An equitable patient reallocation optimization and temporary facility placement model for maximizing critical care system resilience in disasters

Chia-Fu Liu, Ali Mostafavi
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引用次数: 0

Abstract

Medical infrastructure disruptions during disasters pose a major threat to critically ill patients with advanced chronic kidney disease or end-stage renal disease. There is a need to assess the potential threat to critical care facilities from hazardous events to improve patient access to dialysis treatment. We propose optimization models for patient reallocation and temporary medical facility placement to equitably improve critical care system resilience. We leverage human mobility data in Texas to assess patient access to critical care facilities and dialysis centers under the simulated hazard impacts. The optimization model was formulated as an integer programming and solved by COIN-OR Branch-and-Cut (CBC) solver. The results show (1) the capability of the optimization model in efficient patient reallocation to alleviate disrupted access to dialysis facilities; (2) the importance of large facilities in maintaining the system functionality. The critical care system, particularly the network of dialysis centers, is heavily reliant on a few larger facilities, characteristic of scale-free networks, making it susceptible to targeted disruption, such as capacity failures. (3) Considering equity in the optimization model formulation reduces access loss for vulnerable populations in the simulated scenarios. (4) The proposed temporary facilities placement could improve access for the vulnerable population, thereby improving the equity of access to critical care facilities in disaster. The proposed patient reallocation optimization model and temporary facilities placement offer a data-driven and analytics-based decision support tool tailored to the needs of healthcare organizations across private and public sectors to proactively mitigate the potential loss of access to critical care facilities during disasters.

一个公平的病人再分配优化和临时设施安置模型,以最大限度地提高灾害中重症监护系统的恢复能力
灾害期间医疗基础设施的中断对患有晚期慢性肾病或终末期肾病的危重患者构成重大威胁。有必要评估危险事件对重症监护设施的潜在威胁,以改善患者获得透析治疗的机会。我们提出了优化模型的病人再分配和临时医疗设施的安置,以公平地提高危重护理系统的弹性。我们利用德克萨斯州的人类流动性数据来评估在模拟危险影响下患者进入重症护理设施和透析中心的情况。将优化模型表述为整数规划,采用投币或分切(CBC)求解器求解。结果表明:(1)优化模型能够有效地重新分配患者,以缓解透析设施的中断;(2)大型设施在维护系统功能方面的重要性。重症监护系统,特别是透析中心网络,严重依赖于少数大型设施,这些设施具有无标度网络的特点,使其容易受到有针对性的中断,例如能力失效。(3)在优化模型的制定中考虑公平性,减少了模拟情景下弱势群体的获取损失。(4)建议的临时设施安置可以改善弱势群体的可及性,从而提高灾害中获得重症护理设施的公平性。拟议的患者再分配优化模型和临时设施安置提供了一种数据驱动和基于分析的决策支持工具,可根据私营和公共部门医疗保健组织的需求量身定制,以主动减轻灾害期间重症护理设施的潜在损失。
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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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