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A network-based model to explore the role of testing in the epidemiological control of the COVID-19 pandemic

机译:基于网络的模型,探讨了测试在Covid-19流行病的流行病学控制中的作用

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Testing is one of the most effective means to manage the COVID-19 pandemic. However, there is an upper bound on daily testing volume because of limited healthcare staff and working hours, as well as different testing methods, such as random testing and contact-tracking testing. In this study, a network-based epidemic transmission model combined with a testing mechanism was proposed to study the role of testing in epidemic control. The aim of this study was to determine how testing affects the spread of epidemics and the daily testing volume needed to control infectious diseases. We simulated the epidemic spread process on complex networks and introduced testing preferences to describe different testing strategies. Different networks were generated to represent social contact between individuals. An extended susceptible-exposed-infected-recovered (SEIR) epidemic model was adopted to simulate the spread of epidemics in these networks. The model establishes a testing preference of between 0 and 1; the larger the testing preference, the higher the testing priority for people in close contact with confirmed cases. The numerical simulations revealed that the higher the priority for testing individuals in close contact with confirmed cases, the smaller the infection scale. In addition, the infection peak decreased with an increase in daily testing volume and increased as the testing start time was delayed. We also discovered that when testing and other measures were adopted, the daily testing volume required to keep the infection scale below 5% was reduced by more than 40% even if other measures only reduced individuals’ infection probability by 10%. The proposed model was validated using COVID-19 testing data. Although testing could effectively inhibit the spread of infectious diseases and epidemics, our results indicated that it requires a huge daily testing volume. Thus, it is highly recommended that testing be adopted in combination with measures such as wearing masks and social distancing to better manage infectious diseases. Our research contributes to understanding the role of testing in epidemic control and provides useful suggestions for the government and individuals in responding to epidemics.
机译:测试是管理Covid-19大流行的最有效手段之一。但是,由于医疗保健人员和工作时间有限,以及不同的测试方法,以及随机测试和接触跟踪测试等不同的测试方法,有一个上限。在本研究中,提出了一种基于网络的疫动传动模型与测试机制相结合,以研究测试在疫情控制中的作用。本研究的目的是确定测试如何影响流行病的传播和控制传染病所需的日常检测量。我们模拟了复杂网络上的疫情传播过程,并引入了描述不同测试策略的测试偏好。生成不同的网络以代表个人之间的社交联系。采用扩展的易感暴露感染恢复(SEIR)疫情模型来模拟这些网络中的流行病的传播。该模型建立了0到1之间的测试偏好;测试偏好越大,与确诊病例密切接触的人的测试优先级越高。数值模拟表明,在与确诊病例密切接触的情况下测试个体的优先级越高,感染量表越小。此外,感染峰随着日常检测体积的增加而降低,随着测试开始时间延迟而增加。我们还发现,当采用测试和其他措施时,即使其他措施仅减少10%,也减少了低于5%的感染量表所需的日常检测量超过40%。使用Covid-19测试数据验证所提出的模型。虽然测试可以有效地抑制传染病和流行病的传播,但我们的结果表明它需要巨大的日常测试量。因此,强烈建议使用测试与佩戴面具和社会疏散的措施相结合,以更好地管理传染病。我们的研究有助于了解测试在疫情控制中的作用,为政府和个人提供反应流行病的有用建议。

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