Impact of opinion dynamics on recurrent pandemic waves: balancing risk aversion and peer pressure

Sheryl L. Chang, Quang Dang Nguyen, Carl J. E. Suster, Christina M. Jamerlan, Rebecca J. Rockett, Vitali Sintchenko, Tania C. Sorrell, Alexandra Martiniuk, Mikhail Prokopenko
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Abstract

Recurrent waves which are often observed during long pandemics typically form as a result of several interrelated dynamics including public health interventions, population mobility and behaviour, varying disease transmissibility due to pathogen mutations, and changes in host immunity due to recency of vaccination or previous infections. Complex nonlinear dependencies among these dynamics, including feedback between disease incidence and the opinion-driven adoption of social distancing behaviour, remain poorly understood, particularly in scenarios involving heterogeneous population, partial and waning immunity, and rapidly changing public opinions. This study addressed this challenge by proposing an opinion dynamics model that accounts for changes in social distancing behaviour (i.e., whether to adopt social distancing) by modelling both individual risk perception and peer pressure. The opinion dynamics model was integrated and validated within a large-scale agent-based COVID-19 pandemic simulation that modelled the spread of the Omicron variant of SARS-CoV-2 between December 2021 and June 2022 in Australia. Our study revealed that the fluctuating adoption of social distancing, shaped by individual risk aversion and social peer pressure from both household and workplace environments, may explain the observed pattern of recurrent waves of infections.
舆论动态对经常性流行病浪潮的影响:平衡风险规避和同伴压力
在长期大流行期间经常观察到的反复波通常是由几个相互关联的动态因素造成的,包括公共卫生干预、人口流动和行为、病原体突变导致的不同疾病传播性,以及接种疫苗的时间或先前感染导致的宿主免疫力变化。人们对这些动态变化之间复杂的非线性依赖关系,包括疾病发病率与公众意见驱动的社会疏远行为之间的反馈,仍然知之甚少,尤其是在涉及异质性人口、部分免疫力和免疫力减弱以及公众意见快速变化的情况下。为了应对这一挑战,本研究提出了一个舆论动态模型,该模型通过对个人风险认知和同伴压力进行建模,来解释社会疏远行为(即是否采取社会疏远)的变化。我们的研究表明,个人风险规避和来自家庭和工作场所的社会同伴压力形成的社会疏远行为的波动性,可以解释所观察到的反复出现的感染浪潮模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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