一种减少门诊输液中心病人等待时间和加班的随机规划方法

J. Castaing, Amy E. M. Cohn, B. Denton, A. Weizer
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引用次数: 41

摘要

癌症化疗输注治疗在持续时间上具有显著且不可预测的变异性。如果管理不善,这种可变性会对手术产生负面影响,包括患者等待时间和工作人员加班时间。从预约调度优化的角度来看,这个问题具有独特的结构,因为单个服务器(护士)同时照顾多个客户(患者)。基于我们在密歇根大学综合癌症中心(UMCCC)的观察和与临床医生的合作,我们提出了一个两阶段的随机整数方案,用于在治疗时间不确定的情况下设计患者预约时间表。目标是最小化预期患者等待时间和治疗患者所需的预期总时间之间的权衡。我们表明,解决这个优化问题需要一个令人望而却步的计算时间,因此我们开发了一个启发式算法来寻找近似解。我们还提出了一种计算最优目标值下界的方法,用于分析算法的性能。计算实验基于现实世界的数据提出,并用于绘制管理的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A stochastic programming approach to reduce patient wait times and overtime in an outpatient infusion center
ABSTRACT Chemotherapy infusion treatments for cancer have significant and unpredictable variability in duration. This variability can have negative impact on operations – both patient wait time and staff overtime – if not managed well. From an appointment scheduling optimization perspective, this problem has a unique structure because a single server (a nurse) attends to multiple customers (patients) at one time. Based on our observations at the University of Michigan Comprehensive Cancer Center (UMCCC) and collaborations with clinicians there, we present a two-stage stochastic integer program for designing patient appointment schedules under uncertainty in treatment times. The objective is to minimize a trade-off between expected patient wait times and expected total time required to treat patients. We show that solving this optimization problem exactly requires a prohibitive computational time, so we develop a heuristic algorithm to find approximate solutions. We also present an approach to compute lower bounds on the optimal objective value that we use to analyze the performance of our algorithm. Computational experiments based on real-world data are presented and used to draw managerial insights.
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