Quantifying the shift in social contact patterns in response to non-pharmaceutical interventions

被引:0
|
作者
Zachary McCarthy
Yanyu Xiao
Francesca Scarabel
Biao Tang
Nicola Luigi Bragazzi
Kyeongah Nah
Jane M. Heffernan
Ali Asgary
V. Kumar Murty
Nicholas H. Ogden
Jianhong Wu
机构
[1] York University,Fields
[2] York University,CQAM Laboratory of Mathematics for Public Health (MfPH)
[3] University of Cincinnati,Laboratory for Industrial and Applied Mathematics
[4] University of Udine,Department of Mathematical Sciences
[5] York University,CDLab—Computational Dynamics Laboratory, Department of Mathematics, Computer Science and Physics
[6] York University,Modelling Infection and Immunity Lab, Centre for Disease Modelling, Department of Mathematics and Statistics
[7] University of Toronto,Disaster & Emergency Management, School of Administrative Studies & Advanced Disaster & Emergency Rapid
[8] The Fields Institute for Research in Mathematical Sciences,Response Simulation (ADERSIM)
[9] Public Health Agency of Canada,Department of Mathematics
来源
Journal of Mathematics in Industry | / 10卷
关键词
COVID-19; Intervention evaluation; Mathematical modelling; Transmission model; Heterogeneous mixing; Non-pharmaceutical interventions;
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摘要
Social contact mixing plays a critical role in influencing the transmission routes of infectious diseases. Moreover, quantifying social contact mixing patterns and their variations in a rapidly evolving pandemic intervened by changing public health measures is key for retroactive evaluation and proactive assessment of the effectiveness of different age- and setting-specific interventions. Contact mixing patterns have been used to inform COVID-19 pandemic public health decision-making; but a rigorously justified methodology to identify setting-specific contact mixing patterns and their variations in a rapidly developing pandemic, which can be informed by readily available data, is in great demand and has not yet been established. Here we fill in this critical gap by developing and utilizing a novel methodology, integrating social contact patterns derived from empirical data with a disease transmission model, that enables the usage of age-stratified incidence data to infer age-specific susceptibility, daily contact mixing patterns in workplace, household, school and community settings; and transmission acquired in these settings under different physical distancing measures. We demonstrated the utility of this methodology by performing an analysis of the COVID-19 epidemic in Ontario, Canada. We quantified the age- and setting (household, workplace, community, and school)-specific mixing patterns and their evolution during the escalation of public health interventions in Ontario, Canada. We estimated a reduction in the average individual contact rate from 12.27 to 6.58 contacts per day, with an increase in household contacts, following the implementation of control measures. We also estimated increasing trends by age in both the susceptibility to infection by SARS-CoV-2 and the proportion of symptomatic individuals diagnosed. Inferring the age- and setting-specific social contact mixing and key age-stratified epidemiological parameters, in the presence of evolving control measures, is critical to inform decision- and policy-making for the current COVID-19 pandemic.
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