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Expanded SEIRCQ Model Applied to CO VID-19 Epidemic Control Strategy Design and Medical Infrastructure Planning

机译:扩展SEIRCQ模型应用于CO VID-19疫情控制策略设计与医疗基础设施规划

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摘要

The rapid spread of COVID-19 has demanded a quick response from governments in terms of planning contingency efforts that include the imposition of social isolation measures and an unprecedented increase in the availability of medical services. Both courses of action have been shown to be critical to the success of epidemic control. Under this scenario, the timely adoption of effective strategies allows the outbreak to be decelerated at early stages. The objective of this study is to present an epidemic model specially tailored for the study of the COVID-19 epidemics, and the model is aimed at allowing the integrated study of epidemic control strategies and dimensioning of the required medical infrastructure. Along with the theoretical model, a case study with three prognostic scenarios is presented for the first wave of the epidemic in the city of Manaus, the capital city of Amazonas state, Brazil. Although the temporary collapse of the medical infrastructure is hardly avoidable in the state-of-affairs at this time (April 2020), the results show that there are feasible control strategies that could substantially reduce the overload within reasonable time. Furthermore, this study delivers and presents an intuitive, straightforward, free, and open-source online platform that allows the direct application of the model. The platform can hopefully provide better response time and clarity to the planning of contingency measures.
机译:COVID-19 的迅速传播要求各国政府在规划应急工作方面做出快速反应,包括实施社会隔离措施和空前增加医疗服务的可用性。事实证明,这两项行动对成功控制流行病至关重要。在这种情况下,及时采取有效策略可以在早期阶段减缓疫情。本研究的目的是提出一个专门为 COVID-19 流行病研究量身定制的流行病模型,该模型旨在允许对流行病控制策略和所需医疗基础设施的规模进行综合研究。除了理论模型外,还针对巴西亚马孙州首府马瑙斯市的第一波疫情提出了具有三种预后情景的案例研究。虽然目前(2020年4月)医疗基础设施的暂时崩溃几乎无法避免,但结果表明,有可行的控制策略可以在合理的时间内大幅减少超负荷。此外,本研究提供并展示了一个直观、直接、免费和开源的在线平台,允许直接应用该模型。该平台有望为应急措施的规划提供更好的响应时间和清晰度。

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