Where to locate COVID-19 mass vaccination facilities?

IF 1.9 4区 管理学 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Naval Research Logistics Pub Date : 2022-03-01 Epub Date: 2021-06-11 DOI:10.1002/nav.22007
Dimitris Bertsimas, Vassilis Digalakis, Alexander Jacquillat, Michael Lingzhi Li, Alessandro Previero
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引用次数: 0

Abstract

The outbreak of COVID-19 led to a record-breaking race to develop a vaccine. However, the limited vaccine capacity creates another massive challenge: how to distribute vaccines to mitigate the near-end impact of the pandemic? In the United States in particular, the new Biden administration is launching mass vaccination sites across the country, raising the obvious question of where to locate these clinics to maximize the effectiveness of the vaccination campaign. This paper tackles this question with a novel data-driven approach to optimize COVID-19 vaccine distribution. We first augment a state-of-the-art epidemiological model, called DELPHI, to capture the effects of vaccinations and the variability in mortality rates across age groups. We then integrate this predictive model into a prescriptive model to optimize the location of vaccination sites and subsequent vaccine allocation. The model is formulated as a bilinear, nonconvex optimization model. To solve it, we propose a coordinate descent algorithm that iterates between optimizing vaccine distribution and simulating the dynamics of the pandemic. As compared to benchmarks based on demographic and epidemiological information, the proposed optimization approach increases the effectiveness of the vaccination campaign by an estimated 20%, saving an extra 4000 extra lives in the United States over a 3-month period. The proposed solution achieves critical fairness objectives-by reducing the death toll of the pandemic in several states without hurting others-and is highly robust to uncertainties and forecast errors-by achieving similar benefits under a vast range of perturbations.

新冠肺炎大规模疫苗接种设施在哪里?
2019冠状病毒病的爆发引发了一场破纪录的疫苗研发竞赛。然而,有限的疫苗能力带来了另一个巨大的挑战:如何分发疫苗来减轻疫情的近期影响?特别是在美国,拜登新政府正在全国各地启动大规模疫苗接种点,这就提出了一个明显的问题,即将这些诊所设在哪里,以最大限度地提高疫苗接种运动的有效性。本文通过一种新的数据驱动方法来解决这个问题,以优化2019冠状病毒病疫苗的分发。我们首先增强了一个称为DELPHI的最先进的流行病学模型,以捕捉疫苗接种的影响和不同年龄组死亡率的可变性。然后,我们将这个预测模型集成到一个规定模型中,以优化疫苗接种点的位置和随后的疫苗分配。该模型被公式化为双线性非凸优化模型。为了解决这个问题,我们提出了一种坐标下降算法,该算法在优化疫苗分配和模拟疫情动态之间迭代。与基于人口统计和流行病学信息的基准相比,拟议的优化方法将疫苗接种活动的有效性提高了约20%,在3个月的时间里,在美国多挽救了4000人的生命。所提出的解决方案通过在不伤害其他州的情况下减少几个州的疫情死亡人数,实现了关键的公平目标,并且对不确定性和预测误差具有很强的鲁棒性,在各种扰动下实现了类似的效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Naval Research Logistics
Naval Research Logistics 管理科学-运筹学与管理科学
CiteScore
4.20
自引率
4.30%
发文量
47
审稿时长
8 months
期刊介绍: Submissions that are most appropriate for NRL are papers addressing modeling and analysis of problems motivated by real-world applications; major methodological advances in operations research and applied statistics; and expository or survey pieces of lasting value. Areas represented include (but are not limited to) probability, statistics, simulation, optimization, game theory, quality, scheduling, reliability, maintenance, supply chain, decision analysis, and combat models. Special issues devoted to a single topic are published occasionally, and proposals for special issues are welcomed by the Editorial Board.
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