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The impact of social interventions on COVID-19 spreading based on multilayer commuter networks

  • Lang Zeng
  • , Yushu Chen
  • , Yiwen Liu
  • , Ming Tang*
  • , Ying Liu
  • , Zhen Jin
  • , Younghae Do
  • , E. Pelinovsky
  • , M. Kirillin
  • , E. Macau
  • *此作品的通讯作者
  • East China Normal University
  • Kyungpook National University
  • Southwest Petroleum University China
  • Shanxi University
  • Shanxi Key Laboratory of Mathematical Techniques and Big Data Analysis on Disease Control and Prevention
  • Higher School of Economics
  • Institute of Applied Physics of the Russian Academy of Sciences
  • Universidade Federal de São Paulo

科研成果: 期刊稿件文章同行评审

摘要

From March to June 2022, Shanghai was struck by a new coronavirus variant, Omicron, resulting in the infected cases of at least 600,000 people. Despite implementing a strict containment policy of city-wide silence (i.e., residents were not allowed to go out unless necessary), the outbreak cannot be effectively prevented within a short period of time. A significant academic and practical question is: how could we prevent and control outbreak of COVID-19 in large, densely populated cities like Shanghai? It is necessary to develop a rational epidemic spreading model for large cities, in order to accurately predict the trend of disease and quantitatively assess the impact of non-pharmaceutical interventions. In this paper, a multilayer commuter metapopulation network model is constructed to capture commuting flows and the size of epidemic outbreak during commuting between districts. The model accurately predicts epidemic spreading in each district of Shanghai. Assuming strict city-wide lockdowns, with each district locked down and limited inter-district commuting as social zones, simulations demonstrate significant suppression of outbreaks due to social-level interventions. For example, a 1-fold increase in PCR (Polymerase Chain Reaction) testing efficiency reduces the size of epidemic outbreak by approximately 70%. Larger districts require stricter controls to prevent exponential growth. Lockdowns effectively prevent epidemic outbreak at low disease rates but less so at high rates. Liberalized policies lead to varied outbreak trends, with economically developed regions peaking earlier due to higher population densities. This study provides a comprehensive framework for quantitatively evaluating the impact of social and regional controls on urban epidemics.

源语言英语
文章编号115160
期刊Chaos, Solitons and Fractals
185
DOI
出版状态已出版 - 8月 2024

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