Impact of pandemic fatigue on the spread of COVID-19: a mathematical modelling study
Disheng Tang, Wei Cao, Jiang Bian, Tie-Yan Liu, Zhifeng Gao, Shun, Zheng, Jue Liu

TL;DR
This study uses a mathematical model to quantify how pandemic fatigue contributed to the COVID-19 surge in the US, showing that reduced vigilance significantly increased case numbers.
Contribution
It provides the first scientific evidence quantifying the impact of pandemic fatigue on COVID-19 spread using a stochastic metapopulation model.
Findings
Pandemic fatigue accounts for 58% of cases.
Without fatigue, cases would decrease by 68%.
Most states respond sublinearly to cases.
Abstract
In late-2020, many countries around the world faced another surge in number of confirmed cases of COVID-19, including United Kingdom, Canada, Brazil, United States, etc., which resulted in a large nationwide and even worldwide wave. While there have been indications that precaution fatigue could be a key factor, no scientific evidence has been provided so far. We used a stochastic metapopulation model with a hierarchical structure and fitted the model to the positive cases in the US from the start of outbreak to the end of 2020. We incorporated non-pharmaceutical interventions (NPIs) into this model by assuming that the precaution strength grows with positive cases and studied two types of pandemic fatigue. We found that people in most states and in the whole US respond to the outbreak in a sublinear manner (with exponent k=0.5), while only three states (Massachusetts, New York and New…
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Taxonomy
TopicsCOVID-19 and Mental Health · COVID-19 epidemiological studies · Mental Health Research Topics
