基于混合计算机模拟的COVID-19大流行医院床位规划和入院控制策略

Yiruo Lu, Yongpei Guan, Xiang Zhong, J. Fishe, T. Hogan
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引用次数: 7

摘要

卫生保健系统处于抗击COVID-19大流行的第一线。每家医院的紧急问题是需要多少普通病房和重症监护病房床位,此外,如何在需求激增期间优化分配这些资源,以有效挽救生命。然而,由于缺乏足够具体的规划准则,医院的大流行病防范工作受到了阻碍。在本文中,我们开发了一种混合计算机模拟方法,使用系统动态模型来预测COVID-19病例,并使用离散事件模拟来评估医院床位利用率并随后确定床位分配。提出了两种控制策略,即基于患者风险分析的类型依赖入院控制策略和早期降压策略,以降低重症监护患者群体的总体死亡率。使用佛罗里达州杰克逊维尔市佛罗里达健康大学的历史患者普查数据对模型进行了验证。讨论了如何将医院床位分配给低风险和高风险的到达患者,以达到降低死亡率的目标,同时帮助最大数量的患者康复。该决策支持工具针对特定医院环境量身定制,并可推广到其他医院,以应对大流行规划挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hospital Beds Planning and Admission Control Policies for COVID-19 Pandemic: A Hybrid Computer Simulation Approach
Health care systems are at the front line to fight the COVID-19 pandemic. Emergent questions for each hospital are how many general ward and intensive care unit beds are needed, and additionally, how to optimally allocate these resources during demand surge to effectively save lives. However, hospital pandemic preparedness has been hampered by a lack of sufficiently specific planning guidelines. In this paper, we developed a hybrid computer simulation approach, with a system dynamic model to predict COVID-19 cases and a discrete-event simulation to evaluate hospital bed utilization and subsequently determine bed allocations. Two control policies, the type-dependent admission control policy and the early step-down policy, based on patient risk profiling, were proposed to lower the overall death rate of the patient population in need of intensive care. The model was validated using historical patient census data from the University of Florida Health Jacksonville, Jacksonville, FL. The allocation of hospital beds to low-risk and high-risk arrival patients to achieve the goal of reducing the death rate, while helping a maximum number of patients to recover was discussed. This decision support tool is tailored to a given hospital setting of interest and is generalizable to other hospitals to tackle the pandemic planning challenge.
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