| Literature DB >> 35978312 |
Hanna Grzybowska1,2, R I Hickson3,4, Bishal Bhandari5, Chen Cai5, Michael Towke6, Benjamin Itzstein5, Raja Jurdak7, Jessica Liebig3, Kamran Najeebullah5, Adrian Plani5, Ahmad El Shoghri3, Dean Paini3.
Abstract
COVID-19 has had a substantial impact globally. It spreads readily, particularly in enclosed and crowded spaces, such as public transport carriages, yet there are limited studies on how this risk can be reduced. We developed a tool for exploring the potential impacts of mitigation strategies on public transport networks, called the Systems Analytics for Epidemiology in Transport (SAfE Transport). SAfE Transport combines an agent-based transit assignment model, a community-wide transmission model, and a transit disease spread model to support strategic and operational decision-making. For this simulated COVID-19 case study, the transit disease spread model incorporates both direct (person-to-person) and fomite (person-to-surface-to-person) transmission modes. We determine the probable impact of wearing face masks on trains over a seven day simulation horizon, showing substantial and statistically significant reductions in new cases when passenger mask wearing proportions are greater than 80%. The higher the level of mask coverage, the greater the reduction in the number of new infections. Also, the higher levels of mask coverage result in an earlier reduction in disease spread risk. These results can be used by decision makers to guide policy on face mask use for public transport networks.Entities:
Keywords: COVID 19; Disease spread model; Face masks; SARS-CoV-2; Transit assignment
Mesh:
Year: 2022 PMID: 35978312 PMCID: PMC9382008 DOI: 10.1186/s12879-022-07664-0
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.667
Fig. 1Total number of new infections after 7 days for the different mask wearing coverage scenarios Note: here the whiskers depict the 95% confidence intervals
Fig. 2Comparison of the evolution in time of the total number of infections between the baseline (blue) and scenarios with face masks (orange) (average and 95% confidence intervals): a baseline vs Mask_25, b baseline vs Mask_50, c baseline vs Mask_75, d baseline vs Mask_80, e baseline vs Mask_100.
Fig. 3Comparison of how the total number of infections is affected by the proportion of virus contributing to fomite transmission in the absence of a mask () (in blue). The lines depict the average, and the shaded region indicates the 95% confidence intervals based on 100+ simulations; a 80% mask coverage, b 100% mask coverage (in orange). Note: for and 0.3, there are 200 repeat simulations to capture the stochastic variation
Fig. 4The modelling framework, with more information on each component outlined in "Transist assignment engine"–"Seeding". The modular structure allows for flexibility in the designation of geographical location, pathogen of interest, and scenarios explored. The agent-based model yields detailed outputs to inform operational and strategic decisions