Publication | Closed Access
Predicting 30-Day Risk and Cost of "All-Cause" Hospital Readmissions
18
Citations
16
References
2016
Year
Machine LearningHospital MedicineData SciencePublic HealthHealth Services ResearchHealthcare Big DataPrediction ModellingHealth PolicyHealth Care AnalyticsPredictive AnalyticsHospitalization CostsHospital ReadmissionMedical Decision AnalysisHospital Readmission RatePatient SafetyHospital ReadmissionsHealth Care CostCost-sensitive Machine LearningMedicineHealth InformaticsEmergency Medicine
The hospital readmission rate of patients within 30 days after discharge is broadly accepted as a healthcare quality measure and cost driver in the United States. The ability to estimate hospitalization costs alongside 30 day risk-stratification for such readmissions provides additional benefit for accountable care, now a global issue and foundation for the U.S.~government mandate under the Affordable Care Act. Recent data mining efforts either predict healthcare costs or risk of hospital readmission, but not both. In this paper we present a dual predictive modeling effort that utilizes healthcare data to predict the risk and cost of any hospital readmission (``all-cause''). For this purpose, we explore machine learning algorithms to do accurate predictions of healthcare costs and risk of 30-day readmission.Results on risk prediction for ``all-cause'' readmission compared to the standardized readmission tool (LACE) are promising, and the proposed techniques for cost prediction consistently outperform baseline models and demonstrate substantially lower mean absolute error (MAE).
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