Biosecurity & Public Health, Los Alamos National Laboratory, United States.
Intelligence & Systems Analysis, Los Alamos National Laboratory, United States.
Methods. 2021 Nov;195:77-91. doi: 10.1016/j.ymeth.2021.03.008. Epub 2021 Mar 18.
The current COVID-19 pandemic contains an unprecedented amount of uncertainty and variability and thus, there is a critical need for understanding of the variation documented in the biological, policy, sociological, and infrastructure responses during an epidemic to support decisions at all levels. With the significant asymptomatic spread of the virus and without an immediate vaccine and pharmaceuticals available, the best feasible strategies for testing and diagnostics, contact tracing, and quarantine need to be optimized. With potentially high false negative test results, infected people would not be enrolled in contact-trace programs and thus, may not be quarantined. Similarly, without broad testing, asymptomatic people are not identified and quarantined. Interconnected system dynamics models can be used to optimize strategies for mitigations for decision support during a pandemic. We use a systems dynamics epidemiology model along with other interconnected system models within public health including hospitals, intensive care units, masks, contact tracing, social distancing, and a newly developed testing and diagnostics model to investigate the uncertainties with testing and to optimize strategies for detecting and diagnosing infected people. Using an orthogonal array Latin Hypercube experimental design, we ran 54 simulations each for two scenarios of 10% and 30% asymptomatic people, varying important inputs for testing and social distancing. Systems dynamics modeling, coupled with computer experimental design and statistical analysis can provide rapid and quantitative results for decision support. Our results show that widespread testing, contacting tracing and quarantine can curtail the pandemic through identifying asymptomatic people in the population.
当前的 COVID-19 大流行包含了前所未有的不确定性和可变性,因此,迫切需要了解在疫情期间记录的生物学、政策、社会学和基础设施应对措施的变化,以支持各级决策。由于病毒的大量无症状传播,且没有立即可用的疫苗和药物,因此需要优化测试和诊断、接触者追踪和隔离的最佳可行策略。由于检测结果可能存在高假阴性,感染者将不会被纳入接触者追踪计划,因此可能不会被隔离。同样,如果不进行广泛的检测,无症状者就无法被发现和隔离。相互关联的系统动力学模型可用于优化大流行期间的缓解策略,以支持决策。我们使用系统动力学流行病学模型以及公共卫生领域的其他相互关联的系统模型,包括医院、重症监护病房、口罩、接触者追踪、社交距离以及新开发的测试和诊断模型,以研究测试中的不确定性,并优化检测和诊断感染者的策略。使用正交数组拉丁超立方实验设计,我们针对 10%和 30%无症状人群的两种情况各运行了 54 次模拟,改变了测试和社交距离的重要输入。系统动力学建模,结合计算机实验设计和统计分析,可以为决策支持提供快速和定量的结果。我们的结果表明,广泛的测试、接触者追踪和隔离可以通过识别人群中的无症状者来遏制大流行。