Clifton et al., 2011 - Google Patents
Identification of patient deterioration in vital-sign data using one-class support vector machinesClifton et al., 2011
View PDF- Document ID
- 8082524206410570774
- Author
- Clifton L
- Clifton D
- Watkinson P
- Tarassenko L
- Publication year
- Publication venue
- 2011 federated conference on computer science and information systems (FedCSIS)
External Links
Snippet
Adverse hospital patient outcomes due to deterioration are often preceded by periods of physiological deterioration that is evident in the vital signs, such as heart rate, respiratory rate, etc. Clinical practice currently relies on periodic, manual observation of vital signs …
- 230000035533 AUC 0 abstract description 20
Classifications
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- G06K9/6267—Classification techniques
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