029
CADPS 1.358 0.007 1.267 0.022
CASP3 1.251 0.037
CCNB1 1.261 0.033 1.318 0.005
CCNE2 1.345 0.005 1.438 <.001 1.606 <.001 1.426 <.001
CD276 1.482 0.002 1.668 <.001 1.451 <.001 1.302 0.011
CDC20 1.417 <.001 1.547 <.001 1.355 <.001 1.446 <.001
CDC6 1.340 0.011 1.265 0.046 1.367 0.002 1.272 0.025
CDH7 1.402 0.003 1.409 0.002
CDKN2B 1.553 <.001 1.746 <.001 1.340 0.014 1.369 0.006
CDKN2C 1.411 <.001 1.604 <.001 1.220 0.033
CDKN3 1.296 0.004 1.226 0.015
CENPF 1.434 0.002 1.570 <.001 1.633 <.001 1.610 <.001
CKS2 1.419 0.008 1.374 0.022 1.380 0.004
COL1A1 1.677 <.001 1.809 <.001 1.401 <.001 1.352 0.003
COL1A2 1.373 0.010
COL3A1 1.669 <.001 1.781 <.001 1.249 0.024 1.234 0.047
COL4A1 1.475 0.002 1.513 0.002
COL8A1 1.506 0.001 1.691 <.001
CRISP3 1.406 0.004 1.471 <.001
CTHRC1 1.426 0.009 1.793 <.001 1.311 0.019
CTNND2 1.462 <.001
DDIT4 1.478 0.003 1.783 <.001 1.236 0.039
DYNLL1 1.431 0.002 1.193 0.004
EIF3H 1.372 0.027
ENY2 1.325 0.023 1.270 0.017
ERG 1.303 0.041
EZH2 1.254 0.049
F2R 1.540 0.002 1.448 0.006 1.286 0.023
FADD 1.235 0.041 1.404 <.001
FAP 1.386 0.015 1.440 0.008 1.253 0.048
FASN 1.303 0.028
FCGR3A 1.439 0.011 1.262 0.045
FGF5 1.289 0.006
GNPTAB 1.290 0.033 1.369 0.022 1.285 0.018 1.355 0.008
GPR68 1.396 0.005
GREM1 1.341 0.022 1.502 0.003 1.366 0.006
HDAC1 1.329 0.016
HDAC9 1.378 0.012
HRAS 1.465 0.006
HSD17B4 1.442 <.001 1.245 0.028
IGFBP3 1.366 0.019 1.302 0.011
INHBA 2.000 <.001 2.336 <.001 1.486 0.002
JAG1 1.251 0.039
KCNN2 1.347 0.020 1.524 <.001 1.312 0.023 1.346 0.011
KHDRBS3 1.500 0.001 1.426 0.001 1.267 0.032
KIAA0196 1.272 0.028
KIF4A 1.199 0.022 1.262 0.004
KPNA2 1.252 0.016
LAMA3 1.332 0.004 1.356 0.010
LAMB1 1.317 0.028
LAMC1 1.516 0.003 1.302 0.040 1.397 0.007
LIMS1 1.261 0.027
LOX 1.265 0.016 1.372 0.001
LTBP2 1.477 0.002
LUM 1.321 0.020
MANF 1.647 <.001 1.284 0.027
MCM2 1.372 0.003 1.302 0.032
MCM3 1.269 0.047
MCM6 1.276 0.033 1.245 0.037
MELK 1.294 0.005 1.394 <.001
MKI67 1.253 0.028 1.246 0.029
MMP11 1.557 <.001 1.290 0.035 1.357 0.005
MRPL13 1.275 0.003
MSH2 1.355 0.009
MYBL2 1.497 <.001 1.509 <.001 1.304 0.003 1.292 0.007
MYO6 1.367 0.010
NDRG1 1.270 0.042 1.314 0.025
NEK2 1.338 0.020 1.269 0.026
NETO2 1.434 0.004 1.303 0.033 1.283 0.012
NOX4 1.413 0.006 1.308 0.037 1.444 <.001
NRIP3 1.171 0.026
NRP1 1.372 0.020
ODC1 1.450 <.001
OR51E1 1.559 <.001 1.413 0.008
PAK6 1.233 0.047
PATE1 1.262 <.001 1.375 <.001 1.143 0.034 1.191 0.036
PCNA 1.227 0.033 1.318 0.003
PEX10 1.517 <.001 1.500 0.001
PGD 1.363 0.028 1.316 0.039 1.652 <.001
PGK1 1.224 0.034 1.206 0.024
PIM1 1.205 0.042
PLA2G7 1.298 0.018 1.358 0.005
PLAU 1.242 0.032
PLK1 1.464 0.001 1.299 0.018 1.275 0.031
PLOD2 1.206 0.039 1.261 0.025
POSTN 1.558 0.001 1.356 0.022 1.363 0.009
PPP3CA 1.445 0.002
PSMD13 1.301 0.017 1.411 0.003
PTK2 1.318 0.031
PTK6 1.582 <.001 1.894 <.001 1.290 0.011 1.354 0.003
PTTG1 1.319 0.004 1.430 <.001 1.271 0.006 1.492 <.001
RAD21 1.278 0.028 1.435 0.004 1.326 0.008
RAF1 1.504 <.001
RALA 1.374 0.028 1.459 0.001
RGS7 1.203 0.031
RRM1 1.535 0.001 1.525 <.001
RRM2 1.302 0.003 1.197 0.047 1.342 <.001
SAT1 1.374 0.043
SDC1 1.344 0.011 1.473 0.008
SEC14L1 1.297 0.006
SESN3 1.337 0.002 1.495 <.001 1.223 0.038
SFRP4 1.610 <.001 1.542 0.002 1.370 0.009
SHMT2 1.567 0.001 1.522 <.001 1.485 0.001 1.370 <.001
SKIL 1.303 0.008
SLC25A21 1.287 0.020 1.306 0.017
SLC44A1 1.308 0.045
SNRPB2 1.304 0.018
SOX4 1.252 0.031
SPARC 1.445 0.004 1.706 <.001 1.269 0.026
SPP1 1.376 0.016
SQLE 1.417 0.007 1.262 0.035
STAT1 1.209 0.029
STMN1 1.315 0.029
SULF1 1.504 0.001
TAF2 1.252 0.048 1.301 0.019
TFDP1 1.395 0.010 1.424 0.002
THBS2 1.716 <.001 1.719 <.001
THY1 1.343 0.035 1.575 0.001
TK1 1.320 <.001 1.304 <.001
top2A 1.464 0.001 1.688 <.001 1.715 <.001 1.761 <.001
TPD52 1.286 0.006 1.258 0.023
TPX2 1.644 <.001 1.964 <.001 1.699 <.001 1.754 <.001
TYMS 1.315 0.014
UBE2C 1.270 0.019 1.558 <.001 1.205 0.027 1.333 <.001
UBE2G1 1.302 0.041
UBE2T 1.451 <.001 1.309 0.003
UGT2B15 1.222 0.025
UHRF1 1.370 0.003 1.520 <.001 1.247 0.020
VCPIP1 1.332 0.015
VTI1B 1.237 0.036
XIAP 1.486 0.008
ZMYND8 1.408 0.007
ZNF3 1.284 0.018
ZWINT 1.289 0.028
AAMP 0.535 <.001 0.581 <.001 0.700 0.002 0.759 0.006
ABCA5 0.798 0.007 0.745 0.002 0.841 0.037
ABCC1 0.800 0.044
ABCC4 0.787 0.022
ABHD2 0.768 0.023
ACOX2 0.678 0.002 0.749 0.027 0.759 0.004
ADH5 0.645 <.001 0.672 0.001
AGTR1 0.780 0.030
AKAP1 0.815 0.045 0.758 <.001
AKT1 0.732 0.010
ALDH1A2 0.646 <.001 0.548 <.001 0.671 <.001 0.713 0.001
ANPEP 0.641 <.001 0.535 <.001
ANXA2 0.772 0.035 0.804 0.046
ATXN1 0.654 <.001 0.754 0.020 0.797 0.017
AURKA 0.788 0.030
AXIN2 0.744 0.005 0.655 <.001
AZGP1 0.656 <.001 0.676 <.001 0.754 0.001 0.791 0.004
BAD 0.700 0.004
BIN1 0.650 <.001 0.764 0.013 0.803 0.015
BTG3 0.836 0.025
BTRC 0.730 0.005
C7 0.617 <.001 0.680 <.001 0.667 <.001 0.755 0.005
CADM1 0.559 <.001 0.566 <.001 0.772 0.020 0.802 0.046
CASP1 0.781 0.030 0.779 0.021 0.818 0.027 0.828 0.036
CAV1 0.775 0.034
CAV2 0.677 0.019
CCL2 0.752 0.023
CCNH 0.679 <.001 0.682 <.001
CD164 0.721 0.002 0.724 0.005
CD1A 0.710 0.014
CD44 0.591 <.001 0.642 <.001
CD82 0.779 0.021 0.771 0.024
CDC25B 0.778 0.035 0.818 0.023
CDK14 0.788 0.011
CDK3 0.752 0.012 0.779 0.005 0.841 0.020
CDKN1A 0.770 0.049 0.712 0.014
CDKN1C 0.684 <.001 0.697 <.001
CHN1 0.772 0.031
COL6A1 0.648 <.001 0.807 0.046 0.768 0.004
CSF1 0.621 <.001 0.671 0.001
CTNNB1 0.905 0.008
CTSB 0.754 0.030 0.716 0.011 0.756 0.014
\CXCL12 0.641 <.001 0.796 0.038 0.708 <.001
CYP3A5 0.503 <.001 0.528 <.001 0.791 0.028
CYR61 0.639 0.001 0.659 0.001 0.797 0.048
DARC 0.707 0.004
DDR2 0.750 0.011
DES 0.657 <.001 0.758 0.022 0.699 <.001
DHRS9 0.625 0.002
DHX9 0.846 <.001
DIAPH1 0.682 0.007 0.723 0.008 0.780 0.026
DLC1 0.703 0.005 0.702 0.008
DLGAP1 0.703 0.008 0.636 <.001
DNM3 0.701 0.001 0.817 0.042
DPP4 0.686 <.001 0.716 0.001
DPT 0.636 <.001 0.633 <.001 0.709 0.006 0.773 0.024
DUSP1 0.683 0.006 0.679 0.003
DUSP6 0.694 0.003 0.605 <.001
EDN1 0.773 0.031
EDNRA 0.716 0.007
EGR1 0.575 <.001 0.575 <.001 0.771 0.014
EGR3 0.633 0.002 0.643 <.001 0.792 0.025
EIF4E 0.722 0.002
ELK4 0.710 0.009 0.759 0.027
ENPP2 0.786 0.039
EPHA2 0.593 0.001
EPHA3 0.739 0.006 0.802 0.020
ERBB2 0.753 0.007
ERBB3 0.753 0.009 0.753 0.015
ERCC1 0.727 0.001
EREG 0.722 0.012 0.769 0.040
ESR1 0.742 0.015
FABP5 0.756 0.032
FAM107A 0.524 <.001 0.579 <.001 0.688 <.001 0.699 0.001
FAM13C 0.639 <.001 0.601 <.001 0.810 0.019 0.709 <.001
FAS 0.770 0.033
FASLG 0.716 0.028 0.683 0.017
FGF10 0.798 0.045
FGF17 0.718 0.018 0.793 0.024 0.790 0.024
FGFR2 0.739 0.007 0.783 0.038 0.740 0.004
FGFR4 0.746 0.050
FKBP5 0.689 0.003
FLNA 0.701 0.006 0.766 0.029 0.768 0.037
FLNC 0.755 <.001 0.820 0.022
FLT1 0.729 0.008
FOS 0.572 <.001 0.536 <.001 0.750 0.005
FOXQ1 0.778 0.033 0.820 0.018
FYN 0.708 0.006
GADD45B 0.577 <.001 0.589 <.001
GDF15 0.757 0.013 0.743 0.006
GHR 0.712 0.004 0.679 0.001
GNRH1 0.791 0.048
GPM6B 0.675 <.001 0.660 <.001 0.735 <.001 0.823 0.049
GSK3B 0.783 0.042
GSN 0.587 <.001 0.705 0.002 0.745 0.004 0.796 0.021
GSTM1 0.686 0.001 0.631 <.001 0.807 0.018
GSTM2 0.607 <.001 0.683 <.001 0.679 <.001 0.800 0.027
HIRIP3 0.692 <.001 0.782 0.007
HK1 0.724 0.002 0.718 0.002
HLF 0.580 <.001 0.571 <.001 0.759 0.008 0.750 0.004
HNF1B 0.669 <.001
HPS1 0.764 0.008
HSD17B10 0.802 0.045
HSD17B2 0.723 0.048
HSD3B2 0.709 0.010
HSP90AB1 0.780 0.034 0.809 0.041
HSPA5 0.738 0.017
HSPB1 0.770 0.006 0.801 0.032
HSPB2 0.788 0.035
ICAM1 0.728 0.015 0.716 0.010
IER3 0.735 0.016 0.637 <.001 0.802 0.035
IFIT1 0.647 <.001 0.755 0.029
IGF1 0.675 <.001 0.603 <.001 0.762 0.006 0.770 0.030
IGF2 0.761 0.011
IGFBP2 0.601 <.001 0.605 <.001
IGFBP5 0.702 <.001
IGFBP6 0.628 <.001 0.726 0.003
IL1B 0.676 0.002 0.716 0.004
IL6 0.688 0.005 0.766 0.044
IL6R 0.786 0.036
IL6ST 0.618 <.001 0.639 <.001 0.785 0.027 0.813 0.042
IL8 0.635 <.001 0.628 <.001
ILK 0.734 0.018 0.753 0.026
ING5 0.684 <.001 0.681 <.001 0.756 0.006
ITGA4 0.778 0.040
ITGA5 0.762 0.026
ITGA6 0.811 0.038
ITGA7 0.592 <.001 0.715 0.006 0.710 0.002
ITGAD 0.576 0.006
ITGB4 0.693 0.003
ITPR1 0.789 0.029
JUN 0.572 <.001 0.581 <.001 0.777 0.019
JUNB 0.732 0.030 0.707 0.016
KCTD12 0.758 0.036
KIT 0.691 0.009 0.738 0.028
KLC1 0.741 0.024 0.781 0.024
KLF6 0.733 0.018 0.727 0.014
KLK1 0.744 0.028
KLK2 0.697 0.002 0.679 <.001
KLK3 0.725 <.001 0.715 <.001 0.841 0.023
KRT15 0.660 <.001 0.577 <.001 0.750 0.002
KRT18 0.623 <.001 0.642 <.001 0.702 <.001 0.760 0.006
KRT2 0.740 0.044
KRT5 0.674 <.001 0.588 <.001 0.769 0.005
KRT8 0.768 0.034
L1CAM 0.737 0.036
LAG3 0.711 0.013 0.748 0.029
LAMA4 0.649 0.009
LAMB3 0.709 0.002 0.684 0.006 0.768 0.006
LGALS3 0.652 <.001 0.752 0.015 0.805 0.028
LIG3 0.728 0.016 0.667 <.001
LRP1 0.811 0.043
MDM2 0.788 0.033
MGMT 0.645 <.001 0.766 0.015
MICA 0.796 0.043 0.676 <.001
MPPED2 0.675 <.001 0.616 <.001 0.750 0.006
MRC1 0.788 0.028
MTSS1 0.654 <.001 0.793 0.036
MYBPC1 0.706 <.001 0.534 <.001 0.773 0.004 0.692 <.001
NCAPD3 0.658 <.001 0.566 <.001 0.753 0.011 0.733 0.009
NCOR1 0.838 0.045
NEXN 0.748 0.025 0.785 0.020
NFAT5 0.531 <.001 0.626 <.001
NFATC2 0.759 0.024
OAZ1 0.766 0.024
OLFML3 0.648 <.001 0.748 0.005 0.639 <.001 0.675 <.001
OR51E2 0.823 0.034
PAGE4 0.599 <.001 0.698 0.002 0.606 <.001 0.726 <.001
PCA3 0.705 <.001 0.647 <.001
PCDHGB7 0.712 <.001
PGF 0.790 0.039
PLG 0.764 0.048
PLP2 0.766 0.037
PPAP2B 0.589 <.001 0.647 <.001 0.691 <.001 0.765 0.013
PPP1R12A 0.673 0.001 0.677 0.001 0.807 0.045
PRIMA1 0.622 <.001 0.712 0.008 0.740 0.013
PRKCA 0.637 <.001 0.694 <.001
PRKCB 0.741 0.020 0.664 <.001
PROM1 0.599 0.017 0.527 0.042 0.610 0.006 0.420 0.002
PTCH1 0.752 0.027 0.762 0.011
PTEN 0.779 0.011 0.802 0.030 0.788 0.009
PTGS2 0.639 <.001 0.606 <.001
PTHLH 0.632 0.007 0.739 0.043 0.654 0.002 0.740 0.015
PTK2B 0.775 0.019 0.831 0.028 0.810 0.017
PTPN1 0.721 0.012 0.737 0.024
PYCARD 0.702 0.005
RAB27A 0.736 0.008
RAB30 0.761 0.011
RARB 0.746 0.010
RASSF1 0.805 0.043
RHOB 0.755 0.029 0.672 0.001
RLN1 0.742 0.036 0.740 0.036
RND3 0.607 <.001 0.633 <.001
RNF114 0.782 0.041 0.747 0.013
SDC2 0.714 0.002
SDHC 0.698 <.001 0.762 0.029
SERPINA3 0.752 0.030
SERPINB5 0.669 0.014
SH3RF2 0.705 0.012 0.568 <.001 0.755 0.016
SLC22A3 0.650 <.001 0.582 <.001
SMAD4 0.636 <.001 0.684 0.002 0.741 0.007 0.738 0.007
SMARCD1 0.757 0.001
SMO 0.790 0.049 0.766 0.013
SOD1 0.741 0.037 0.713 0.007
SORBS 1 0.684 0.003 0.732 0.008 0.788 0.049
SPDEF 0.840 0.012
SPINT1 0.837 0.048
SRC 0.674 <.001 0.671 <.001
SRD5A2 0.553 <.001 0.588 <.001 0.618 <.001 0.701 <.001
ST5 0.747 0.012 0.761 0.010 0.780 0.016 0.832 0.041
STAT3 0.735 0.020
STAT5A 0.731 0.005 0.743 0.009 0.817 0.027
STAT5B 0.708 <.001 0.696 0.001
SUMO1 0.815 0.037
SVIL 0.689 0.003 0.739 0.008 0.761 0.011
TBP 0.792 0.037
TFF3 0.719 0.007 0.664 0.001
TGFB1I1 0.676 0.003 0.707 0.007 0.709 0.005 0.777 0.035
TGFB2 0.741 0.010 0.785 0.017
TGFBR2 0.759 0.022
TIMP3 0.785 0.037
TMPRSS2 0.780 0.012 ! 0.742 <.001
TNF 0.654 0.007 0.682 0.006
TNFRSF10 B 0.623 <.001 0.681 <.001 0.801 0.018 0.815 0.019
TNFSF10 0.721 0.004
TP53 0.759 0.011
TP63 0.737 0.020 0.754 0.007
TPM2 0.609 <.001 0.671 <.001 0.673 <.001 0.789 0.031
TRAF3IP2 0.795 0.041 0.727 0.005
TRO 0.793 0.033 0.768 0.027 0.814 0.023
TUBB2A 0.626 <.001 0.590 <.001
VCL 0.613 <.001 0.701 0.011
VIM 0.716 0.005 0.792 0.025
WFDC1 0.824 0.029
YY1 0.668 <.001 0.787 0.014 0.716 0.001 0.819 0.011
ZFHX3 0.732 <.001 0.709 <.001
ZFP36 0.656 0.001 0.609 <.001 0.818 0.045
ZNF827 0.750 0.022
Tables 6A and 6B provide genes that were significantly associated (p<0.05), positively or negatively, with recurrence (cRFI, bRFI) after adjusting for Gleason pattern in the primary and/or highest Gleason pattern. Increased expression of genes in Table 6A is negatively associated with good prognosis, while increased expression of gene in Table 6B is positively associated with good prognosis. Table 6A.
AKR1C3 1.258 0.039
ANLN 1.292 0.023 1.449 <.001 1.420 0.001
AQP2 1.178 0.008 1.287 <.001
ASAP2 1.396 0.015
ASPN 1.809 <.001 1.508 0.009 1.506 0.002 1.438 0.002
BAG5 1.367 0.012
BAX 1.234 0.044
BGN 1.465 0.009 1.342 0.046
BIRC5 1.338 0.008 1.364 0.004 1.279 0.006
BMP6 1.369 0.015 1.518 0.002
BUB1 1.239 0.024 1.227 0.001 1.236 0.004
CACNA1D 1.337 0.025
CADPS 1.280 0.029
CCNE2 1.256 0.043 1.577 <.001 1.324 0.001
CD276 1.320 0.029 1.396 0.007 1.279 0.033
CDC20 ! 1.298 0.016 1.334 0.002 1.257 0.032 1.279 0.003
CDH7 1.258 0.047 1.338 0.013
CDKN2B 1.342 0.032 1.488 0.009
CDKN2C 1.344 0.010 1.450 <.001
CDKN3 1.284 0.012
CENPF 1.289 0.048 1.498 0.001 1.344 0.010
COL1A1 1.481 0.003 1.506 0.002
COL3A1 1.459 0.004 1.430 0.013
COL4A 1 1.396 0.015
COL8A1 1.413 0.008
CRISP3 1.346 0.012 1.310 0.025
CTHRC1 1.588 0.002
DDIT4 1.363 0.020 1.379 0.028
DICER1 1.294 0.008
ENY2 1.269 0.024
FADD 1.307 0.010
FAS 1.243 0.025
FGF5 1.328 0.002
GNPTAB 1.246 0.037
GREM1 1.332 0.024 1.377 0.013 1.373 0.011
HDAC1 1.301 0.018 1.237 0.021
HSD17B4 1.277 0.011
IFN-γ 1.219 0.048
IMMT 1.230 0.049
INHBA 1.866 <.001 1.944 <.001
JAG1 1.298 0.030
KCNN2 1.378 0.020 1.282 0.017
KHDRBS3 1.353 0.029 1.305 0.014
LAMA3 1.344 <.001 1.232 0.048
LAMC1 1.396 0.015
LIMS 1 1.337 0.004
LOX 1.355 0.001 1.341 0.002 .
LTBP2 1.304 0.045
MAGEA4 1.215 0.024
MANF 1.460 <.001
MCM6 1.287 0.042 1.214 0.046
MELK 1.329 0.002
MMP11 1.281 0.050
MRPL13 1.266 0.021
MYBL2 1.453 <.001 1.274 0.019
MYC 1.265 0.037
MYO6 1.278 0.047
NETO2 1.322 0.022
NFKB1 1.255 0.032
NOX4 1.266 0.041
OR51E1 1.566 <.001 1.428
PATE1 1.242 <.001 1.347 <.001 1.177 0.011
PCNA 1.251 0.025
PEX10 1.302 0.028
PGD 1.335 0.045 1.379 0.014 1.274 0.025
PIM1 1.254 0.019
PLA2G7 1.289 0.025 1.250 0.031
PLAU 1.267 0.031
PSMD13 1.333 0.005
PTK6 1.432 <.001 1.577 <.001 1.223 0.040
PTTG1 1.279 0.013 1.308 0.006
RAGE 1.329 0.011
RALA 1.363 0.044 1.471 0.003
RGS7 1.120 0.040 1.173 0.031
RRM1 1.490 0.004 1.527 <.001
SESN3 1.353 0.017
SFRP4 1.370 0.025
SHMT2 1.460 0.008 1.410 0.006 1.407 0.008 1.345 <.001
SKIL 1.307 0.025
SLC25A21 1.414 0.002 1.330 0.004
SMARCC2 1.219 0.049
SPARC 1.431 0.005
TFDP1 1.283 0.046 1.345 0.003
THBS2 1.456 0.005 1.431 0.012
TK1 1.214 0.015 1.222 0.006
top2A 1.367 0.018 1.518 0.001 1.480 <.001
TPX2 1.513 0.001 1.607 <.001 1.588 <.001 1.481 <.001
UBE2T 1.409 0.002 1.285 0.018
UGT2B15 1.216 0.009 1.182 0.021
XIAP 1.336 0.037 1.194 0.043
Table 6B.
AAMP 0.660 0.001 0.675 <.001 0.836 0.045
ABCA5 0.807 0.014 0.737 <.001 0.845 0.030
ABCC1 0.780 0.038 0.794 0.015
ABCG2 0.807 0.035
ABHD2 0.720 0.002
ADH5 0.750 0.034
AKAP1 0.721 <.001
ALDH1A2 0.735 0.009 0.592 <.001 0.756 0.007 0.781 0.021
ANGPT2 0.741 0.036
ANPEP 0.637 <.001 0.536 <.001
ANXA2 0.762 0.044
APOE 0.707 0.013
APRT 0.727 0.004 0.771 0.006
ATXN1 0.725 0.013
AURKA 0.784 0.037 0.735 0.003
AXIN2 0.744 0.004 0.630 <.001
AZGP1 0.672 <.001 0.720 <.001 0.764 0.001
BAD 0.687 <.001
BAK1 0.783 0.014
BCL2 0.777 0.033 0.772 0.036
BIK 0.768 0.040
BIN1 0.691 <.001
BTRC 0.776 0.029
C7 0.707 0.004 0.791 0.024
CADM1 0.587 <.001 0.593 <.001
CASP1 0.773 0.023 0.820 0.025
CAV1 0.753 0.014
CAV2 0.627 0.009 0.682 0.003
CCL2 0.740 0.019
CCNH 0.736 0.003
CCR1 0.755 0.022
CD1A 0.740 0.025
CD44 0.590 <.001 0.637 <.001
CD68 0.757 0.026
CD82 0.778 0.012 0.759 0.016
CDC25B 0.760 0.021
CDK3 0.762 0.024 0.774 0.007
CDKN1A 0.714 0.015
CDKN1C 0.738 0.014 0.768 0.021
COL6A1 0.690 <.001 0.805 0.048
CSF1 0.675 0.002 0.779 0.036
CSK 0.825 0.004
CTNNB1 0.884 0.045 0.888 0.027
CTSB 0.740 0.017 0.676 0.003 0.755 0.010
CTSD 0.673 0.031 0.722 0.009
CTSK 0.804 0.034
CTSL2 0.748 0.019
CXCL12 0.731 0.017
CYP3A5 0.523 <.001 0.518 <.001
CYR61 0.744 0.041
DAP 0.755 0.011
DARC 0.763 0.029
DDR2 0.813 0.041
DES 0.743 0.020
DHRS9 0.606 0.001
DHX9 0.916 0.021
DIAPH1 0.749 0.036 0.688 0.003
DLGAP1 0.758 0.042 0.676 0.002
DLL4 0.779 0.010
DNM3 0.732 0.007
DPP4 0.732 0.004 0.750 0.014
DPT 0.704 0.014
DUSP6 0.662 <.001 0.665 0.001
EBNA1BP2 0.828 0.019
EDNRA 0.782 0.048
EGF 0.712 0.023
EGR1 0.678 0.004 0.725 0.028
EGR3 0.680 0.006 0.738 0.027
EIF2C2 0.789 0.032
EIF2S3 0.759 0.012
ELK4 0.745 0.024
EPHA2 0.661 0.007
EPHA3 0.781 0.026 0.828 0.037
ERBB2 0.791 0.022 0.760 0.014 0.789 0.006
ERBB3 0.757 0.009
ERCC1 0.760 0.008
ESR1 0.742 0.014
ESR2 0.711 0.038
ETV4 0.714 0.035
FAM107A 0.619 <.001 0.710 0.011 0.781 0.019
FAM13C 0.664 <.001 0.686 <.001 0.813 0.014
FAM49B 0.670 <.001 0.793 0.014 0.815 0.044 0.843 0.047
FASLG 0.616 0.004 0.813 0.038
FGF10 0.751 0.028 0.766 0.019
FGF17 0.718 0.031 0.765 0.019
FGFR2 0.740 0.009 0.738 0.002
FKBP5 0.749 0.031
FLNC 0.826 0.029
FLT1 0.779 0.045 0.729 0.006
FLT4 0.815 0.024
FOS 0.657 0.003 0.656 0.004
FSD1 0.763 0.017
FYN 0.716 0.004 0.792 0.024
GADD45B 0.692 0.009 0.697 0.010
GDF15 0.767 0.016
GHR 0.701 0.002 0.704 0.002 0.640 <.001
GNRH1 0.778 0.039
GPM6B 0.749 0.010 0.750 0.010 0.827 0.037
GRB7 0.696 0.005
GSK3B 0.726 0.005
GSN 0.660 <.001 0.752 0.019
GSTM1 0.710 0.004 0.676 <.001
GSTM2 0.643 <.001 0.767 0.015
HK1 0.798 0.035
HLA-G 0.660 0.013
HLF 0.644 <.001 0.727 0.011
HNF1B 0.755 0.013
HPS1 0.756 0.006 0.791 0.043
HSD17B10 0.737 0.006
HSD3B2 0.674 0.003
HSP90AB 1 0.763 0.015
HSPB1 0.787 0.020 0.778 0.015
HSPE1 0.794 0.039
ICAM1 0.664 0.003
IER3 0.699 0.003 0.693 0.010
IFIT1 0.621 <.001 0.733 0.027
IGF1 0.751 0.017 0.655 <.001
IGFBP2 0.599 <.001 0.605 <.001
IGFBP5 0.745 0.007 0.775 0.035
IGFBP6 0.671 0.005
IL1B 0.732 0.016 0.717 0.005
IL6 0.763 0.040
IL6R 0.764 0.022
IL6ST 0.647 <.001 0.739 0.012
IL8 0.711 0.015 0.694 0.006
ING5 0.729 0.007 0.727 0.003
ITGA4 0.755 0.009
ITGA5 0.743 0.018 0.770 0.034
ITGA6 0.816 0.044 0.772 0.006
ITGA7 0.680 0.004
ITGAD 0.590 0.009
ITGB4 0.663 <.001 0.658 <.001 0.759 0.004
JUN 0.656 0.004 0.639 0.003
KIAA0196 0.737 0.011
KIT 0.730 0.021 0.724 0.008
KLC1 0.755 0.035
KLK1 0.706 0.008
KLK2 0.740 0.016 0.723 0.001
KLK3 0.765 0.006 0.740 0.002
KRT1 0.774 0.042
KRT15 0.658 <.001 0.632 <.001 0.764 0.008
KRT18 0.703 0.004 0.672 <.001 0.779 0.015 0.811 0.032
KRT5 0.686 <.001 0.629 <.001 0.802 0.023
KRT8 0.763 0.034 0.771 0.022
L1CAM 0.748 0.041
LAG3 0.693 0.008 0.724 0.020
LAMA4 0.689 0.039
LAMB3 0.667 <.001 0.645 <.001 0.773 0.006
LGALS3 0.666 <.001 0.822 0.047
LIG3 0.723 0.008
LRP1 0.777 0.041 0.769 0.007
MDM2 0.688 <.001
MET 0.709 0.010 0.736 0.028 0.715 0.003
MGMT 0.751 0.031
MICA 0.705 0.002
MPPED2 0.690 0.001 0.657 <.001 0.708 <.001
MRC1 0.812 0.049
MSH6 0.860 0.049
MTSS1 0.686 0.001
MVP 0.798 0.034 0.761 0.033
MYBPC1 0.754 0.009 0.615 <.001
NCAPD3 0.739 0.021 0.664 0.005
NEXN 0.798 0.037
NFAT5 0.596 <.001 0.732 0.005
NFATC2 0.743 0.016 0.792 0.047
NOS3 0.730 0.012 0.757 0.032
OAZ1 0.732 0.020 0.705 0.002
OCLN 0.746 0.043 0.784 0.025
OLFML3 0.711 0.002 0.709 <.001 0.720 0.001
OMD 0.729 0.011 0.762 0.033
OSM 0.813 0.028
PAGE4 0.668 0.003 0.725 0.004 0.688 <.001 0.766 0.005
PCA3 0.736 0.001 0.691 <.001
PCDHGB7 0.769 0.019 0 789 0.022
PIK3CA 0.768 0.010
PIK3CG 0.792 0.019 0.758 0.009
PLG 0.682 0.009
PPAP2B 0.688 0.005 0.815 0.046
PPP1R12A 0.731 0.026 0.775 0.042
PRIMA1 0.697 0.004 0.757 0.032
PRKCA 0.743 0.019
PRKCB 0.756 0.036 0.767 0.029
PROM1 0.640 0.027 0.699 0.034 0.503 0.013
PTCH1 0.730 0.018
PTEN 0.779 0.015 0.789 0.007
PTGS2 0.644 <.001 0.703 0.007
PTHLH 0.655 0.012 0.706 0.038 0.634 0.001 0.665 0.003
PTK2B 0.779 0.023 0.702 0.002 0.806 0.015 0.806 0.024
PYCARD 0.659 0.001
RAB30 0.779 0.033 0.754 0.014
RARB 0.787 0.043 0.742 0.009
RASSF1 0.754 0.005
RHOA 0.796 0.041 0.819 0.048
RND3 0.721 0.011 0.743 0.028
SDC1 0.707 0.011
SDC2 0.745 0.002
SDHC 0.750 0.013
SERPINA3 0.730 0.016
SERPINB5 0.715 0.041
SH3RF2 0.698 0.025
SIPA1L1 0.796 0.014 0.820 0.004
SLC22A3 0.724 0.014 0.700 0.008
SMAD4 0.668 0.002 0.771 0.016
SMARCD1 0.726 <.001 0.700 0.001 0.812 0.028
SMO 0.785 0.027
SOD1 0.735 0.012
SORBS 1 0.785 0.039
SPDEF 0.818 0.002
SPINT1 0.761 0.024 0.773 0.006
SRC 0.709 <.001 0.690 <.001
SRD5A1 0.746 0.010 0.767 0.024 0.745 0.003
SRD5A2 0.575 <.001 0.669 0.001 0.674 <.001 0.781 0.018
ST5 0.774 0.027
STAT1 0.694 0.004
STAT5A 0.719 0.004 0.765 0.006 0.834 0.049
STAT5B 0.704 0001 0.744 0.012
SUMO1 0.777 0.014
SVIL 0.771 0.026
TBP 0.774 0.031
TFF3 0.742 0.015 0.719 0.024
TGFB1I1 0.763 0.048
TGFB2 0.729 0.011 0.758 0.002
TMPRSS2 0.810 0.034 0.692 <.001
TNF 0.727 0.022
TNFRSF10A 0.805 0.025
TNFRSF10B 0.581 <.001 0.738 0.014 0.809 0.034
TNFSF10 0.751 0.015 0.700 <.001
TP63 0.723 0.018 0.736 0.003
TPM2 0.708 0.010 0.734 0.014
TRAF3IP2 0.718 0.004
TRO 0.742 0.012
TSTA3 0.774 0.028
TUBB2A 0.659 <.001 0.650 <.001
TYMP 0.695 0.002
VCL 0.683 0.008
VIM 0.778 0.040
WDR19 0.775 0.014
XRCC5 0.793 0.042
YY1 0.751 0.025 0.810 0.008
ZFHX3 0.760 0.005 0.726 0.001
ZFP36 0.707 0.008 0.672 0.003
ZNF827 0.667 0.002 0.792 0.039
Tables 7A and 7B provide genes significantly associated (p<0.05), positively or negatively, with clinical recurrence (cRFI) in negative TMPRSS fusion specimens in the primary or highest Gleason pattern specimen. Increased expression of genes in Table 7A is negatively associated with good prognosis, while increased expression of genes in Table 7B is positively associated with good prognosis. Table 7A.
ANLN 1.42 0.012 1.36 0.004
AQP2 1.25 0.033
ASPN 2.48 <.001 1.65 <.001
BGN 2.04 <.001 1.45 0.007
BIRC5 1.59 <.001 1.37 0.005
BMP6 1.95 <.001 1.43 0.012
BMPR1B 1.93 0.002
BUB1 1.51 <.001 1.35 <.001
CCNE2 1.48 0.007
CD276 1.93 <.001 1.79 <.001
CDC20 1.49 0.004 1.47 <.001
CDC6 1.52 0.009 1.34 0.022
CDKN2B 1.54 0.008 1.55 0.003
CDKN2C 1.55 0.003 1.57 <.001
CDKN3 1.34 0.026
CENPF 1.63 0.002 1.33 0.018
CKS2 1.50 0.026 1.43 0.009
CLTC 1.46 0.014
COL1A1 1.98 <.001 1.50 0.002
COL3A1 2.03 <.001 1.42 0.007
COL4A1 1.81 0.002
COL8A1 1.63 0.004 1.60 0.001
CRISP3 1.31 0.016
CTHRC1 1.67 0.006 1.48 0.005
DDIT4 1.49 0.037
ENY2 1.29 0.039
EZH2 1.35 0.016
F2R 1.46 0.034 1.46 0.007
FAP 1.66 0.006 1.38 0.012
FGF5 1.46 0.001
GNPTAB 1.49 0.013
HSD17B4 1.34 0.039 1.44 0.002
INHBA 2.92 <.001 2.19 <.001
JAG1 1.38 0.042
KCNN2 1.71 0.002 1.73 <.001
KHDRBS3 1.46 0.015
KLK14 1.28 0.034
KPNA2 1.63 0.016
LAMC1 1.41 0.044
LOX 1.29 0.036
LTBP2 1.57 0.017
MELK 1.38 0.029
MMP11 1.69 0.002 1.42 0.004
MYBL2 1.78 <.001 1.49 <.001
NETO2 2.01 <.001 1.43 0.007
NME1 1.38 0.017
PATE1 1.43 <.001 1.24 0.005
PEX10 1.46 0.030
PGD 1.77 0.002
POSTN 1.49 0.037 1.34 0.026
PPFIA3 1.51 0.012
PPP3CA 1.46 0.033 1.34 0.020
PTK6 1.69 <.001 1.56 <.001
PTTG1 1.35 0.028
RAD51 1.32 0.048
RALBP1 1.29 0.042
RGS7 1.18 0.012 1.32 0.009
RRM1 1.57 0.016 1.32 0.041
RRM2 1.30 0.039
SAT1 1.61 0.007
SESN3 1.76 <.001 1.36 0.020
SFRP4 1.55 0.016 1.48 0.002
SHMT2 2.23 <.001 1.59 <.001
SPARC 1.54 0.014
SQLE 1.86 0.003
STMN1 2.14 <.001
THBS2 1.79 <.001 1.43 0.009
TK1 1.30 0.026
top2A 2.03 <.001 1.47 0.003
TPD52 1.63 0.003
TPX2 2.11 <.001 1.63 <.001
TRAP1 1.46 0.023
UBE2C 1.57 <.001 1.58 <.001
UBE2G1 1.56 0.008
UBE2T 1.75 <.001
UGT2B15 1.31 0.036 1.33 0.004
UHRF1 1.46 0.007
UTP23 1.52 0.017
Table 7B.
AAMP 0.56 <.001 0.65 0.001
ABCA5 0.64 <.001 0.71 <.001
ABCB1 0.62 0.004
ABCC3 0.74 0.031
ABCG2 0.78 0.050
ABHD2 0.71 0.035
ACOX2 0.54 <.001 0.71 0.007
ADH5 0.49 <.001 0.61 <.001
AKAP1 0.77 0.031 0.76 0.013
AKR1C1 0.65 0.006 0.78 0.044
AKT1 0.72 0.020
AKT3 0.75 <.001
ALDH1A2 0.53 <.001 0.60 <.001
AMPD3 0.62 <.001 0.78 0.028
ANPEP 0.54 <.001 0.61 <.001
ANXA2 0.63 0.008 0.74 0.016
ARHGAP29 0.67 0.005 0.77 0.016
ARHGDIB 0.64 0.013
ATP5J 0.57 0.050
ATXN1 0.61 0.004 0.77 0.043
AXIN2 0.51 <.001 0.62 <.001
AZGP1 0.61 <.001 0.64 <.001
BCL2 0.64 0.004 0.75 0.029
BIN1 0.52 <.001 0.74 0.010
BTG3 0.75 0.032 0.75 0.010
BTRC 0.69 0.011
C7 0.51 <.001 0.67 <.001
CADM1 0.49 <.001 0.76 0.034
CASP1 0.71 0.010 0.74 0.007
CAV1 0.73 0.015
CCL5 0.67 0.018 0.67 0.003
CCNH 0.63 <.001 0.75 0.004
CCR1 0.77 0.032
CD164 0.52 <.001 0.63 <.001
CD44 0.53 <.001 0.74 0.014
CDH10 0.69 0.040
CDH18 0.40 0.011
CDK14 0.75 0.013
CDK2 0.81 0.031
CDK3 0.73 0.022
CDKN1A 0.68 0.038
CDKN1C 0.62 0.003 0.72 0.005
COL6A1 0.54 <.001 0.70 0.004
COL6A3 0.64 0.004
CSF1 0.56 <.001 0.78 0.047
CSRP1 0.40 <.001 0.66 0.002
CTGF 0.66 0.015 0.74 0.027
CTNNB1 0.69 0.043
CTSB 0.60 0.002 0.71 0.011
CTSS 0.67 0.013
CXCL12 0.56 <.001 0.77 0.026
CYP3A5 0.43 <.001 0.63 <.001
CYR61 0.43 <.001 0.58 <.001
DAG1 0.72 0.012
DARC 0.66 0.016
DDR2 0.65 0.007
DES 0.52 <.001 0.74 0.018
DHRS9 0.54 0.007
DICER 1 0.70 0.044
DLC1 0.75 0.021
DLGAP1 0.55 <.001 0.72 0.005
DNM3 0.61 0.001
DPP4 0.55 <.001 0.77 0.024
DPT 0.48 <.001 0.61 <.001
DUSP1 0.47 <.001 0.59 <.001
DUSP6 0.65 0.009 0.65 0.002
DYNLL1 0.74 0.045
EDNRA 0.61 0.002 0.75 0.038
EFNB2 0.71 0.043
EGR1 0.43 <.001 0.58 <.001
EGR3 0.47 <.001 0.66 <.001
EIF5 0.77 0.028
ELK4 0.49 <.001 0.72 0.012
EPHA2 0.70 0.007
EPHA3 0.62 <.001 0.72 0.009
EPHB2 0.68 0.009
ERBB2 0.64 <.001 0.63 <.001
ERBB3 0.69 0.018
ERCC1 0.69 0.019 0.77 0.021
ESR2 0.61 0.020
FAAH 0.57 <.001 0.77 0.035
FABP5 0.67 0.035
FAM107A 0.42 <.001 0.59 <.001
FAM13C 0.53 <.001 0.59 <.001
FAS 0.71 0.035
FASLG 0.56 0.017 0.67 0.014
FGF10 0.57 0.002
FGF17 0.70 0.039 0.70 0.010
FGF7 0.63 0.005 0.70 0.004
FGFR2 0.63 0.003 0.71 0.003
FKBP5 0.72 0.020
FLNA 0.48 <.001 0.74 0.022
FOS 0.45 <.001 0.56 <.001
FOXO1 0.59 <.001
FOXQ1 0.57 <.001 0.69 0.008
FYN 0.62 0.001 0.74 0.013
G6PD 0.77 0.014
GADD45A 0.73 0.045
GADD45B 0.45 <.001 0.64 0.001
GDF15 0.58 <.001
GHR 0.62 0.008 0.68 0.002
GPM6B 0.60 <.001 0.70 0.003
GSK3B 0.71 0.016 0.71 0.006
GSN 0.46 <.001 0.66 <.001
GSTM1 0.56 <.001 0.62 <.001
GSTM2 0.47 <.001 0.67 <.001
HGD 0.72 0.002
HIRIP3 0.69 0.021 0.69 0.002
HK1 0.68 0.005 0.73 0.005
HLA-G 0.54 0.024 0.65 0.013
HLF 0.41 <.001 0.68 0.001
HNF1B 0.55 <.001 0.59 <.001
HPS1 0.74 0.015 0.76 0.025
HSD17B3 0.65 0.031
HSPB2 0.62 0.004 0.76 0.027
ICAM1 0.61 0.010
IER3 0.55 <.001 0.67 0.003
IFIT1 0.57 <.001 0.70 0.008
IFNG 0.69 0.040
IGF1 0.63 <.001 0.59 <.001
IGF2 0.67 0.019 0.70 0.005
IGFBP2 0.53 <.001 0.63 <.001
IGFBP5 0.57 <.001 0.71 0.006
IGFBP6 0.41 <.001 0.71 0.012
IL10 0.59 0.020
IL1B 0.53 <.001 0.70 0.005
IL6 0.55 0.001
IL6ST 0.45 <.001 0.68 <.001
IL8 0.60 0.005 0.70 0.008
ILK 0.68 0.029 0.76 0.036
ING5 0.54 <.001 0.82 0.033
ITGA1 0.66 0.017
ITGA3 0.70 0.020
ITGA5 0.64 0.011
ITGA6 0.66 0.003 0.74 0.006
ITGA7 0.50 <.001 0.71 0.010
ITGB4 0.63 0.014 0.73 0.010
ITPR1 0.55 <.001
ITPR3 0.76 0.007
JUN 0.37 <.001 0.54 <.001
JUNB 0.58 0.002 0.71 0.016
KCTD12 0.68 0.017
KIT 0.49 0.002 0.76 0.043
KLC1 0.61 0.005 0.77 0.045
KLF6 0.65 0.009
KLK1 0.68 0.036
KLK10 0.76 0.037
KLK2 0.64 <.001 0.73 0.006
KLK3 0.65 <.001 0.76 0.021
KLRK1 0.63 0.005
KRT15 0.52 <.001 0.58 <.001
KRT18 0.46 <.001
KRT5 0.51 <.001 0.58 <.001
KRT8 0.53 <.001
L1CAM 0.65 0.031
LAG3 0.58 0.002 0.76 0.033
LAMA4 0.52 0.018
LAMB3 0.60 0.002 0.65 0.003
LGALS3 0.52 <.001 0.71 0.002
LIG3 0.65 0.011
LRP1 0.61 0.001 0.75 0.040
MGMT 0.66 0.003
MICA 0.59 0.001 0.68 0.001
MLXIP 0.70 0.020
MMP2 0.68 0.022
MMP9 0.67 0.036
MPPED2 0.57 <.001 0.66 <.001
MRC1 0.69 0.028
MTSS1 0.63 0.005 0.79 0.037
MVP 0.62 <.001
MYBPC1 0.53 <.001 0.70 0.011
NCAM1 0.70 0.039 0.77 0.042
NCAPD3 0.52 <.001 0.59 <.001
NDRG1 0.69 0.008
NEXN 0.62 0.002
NFAT5 0.45 <.001 0.59 <.001
NFATC2 0.68 0.035 0.75 0.036
NFKBIA 0.70 0.030
NRG1 0.59 0.022 0.71 0.018
OAZ1 0.69 0.018 0.62 <.001
OLFML3 0.59 <.001 0.72 0.003
OR51E2 0.73 0.013
PAGE4 0.42 <.001 0.62 <.001
PCA3 0.53 <.001
PCDHGB7 0.70 0.032
PGF 0.68 0.027 0.71 0.013
PGR 0.76 0.041
PIK3C2A 0.80 <.001
PIK3CA 0.61 <.001 0.80 0.036
PIK3CG 0.67 0.001 0.76 0.018
PLP2 0.65 0.015 0.72 0.010
PPAP2B 0.45 <.001 0.69 0.003
PPP1R12A 0.61 0.007 0.73 0.017
PRIMA1 0.51 <.001 0.68 0.004
PRKCA 0.55 <.001 0.74 0.009
PRKCB 0.55 <.001
PROM1 0.67 0.042
PROS1 0.73 0.036
PTCH1 0.69 0.024 0.72 0.010
PTEN 0.54 <.001 0.64 <.001
PTGS2 0.48 <.001 0.55 <.001
PTH1R 0.57 0.003 0.77 0.050
PTHLH 0.55 0.010
PTK2B 0.56 <.001 0.70 0.001
PYCARD 0.73 0.009
RAB27A 0.65 0.009 0.71 0.014
RAB30 0.59 0.003 0.72 0.010
RAGE 0.76 0.011
RARB 0.59 <.001 0.63 <.001
RASSF1 0.67 0.003
RB1 0.67 0.006
RFX1 0.71 0.040 0.70 0.003
RHOA 0.71 0.038 0.65 <.001
RHOB 0.58 0.001 0.71 0.006
RND3 0.54 <.001 0.69 0.003
RNF114 0.59 0.004 0.68 0.003
SCUBE2 0.77 0.046
SDHC 0.72 0.028 0.76 0.025
SEC23A 0.75 0.029
SEMA3A 0.61 0.004 0.72 0.011
SEPT9 0.66 0.013 0.76 0.036
' SERPINB5 0.75 0.039
SH3RF2 0.44 <.001 0.48 <.001
SHH 0.74 0.049
SLC22A3 0.42 <.001 0.61 <.001
SMAD4 0.45 <.001 0.66 <.001
SMARCD1 0.69 0.016
SOD1 0.68 0.042
SORBS1 0.51 <.001 0.73 0.012
SPARCL1 0.58 <.001 0.77 0.040
SPDEF 0.77 <.001
SPINT1 0.65 0.004 0.79 0.038
SRC 0.61 <.001 0.69 0.001
SRD5A2 0.39 <.001 0.55 <.001
ST5 0.61 <.001 0.73 0.012
STAT1 0.64 0.006
STAT3 0.63 0.010
STAT5A 0.62 0.001 0.70 0.003
STAT5B 0.58 <.001 0.73 0.009
SUMO1 0.66 <.001
SVIL 0.57 0.001 0.74 0.022
TBP 0.65 0.002
TFF1 0.65 0.021
TFF3 0.58 <.001
TGFB1I1 0.51 <.001 0.75 0.026
TGFB2 0.48 <.001 0.62 <.001
TGFBR2 0.61 0.003
TIAM1 0.68 0.019
TIMP2 0.69 0.020
TIMP3 0.58 0.002
TNFRSF10A 0.73 0.047
TNFRSF10B 0.47 <.001 0.70 0.003
TNFSF10 0.56 0.001
TP63 0.67 0.001
TPM1 0.58 0.004 0.73 0.017
TPM2 0.46 <.001 0.70 0.005
TRA2A 0.68 0.013
TRAF3IP2 0.73 0.041 0.71 0.004
TRO 0.72 0.016 0.71 0.004
TUBB2A 0.53 <.001 0.73 0.021
TYMP 0.70 0.011
VCAM1 0.69 0.041
VCL 0.46 <.001
VEGFA 0.77 0.039
VEGFB 0.71 0.035
VIM 0.60 0.001
XRCC5 0.75 0.026
YY1 0.62 0.008 0.77 0.039
ZFHX3 0.53 <.001 0.58 <.001
ZFP36 0.43 <.001 0.54 <.001
ZNF827 0.55 0.001
Tables 8A and 8B provide genes that were significantly associated (p<0.05), positively or negatively, with clinical recurrence (cRFI) in positive TMPRSS fusion specimens in the primary or highest Gleason pattern specimen. Increased expression of genes in Table 8A is negatively associated with good prognosis, while increased expression of genes in Table 8B is positively associated with good prognosis.
ACTR2 1.78 0.017
AKR1C3 1.44 0.013
ALCAM 1.44 0.022
ANLN 1.37 0.046 1.81 <.001
APOE 1.49 0.023 1.66 0.005
AQP2 1.30 0.013
ARHGDIB 1.55 0.021
ASPN 2.13 <.001 2.43 <.001
ATP5E 1.69 0.013 1.58 0.014
BGN 1.92 <.001 2.55 <.001
BIRC5 1.48 0.006 1.89 <.001
BMP6 1.51 0.010 1.96 <.001
BRCA2 1.41 0.007
BUB1 1.36 0.007 1.52 <.001
CCNE2 1.55 0.004 1.59 <.001
CD276 1.65 <.001
CDC20 1.68 <.001 1.74 <.001
CDH11 1.50 0.017
CDH18 1.36 <.001
CDH7 1.54 0.009 1.46 0.026
CDKN2B 1.68 0.008 1.93 0.001
CDKN2C 2.01 <.001 1.77 <.001
CDKN3 1.51 0.002 1.33 0.049
CENPF 1.51 0.007 2.04 <.001
CKS2 1.43 0.034 1.56 0.007
COL1A1 2.23 <.001 3.04 <.001
COL1A2 1.79 0.001 2.2 2 <.001
COL3A1 1.96 <.001 2.81 <.001
COL4A1 1.52 0.020
COL5A1 1.50 0.020
COL5A2 1.64 0.017 1.55 0.010
COL8A1 1.96 <.001 2.38 <.001
CRISP3 1.68 0.002 1.67 0.002
CTHRC1 2.06 <.001
CTNND2 1.42 0.046 1.50 0.025
CTSK 1.43 0.049
CXCR4 1.82 0.001 1.64 0.007
DDIT4 1.54 0.016 1.58 0.009
DLL4 1.51 0.007
DYNLL1 1.50 0.021 1.22 0.002
F2R 2.2 7 <.001 2.02 <.001
FAP 2.12 <.001
FCGR3A 1.94 0.002
FGF5 1.23 0.047
FOXP3 1.52 0.006 1.48 0.018
GNPTAB 1.44 0.042
GPR68 1.51 0.011
GREM1 1.91 <.001 2.38 <.001
HDAC1 1.43 0.048
HDAC9 1.65 <.001 1.67 0.004
HRAS 1.65 0.005 1.58 0.021
IGFBP3 1.94 <.001 1.85 <.001
INHBA 2.03 <.001 2.64 <.001
JAG1 1.41 0.027 1.50 0.008
KCTD12 1.51 0.017
KHDRBS3 1.48 0.029 1.54 0.014
KPNA2 1.46 0.050
LAMA3 1.35 0.040
LAMC1 1.77 0.012
LTBP2 1.82 <.001
LUM 1.51 0.021 1.53 0.009
MELK 1.38 0.020 1.49 0.001
MKI67 1.37 0.014
MMP11 1.73 <.001 1.69 <.001
MRPL13 1.30 0.046
MYBL2 1.56 <.001 1.72 <.001
MYLK3 1.17 0.007
NOX4 1.58 0.005 1.96 <.001
NRIP3 1.30 0.040
NRP1 1.53 0.021
OLFML2B 1.54 0.024
OSM 1.43 0.018
PATE1 1.20 <.001 1.33 <.001
PCNA 1.64 0.003
PEX10 1.41 0.041 1.64 0.003
PIK3CA 1.38 0.037
PLK1 1.52 0.009 1.67 0.002
PLOD2 1.65 0.002 <.001
POSTN 1.79 <.001 2.06
PTK6 1.67 0.002 2.38 <.001
PTTG1 1.56 0.002 1.54 0.003
RAD21 1.61 0.036 1.53 0.005
RAD51 1.33 0.009
RALA 1.95 0.004 1.60 0.007
REG4 1.43 0.042
ROBO2 1.46 0.024
RRM1 1.44 0.033
RRM2 1.50 0.003 1.48 <.001
SAT1 1.42 0.009 1.43 0.012
SEC14L1 1.64 0.002
SFRP4 2.07 <.001 2.40 <.001
SHMT2 1.52 0.030 1.60 0.001
SLC44A1 1.42 0.039
SPARC 1.93 <.001 2.21 <.001
SULF1 1.63 0.006 2.04 <.001
THBS2 1.95 <.001 2.26 <.001
THY1 1.69 0.016 1.95 0.002
TK1 1.43 0.003
top2A 1.57 0.002 2.11 <.001
TPX2 1.84 <.001 2.27 <.001
UBE2C 1.41 0.011 1.44 0.006
UBE2T 1.63 0.001
UHRF1 1.51 0.007 1.69 <.001
WISP1 1.47 0.045
WNT5A 1.35 0.027 1.63 0.001
ZWINT 1.36 0.045
AAMP 0.57 0.007 0.58 <.001
ABCA5 0.80 0.044
ACE 0.65 0.023 0.55 <.001
ACOX2 0.55 <.001
ADH5 0.68 0.022
AKAP1 0.81 0.043
ALDHIA2 0.72 0.036 0.43 <.001
ANPEP 0.66 0.022 0.46 <.001
APRT 0.73 0.040
AXIN2 0.60 <.001
AZGP1 0.57 <.001 0.65 <.001
BCL2 0.69 0.035
BIK 0.71 0.045
BIN1 0.71 0.004 0.71 0.009
BTRC 0.66 0.003 0.58 <.001
C7 0.64 0.006
CADM1 0.61 <.001 0.47 <.001
CCL2 0.73 0.042
CCNH 0.69 0.022
CD44 0.56 <.001 0.58 <.001
CD82 0.72 0.033
CDC25B 0.74 0.028
CDH1 0.75 0.030 0.72 0.010
CDH19 0.56 0.015
CDK3 0.78 0.045
CDKN1C 0.74 0.045 0.70 0.014
CSF1 0.72 0.037
CTSB 0.69 0.048
CTSL2 0.58 0.005
CYP3A5 0.51 <.001 0.30 <.001
DHX9 0.89 0.006 0.87 0.012
DLC1 0.64 0.023
DLGAP1 0.69 0.010 0.49 <.001
DPP4 0.64 <.001 0.56 <.001
DPT 0.63 0.003
EGR1 0.69 0.035
EGR3 0.68 0.025
EIF2S3 0.70 0.021
EIF5 0.71 0.030
ELK4 0.71 0.041 0.60 0.003
EPHA2 0.72 0.036 0.66 0.011
EPHB4 0.65 0.007
ERCC1 0.68 0.023
ESR2 0.64 0.027
FAM107A 0.64 0.003 0.61 0.003
FAM13C 0.68 0.006 0.55 <.001
FGFR2 0.73 0.033 0.59 <.001
FKBP5 0.60 0.006
FLNC 0.68 0.024 0.65 0.012
FLT1 0.71 0.027
FOS 0.62 0.006
FOXO1 0.75 0.010
GADD45B 0.68 0.020
GHR 0.62 0.006
GPM6B 0.57 <.001
GSTM1 0.68 0.015 0.58 <.001
GSTM2 0.65 0.005 0.47 <.001
HGD 0.63 0.001 0.71 0.020
HK1 0.67 0.003 0.62 0.002
HLF 0.59 <.001
HNF1B 0.66 0.004 0.61 0.001
IER3 0.70 0.026
IGF1 0.63 0.005 0.55 <.001
IGF1R 0.76 0.049
IGFBP2 0.59 0.007 0.64 0.003
IL6ST 0.65 0.005
IL8 0.61 0.005 0.66 0.019
ILK 0.64 0.015
ING5 0.73 0.033 0.70 0.009
ITGA7 0.72 0.045 0.69 0.019
ITGB4 0.63 0.002
KLC1 0.74 0.045
KLK1 0.56 0.002 0.49 <.001
KLK10 0.68 0.013
KLK11 0.66 0.003
KLK2 0.66 0.045 0.65 0.011
KLK3 0.75 0.048 0.77 0.014
KRT15 0.71 0.017 0.50 <.001
KRT5 0.73 0.031 0.54 <.001
LAMA5 0.70 0.044
LAMB3 0.70 0.005 0.58 <.001
LGALS3 0.69 0.025
LIG3 0.68 0.022
MDK 0.69 0.035
MGMT 0.59 0.017 0.60 <.001
MGST1 0.73 0.042
MICA 0.70 0.009
MPPED2 0.72 0.031 0.54 <.001
MTSS 1 0.62 0.003
MYBPC1 0.50 <.001
NCAPD3 0.62 0.007 0.38 <.001
NCOR1 0.82 0.048
NFAT5 0.60 0.001 0.62 <.001
NRG1 0.66 0.040 0.61 0.029
NUP62 0.75 0.037
OMD 0.54 <.001
PAGE4 0.64 0.005
PCA3 0.66 0.012
PCDHGB7 0.68 0.018
PGR 0.60 0.012
PPAP2B 0.62 0.010
PPP1R12A 0.73 0.031 0.58 0.003
PRIMA 1 0.65 0.013
PROM1 0.41 0.013
PTCH1 0.64 0.006
PTEN 0.75 0.047
PTGS2 0.67 0.011
PTK2B 0.66 0.005
PTPN1 0.71 0.026
RAGE 0.70 0.012
RARB 0.68 0.016
RGS10 0.84 0.034
RHOB 0.66 0.016
RND3 0.63 0.004
SDHC 0.73 0.044 0.69 0.016
SERPINA3 0.67 0.011 0.51 <.001
SERPINB5 0.42 <.001
SH3RF2 0.66 0.012 0.51 <.001
SLC22A3 0.59 0.003 0.48 <.001
SMAD4 0.64 0.004 0.49 <.001
SMARCC2 0.73 0.042
SMARCD1 0.73 <.001 0.76 0.035
SMO 0.64 0.006
SNAI1 0.53 0.008
SOD1 0.60 0.003
SRC 0.64 <.001 0.61 <.001
SRD5A2 0.63 0.004 0.59 <.001
STAT3 0.64 0.014
STAT5A 0.70 0.032
STAT5B 0.74 0.034 0.63 0.003
SVIL 0.71 0.028
TGFB1I1 0.68 0.036
TMPRSS2 0.72 0.015 0.67 <.001
TNFRSF10A 0.69 0.010
TNFRSF10B 0.67 0.007 0.64 0.001
TNFRSF18 0.38 0.003
TNFSF10 0.71 0.025
TP53 0.68 0.004 0.57 <.001
TP63 0.75 0.049 0.52 <.001
TPM2 0.62 0.007
TRAF3IP2 0.71 0.017 0.62 0.68 0.005
TRO 0.72 0.033
TUBB2A 0.69 0.038
VCL 0.62 <.001
VEGFA 0.71 0.037
WWOX 0.65 0.004
ZFHX3 0.77 0.011 0.73 0.012
ZFP36 0.69 0.018
ZNF827 0.68 0.013 0.49 <.001
Tables 9A and 9B provide genes significantly associated (p<0.05), positively or negatively, with TMPRSS fusion status in the primary Gleason pattern. Increased expression of genes in Table 9A are positively associated with TMPRSS fusion positivity, while increased expression of genes in Table 10A are negatively associated with TMPRSS fusion positivity. Table 9A.
ABCC8 <.001 1.86 MAP3K5 <.001 2.06
ALDH18A1 0.005 1.49 MAP7 <.001 2.74
ALKBH3 0.043 1.30 MSH2 0.005 1.59
ALOX5 <.001 1.66 MSH3 0.006 1.45
AMPD3 <.001 3.92 MUC1 0.012 1.42
APEX1 <.001 2.00 MYO6 <.001 3.79
ARHGDIB <.001 1.87 NCOR2 0.001 1.62
ASAP2 0.019 1.48 NDRG1 <.001 6.77
ATXN1 0.013 1.41 NETO2 <.001 2.63
BMPR1B <.001 2.37 ODC1 <.001 1.98
CACNA1D <.001 9.01 OR51E1 <.001 2.24
CADPS 0.015 1.39 PDE9A <.001 2.21
CD276 0.003 2.25 PEX10 <.001 3.41
CDH1 0.016 1.37 PGK1 0.022 1.33
CDH7 <.001 2.22 PLA2G7 <.001 5.51
CDK7 0.025 1.43 PPP3CA 0.047 1.38
COL9A2 <.001 2.58 PSCA 0.013 1.43
CRISP3 <.001 2.60 PSMD13 0.004 1.51
CTNND1 0.033 1.48 PTCH1 0.022 1.38
ECE1 <.001 2.22 PTK2 0.014 1.38
EIF5 0.023 1.34 PTK6 <.001 2.29
EPHB4 0.005 1.51 PTK7 <.001 2.45
ERG <.001 14.5 PTPRK <.001 1.80
FAM171B 0.047 1.32 RAB30 0.001 1.60
FAM73A 0.008 1.45 REG4 0.018 1.58
FASN 0.004 1.50 RELA 0.001 1.62
GNPTAB <.001 1.60 RFX1 0.020 1.43
GPS1 0.006 1.45 RGS10 <.001 1.71
GRB7 0.023 1.38 SCUBE2 0.009 1.48
HDAC1 <.001 4.95 SEPT9 <.001 3.91
HGD <.001 1.64 SH3RF2 0.004 1.48
HIP1 <.001 1.90 SH3YL1 <.001 1.87
HNF1B <.001 3.55 SHH <.001 2.45
HSPA8 0.041 1.32 SIM2 <.001 1.74
IGF1R 0.001 1.73 SIPA1L1 0.021 1.35
ILF3 <.001 1.91 SLC22A3 <.001 1.63
IMMT 0.025 1.36 SLC44A1 <.001 1.65
ITPR1 <.001 2.72 SPINT1 0.017 1.39
ITPR3 <.001 5.91 TFDP1 0.005 1.75
JAG1 0.007 1.42 TMPRSS2ERGA 0.002 14E5
KCNN2 <.001 2.80 TMPRSS2ERGB <.001 1.97
KHDRBS3 <.001 2.63 TRIM14 <.001 1.65
KIAA0247 0.019 1.38 TSTA3 0.018 1.38
KLK11 <.001 1.98 UAP1 0.046 1.39
LAMC1 0.008 1.56 UBE2G1 0.001 1.66
LAMC2 <.001 3.30 UGDH <.001 2.22
LOX 0.009 1.41 XRCC5 <.001 1.66
LRP1 0.044 1.30 ZMYND8 <.001 2.19
Table 9B Official Symbol p-value Odds Ratio
ABCC4 0.045 0.77
ABHD2 <.001 0.38
ACTR2 0.027 0.73
ADAMTS1 0.024 0.58
ADH5 <.001 0.58
AGTR2 0.016 0.64
AKAP1 0.013 0.70
AKT2 0.015 0.71
ALCAM <.001 0.45
ALDH1A2 0.004 0.70
ANPEP <.001 0.43
ANXA2 0.010 0.71
APC 0.036 0.73
APOC1 0.002 0.56
APOE <.001 0.44
ARF1 0.041 0.77
ATM 0.036 0.74
AURKB <.001 0.62
AZGP1 <.001 0.54
BBC3 0.030 0.74
BCL2 0.012 0.70
BIN1 0.021 0.74
BTG1 0.004 0.67
BTG3 0.003 0.63
C7 0.023 0.74
CADM1 0.007 0.69
CASP1 0.011 0.70
CAV1 0.011 0.71
CCND1 0.019 0.72
CCR1 0.022 0.73
CD44 <.001 0.57
CD68 <.001 0.54
CD82 0.002 0.66
CDH5 0.007 0.66
CDKN1A <.001 0.60
CDKN2B <.001 0.54
CDKN2C 0.012 0.72
CDKN3 0.037 0.77
CHN1 0.038 0.75
CKS2 <.001 0.48
COL11A1 0.017 0.72
COL1A1 <.001 0.59
COL1A2 0.001 0.62
COL3A1 0.027 0.73
COL4A1 0.043 0.76
COL5A1 0.039 0.74
COL5A2 0.026 0.73
COL6A1 0.008 0.66
COL6A3 <.001 0.59
COL8A1 0.022 0.74
CSF1 0.011 0.70
CTNNB1 0.021 0.69
CTSB <.001 0.62
CTSD 0.036 0.68
CTSK 0.007 0.70
CTSS 0.002 0.64
CXCL12 <.001 0.48
CXCR4 0.005 0.68
CXCR7 0.046 0.76
CYR61 0.004 0.65
DAP 0.002 0.64
DARC 0.021 0.73
DDR2 0.021 0.73
DHRS9 <.001 0.52
DIAPH1 <.001 0.56
DICER 1 0.029 0.75
DLC1 0.013 0.72
DLGAP1 <.001 0.60
DLL4 <.001 0.57
DPT 0.006 0.68
DUSP1 0.012 0.68
DUSP6 0.001 0.62
DVL1 0.037 0.75
EFNB2 <.001 0.32
EGR1 0.003 0.65
ELK4 <.001 0.60
ERBB2 <.001 0.61
ERBB3 0.045 0.76
ESR2 0.010 0.70
ETV1 0.042 0.74
FABP5 <.001 0.21
FAM13C 0.006 0.67
FCGR3A 0.018 0.72
FGF17 0.009 0.71
FGF6 0.011 0.70
FGF7 0.003 0.63
FN1 0.006 0.69
FOS 0.035 0.74
FOXP3 0.010 0.71
GABRG2 0.029 0.74
GADD45B 0.003 0.63
GDF15 <.001 0.54
GPM6B 0.004 0.67
GPNMB 0.001 0.62
GSN 0.009 0.69
HLA-G 0.050 0.74
HLF 0.018 0.74
HPS1 <.001 0.48
HSD17B3 0.003 0.60
HSD17B4 <.001 0.56
HSPB1 <.001 0.38
HSPB2 0.002 0.62
IFI30 0.049 0.75
IFNG 0.006 0.64
IGF1 0.016 0.73
IGF2 0.001 0.57
IGFBP2 <.001 0.51
IGFBP3 <.001 0.59
IGFBP6 <.001 0.57
IL10 <.001 0.62
IL17A 0.012 0.63
IL1A 0.011 0.59
IL2 0.001 0.63
IL6ST <.001 0.52
INSL4 0.014 0.71
ITGA1 0.009 0.69
ITGA4 0.007 0.68
JUN <.001 0.59
KIT <.001 0.64
KRT76 0.016 0.70
LAG3 0.002 0.63
LAPTM5 <.001 0.58
LGALS3 <.001 0.53
LTBP2 0.011 0.71
LUM 0.012 0.70
MAOA 0.020 0.73
MAP4K4 0.007 0.68
MGST1 <.001 0.54
MMP2 <.001 0.61
MPPED2 <.001 0.45
MRC1 0.005 0.67
MTPN 0.002 0.56
MTSS1 <.001 0.53
MVP 0.009 0.72
MYBPC1 <.001 0.51
MYLK3 0.001 0.58
NCAM1 <.001 0.59
NCAPD3 <.001 0.40
NCOR1 0.004 0.69
NFKBIA <.001 0.63
NNMT 0.006 0.66
NPBWR1 0.027 0.67
OAZ1 0.049 0.64
OLFML3 <.001 0.56
OSM <.001 0.64
PAGE1 0.012 0.52
PDGFRB 0.016 0.73
PECAM1 <.001 0.55
PGR 0.048 0.77
PIK3CA <.001 0.55
PIK3CG 0.008 0.71
PLAU 0.044 0.76
PLK1 0.006 0.68
PLOD2 0.013 0.71
PLP2 0.024 0.73
PNLIPRP2 0.009 0.70
PPAP2B <.001 0.62
PRKAR2B <.001 0.61
PRKCB 0.044 0.76
PROS 1 0.005 0.67
PTEN <.001 0.47
PTGER3 0.007 0.69
PTH1R 0.011 0.70
PTK2B <.001 0.61
PTPN1 0.028 0.73
RAB27A <.001 0.21
RAD51 <.001 0.51
RAD9A 0.030 0.75
RARB <.001 0.62
RASSF1 0.038 0.76
RECK 0.009 0.62
RHOB 0.004 0.64
RHOC <.001 0.56
RLN1 <.001 0.30
RND3 0.014 0.72
S100P 0.002 0.66
SDC2 <.001 0.61
SEMA3A 0.001 0.64
SMAD4 <.001 0.64
SPARC <.001 0.59
SPARCL1 <.001 0.56
SPINK1 <.001 0.2 6
SRD5A1 0.039 0.76
STAT1 0.026 0.74
STS 0.006 0.64
SULF1 <.001 0.53
TFF3 <.001 0.19
TGFA 0.002 0.65
TGFB1I1 0.040 0.77
TGFB2 0.003 0.66
TGFB3 <.001 0.54
TGFBR2 <.001 0.61
THY1 <.001 0.63
TIMP2 0.004 0.66
TIMP3 <.001 0.60
TMPRSS2 <.001 0.40
TNFSF11 0.026 0.63
TPD52 0.002 0.64
TRAM1 <.001 0.45
TRPC6 0.002 0.64
TUBB2A <.001 0.49
VCL <.001 0.57
VEGFB 0.033 0.73
VEGFC <.001 0.61
VIM 0.012 0.69
WISP1 0.030 0.75
WNT5A <.001 0.50
A molecular field effect was investigated, and determined that the expression levels of histologically normal-appearing cells adjacent to the tumor exhibited a molecular signature of prostate cancer. Tables 10A and 10B provide genes significantly associated (p<0.05), positively or negatively, with cRFI or bRFI in non-tumor samples. Table 10A is negatively associated with good prognosis, while increased expression of genes in Table 10B is positively associated with good prognosis. Table 10A
ALCAM 1.278 0.036
ASPN 1.309 0.032
BAG5 1.458 0.004
BRCA2 1.385 <.001
CACNA1D 1.329 0.035
CD164 1.339 0.020
CDKN2B 1.398 0.014
COL3A1 1.300 0.035
COL4A1 1.358 0.019
CTNND2 1.370 0.001
DARC 1.451 0.003
DICER1 1.345 <.001
DPP4 1.358 0.008
EFNB2 1.323 0.007
FASN 1.327 0.035
GHR 1.332 0.048
HSPA5 1.260 0.048
INHBA 1.558 <.001
KCNN2 1.264 0.045
KRT76 1.115 <.001
LAMC1 1.390 0.014
LAMC2 1.216 0.042
LIG3 1.313 0.030
MAOA 1.405 0.013
MCM6 1.307 0.036
MKI67 1.271 0.008
NEK2 1.312 0.016
NPBWR1 1.278 0.035
ODC1 1.320 0.010
PEX10 1.361 0.014
PGK1 1.488 0.004
PLA2G7 1.337 0.025
POSTN 1.306 0.043
PTK6 1.344 0.005
REG4 1.348 0.009
RGS7 1.144 0.047
SFRP4 1.394 0.009
TARP 1.412 0.011
TFF1 1.346 0.010
TGFBR2 1.310 0.035
THY1 1.300 0.038
TMPRSS2ERGA 1.333 <.001
TPD52 1.374 0.015
TRPC6 1.272 0.046
UBE2C 1.323 0.007
UHRF1 1.325 0.021
ABCA5 0.807 0.028
ABCC3 0.760 0.019 0.750 0.003
ABHD2 0.781 0.028
ADAM15 0.718 0.005
AKAP1 0.740 0.009
AMPD3 0.793 0.013
ANGPT2 0.752 0.027
ANXA2 0.776 0.035
APC 0.755 0.014
APRT 0.762 0.025
AR 0.752 0.015
ARHGDIB 0.753 <.001
BIN1 0.738 0.016
CADM1 0.711 0.004
CCNH 0.820 0.041
CCR1 0.749 0.007
CDK14 0.772 0.014
CDK3 0.819 0.044
CDKN1C 0.808 0.038
CHAF1A 0.634 0.002 0.779 0.045
CHN1 0.803 0.034
CHRAC1 0.751 0.014 0.779 0.021
COL5A1 0.736 0.012
COL5A2 0.762 0.013
COL6A1 0.757 0.032
COL6A3 0.757 0.019
CSK 0.663 <.001 0.698 <.001
CTSK 0.782 0.029
CXCL12 0.771 0.037
CXCR7 0.753 0.008
CYP3A5 0.790 0.035
DDIT4 0.725 0.017
DIAPH1 0.771 0.015
DLC1 0.744 0.004 0.807 0.015
DLGAP1 0.708 0.004
DUSP1 0.740 0.034
EDN1 0.742 0.010
EGR1 0.731 0.028
EIF3H 0.761 0.024
EIF4E 0.786 0.041
ERBB2 0.664 0.001
ERBB4 0.764 0.036
ERCC1 0.804 0.041
ESR2 0.757 0.025
EZH2 0.798 0.048
FAAH 0.798 0.042
FAM13C 0.764 0.012
FAM171B 0.755 0.005
FAM49B 0.811 0.043
FAM73A 0.778 0.015
FASLG 0.757 0.041
FGFR2 0.735 0.016
FOS 0.690 0.008
FYN 0.788 0.035 0.777 0.011
GPNMB 0.762 0.011
GSK3B 0.792 0.038
HGD 0.774 0.017
HIRIP3 0.802 0.033
HSP90AB1 0.753 0.013
HSPB1 0.764 0.021
HSPE1 0.668 0.001
IFI30 0.732 0.002
IGF2 0.747 0.006
IGFBP5 0.691 0.006
IL6ST 0.748 0.010
IL8 0.785 0.028
IMMT 0.708 <.001
ITGA6 0.747 0.008
ITGAV 0.792 0.016
ITGB3 0.814 0.034
ITPR3 0.769 0.009
JUN 0.655 0.005
KHDRBS3 0.764 0.012
KLF6 0.714 <.001
KLK2 0.813 0.048
LAMA4 0.702 0.009
LAMA5 0.744 0.011
LAPTM5 0.740 0.009
LGALS3 0.773 0.036 0.788 0.024
LIMS 1 0.807 0.012
MAP3K5 0.815 0.034
MAP3K7 0.809 0.032
MAP4K4 0.735 0.018 0.761 0.010
MAPKAPK3 0.754 0.014
MICA 0.785 0.019
MTA1 0.808 0.043
MVP 0.691 0.001
MYLK3 0.730 0.039
MYO6 0.780 0.037
NCOA1 0.787 0.040
NCOR1 0.876 0.020
NDRG1 0.761 <.001
NFAT5 0.770 0.032
NFKBIA 0.799 0.018
NME2 0.753 0.005
NUP62 0.842 0.032
OAZ1 0.803 0.043
OLFML2B 0.745 0.023
OLFML3 0.743 0.009
OSM 0.726 0.018
PCA3 0.714 0.019
PECAM1 0.774 0.023
PIK3C2A 0.768 0.001
PIM1 0.725 0.011
PLOD2 0.713 0.008
PPP3CA 0.768 0.040
PROM1 0.482 <.001
PTEN 0.807 0.012
PTGS2 0.726 0.011
PTTG1 0.729 0.006
PYCARD 0.783 0.012
RAB30 0.730 0.002
RAGE 0.792 0.012
RFX1 0.789 0.016 0.792 0.010
RGS10 0.781 0.017
RUNX1 0.747 0.007
SDHC 0.827 0.036
SEC23A 0.752 0.010
SEPT9 0.889 0.006
SERPINA3 0.738 0.013
SLC25A21 0.788 0.045
SMARCD1 0.788 0.010 0.733 0.007
SMO 0.813 0.035
SRC 0.758 0.026
SRD5A2 0.738 0.005
ST5 0.767 0.022
STAT5A 0.784 0.039
TGFB2 0.771 0.027
TGFB3 0.752 0.036
THBS2 0.751 0.015
TNFRSF10B 0.739 0.010
TPX2 0.754 0.023
TRAF3IP2 0.774 0.015
TRAM1 0.868 <.001 0.880 <.001
TRIM 14 0.785 0.047
TUBB2A 0.705 0.010
TYMP 0.778 0.024
UAP1 0.721 0.013
UTP23 0.763 0.007 0.826 0.018
VCL 0.837 0.040
VEGFA 0.755 0.009
WDR19 0.724 0.005
YBX1 0.786 0.027
ZFP36 0.744 0.032
ZNF827 0.770 0.043
Table 11 provides genes that are significantly associated (p<0.05) with cRFI or bRFI after adjustment for Gleason pattern or highest Gleason pattern. Table 11
Table 11 cRFI bRFI bRFI
Highest Pattern Primary Pattern Highest Pattern
Official Svmbol HR p-value HR p-value HR p-value
HSPA5 0.710 0.009 1.288 0.030
ODC1 0.741 0.026 1.343 0.004 1.261 0.046
Tables 12A and 12B provide genes that are significantly associated (p<0.05) with prostate cancer specific survival (PCSS) in the primary Gleason pattern. Increased expression of genes in Table 12A is negatively associated with good prognosis, while increased expression of genes in Table 12B is positively associated with good prognosis.
AKR1C3 1.476 0.016 GREM1 1.942 <.001
ANLN 1.517 0.006 IFI30 1.482 0.048
APOC1 1.285 0.016 IGFBP3 1.513 0.027
APOE 1.490 0.024 INHBA 3.060 <.001
ASPN 3.055 <.001 KIF4A 1.355 0.001
ATP5E 1.788 0.012 KLK14 1.187 0.004
AURKB 1.439 0.008 LAPTM5 1.613 0.006
BGN 2.640 <.001 LTBP2 2.018 <.001
BIRC5 1.611 <.001 MMP11 1.869 <.001
BMP6 1.490 0.021 MYBL2 1.737 0.013
BRCA1 1.418 0.036 NEK2 1.445 0.028
CCNB1 1.497 0.021 NOX4 2.049 <.001
CD276 1.668 0.005 OLFML2B 1.497 0.023
CDC20 1.730 <.001 PLK1 1.603 0.006
CDH11 1.565 0.017 POSTN 2.585 <.001
CDH7 1.553 0.007 PPFIA3 1.502 0.012
CDKN2B 1.751 0.003 PTK6 1.527 0.009
CDKN2C 1.993 0.013 PTTG1 1.382 0.029
CDKN3 1.404 0.008 RAD51 1.304 0.031
CENPF 2.031 <.001 RGS7 1.251 <.001
CHAF1A 1.376 0.011 RRM2 1.515 <.001
CKS2 1.499 0.031 SAT1 1.607 0.004
COL1A1 2.574 <.001 SDC1 1.710 0.007
COL1A2 1.607 0.011 SESN3 1.399 0.045
COL3A1 2.382 <.001 SFRP4 2.384 <.001
COL4A1 1.970 <.001 SHMT2 1.949 0.003
COL5A2 1.938 0.002 SPARC 2.249 <.001
COL8A1 2.245 <.001 STMN1 1.748 0.021
CTHRC1 2.085 <.001 SULF1 1.803 0.004
CXCR4 1.783 0.007 THBS2 2.576 <.001
DDIT4 1.535 0.030 THY1 1.908 0.001
DYNLL1 1.719 0.001 TK1 1.394 0.004
F2R 2.169 <.001 top2A 2.119 <.001
FAM171B 1.430 0.044 TPX2 2.074 0.042
FAP 1.993 0.002 UBE2C 1.598 <.001
FCGR3A 2.099 <.001 UGT2B15 1.363 0.016
FN1 1.537 0.024 UHRF1 1.642 0.001
GPR68 1.520 0.018 ZWINT 1.570 0.010
AAMP 0.649 0.040 IGFBP6 0.578 0.003
ABCA5 0.777 0.015 IL2 0.528 0.010
ABCG2 0.715 0.037 IL6ST 0.574 <.001
ACOX2 0.673 0.016 IL8 0.540 0.001
ADH5 0.522 <.001 ING5 0.688 0.015
ALDH1A2 0.561 <.001 ITGA6 0.710 0.005
AMACR 0.693 0.029 ITGA7 0.676 0.033
AMPD3 0.750 0.049 JUN 0.506 0.001
ANPEP 0.531 <.001 KIT 0.628 0.047
ATXN1 0.640 0.011 KLK1 0.523 0.002
AXIN2 0.657 0.002 KLK2 0.581 <.001
AZGP1 0.617 <.001 KLK3 0.676 <.001
BDKRB1 0.553 0.032 KRT15 0.684 0.005
BIN1 0.658 <.001 KRT18 0.536 <.001
BTRC 0.716 0.011 KRT5 0.673 0.004
C7 0.531 <.001 KRT8 0.613 0.006
CADM1 0.646 0.015 LAMB3 0.740 0.027
CASP7 0.538 0.029 LGALS3 0.678 0.007
CCNH 0.674 0.001 MGST1 0.640 0.002
CD164 0.606 <.001 MPPED2 0.629 <.001
CD44 0.687 0.016 MTSS1 0.705 0.041
CDK3 0.733 0.039 MYBPC1 0.534 <.001
CHN1 0.653 0.014 NCAPD3 0.519 <.001
COL6A1 0.681 0.015 NFAT5 0.536 <.001
CSF1 0.675 0.019 NRG1 0.467 0.007
CSRP1 0.711 0.007 OLFML3 0.646 0.001
CXCL12 0.650 0.015 OMD 0.630 0.006
CYP3A5 0.507 <.001 OR51E2 0.762 0.017
CYR61 0.569 0.007 PAGE4 0.518 <.001
DLGAP1 0.654 0.004 PCA3 0.581 <.001
DNM3 0.692 0.010 PGF 0.705 0.038
DPP4 0.544 <.001 PPAP2B 0.568 <.001
DPT 0.543 <.001 PPP1R12A 0.694 0.017
DUSP1 0.660 0.050 PRIMA 1 0.678 0.014
DUSP6 0.699 0.033 PRKCA 0.632 0.001
EGR1 0.490 <.001 PRKCB 0.692 0.028
EGR3 0.561 <.001 PROM1 0.393 0.017
EIF5 0.720 0.035 PTEN 0.689 0.002
ERBB3 0.739 0.042 PTGS2 0.611 0.004
FAAH 0.636 0.010 PTH1R 0.629 0.031
FAM107A 0.541 <.001 RAB27A 0.721 0.046
FAM13C 0.526 <.001 RND3 0.678 0.029
FAS 0.689 0.030 RNF114 0.714 0.035
FGF10 0.657 0.024 SDHC 0.590 <.001
FKBP5 0.699 0.040 SERPINA3 0.710 0.050
FLNC 0.742 0.036 SH3RF2 0.570 0.005
FOS 0.556 0.005 SLC22A3 0.517 <.001
FOXQ1 0.666 0.007 SMAD4 0.528 <.001
GADD45B 0.554 0.002 SMO 0.751 0.026
GDF15 0.659 0.009 SRC 0.667 0.004
GHR 0.683 0.027 SRD5A2 0.488 <.001
GPM6B 0.666 0.005 STAT5B 0.700 0.040
GSN 0.646 0.006 SVIL 0.694 0.024
GSTM1 0.672 0.006 TFF3 0.701 0.045
GSTM2 0.514 <.001 TGFB1I1 0.670 0.029
HGD 0.771 0.039 TGFB2 0.646 0.010
HIRIP3 0.730 0.013 TNFRSF10B 0.685 0.014
HK1 0.778 0.048 TNFSF10 0.532 <.001
HLF 0.581 <.001 TPM2 0.623 0.005
HNF1B 0.643 0.013 TRO 0.767 0.049
HSD17B10 0.742 0.029 TUBB2A 0.613 0.003
IER3 0.717 0.049 VEGFB 0.780 0.034
IGF1 0.612 <.001 ZFP36 0.576 0.001
ZNF827 0.644 0.014
Analysis of gene expression and upgrading/upstaging was based on univariate ordinal logistic regression models using weighted maximum likelihood estimators for each gene in the gene list (727 test genes and 5 reference genes). P-values were generated using a Wald test of the null hypothesis that the odds ratio (OR) is one. Both unadjusted p-values and the q-value (smallest FDR at which the hypothesis test in question is rejected) were reported. Unadjusted p-values <0.05 were considered statistically significant. Since two tumor specimens were selected for each patient, this analysis was performed using the 2 specimens from each patient as follows: (1) analysis using the primary Gleason pattern specimen from each patient (Specimens A1 and B2 as described in Table 2); and (2) analysis using the highest Gleason pattern specimen from each patient (Specimens A1 and B1 as described in Table 2). 200 genes were found to be significantly associated (p<0.05) with upgrading/upstaging in the primary Gleason pattern sample (PGP) and 203 genes were found to be significantly associated (p<0.05) with upgrading/upstaging in the highest Gleason pattern sample (HGP).
Tables 13A and 13B provide genes significantly associated (p<0.05), positively or negatively, with upgrading/upstaging in the primary and/or highest Gleason pattern. Increased expression of genes in Table 13A is positively associated with higher risk of upgrading/upstaging (poor prognosis), while increased expression of genes in Table 13B is negatively associated with risk of upgrading/upstaging (good prognosis).
ALCAM 1.52 0.0179 1.50 0.0184
ANLN 1.36 0.0451 . .
APOE 1.42 0.0278 1.50 0.0140
ASPN 1.60 0.0027 2.06 0.0001
AURKA 1.47 0.0108 . .
AURKB . . 1.52 0.0070
BAX . . 1.48 0.0095
BGN 1.58 0.0095 1.73 0.0034
BIRC5 1.38 0.0415 . .
BMP6 1.51 0.0091 1.59 0.0071
BUB1 1.38 0.0471 1.59 0.0068
CACNA1D 1.36 0.0474 1.52 0.0078
CASP7 . . 1.32 0.0450
CCNE2 1.54 0.0042 . .
CD276 . . 1.44 0.0265
CDC20 1.35 0.0445 1.39 0.0225
CDKN2B . . 1.36 0.0415
CENPF 1.43 0.0172 1.48 0.0102
CLTC 1.59 0.0031 1.57 0.0038
COL1A1 1.58 0.0045 1.75 0.0008
COL3A1 1.45 0.0143 1.47 0.0131
COL8A1 1.40 0.0292 1.43 0.0258
CRISP3 . . 1.40 0.0256
CTHRC1 . . 1.56 0.0092
DBN1 1.43 0.0323 1.45 0.0163
DIAPH1 1.51 0.0088 1.58 0.0025
DICER1 . 1.40 0.0293
DIO2 . . 1.49 0.0097
DVL1 . . 1.53 0.0160
F2R 1.46 0.0346 1.63 0.0024
FAP 1.47 0.0136 1.74 0.0005
FCGR3A . 1.42 0.0221
HPN . . 1.36 0.0468
HSD17B4 . . 1.47 0.0151
HSPA8 1.65 0.0060 1.58 0.0074
IL11 1.50 0.0100 1.48 0.0113
IL1B 1.41 0.0359 . .
INHBA 1.56 0.0064 1.71 0.0042
KHDRBS3 1.43 0.0219 1.59 0.0045
KIF4A . . 1.50 0.0209
KPNA2 1.40 0.0366 . .
KRT2 . . 1.37 0.0456
KRT75 1.44 0.0389
MANF . . 1.39 0.0429
MELK 1.74 0.0016 . .
MKI67 1.35 0.0408 . .
MMP11 . 1.56 0.0057
NOX4 1.49 0.0105 1.49 0.0138
PLAUR 1.44 0.0185 . .
PLK1 . . 1.41 0.0246
PTK6 . . 1.36 0.0391
RAD51 . . 1.39 0.0300
RAF1 . . 1.58 0.0036
RRM2 1.57 0.0080 . .
SESN3 1.33 0.0465 . .
SFRP4 2.33 <0.0001 2.51 0.0015
SKIL 1.44 0.0288 1.40 0.0368
SOX4 1.50 0.0087 1.59 0.0022
SPINK1 1.52 0.0058 . .
SPP1 . . 1.42 0.0224
THBS2 . . 1.36 0.0461
TK1 . . 1.38 0.0283
top2A 1.85 0.0001 1.66 0.001
TPD52 1.78 0.0003 1.64 0.0041
TPX2 1.70 0.0010 . .
UBE2G1 1.38 0.0491 . .
UBE2T 1.37 0.0425 1.46 0.0162
UHRF1 . . 1.43 0.0164
VCPIP1 . . 1.37 0.0458
ABCC3 . . 0.70 0.0216
ABCC8 0.66 0.0121 . .
ABCG2 0.67 0.0208 0.61 0.0071
ACE . . 0.73 0.0442
ACOX2 0.46 0.0000 0.49 0.0001
ADH5 0.69 0.0284 0.59 0.0047
AIG1 . . 0.60 0.0045
AKR1C1 . . 0.66 0.0095
ALDH1A2 0.36 <0.0001 0.36 <0.0001
ALKBH3 0.70 0.0281 0.61 0.0056
ANPEP . . 0.68 0.0109
ANXA2 0.73 0.0411 0.66 0.0080
APC . . 0.68 0.0223
ATXN1 . . 0.70 0.0188
AXIN2 0.60 0.0072 0.68 0.0204
AZGP1 0.66 0.0089 0.57 0.0028
BCL2 . . 0.71 0.0182
BIN1 0.55 0.0005 . .
BTRC 0.69 0.0397 0.70 0.0251
C7 0.53 0.0002 0.51 <0.0001
CADM1 0.57 0.0012 0.60 0.0032
CASP1 0.64 0.0035 0.72 0.0210
CAV1 0.64 0.0097 0.59 0.0032
CAV2 . . 0.58 0.0107
CD164 . . 0.69 0.0260
CD82 0.67 0.0157 0.69 0.0167
CDH1 0.61 0.0012 0.70 0.0210
CDK14 0.70 0.0354 . .
CDK3 . . 0.72 0.0267
CDKN1C 0.61 0.0036 0.56 0.0003
CHN1 0.71 0.0214 . .
COL6A1 0.62 0.0125 0.60 0.0050
COL6A3 0.65 0.0080 0.68 0.0181
CSRP1 0.43 0.0001 0.40 0.0002
CTSB 0.66 0.0042 0.67 0.0051
CTSD 0.64 0.0355 . .
CTSK 0.69 0.0171 . .
CTSL1 0.72 0.0402 . .
CUL1 0.61 0.0024 0.70 0.0120
CXCL12 0.69 0.0287 0.63 0.0053
CYP3A5 0.68 0.0099 0.62 0.0026
DDR2 0.68 0.0324 0.62 0.0050
DES 0.54 0.0013 0.46 0.0002
DHX9 0.67 0.0164 . .
DLGAP1 . . 0.66 0.0086
DPP4 0.69 0.0438 0.69 0.0132
DPT 0.59 0.0034 0.51 0.0005
DUSP1 . . 0.67 0.0214
EDN1 . . 0.66 0.0073
EDNRA 0.66 0.0148 0.54 0.0005
EIF2C2 . . 0.65 0.0087
ELK4 0.55 0.0003 0.58 0.0013
ENPP2 0.65 0.0128 0.59 0.0007
EPHA3 0.71 0.0397 0.73 0.0455
EPHB2 0.60 0.0014 . .
EPHB4 0.73 0.0418 . .
EPHX3 . . 0.71 0.0419
ERCC1 0.71 0.0325 . .
FAM107A 0.56 0.0008 0.55 0.0011
FAM13C 0.68 0.0276 0.55 0.0001
FAS 0.72 0.0404 . .
FBN1 0.72 0.0395 . .
FBXW7 0.69 0.0417 . .
FGF10 0.59 0.0024 0.51 0.0001
FGF7 0.51 0.0002 0.56 0.0007
FGFR2 0.54 0.0004 0.47 <0.0001
FLNA 0.58 0.0036 0.50 0.0002
FLNC 0.45 0.0001 0.40 <0.0001
FLT4 0.61 0.0045 . .
FOXO1 0.55 0.0005 0.53 0.0005
FOXP3 0.71 0.0275 0.72 0.0354
GHR 0.59 0.0074 0.53 0.0001
GNRH1 0.72 0.0386 . .
GPM6B 0.59 0.0024 0.52 0.0002
GSN 0.65 0.0107 0.65 0.0098
GSTM1 0.44 <0.0001 0.43 <0.0001
GSTM2 0.42 <0.0001 0.39 <0.0001
HLF 0.46 <0.0001 0.47 0.0001
HPS1 0.64 0.0069 0.69 0.0134
HSPA5 0.68 0.0113 . .
HSPB2 0.61 0.0061 0.55 0.0004
HSPG2 0.70 0.0359 . .
ID3 . . 0.70 0.0245
IGF1 0.45 <0.0001 0.50 0.0005
IGF2 0.67 0.0200 0.68 0.0152
IGFBP2 0.59 0.0017 0.69 0.0250
IGFBP6 0.49 <0.0001 0.64 0.0092
IL6ST 0.56 0.0009 0.60 0.0012
ILK 0.51 0.0010 0.49 0.0004
ITGA1 0.58 0.0020 0.58 0.0016
ITGA3 0.71 0.0286 0.70 0.0221
ITGA5 . . 0.69 0.0183
ITGA7 0.56 0.0035 0.42 <0.0001
ITGB1 0.63 0.0095 0.68 0.0267
ITGB3 0.62 0.0043 0.62 0.0040
ITPR1 0.62 0.0032 . .
JUN 0.73 0.0490 0.68 0.0152
KIT 0.55 0.0003 0.57 0.0005
KLC1 . . 0.70 0.0248
KLK1 . . 0.60 0.0059
KRT15 0.58 0.0009 0.45 <0.0001
KRT5 0.70 0.0262 0.59 0.0008
LAMA4 0.56 0.0359 0.68 0.0498
LAMB3 . . 0.60 0.0017
LGALS3 0.58 0.0007 0.56 0.0012
LRP1 0.69 0.0176 . .
MAP3K7 0.70 0.0233 0.73 0.0392
MCM3 0.72 0.0320 . .
MMP2 0.66 0.0045 0.60 0.0009
MMP7 0.61 0.0015 0.65 0.0032
MMP9 0.64 0.0057 0.72 0.0399
MPPED2 0.72 0.0392 0.63 0.0042
MTA1 . . 0.68 0.0095
MTSS1 0.58 0.0007 0.71 0.0442
MVP 0.57 0.0003 0.70 0.0152
MYBPC1 . . 0.70 0.0359
NCAM1 0.63 0.0104 0.64 0.0080
NCAPD3 0.67 0.0145 0.64 0.0128
NEXN 0.54 0.0004 0.55 0.0003
NFAT5 0.72 0.0320 0.70 0.0177
NUDT6 0.66 0.0102 . .
OLFML3 0.56 0.0035 0.51 0.0011
OMD 0.61 0.0011 0.73 0.0357
PAGE4 0.42 <0.0001 0.36 <0.0001
PAK6 0.72 0.0335 . .
PCDHGB7 0.70 0.0262 0.55 0.0004
PGF 0.72 0.0358 0.71 0.0270
PLP2 0.66 0.0088 0.63 0.0041
PPAP2B 0.44 <0.0001 0.50 0.0001
PPP1R12A 0.45 0.0001 0.40 <0.0001
PRIMA1 . . 0.63 0.0102
PRKAR2B 0.71 0.0226 . .
PRKCA 0.34 <0.0001 0.42 <0.0001
PRKCB 0.66 0.0120 0.49 <0.0001
PROM1 0.61 0.0030 . .
PTEN 0.59 0.0008 0.55 0.0001
PTGER3 0.67 0.0293 . .
PTH1R 0.69 0.0259 0.71 0.0327
PTK2 0.75 0.0461 . .
PTK2B 0.70 0.0244 0.74 0.0388
PYCARD 0.73 0.0339 0.67 0.0100
RAD9A 0.64 0.0124 . .
RARB 0.67 0.0088 0.65 0.0116
RGS10 0.70 0.0219 . .
RHOB . . 0.72 0.0475
RND3 . . 0.67 0.0231
SDHC 0.72 0.0443 . .
SEC23A 0.66 0.0101 0.53 0.0003
SEMA3A 0.51 0.0001 0.69 0.0222
SH3RF2 0.55 0.0002 0.54 0.0002
SLC22A3 0.48 0.0001 0.50 0.0058
SMAD4 0.49 0.0001 0.50 0.0003
SMARCC2 0.59 0.0028 0.65 0.0052
SMO 0.60 0.0048 0.52 <0.0001
SORBS1 0.56 0.0024 0.48 0.0002
SPARCL1 0.43 0.0001 0.50 0.0001
SRD5A2 0.26 <0.0001 0.31 <0.0001
ST5 0.63 0.0103 0.52 0.0006
STAT5A 0.60 0.0015 0.61 0.0037
STAT5B 0.54 0.0005 0.57 0.0008
SUMO1 0.65 0.0066 0.66 0.0320
SVIL 0.52 0.0067 0.46 0.0003
TGFB1I1 0.44 0.0001 0.43 0.0000
TGFB2 0.55 0.0007 0.58 0.0016
TGFB3 0.57 0.0010 0.53 0.0005
TIMP1 0.72 0.0224 .
TIMP2 0.68 0.0198 0.69 0.0206
TIMP3 0.67 0.0105 0.64 0.0065
TMPRSS2 . . 0.72 0.0366
TNFRSF10A 0.71 0.0181 . .
TNFSF10 0.71 0.0284 . .
top2B 0.73 0.0432 . .
TP63 0.62 0.0014 0.50 <0.0001
TPM1 0.54 0.0007 0.52 0.0002
TPM2 0.41 <0.0001 0.40 <0.0001
TPP2 0.65 0.0122 . .
TRA2A 0.72 0.0318 . .
TRAF3IP2 0.62 0.0064 0.59 0.0053
TRO 0.57 0.0003 0.51 0.0001
VCL 0.52 0.0005 0.52 0.0004
VIM 0.65 0.0072 0.65 0.0045
WDR19 0.66 0.0097 . .
WFDC1 0.58 0.0023 0.60 0.0026
ZFHX3 0.69 0.0144 0.62 0.0046
ZNF827 0.62 0.0030 0.53 0.0001
EXAMPLE 3: IDENTIFICATION OF MICRORNAS ASSOCIATED WITH CLINICAL RECURRENCE AND DEATH DUE TO PROSTATE CANCER
MicroRNAs function by binding to portions of messenger RNA (mRNA) and changing how frequently the mRNA is translated into protein. They can also influence the turnover of mRNA and thus how long the mRNA remains intact in the cell. Since microRNAs function primarily as an adjunct to mRNA, this study evaluated the joint prognostic value of microRNA expression and gene (mRNA) expression. Since the expression of certain microRNAs may be a surrogate for expression of genes that are not in the assessed panel, we also evaluated the prognostic value of microRNA expression by itself.
Patients and Samples
Samples from the 127 patients with clinical recurrence and 374 patients without clinical recurrence after radical prostatectomy described in Example 2 were used in this study. The final analysis set comprised 416 samples from patients in which both gene expression and microRNA expression were successfully assayed. Of these, 106 patients exhibited clinical recurrence and 310 did not have clinical recurrence. Tissue samples were taken from each prostate sample representing (1) the primary Gleason pattern in the sample, and (2) the highest Gleason pattern in the sample. In addition, a sample of histologically normal-appearing tissue adjacent to the tumor (NAT) was taken. The number of patients in the analysis set for each tissue type and the number of them who experienced clinical recurrence or death due to prostate cancer are shown in Table 14.
Table 14. Number of Patients and Events in Analysis Set
Patients Clinical Recurrences Deaths Due to Prostate Cancer
Primary Gleason Pattern Tumor Tissue 416 106 36
Highest Gleason Pattern Tumor Tissue 405 102 36
Normal Adjacent Tissue 364 81 29
Assay Method
Expression of 76 test microRNAs and 5 reference microRNAs were determined from RNA extracted from fixed paraffin-embedded (FPE) tissue. MicroRNA expression in all three tissue type was quantified by reverse transcriptase polymerase chain reaction (RT-PCR) using the crossing point (Cp) obtained from the Taqman® MicroRNA Assay kit (Applied Biosystems, Inc., Carlsbad, CA).
Statistical Analysis
Using univariate proportional hazards regression (Cox DR, Journal of the Royal Statistical Society, Series B 34:187-220, 1972), applying the sampling weights from the cohort sampling design, and using variance estimation based on the Lin and Wei method (Lin and Wei, Journal of the American Statistical Association 84:1074-1078, 1989), microRNA expression, normalized by the average expression for the 5 reference microRNAs hsa-miR-106a, hsa-miR-146b-5p, hsa-miR-191, hsa-miR-19b, and hsa-miR-92a, and reference-normalized gene expression of the 733 genes (including the reference genes) discussed above, were assessed for association with clinical recurrence and death due to prostate cancer. Standardized hazard ratios (the proportional change in the hazard associated with a change of one standard deviation in the covariate value) were calculated.
This analysis included the following classes of predictors:
  1. 1. MicroRNAs alone
  2. 2. MicroRNA-gene pairs Tier 1
  3. 3. MicroRNA-gene pairs Tier 2
  4. 4. MicroRNA-gene pairs Tier 3
  5. 5. All other microRNA-gene pairs Tier 4
The four tiers were pre-determined based on the likelihood (Tier 1 representing the highest likelihood) that the gene-microRNA pair functionally interacted or that the microRNA was related to prostate cancer based on a review of the literature and existing microarray data sets.
False discovery rates (FDR) (Benjamini and Hochberg, Journal of the Royal Statistical Society, Series B 57:289-300, 1995) were assessed using Efron's separate class methodology (Efron, Annals of Applied Statistics 2:197-223., 2008). The false discovery rate is the expected proportion of the rejected null hypotheses that are rejected incorrectly (and thus are false discoveries). Efron's methodology allows separate FDR assessment (q-values) (Storey, Journal of the Royal Statistical Society, Series B 64:479-498, 2002) within each class while utilizing the data from all the classes to improve the accuracy of the calculation. In this analysis, the q-value for a microRNA or microRNA-gene pair can be interpreted as the empirical Bayes probability that the microRNA or microRNA-gene pair identified as being associated with clinical outcome is in fact a false discovery given the data. The separate class approach was applied to a true discovery rate degree of association (TDRDA) analysis (Crager, Statistics in Medicine 29:33-45, 2010) to determine sets of microRNAs or microRNA-gene pairs that have standardized hazard ratio for clinical recurrence or prostate cancer-specific death of at least a specified amount while controlling the FDR at 10%. For each microRNA or microRNA-gene pair, a maximum lower bound (MLB) standardized hazard ratio was computed, showing the highest lower bound for which the microRNA or microRNA-gene pair was included in a TDRDA set with 10% FDR. Also calculated was an estimate of the true standardized hazard ratio corrected for regression to the mean (RM) that occurs in subsequent studies when the best predictors are selected from a long list (Crager, 2010 above). The RM-corrected estimate of the standardized hazard ratio is a reasonable estimate of what could be expected if the selected microRNA or microRNA-gene pair were studied in a separate, subsequent study.
These analyses were repeated adjusting for clinical and pathology covariates available at the time of patient biopsy: biopsy Gleason score, baseline PSA level, and clinical T-stage (T1-T2A vs. T2B or T2C) to assess whether the microRNAs or microRNA-gene pairs have predictive value independent of these clinical and pathology covariates.
Results
The analysis identified 21 microRNAs assayed from primary Gleason pattern tumor tissue that were associated with clinical recurrence of prostate cancer after radical prostatectomy, allowing a false discovery rate of 10% (Table 15). Results were similar for microRNAs assessed from highest Gleason pattern tumor tissue (Table 16), suggesting that the association of microRNA expression with clinical recurrence does not change markedly depending on the location within a tumor tissue sample. No microRNA assayed from normal adjacent tissue was associated with the risk of clinical recurrence at a false discovery rate of 10%. The sequences of the microRNAs listed in Tables 15-21 are shown in Table B.
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-93 <0.0001 0.0% (+) 1.79 (1.38, 2.32) 1.19 1.51
hsa-miR-106b <0.0001 0.1% (+) 1.80 (1.38, 2.34) 1.19 1.51
hsa-miR-30e-5p <0.0001 0.1% (-) 1.63 (1.30,2.04) 1.18 1.46
hsa-miR-21 <0.0001 0.1% (+) 1.66 (1.31, 2.09) 1.18 1.46
hsa-miR-133a <0.0001 0.1% (-) 1.72 (1.33, 2.21) 1.18 1.48
hsa-miR-449a <0.0001 0.1% (+) 1.56 (1.26, 1.92) 1.17 1.42
hsa-miR-30a 0.0001 0.1% (-) 1.56 (1.25, 1.94) 1.16 1.41
hsa-miR-182 0.0001 0.2% (+) 1.74 (1.31,2.31) 1.17 1.45
hsa-miR-27a 0.0002 0.2% (+) 1.65 (1.27, 2.14) 1.16 1.43
hsa-miR-222 0.0006 0.5% (-) 1.47 (1.18, 1.84) 1.12 1.35
hsa-miR-103 0.0036 2.1% (+) 1.77 (1.21, 2.61) 1.12 1.36
hsa-miR-1 0.0037 2.2% (-) 1.32 (1.10, 1.60) 1.07 1.26
hsa-miR-145 0.0053 2.9% (-) 1.34 (1.09, 1.65) 1.07 1.27
hsa-miR-141 0.0060 3.2% (+) 1.43 (1.11, 1.84) 1.07 1.29
hsa-miR-92a 0.0104 4.8% (+) 1.32 (1.07, 1.64) 1.05 1.25
hsa-miR-22 0.0204 7.7% (+) 1.31 (1.03, 1.64) 1.03 1.23
hsa-miR-29b 0.0212 7.9% (+) 1.36 (1.03, 1.76) 1.03 1.24
hsa-miR-210 0.0223 8.2% (+) 1.33 (1.03, 1.70) 1.00 1.23
hsa-miR-486-5p 0.0267 9.4% (-) 1.25 (1.00,1.53) 1.00 1.20
hsa-miR-19b 0.0280 9.7% (-) 1.24 (1.00, 1.50) 1.00 1.19
hsa-miR-205 0.0289 10.0% (-) 1.25 (1.00,1.53) 1.00 1.20
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-93 <0.0001 0.0% (+) 1.91 (1.48,2.47) 1.24 1.59
hsa-miR-449a <0.0001 0.0% (+) 1.75 (1.40,2.18) 1.23 1.54
hsa-miR-205 <0.0001 0.0% (-) 1.53 (1.29,1.81) 1.20 1.43
hsa-miR-19b <0.0001 0.0% (-) 1.37 (1.19,1.57) 1.15 1.32
hsa-miR-106b <0.0001 0.0% (+) 1.84 (1.39, 2.42) 1.22 1.51
hsa-miR-21 <0.0001 0.0% (+) 1.68 (1.32, 2.15) 1.19 1.46
hsa-miR-30a 0.0005 0.4% (-) 1.44 (1.17,1.76) 1.13 1.33
hsa-miR-30e-5p 0.0010 0.6% (-) 1.37 (1.14,1.66) 1.11 1.30
hsa-miR-133a 0.0015 0.8% (-) 1.57 (1.19, 2.07) 1.13 1.36
hsa-miR-1 0.0016 0.8% (-) 1.42 (1.14, 1.77) 1.11 1.31
hsa-miR-103 0.0021 1.1% (+) 1.69 (1.21, 2.37) 1.13 1.37
hsa-miR-210 0.0024 1.2% (+) 1.43 (1.13,1.79) 1.11 1.31
hsa-miR-182 0.0040 1.7% (+) 1.48 (1.13,1.93) 1.11 1.31
hsa-miR-27a 0.0055 2.1% (+) 1.46 (1.12,1.91) 1.09 1.30
hsa-miR-222 0.0093 3.2% (-) 1.38 (1.08,1.77) 1.08 1.27
hsa-miR-331 0.0126 3.9% (+) 1.38 (1.07, 1.77) 1.07 1.26
0.0143 4.3% (+) 1.38 (1.06, 1.78) 1.07 1.26
hsa-miR-425 0.0151 4.5% (+) 1.40 (1.06,1.83) 1.07 1.26
hsa-miR-31 0.0176 5.1% (-) 1.29 (1.04, 1.60) 1.05 1.22
hsa-miR-92a 0.0202 5.6% (+) 1.31 (1.03, 1.65) 1.05 1.23
hsa-miR-155 0.0302 7.6% (-) 1.32 (1.00, 1.69) 1.03 1.22
hsa-miR-22 0.0437 9.9% (+) 1.30 (1.00, 1.67) 1.00 1.21
Table 17 shows microRNAs assayed from primary Gleason pattern tissue that were identified as being associated with the risk of prostate-cancer-specific death, with a false discovery rate of 10%. Table 18 shows the corresponding analysis for microRNAs assayed from highest Gleason pattern tissue. No microRNA assayed from normal adjacent tissue was associated with the risk of prostate-cancer-specific death at a false discovery rate of 10%.
MicroRNA p-value Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-30e-5p 0.0001 0.6% (-) 1.88 (1.37,2.58) 1.15 1.46
hsa-miR-30a 0.0001 0.7% (-) 1.78 (1.33, 2.40) 1.14 1.44
hsa-miR-133a 0.0005 1.2% (-) 1.85 (1.31, 2.62) 1.13 1.41
hsa-miR-222 0.0006 1.4% (-) 1.65 (1.24, 2.20) 1.12 1.38
hsa-miR-106b 0.0024 2.7% (+) 1.85 (1.24, 2.75) 1.11 1.35
hsa-miR-1 0.0028 3.0% (-) 1.43 (1.13, 1.81) 1.08 1.30
hsa-miR-21 0.0034 3.3% (+) 1.63 (1.17, 2.25) 1.09 1.33
hsa-miR-93 0.0044 3.9% (+) 1.87 (1.21, 2.87) 1.09 1.32
hsa-miR-26a 0.0072 5.3% (-) 1.47 (1.11, 1.94) 1.07 1.29
hsa-miR-152 0.0090 6.0% (-) 1.46 (1.10, 1.95) 1.06 1.28
hsa-miR-331 0.0105 6.5% (+) 1.46 (1.09, 1.96) 1.05 1.27
hsa-miR-150 0.0159 8.3% (+) 1.51 (1.07, 2.10) 1.03 1.27
hsa-miR-27b 0.0160 8.3% (+) 1.97 (1.12, 3.42) 1.05 1.25
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-27b 0.0016 6.1% (+) 2.66 (1.45, 4.88) 1.07 1.32
hsa-miR-21 0.0020 6.4% (+) 1.66 (1.21, 2.30) 1.05 1.34
hsa-miR-10a 0.0024 6.7% (+) 1.78 (1.23, 2.59) 1.05 1.34
hsa-miR-93 0.0024 6.7% (+) 1.83 (1.24, 2.71) 1.05 1.34
hsa-miR-106b 0.0028 6.8% (+) 1.79 (1.22, 2.63) 1.05 1.33
hsa-miR-150 0.0035 7.1% (+) 1.61 (1.17, 2.22) 1.05 1.32
hsa-miR-1 0.0104 9.0% (-) 1.52 (1.10, 2.09) 1.00 1.28
Table 19 and Table 20 shows the microRNAs that can be identified as being associated with the risk of clinical recurrence while adjusting for the clinical and pathology covariates of biopsy Gleason score, baseline PSA level, and clinical T-stage. The distributions of these covariates are shown in Figure 1. Fifteen (15) of the microRNAs identified in Table 15 are also present in Table 19, indicating that these microRNAs have predictive value for clinical recurrence that is independent of the Gleason score, baseline PSA, and clinical T-stage.
Two microRNAs assayed from primary Gleason pattern tumor tissue were found that had predictive value for death due to prostate cancer independent of Gleason score, baseline PSA, and clinical T-stage (Table 21).
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-30e-5p <0.0001 0.0% (-) 1.80 (1.42, 2.27) 1.23 1.53
hsa-miR-30a <0.0001 0.0% (-) 1.75 (1.40, 2.19) 1.22 1.51
hsa-miR-93 <0.0001 0.1% (+) 1.70 (1.32, 2.20) 1.19 1.44
hsa-miR-449a 0.0001 0.1% (+) 1.54 (1.25, 1.91) 1.17 1.39
hsa-miR-133a 0.0001 0.1% (-) 1.58 (1.25, 2.00) 1.17 1.39
hsa-miR-27a 0.0002 0.1% (+) 1.66 (1.28, 2.16) 1.17 1.41
hsa-miR-21 0.0003 0.2% (+) 1.58 (1.23, 2.02) 1.16 1.38
hsa-miR-182 0.0005 0.3% (+) 1.56 (1.22, 1.99) 1.15 1.37
hsa-miR-106b 0.0008 0.5% (+) 1.57 (1.21, 2.05) 1.15 1.36
hsa-miR-222 0.0028 1.1% (-) 1.39 (1.12, 1.73) 1.11 1.28
hsa-miR-103 0.0048 1.7% (+) 1.69 (1.17, 2.43) 1.13 1.32
hsa-miR-486-5p 0.0059 2.0% (-) 1.34 (1.09, 1.65) 1.09 1.25
hsa-miR-1 0.0083 2.7% (-) 1.29 (1.07,1.57) 1.07 1.23
hsa-miR-141 0.0088 2.8% (+) 1.43 (1.09, 1.87) 1.09 1.27
hsa-miR-200c 0.0116 3.4% (+) 1.39 (1.07, 1.79) 1.07 1.25
hsa-miR-145 0.0201 5.1% (-) 1.27 (1.03, 1.55) 1.05 1.20
hsa-miR-206 0.0329 7.2% (-) 1.40 (1.00, 1.91) 1.05 1.23
hsa-miR-29b 0.0476 9.4% (+) 1.30 (1.00, 1.69) 1.00 1.20
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-30a <0.0001 0.0% (-) 1.62 (1.32,1.99) 1.20 1.43
hsa-miR-30e-5p <0.0001 0.0% (-) 1.53 (1.27, 1.85) 1.19 1.39
hsa-miR-93 <0.0001 0.0% (+) 1.76 (1.37, 2.26) 1.20 1.45
hsa-miR-205 <0.0001 0.0% (-) 1.47 (1.23,1.74) 1.18 1.36
hsa-miR-449a 0.0001 0.1% (+) 1.62 (1.27, 2.07) 1.18 1.38
hsa-miR-106b 0.0003 0.2% (+) 1.65 (1.26,2.16) 1.17 1.36
hsa-miR-133a 0.0005 0.2% (-) 1.51 (1.20,1.90) 1.16 1.33
hsa-miR-1 0.0007 0.3% (-) 1.38 (1.15, 1.67) 1.13 1.28
hsa-miR-210 0.0045 1.2% (+) 1.35 (1.10, 1.67) 1.11 1.25
hsa-miR-182 0.0052 1.3% (+) 1.40 (1.10,1.77) 1.11 1.26
hsa-miR-425 0.0066 1.6% (+) 1.48 (1.12,1.96) 1.12 1.26
hsa-miR-155 0.0073 1.8% (-) 1.36 (1.09,1.70) 1.10 1.24
hsa-miR-21 0.0091 2.1% (+) 1.42 (1.09,1.84) 1.10 1.25
hsa-miR-222 0.0125 2.7% (-) 1.34 (1.06,1.69) 1.09 1.23
hsa-miR-27a 0.0132 2.8% (+) 1.40 (1.07,1.84) 1.09 1.23
0.0150 3. 0% (+) 1.37 (1.06,1.76) 1.09 1.23
hsa-miR-103 0.0180 3.4% (+) 1.45 (1.06,1.98) 1.09 1.23
hsa-miR-31 0.0252 4.3% (-) 1.27 (1.00,1.57) 1.07 1.19
hsa-miR-19b 0.0266 4.5% (-) 1.29 (1.00,1.63) 1.07 1.20
hsa-miR-99a 0.0310 5.0% (-) 1.26 (1.00,1.56) 1.06 1.18
hsa-miR-92a 0.0348 5.4% (+) 1.31 (1.00,1.69) 1.06 1.19
hsa-miR-146b-5p 0.0386 5.8% (-) 1.29 (1.00,1.65) 1.06 1.19
hsa-miR-145 0.0787 9.7% (-) 1.23 (1.00,1.55) 1.00 1.15
MicroRNA Absolute Standardized Hazard Ratio
Uncorrected Estimate 95% Confidence Interval Max. Lower Bound @10% FDR
hsa-miR-30e-5p 0.0001 2.9% (-) 1.97 (1.40, 2.78) 1.09 1.39
hsa-miR-30a 0.0002 3.3% (-) 1.90 (1.36, 2.65) 1.08 1.38
Accordingly, the normalized expression levels of hsa-miR-93; hsa-miR-106b; hsa-miR-21; hsa-miR-449a; hsa-miR-182; hsa-miR-27a; hsa-miR-103; hsa-miR-141; hsa-miR-92a; hsa-miR-22; hsa-miR-29b; hsa-miR-210; hsa-miR-331; hsa-miR-191; hsa-miR-425; and hsa-miR-200c are positively associated with an increased risk of recurrence; and hsa-miR-30e-5p; hsa-miR-133a; hsa-miR-30a; hsa-miR-222; hsa-miR-1; hsa-miR-145; hsa-miR-486-5p; hsa-miR-19b; hsa-miR-205; hsa-miR-31; hsa-miR-155; hsa-miR-206; hsa-miR-99a; and hsa-miR-146b-5p are negatively associated with an increased risk of recurrence.
Furthermore, the normalized expression levels of hsa-miR-106b; hsa-miR-21; hsa-miR-93; hsa-miR-331; hsa-miR-150; hsa-miR-27b; and hsa-miR-10a are positively associated with an increased risk of prostate cancer specific death; and the normalized expression levels of hsa-miR-30e-5p; hsa-miR-30a; hsa-miR-133a; hsa-miR-222; hsa-miR-1; hsa-miR-26a; and hsa-miR-152 are negatively associated with an increased risk of prostate cancer specific death.
Table 22 shows the number of microRNA-gene pairs that were grouped in each tier (Tiers 1-4) and the number and percentage of those that were predictive of clinical recurrence at a false discovery rate of 10%.
Tier Total Number of MicroRNA-Gene Pairs Number of Pairs Predictive of Clinical Recurrence at False Discovery Rate 10% (%)
Tier 1 80 46 (57.5%)
Tier 2 719 591 (82.2%)
Tier 3 3,850 2,792 (72.5%)
Tier 4 54,724 38,264 (69.9%)
TABLE B
microRNA Sequence SEQ ID NO
hsa-miR-1 UGGAAUGUAAAGAAGUAUGUAU 2629
hsa-miR-103 GCAGCAUUGUACAGGGCUAUGA 2630
hsa-miR-106b UAAAGUGCUGACAGUGCAGAU 2631
hsa-miR-10a UACCCUGUAGAUCCGAAUUUGUG 2632
hsa-miR-133a UUUGGUCCCCUUCAACCAGCUG 2633
hsa-miR-141 UAACACUGUCUGGUAAAGAUGG 2634
hsa-miR-145 GUCCAGUUUUCCCAGGAAUCCCU 2635
hsa-miR-146b-5p UGAGAACUGAAUUCCAUAGGCU 2636
hsa-miR-150 UCUCCCAACCCUUGUACCAGUG 2637
hsa-miR-152 UCAGUGCAUGACAGAACUUGG 2638
hsa-miR-155 UUAAUGCUAAUCGUGAUAGGGGU 2639
hsa-miR-182 UUUGGCAAUGGUAGAACUCACACU 2640
hsa-miR-191 CAACGGAAUCCCAAAAGCAGCUG 2641
hsa-miR-19b UGUAAACAUCCUCGACUGGAAG 2642
hsa-miR-200c UAAUACUGCCGGGUAAUGAUGGA 2643
hsa-miR-205 UCCUUCAUUCCACCGGAGUCUG 2644
hsa-miR-206 UGGAAUGUAAGGAAGUGUGUGG 2645
hsa-miR-21 UAGCUUAUCAGACUGAUGUUGA 2646
hsa-miR-210 CUGUGCGUGUGACAGCGGCUGA 2647
hsa-miR-22 AAGCUGCCAGUUGAAGAACUGU 2648
hsa-miR-222 AGCUACAUCUGGCUACUGGGU 2649
hsa-miR-26a UUCAAGUAAUCCAGGAUAGGCU 2650
hsa-miR-27a UUCACAGUGGCUAAGUUCCGC 2651
hsa-miR-27b UUCACAGUGGCUAAGUUCUGC 2652
hsa-miR-29b UAGCACCAUUUGAAAUCAGUGUU 2653
hsa-miR-30a CUUUCAGUCGGAUGUUUGCAGC 2654
hsa-miR-30e-5p CUUUCAGUCGGAUGUUUACAGC 2655
hsa-miR-31 AGGCAAGAUGCUGGCAUAGCU 2656
hsa-miR-331 GCCCCUGGGCCUAUCCUAGAA 2657
hsa-miR-425 AAUGACACGAUCACUCCCGUUGA 2658
hsa-miR-449a UGGCAGUGUAUUGUUAGCUGGU 2659
hsa-miR-486-5p UCCUGUACUGAGCUGCCCCGAG 2660
hsa-miR-92a UAUUGCACUUGUCCCGGCCUGU 2661
hsa-miR-93 CAAAGUGCUGUUCGUGCAGGUAG 2662
hsa-miR-99a AACCCGUAGAUCCGAUCUUGUG 2663

Claims (15)

  1. A method for determining a likelihood of cancer recurrence in a patient with prostate cancer, comprising:
    measuring the expression level of an RNA transcript of AZGP1 in a biological sample comprising prostate tissue obtained from the patient;
    predicting a likelihood of cancer recurrence for the patient;
    wherein an increased expression level of AZGP1 is negatively associated with an increased risk of recurrence.
  2. The method of claim 1, further comprising normalizing said expression to obtain a normalized expression level.
  3. The method of claim 2, wherein AZGP1 RNA expression level is normalized against RNA expression level of at least one reference gene selected from AAMP, ARF1, ATP5E, CLTC, GPS1, and PGK1.
  4. The method of any one of claims 1, 2, or 3, further comprising generating a report comprising the patient's likelihood of cancer recurrence.
  5. The method of any one of claims 1-4, wherein the likelihood of cancer recurrence is based on clinical recurrence-free interval (cRFI).
  6. The method of any one of claims 1-5, wherein the likelihood of cancer recurrence is based on biochemical recurrence-free interval (bRFI).
  7. The method of any one of claims 1-6, wherein the biological sample has a positive TMPRSS2 fusion status.
  8. The method of any one of claims 1-7, wherein the biological sample has a negative TMPRSS2 fusion status.
  9. The method of any one of claims 1-8, wherein the patient has early-stage prostate cancer.
  10. The method of any one of claims 1-9, wherein the biological sample comprises prostate tumor tissue with the primary Gleason pattern for said prostate tumor.
  11. The method of any one of claims 1-10, wherein the biological samples comprises prostate tumor tissue with the highest Gleason pattern for said prostate tumor.
  12. The method of any one of claims 1-10, wherein the biological sample is prostate tumor tissue.
  13. The method of any one of claims 1-8, wherein the biological sample is non-tumor prostate tissue.
  14. The method of any one of claims 1-13, further comprising determining a likelihood of upgrading or upstaging in the patient with prostate cancer, wherein an increased expression level of AZGP1 is negatively associated with an increased risk of upgrading or upstaging.
  15. The method of any one of claims 1-14, wherein the biological sample is a fixed, paraffin-embedded tissue sample.
HK42020005558.0A 2010-07-27 2020-04-08 Method for using gene expression to determine prognosis of prostate cancer HK40014991B (en)

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