论文标题
测试数字如何可靠地揭示Covid-19地面真相和应用干预措施?
How Reliable are Test Numbers for Revealing the COVID-19 Ground Truth and Applying Interventions?
论文作者
论文摘要
在公共话语和政策制定中,COVID-19的确认案件的数量通常被用作替代地面真相Covid-19受感染案件的代理。但是,确认案件的数量取决于测试策略,重要的是要了解使用不同测试政策获得的积极案例的数量如何揭示未知的地面真相。我们在Python中开发了一个基于代理的仿真框架,该框架可以模拟各种测试策略以及基于锁定的干预措施。代理商之间的相互作用可以考虑各种社区和流动性模式。我们框架的一个显着特征是存在另一种类似于Covid-19的症状的另一种类似流感的疾病,这使我们能够在选择要测试的患者池时对噪声进行建模。我们使用普查数据来实例化印度班加罗尔市的模型,以分发代理商,并进行交通流动性数据,以建模长距离相互作用和混合。我们使用仿真框架比较三种测试策略的性能:随机症状测试(RST),触点跟踪(CT)和新的基于位置的测试策略(LBT)。我们观察到,如果有足够的有症状患者进行测试,那么即使在每日测试中,RST也可以非常紧密地捕获地面真相。但是,CT始终捕获更多的积极病例。有趣的是,我们的新LBT在操作上比CT少了,它的性能与CT相当。在另一个方向上,我们比较了这三个测试策略在实现锁定方面的疗效,并观察到CT最大程度地将地面真相曲线变平,紧随其后的是LBT,并且明显优于RST。
The number of confirmed cases of COVID-19 is often used as a proxy for the actual number of ground truth COVID-19 infected cases in both public discourse and policy making. However, the number of confirmed cases depends on the testing policy, and it is important to understand how the number of positive cases obtained using different testing policies reveals the unknown ground truth. We develop an agent-based simulation framework in Python that can simulate various testing policies as well as interventions such as lockdown based on them. The interaction between the agents can take into account various communities and mobility patterns. A distinguishing feature of our framework is the presence of another `flu'-like illness with symptoms similar to COVID-19, that allows us to model the noise in selecting the pool of patients to be tested. We instantiate our model for the city of Bengaluru in India, using census data to distribute agents geographically, and traffic flow mobility data to model long-distance interactions and mixing. We use the simulation framework to compare the performance of three testing policies: Random Symptomatic Testing (RST), Contact Tracing (CT), and a new Location Based Testing policy (LBT). We observe that if a sufficient fraction of symptomatic patients come out for testing, then RST can capture the ground truth quite closely even with very few daily tests. However, CT consistently captures more positive cases. Interestingly, our new LBT, which is operationally less intensive than CT, gives performance that is comparable with CT. In another direction, we compare the efficacy of these three testing policies in enabling lockdown, and observe that CT flattens the ground truth curve maximally, followed closely by LBT, and significantly better than RST.