Controlling COVID-19 transmission in universities poses challenges due to the complex social networks and potential for asymptomatic spread. We developed a stochastic transmission model based on realistic mixing patterns and evaluated alternative mitigation strategies. We predict, for plausible model parameters, that if asymptomatic cases are half as infectious as symptomatic cases, then 15% (98% Prediction Interval: 6–35%) of students could be infected during the first term without additional control measures. First year students are the main drivers of transmission with the highest infection rates, largely due to communal residences. In isolation, reducing face-to-face teaching is the most effective intervention considered, however layering multiple interventions could reduce infection rates by 75%. Fortnightly or more frequent mass testing is required to impact transmission and was not the most effective option considered. Our findings suggest that additional outbreak control measures should be considered for university settings. Reopening of universities to students following COVID-19 restrictions risks increased transmission due to high numbers of social contacts and the potential for asymptomatic transmission. Here, the authors use a mathematical model with social contact data to estimate the impacts of reopening a typical non-campus based university in the UK.
【저자키워드】 SARS-CoV-2, Epidemiology, Computational models, 【초록키워드】 COVID-19, prediction, risk, Transmission, Spread, Measures, Asymptomatic, outbreak, Impact, Isolation, Asymptomatic case, infection rate, parameters, predict, COVID-19 transmission, infection rates, complex, effective intervention, measure, symptomatic cases, reopening, social contact, stochastic transmission model, effective, controlling, highest, evaluated, required, reducing, reduce, mathematical, driver, multiple intervention, 【제목키워드】 Intervention, COVID-19 transmission,