Pham et al., 2005 - Google Patents
Support vector machines for prediction and analysis of beta and gamma-turns in proteinsPham et al., 2005
View PDF- Document ID
- 10756841416076789453
- Author
- Pham T
- Satou K
- Ho T
- Publication year
- Publication venue
- Journal of bioinformatics and computational biology
External Links
Snippet
Tight turns have long been recognized as one of the three important features of proteins, together with α-helix and β-sheet. Tight turns play an important role in globular proteins from both the structural and functional points of view. More than 90% tight turns are β-turns and …
- 108090000623 proteins and genes 0 title abstract description 63
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- G06F17/30867—Retrieval from the Internet, e.g. browsers by querying, e.g. search engines or meta-search engines, crawling techniques, push systems with filtering and personalisation
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