Center for Infectious Disease Dynamics, The Pennsylvania State University, University Park, Pennsylvania, United States of America.
Department of Biology, The Pennsylvania State University, University Park, Pennsylvania, United States of America.
PLoS Comput Biol. 2021 Oct 28;17(10):e1009518. doi: 10.1371/journal.pcbi.1009518. eCollection 2021 Oct.
Stay-at-home orders and shutdowns of non-essential businesses are powerful, but socially costly, tools to control the pandemic spread of SARS-CoV-2. Mass testing strategies, which rely on widely administered frequent and rapid diagnostics to identify and isolate infected individuals, could be a potentially less disruptive management strategy, particularly where vaccine access is limited. In this paper, we assess the extent to which mass testing and isolation strategies can reduce reliance on socially costly non-pharmaceutical interventions, such as distancing and shutdowns. We develop a multi-compartmental model of SARS-CoV-2 transmission incorporating both preventative non-pharmaceutical interventions (NPIs) and testing and isolation to evaluate their combined effect on public health outcomes. Our model is designed to be a policy-guiding tool that captures important realities of the testing system, including constraints on test administration and non-random testing allocation. We show how strategic changes in the characteristics of the testing system, including test administration, test delays, and test sensitivity, can reduce reliance on preventative NPIs without compromising public health outcomes in the future. The lowest NPI levels are possible only when many tests are administered and test delays are short, given limited immunity in the population. Reducing reliance on NPIs is highly dependent on the ability of a testing program to identify and isolate unreported, asymptomatic infections. Changes in NPIs, including the intensity of lockdowns and stay at home orders, should be coordinated with increases in testing to ensure epidemic control; otherwise small additional lifting of these NPIs can lead to dramatic increases in infections, hospitalizations and deaths. Importantly, our results can be used to guide ramp-up of testing capacity in outbreak settings, allow for the flexible design of combined interventions based on social context, and inform future cost-benefit analyses to identify efficient pandemic management strategies.
居家令和非必要企业关闭是控制 SARS-CoV-2 大流行传播的强有力但代价高昂的社会工具。大规模检测策略依赖于广泛实施的频繁和快速诊断,以识别和隔离感染者,这可能是一种潜在的破坏性较小的管理策略,特别是在疫苗获取有限的情况下。在本文中,我们评估了大规模检测和隔离策略在多大程度上可以减少对社会成本高昂的非药物干预措施(如隔离和关闭)的依赖。我们开发了一个 SARS-CoV-2 传播的多 compartment 模型,该模型结合了预防性非药物干预(NPIs)和检测与隔离,以评估它们对公共卫生结果的综合影响。我们的模型旨在成为一个指导政策的工具,它捕捉了检测系统的重要现实,包括对检测管理和非随机检测分配的限制。我们展示了检测系统特征的战略变化,包括检测管理、检测延迟和检测灵敏度,如何在不损害未来公共卫生结果的情况下,减少对预防性 NPIs 的依赖。考虑到人群中有限的免疫力,只有当进行大量检测并且检测延迟较短时,才能实现最低的 NPI 水平。减少对 NPIs 的依赖高度依赖于检测计划识别和隔离未报告的无症状感染的能力。NPIs 的变化,包括封锁和居家令的强度,应与检测的增加相协调,以确保疫情控制;否则,这些 NPIs 的微小增加可能导致感染、住院和死亡人数的急剧增加。重要的是,我们的结果可用于指导在疫情爆发期间提高检测能力,允许根据社会背景灵活设计联合干预措施,并为识别有效的大流行管理策略提供未来的成本效益分析。