DocumentCode :
652122
Title :
Predicting Readmission Risk with Institution Specific Prediction Models
Author :
Shipeng Yu ; Van Esbroeck, A. ; Farooq, Fahad ; Fung, Glenn ; Anand, Vishal ; Krishnapuram, Balaji
Author_Institution :
Siemens Healthcare, Malvern, PA, USA
fYear :
2013
fDate :
9-11 Sept. 2013
Firstpage :
415
Lastpage :
420
Abstract :
The ability to predict patient readmission risk is extremely valuable for hospitals, especially under the Hospital Readmission Reduction Program (HRRP) of the Center for Medicare and Medicaid Services (CMS) which went into effect starting October 1, 2012. There is a plethora of work in the literature that deals with developing readmission risk prediction models, but most of them do not have sufficient prediction accuracy to be deployed in a clinical setting, partly because different hospitals may have different characteristics in their patient populations. In this work we experimented with a generic framework for institution-specific readmission risk prediction, which takes patient data from a single institution and produces a statistical risk prediction model optimized for that particular institution and optionally condition specific. This provides great flexibility in model building, and is also able to provide institution-specific insights in its readmitted patient population. We showcase some initial results at three institutions for Heart Failure (HF), Acute Myocardial Infarction (AMI) and Pneumonia (PN) patients. The developed models yield better prediction accuracy than the ones present in the literature.
Keywords :
diseases; health care; hospitals; medical computing; pattern classification; regression analysis; risk analysis; support vector machines; AMI patients; CMS; Center for Medicare and Medicaid Services; Cox Regression; HF patients; HRRP; PN patients; SVM; acute myocardial infarction patients; classification approach; clinical setting; heart failure patients; hospital readmission reduction program; institution-specific readmission risk prediction models; patient data; patient readmission risk prediction models; pneumonia patients; statistical risk prediction model; Data models; Discharges (electric); Hospitals; Predictive models; Sociology; Statistics; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Healthcare Informatics (ICHI), 2013 IEEE International Conference on
Conference_Location :
Philadelphia, PA
Type :
conf
DOI :
10.1109/ICHI.2013.57
Filename :
6680504
Link To Document :
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