Abstract

The dynamics of a spreading disease and individual behavioral changes are entangled processes that have to be addressed together in order to effectively manage an outbreak. Here, we relate individual risk perception to the adoption of a specific set of control measures, as obtained from an extensive large-scale survey performed via Facebook—involving more than 500,000 respondents from 64 countries—showing that there is a “one-to-one” relationship between perceived epidemic risk and compliance with a set of mitigation rules. We then develop a mathematical model for the spreading of a disease—sharing epidemiological features with COVID-19—that explicitly takes into account non-compliant individual behaviors and evaluates the impact of a population fraction of infectious risk-deniers on the epidemic dynamics. Our modeling study grounds on a wide set of structures, including both synthetic and more than 180 real-world contact patterns, to evaluate, in realistic scenarios, how network features typical of human interaction patterns impact the spread of a disease. In both synthetic and real contact patterns we find that epidemic spreading is hindered for decreasing population fractions of risk-denier individuals. From empirical contact patterns we demonstrate that connectivity heterogeneity and group structure significantly affect the peak of hospitalized population: higher modularity and heterogeneity of social contacts are linked to lower peaks at a fixed fraction of risk-denier individuals while, at the same time, such features increase the relative impact on hospitalizations with respect to the case where everyone correctly perceive the risks.

Highlights

  • Severe acute respiratory syndrome (SARS) in 2003, Middle East respiratory syndrome (MERS) in 2012 and COVID-19 in 2020 are examples of highly infectious diseases for which no pharmaceutical treatments such as drugs or vaccine were readily available at the time of their outbreaks

  • The spreading of a disease across a population is affected by the compliance with behavioral restrictions, enforced by governments to slow the diffusion of an epidemic

  • We asses that absence of risk awareness is associated with a set of harmful behaviors that can accelerate the diffusion of an epidemic

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Summary

Introduction

Severe acute respiratory syndrome (SARS) in 2003, Middle East respiratory syndrome (MERS) in 2012 and COVID-19 in 2020 are examples of highly infectious diseases for which no pharmaceutical treatments such as drugs or vaccine were readily available at the time of their outbreaks. In such cases, non-pharmaceutical interventions (NPIs) have been the most important resource to contain the epidemics and effective tools in the outbreak management [1,2,3,4,5,6]. The survey covers in total an effective sample size of over half a million subjects with a minimal effective sample size over a country of 500

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