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Scheduling Elective Surgeries with Markov Decision Process and Approximate Dynamic Programming

机译:利用马尔可夫决策过程和近似动态规划调度选修手工

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This paper deals with the dynamic advance scheduling of elective surgeries with multiple sources of uncertainties taken into consideration. A waiting list is established to facilitate the management of elective patients from different specialties. Each patient in the waiting list is assigned a dynamic priority which is dependent on the relative importance of specialty, urgency level, and actual waiting time. At the end of each week, the number and type of elective surgeries to be performed in the following week should be properly determined to minimize an integrated cost function, including the costs incurred by performing and delaying surgeries as well as the penalties for overuse of operating rooms and shortage of recovery beds. The studied problem is formulated as an infinite-horizon Markov decision process (MDP) model. Considering that conventional dynamic programming algorithms cannot efficiently solve MDP models for real-sized problems, we develop an approximate dynamic programming (ADP) approach that combines recursive least-squares temporal difference learning and mixed integer programming. Results of numerical experiments validate the efficiency and accuracy of the proposed ADP approach and indicate that this approach can be employed by hospital managers in the future to efficiently solve real-sized surgery scheduling problems.
机译:本文涉及采用多种不确定性的选修技术手术的动态提升调度。建立等待名单,以促进来自不同专业的选修患者的管理。等待列表中的每个患者被分配了一种动态优先级,这取决于特种,紧急级别和实际等待时间的相对重要性。在每周结束时,应当正确确定在接下来的一周内进行的选择性手术的数量和类型,以最大限度地减少综合成本职能,包括履行和延迟手术的费用以及过度运行的处罚房间和恢复床短缺。研究的问题被制定为无限地平线马尔可夫决策过程(MDP)模型。考虑到传统的动态编程算法无法有效地解决实际问题的MDP模型,我们开发了一个近似动态编程(ADP)方法,该方法结合了递归最小二乘时间差学习和混合整数编程。数值实验的结果验证了拟议的ADP方法的效率和准确性,并表明该方法可以通过未来医院管理人员雇用,以有效地解决实际的手术调度问题。

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