RIKEN Center for Computational Science, Kobe, 6500047, Japan.
Graduate School of System Informatics, Department of Computational Science, Kobe University, Kobe, Japan.
Sci Rep. 2022 Jul 1;12(1):11186. doi: 10.1038/s41598-022-14862-y.
The dose-response model has been widely used for quantifying the risk of infection of airborne diseases like COVID-19. The model has been used in the room-average analysis of infection risk and analysis using passive scalars as a proxy for aerosol transport. However, it has not been employed for risk estimation in numerical simulations of droplet dispersion. In this work, we develop a framework for the evaluation of the probability of infection in droplet dispersion simulations using the dose-response model. We introduce a version of the model that can incorporate the higher transmissibility of variant strains of SARS-CoV2 and the effect of vaccination in evaluating the probability of infection. Numerical simulations of droplet dispersion during speech are carried out to investigate the infection risk over space and time using the model. The advantage of droplet dispersion simulations for risk evaluation is demonstrated through the analysis of the effect of ambient wind, humidity on infection risk, and through a comparison with risk evaluation based on passive scalars as a proxy for aerosol transport.
剂量反应模型已被广泛用于量化 COVID-19 等空气传播疾病的感染风险。该模型已被用于室内平均感染风险分析和使用被动示踪剂作为气溶胶传输代理的分析。然而,它尚未用于液滴扩散的数值模拟中的风险估计。在这项工作中,我们开发了一个使用剂量反应模型评估液滴扩散模拟中感染概率的框架。我们引入了一种模型版本,该版本可以将 SARS-CoV2 变体的更高传染性和疫苗接种的效果纳入评估感染概率。使用该模型对语音期间的液滴扩散进行数值模拟,以研究感染风险在空间和时间上的分布。通过分析环境风、湿度对感染风险的影响,并通过与被动示踪剂作为气溶胶传输代理的风险评估进行比较,证明了液滴扩散模拟在风险评估方面的优势。