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Rescheduling of elective patients upon the arrival of emergency patients

机译:急诊病人到达后重新安排择期病人

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摘要

In this study, a mixed integer linear programming (MILP) model is developed for rescheduling elective patients upon the arrival of emergency patients by considering two types of clinical units, namely operating rooms and post-anesthesia care units (PACUs). The model considers the overtime cost of the operating rooms and/or the PACUs, the cost of postponing or preponing elective surgeries, and the cost of turning down the emergency patients. The results indicate that a mainstream commercial solver can efficiently find an optimal solution in a particular scenario with light elective surgery load, but becomes very inefficient in searching optimal solutions in all other scenarios. As such, a genetic algorithm is developed to efficiently obtain the approximately optimal solutions in those scenarios that are difficult for the commercial solver. In the genetic algorithm, a novel chromosome structure is proposed and applied to represent the feasible solutions to the MILP model. It is shown that for the scenarios with heavy load of elective surgeries, the genetic algorithm can find approximate optimal solutions significantly faster than the commercial solver. In practice, the two solution methodologies should be used jointly to provide hospitals a solid tool for making sound and timely decisions in admitting emergency patients and rescheduling elective patients.
机译:在这项研究中,开发了一种混合整数线性规划(MILP)模型,用于通过考虑两种类型的临床单位,即手术室和麻醉后护理单位(PACU),在急诊病人到达时重新安排择期病人。该模型考虑了手术室和/或PACU的加班费用,推迟或提前进行的择期手术的费用以及拒绝急诊患者的费用。结果表明,主流的商业求解器可以在轻度选择性手术负荷下,在特定情况下有效地找到最佳解决方案,但在所有其他情况下寻找最佳解决方案的效率非常低。这样,开发了遗传算法以在商业求解器难以解决的那些情况下有效地获得近似最优的解。在遗传算法中,提出了一种新颖的染色体结构并将其应用于表示MILP模型的可行解。结果表明,对于选修手术繁重的情况,遗传算法可以比商业求解器更快地找到近似最优解。在实践中,应结合使用这两种解决方案方法,为医院提供可靠的工具,以便及时,合理地决定接纳急诊病人和重新安排择期病人。

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