通过数据驱动的资源共享缓解 COVID-19 大流行。

IF 2 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Tribology Transactions Pub Date : 2024-02-01 Epub Date: 2023-04-29 DOI:10.1002/nav.22117
Esmaeil Keyvanshokooh, Mohammad Fattahi, Kenneth A Freedberg, Pooyan Kazemian
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引用次数: 0

摘要

COVID-19 在当地社区的爆发会导致对机械呼吸机等稀缺资源的需求激增。为了应对这种需求激增的情况,许多医院(1)购买了大量机械呼吸机,(2)取消/推迟择期手术,以便为 COVID-19 患者保留治疗能力。这些措施给医院造成了巨大的经济负担,并使非 COVID-19 患者的治疗效果不佳。鉴于 COVID-19 在不同地区的传播速度不同,因此有机会共享便携式医疗资源,以较少的总资源缓解当地疫情引发的医疗能力短缺。本文开发了一种新颖的基于数据驱动的自适应鲁棒模拟优化(DARSO)方法,用于在不同州和地区优化分配和重新安置机械呼吸机。我们在方法论上的主要贡献在于采用了一种新的政策指导方法和一个高效的算法框架,缓解了当前鲁棒和随机模型的关键局限性,并使资源共享决策可以实时执行。我们与流行病学家和传染病医生合作,通过俄亥俄州和密歇根州地区间共享呼吸机的案例研究,证明了 DARSO 方法的概念。研究结果表明,与不共享策略(维持现状)相比,我们的最优策略可以满足俄亥俄州和密歇根州第一次大流行高峰期的呼吸机需求,减少 14% (有限共享)到 63% (完全共享)的呼吸机,从而使医院能够保留更多的选择性手术。此外,我们还证明,考虑到转运和新呼吸机的成本,与不共享相比,共享未使用的呼吸机(而不是购买新机器)可使支出降低 5%(有限共享)至 44%(完全共享)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mitigating the COVID-19 Pandemic through Data-Driven Resource Sharing.

COVID-19 outbreaks in local communities can result in a drastic surge in demand for scarce resources such as mechanical ventilators. To deal with such demand surges, many hospitals (1) purchased large quantities of mechanical ventilators, and (2) canceled/postponed elective procedures to preserve care capacity for COVID-19 patients. These measures resulted in a substantial financial burden to the hospitals and poor outcomes for non-COVID-19 patients. Given that COVID-19 transmits at different rates across various regions, there is an opportunity to share portable healthcare resources to mitigate capacity shortages triggered by local outbreaks with fewer total resources. This paper develops a novel data-driven adaptive robust simulation-based optimization (DARSO) methodology for optimal allocation and relocation of mechanical ventilators over different states and regions. Our main methodological contributions lie in a new policy-guided approach and an efficient algorithmic framework that mitigates critical limitations of current robust and stochastic models and make resource-sharing decisions implementable in real-time. In collaboration with epidemiologists and infectious disease doctors, we give proof of concept for the DARSO methodology through a case study of sharing ventilators among regions in Ohio and Michigan. The results suggest that our optimal policy could satisfy ventilator demand during the first pandemic's peak in Ohio and Michigan with 14% (limited sharing) to 63% (full sharing) fewer ventilators compared to a no sharing strategy (status quo), thereby allowing hospitals to preserve more elective procedures. Furthermore, we demonstrate that sharing unused ventilators (rather than purchasing new machines) can result in 5% (limited sharing) to 44% (full sharing) lower expenditure, compared to no sharing, considering the transshipment and new ventilator costs.

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来源期刊
Tribology Transactions
Tribology Transactions 工程技术-工程:机械
CiteScore
3.90
自引率
4.80%
发文量
82
审稿时长
4 months
期刊介绍: Tribology Transactions contains experimental and theoretical papers on friction, wear, lubricants, lubrication, materials, machines and moving components, from the macro- to the nano-scale. The papers will be of interest to academic, industrial and government researchers and technologists working in many fields, including: Aerospace, Agriculture & Forest, Appliances, Automotive, Bearings, Biomedical Devices, Condition Monitoring, Engines, Gears, Industrial Engineering, Lubricants, Lubricant Additives, Magnetic Data Storage, Manufacturing, Marine, Materials, MEMs and NEMs, Mining, Power Generation, Metalworking Fluids, Seals, Surface Engineering and Testing and Analysis. All submitted manuscripts are subject to initial appraisal by the Editor-in-Chief and, if found suitable for further consideration, are submitted for peer review by independent, anonymous expert referees. All peer review in single blind and submission is online via ScholarOne Manuscripts.
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