Clinical decision support tools rooted in machine learning and optimization can provide significant value to healthcare providers, including through better management of intensive care units. In particular, it is important that the patient discharge task addresses the nuanced trade-off between decreasing a patient's length of stay (and associated hospitalization costs) and the risk of readmission or even death following the discharge decision. This work introduces an end-to-end general framework for capturing this trade-off to recommend optimal discharge timing decisions given a patient's electronic health records. A data-driven approach is used to derive a parsimonious, discrete state space representation that captures a patient's physiological condition. Based on this model and a given cost function, an infinite-horizon discounted Markov decision process is formulated and solved numerically to compute an optimal discharge policy, whose value is assessed using off-policy evaluation strategies. Extensive numerical experiments are performed to validate the proposed framework using real-life intensive care unit patient data.
翻译:植根于机器学习和优化的临床决策支持工具可以为保健提供者提供重要价值,包括通过更好地管理特护单位。特别是,病人出院任务必须解决降低病人停留时间(和相关住院费用)和在作出出院决定后重新入院甚至死亡风险之间的微妙权衡问题。这项工作引入了一个端到端总框架,根据病人的电子健康记录,记录这种权衡结果可以建议最佳出院时间决定。数据驱动方法被用来产生一个分散的分散国家空间代表,以捕捉病人的生理状况。根据这个模型和特定的成本功能,从数字上制定并解决了无限偏重的马尔科夫决定程序,以计算出最佳出出院政策的价值,利用非政策评价战略评估其价值。进行了广泛的数字实验,以便使用实际生活密集护理单位病人数据验证拟议的框架。