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把握时机:在出院时平衡住院拥堵与再入院风险

Timing It Right: Balancing Inpatient Congestion vs. Readmission Risk at Discharge

Operations Research · 2021
被引 45 · 同刊同年前 9%
人大 AFT50UTD24ABS 4*

中文导读

研究医院何时出院患者以平衡住院拥堵和再入院风险,开发了一个基于马尔可夫决策过程的优化工具,并在合作医院实施验证。

Abstract

One of the most important decisions a hospitalist makes at the intersection of cost and quality of care is when to discharge a patient from the hospital. Keeping patients longer (shorter) increases (decreases) overcrowding and hospital costs but also decreases (increases) readmission risk. Here a long-run average cost optimization problem for determining on each day who and how many patients to discharge is developed. The authors combined structural properties of the model with an analytical solution for a special cost structure to approximately solve the high-dimensional Markov decision process. This transformed the originally intractable problem into a simple univariate optimization problem that can be solved efficiently yet allowed capture of time nonstationarity and fully heterogeneous inpatient populations, where each patient has a personalized risk trajectory. Moreover, the authors took one step beyond theory and implemented their discharge decision support tool in a partner hospital. For the tool to be properly parametrized and implementable, the authors developed a model to predict readmission risk as a function of length of stay that integrated several statistical methods in a novel manner. The resulting implementation was described as a showcase, demonstrating the tool’s applicability for integration with general hospital data systems and workflows.

医疗运营管理医院管理决策支持系统运筹学