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紧跟养老院日常运营的潮起潮落。

Keeping pace with the ebbs and flows in daily nursing home operations.

机构信息

Department of Mathematics, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands.

KennisDC Logistiek, HAN University of Applied Sciences, Arnhem, The Netherlands.

出版信息

Health Care Manag Sci. 2019 Jun;22(2):350-363. doi: 10.1007/s10729-018-9442-x. Epub 2018 Mar 12.

Abstract

Nursing homes are challenged to develop staffing strategies that enable them to efficiently meet the healthcare demand of their residents. In this study, we investigate how demand for care and support fluctuates over time and during the course of a day, using demand data from three independent nursing home departments of a single Dutch nursing home. This demand data is used as input for an optimization model that provides optimal staffing patterns across the day. For the optimization we use a Lindley-type equation and techniques from stochastic optimization to formulate a Mixed-Integer Linear Programming (MILP) model. The impact of both the current and proposed staffing patterns, in terms of waiting time and service level, are investigated. The results show substantial improvements for all three departments both in terms of average waiting time as well as in 15 minutes service level. Especially waiting during rush hours is significantly reduced, whereas there is only a slight increase in waiting time during non-rush hours.

摘要

养老院面临着制定人员配备策略的挑战,以便能够有效地满足居民的医疗保健需求。在这项研究中,我们使用来自荷兰一家养老院三个独立部门的需求数据,研究了护理和支持需求随时间和一天中的时间变化而波动的情况。将该需求数据用作优化模型的输入,该模型在一天中提供最佳的人员配备模式。对于优化,我们使用林德利(Lindley)型方程和随机优化技术来制定混合整数线性规划(MILP)模型。根据等待时间和服务水平,研究了当前和拟议的人员配备模式的影响。结果表明,所有三个部门在平均等待时间以及 15 分钟服务水平方面都有了实质性的提高。尤其是高峰期的等待时间大大减少,而非高峰期的等待时间仅略有增加。

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