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Multi-View Deep Learning Framework for Predicting Patient Expenditure in Healthcare

Xianlong Zeng, Simon Lin, Chang Liu

2021IEEE Open Journal of the Computer Society31 citationsDOIOpen Access PDF

Abstract

Accurately predicting patient expenditure in healthcare is an important task with many applications such as provider profiling, accountable care management, and capitated medical payment adjustment. Existing approaches mainly rely on manually designed features and linear regression-based models, which require massive medical domain knowledge and show limited predictive performance. This paper proposes a multi-view deep learning framework to predict future healthcare expenditure at the individual level based on historical claims data. Our multi-view approach can effectively model the heterogeneous information, including patient demographic features, medical codes, drug usages, and facility utilization. We conducted expenditure forecasting tasks on a real-world pediatric dataset that contains more than 450,000 patients. The empirical results show that our proposed method outperforms all baselines for predicting medical expenditure. These findings help toward better preventive care and accountable care in the healthcare domain.

Topics & Concepts

Health careComputer scienceProfiling (computer programming)Task (project management)Deep learningDomain (mathematical analysis)PaymentArtificial intelligenceMachine learningData miningMathematicsMathematical analysisManagementEconomic growthWorld Wide WebEconomicsOperating systemMachine Learning in HealthcareChronic Disease Management StrategiesHealthcare Policy and Management
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