Rodriguez Jason, Price Owen, Jennings Rachel, Creel Amy, Eaton Sarah, Chesnutt Jennifer, McClellan Gene, Batni Sweta R
Applied Research Associates, Inc. (ARA), 4300 San Mateo Blvd NE, Suite A220, Albuquerque, NM 87110, USA.
Defense Threat Reduction Agency (DTRA), 8725 John J. Kingman Road #6201, Fort Belvoir, VA 22060, USA.
Viruses. 2022 Jul 19;14(7):1567. doi: 10.3390/v14071567.
From the beginning of the COVID-19 pandemic, researchers assessed the impact of the disease in terms of loss of life, medical load, economic damage, and other key metrics of resiliency and consequence mitigation; these studies sought to parametrize the critical components of a disease transmission model and the resulting analyses were informative but often lacked critical parameters or a discussion of parameter sensitivities. Using SARS-CoV-2 as a case study, we present a robust modeling framework that considers disease transmissibility from the source through transport and dispersion and infectivity. The framework is designed to work across a range of particle sizes and estimate the generation rate, environmental fate, deposited dose, and infection, allowing for end-to-end analysis that can be transitioned to individual and population health models. In this paper, we perform sensitivity analysis on the model framework to demonstrate how it can be used to advance and prioritize research efforts by highlighting critical parameters for further analyses.
从新冠疫情开始,研究人员就从生命损失、医疗负担、经济损害以及其他恢复力和后果缓解的关键指标等方面评估了该疾病的影响;这些研究试图对疾病传播模型的关键组成部分进行参数化,所得分析结果虽有参考价值,但往往缺乏关键参数或对参数敏感性的讨论。以严重急性呼吸综合征冠状病毒2(SARS-CoV-2)为例,我们提出了一个强大的建模框架,该框架考虑了从源头经传播和扩散的疾病传播能力以及传染性。该框架旨在适用于一系列粒径范围,并估计生成率、环境归宿、沉积剂量和感染情况,从而实现可转化为个体和群体健康模型的端到端分析。在本文中,我们对模型框架进行敏感性分析,以展示如何通过突出关键参数以供进一步分析,来利用该框架推动研究工作并确定其优先级。