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基于模拟的 COVID-19 期间学校重新开放策略评估:以巴西圣保罗为例。

Simulation-based evaluation of school reopening strategies during COVID-19: A case study of São Paulo, Brazil.

机构信息

Campus Paranavaí, Federal Institute of Parana (IFPR), Paranavaí, Brazil.

Informatics Institute, Federal University of Rio Grande do Sul (UFRGS), Porto Alegre, Brazil.

出版信息

Epidemiol Infect. 2021 Apr 30;149:e118. doi: 10.1017/S0950268821001059.

Abstract

During the coronavirus disease 2019 (COVID-19) pandemic, many countries opted for strict public health measures, including closing schools. After some time, they have started relaxing some of those restrictions. To avoid overwhelming health systems, predictions for the number of new COVID-19 cases need to be considered when choosing a school reopening strategy. Using a computer simulation based on a stochastic compartmental model that includes a heterogeneous and dynamic network, we analyse different strategies to reopen schools in the São Paulo Metropolitan Area, including one similar to the official reopening plan. Our model allows us to describe different types of relations between people, each type with a different infectiousness. Based on our simulations and model assumptions, our results indicate that reopening schools with all students at once has a big impact on the number of new COVID-19 cases, which could cause a collapse of the health system. On the other hand, our results also show that a controlled school reopening could possibly avoid the collapse of the health system, depending on how people follow sanitary measures. We estimate that postponing the schools' return date for after a vaccine becomes available may save tens of thousands of lives just in the São Paulo Metropolitan Area compared to a controlled reopening considering a worst-case scenario. We also discuss our model constraints and the uncertainty of its parameters.

摘要

在 2019 年冠状病毒病(COVID-19)大流行期间,许多国家选择采取严格的公共卫生措施,包括关闭学校。一段时间后,他们开始放宽其中一些限制。为避免医疗系统不堪重负,在选择学校重新开放策略时需要考虑对 COVID-19 新增病例数量的预测。我们使用基于包含异质和动态网络的随机隔室模型的计算机模拟来分析圣保罗大都市区重新开放学校的不同策略,包括类似于官方重新开放计划的策略。我们的模型允许我们描述人与人之间的不同类型的关系,每种关系的传染性都不同。根据我们的模拟和模型假设,我们的结果表明,让所有学生同时返校会对 COVID-19 新增病例数量产生重大影响,这可能导致医疗系统崩溃。另一方面,我们的结果还表明,根据人们遵守卫生措施的情况,控制学校重新开放可以避免医疗系统崩溃。我们估计,与最坏情况下考虑的受控重新开放相比,仅在圣保罗大都市区,推迟到疫苗可用后再让学校复课可能会挽救数万人的生命。我们还讨论了我们模型的限制和其参数的不确定性。

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