Abstract
We investigated two patient-specific and four population-wide machine
learning methods for predicting dire outcomes in community acquired
pneumonia (CAP) patients. Predicting dire outcomes in CAP patients can
significantly influence the decision about whether to admit the patient to
the hospital or to treat the patient at home. Population-wide methods induce
models that are trained to perform well on average on all future cases. In
contrast, patient-specific methods specifically induce a model for a
particular patient case. We trained the models on a set of 1601 patient
cases and evaluated them on a separate set of 686 cases. One
patient-specific method performed better than the population-wide methods
when evaluated within a clinically relevant range of the ROC curve. Our
study provides support for patient-specific methods being a promising
approach for making clinical predictions.
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Pradeep Ravikumar Last modified: Thu Oct 27 20:11:51 EDT 2005