论文标题
基于网络的数字接触跟踪和COVID-19大流行的测试策略的建模
Modeling of Network Based Digital Contact Tracing and Testing Strategies for the COVID-19 Pandemic
论文作者
论文摘要
有超过170万的共同死亡人数超过170万,确定预防Covid-19的有效措施是当务之急。我们开发了一个数学模型,以数字接触跟踪和测试策略模拟Covid-19大流行。该模型使用由180名学生的高分辨率联系数据集生成的现实世界社交网络。该模型结合了感染性变化,测试敏感性,孵育期和无症状病例。我们提出了一种扩展加权时间社交网络并在5000名学生的网络上进行模拟的方法。这项工作的目的是通过数字接触跟踪调查最佳的隔离规则和测试策略。结果表明,隔离直接接触的传统策略在没有足够测试的情况下将感染减少了不到20%。每2周进行周期性测试而不接触追踪,可将感染减少不到3%。讨论了各种策略,包括测试二级和三级接触和暴露前通知系统,这些通知系统充当社会雷达警告用户离Covid-19的距离。在这项工作中讨论的最有效的策略是结合了暴露前通知系统,并进行了测试二级和三级接触。当30%的人群使用该应用程序时,该策略将感染降低了18.3%,当50%的人群使用该应用程序时,45.2%的感染,当70%的人群使用该应用程序时,72.1%,当95%的人口使用该应用时,则为86.8%。当在5000名学生的扩展网络上模拟该模型时,结果与接触跟踪应用程序相似,将感染降低了79%。
With more than 1.7 million COVID-19 deaths, identifying effective measures to prevent COVID-19 is a top priority. We developed a mathematical model to simulate the COVID-19 pandemic with digital contact tracing and testing strategies. The model uses a real-world social network generated from a high-resolution contact data set of 180 students. This model incorporates infectivity variations, test sensitivities, incubation period, and asymptomatic cases. We present a method to extend the weighted temporal social network and present simulations on a network of 5000 students. The purpose of this work is to investigate optimal quarantine rules and testing strategies with digital contact tracing. The results show that the traditional strategy of quarantining direct contacts reduces infections by less than 20% without sufficient testing. Periodic testing every 2 weeks without contact tracing reduces infections by less than 3%. A variety of strategies are discussed including testing second and third degree contacts and the pre-exposure notification system, which acts as a social radar warning users how far they are from COVID-19. The most effective strategy discussed in this work was combined the pre-exposure notification system with testing second and third degree contacts. This strategy reduces infections by 18.3% when 30% of the population uses the app, 45.2% when 50% of the population uses the app, 72.1% when 70% of the population uses the app, and 86.8% when 95% of the population uses the app. When simulating the model on an extended network of 5000 students, the results are similar with the contact tracing app reducing infections by up to 79%.