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Health behavior homophily can mitigate the spread of infectious diseases in small-world networks

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  • Nunner, Hendrik
  • Buskens, Vincent
  • Teslya, Alexandra
  • Kretzschmar, Mirjam

Abstract

Research has repeatedly shown that the spread of infectious diseases is influenced by properties of our social networks. Small-world like structures with densely connected clusters bridged by only a few connections, for example, are not only known to diminish disease spread, but also to increase the chance for a disease to spread to any part of the network. Clusters composed of individuals who show similar reactions to avoid infections (health behavior homophily), however, might change the effect of such clusters on disease spread. To study the combined effect of health behavior homophily and small-world network properties on disease spread, we extend a previously developed ego-centered network formation model and agent-based simulation. Based on more than 80,000 simulated epidemics on generated networks varying in clustering and homophily, as well as diseases varying in severity and infectivity, we predict that the existence of health behavior homophilous clusters reduce the number of infections, lower peak size, and flatten the curve of active cases. That is because agents perceiving higher risks of infections can protect their cluster from infections comparatively quickly by severing only a few bridging ties. A comparison with epidemics in static network structures shows that the incapability to act upon risk perceptions and the low connectivity between clusters in static networks lead to diametrically opposed effects with comparatively large epidemics and prolonged epidemics. These finding suggest that micro-level behavioral adaptation to health risks mitigate macro-level disease spread to an extent that is not captured by static network models of disease spread. Furthermore, this mechanism can be used to design information campaigns targeting proxies for groups with lower risk perception.

Suggested Citation

  • Nunner, Hendrik & Buskens, Vincent & Teslya, Alexandra & Kretzschmar, Mirjam, 2022. "Health behavior homophily can mitigate the spread of infectious diseases in small-world networks," Social Science & Medicine, Elsevier, vol. 312(C).
  • Handle: RePEc:eee:socmed:v:312:y:2022:i:c:s0277953622006566
    DOI: 10.1016/j.socscimed.2022.115350
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    References listed on IDEAS

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    1. Mark Tuson & Paul Harper & Daniel Gartner & Doris Behrens, 2023. "Understanding the Impact of Social Networks on the Spread of Obesity," IJERPH, MDPI, vol. 20(15), pages 1-22, July.

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