Adaptive human behavior and delays in information availability autonomously modulate epidemic waves.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2025-05-27 eCollection Date: 2025-05-01 DOI:10.1093/pnasnexus/pgaf145
Md Shahriar Mahmud, Solomon Eshun, Baltazar Espinoza, Claus Kadelka
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Abstract

The recurrence of epidemic waves has been a hallmark of infectious disease outbreaks. Repeated surges in infections pose significant challenges to public health systems, yet the mechanisms that drive these waves remain insufficiently understood. Most prior models attribute epidemic waves to exogenous factors, such as transmission seasonality, viral mutations, or implementation of public health interventions. We show that epidemic waves can emerge autonomously from the feedback loop between infection dynamics and human behavior. Our results are based on a behavioral framework in which individuals continuously adjust their level of risk mitigation subject to their perceived risk of infection, which depends on information availability and disease severity. We show that delayed behavioral responses alone can lead to the emergence of multiple epidemic waves. The magnitude and frequency of these waves depend on the interplay between behavioral factors (delay, severity, and sensitivity of responses) and disease factors (transmission and recovery rates). Notably, if the response is either too prompt or excessively delayed, multiple waves cannot emerge. Our results further align with previous observations that adaptive human behavior can produce nonmonotonic final epidemic sizes, shaped by the trade-offs between various biological and behavioral factors-namely, risk sensitivity, response stringency, and disease generation time. Interestingly, we found that the minimal final epidemic size occurs on regimes that exhibit a few damped oscillations. Altogether, our results emphasize the importance of integrating social and operational factors into infectious disease models, in order to capture the joint evolution of adaptive behavioral responses and epidemic dynamics.

自适应的人类行为和信息可获得性的延迟自主地调节流行病波。
流行波的再次出现是传染病暴发的一个标志。感染的反复激增对公共卫生系统构成了重大挑战,但人们对推动这些浪潮的机制仍知之甚少。大多数先前的模型将流行波归因于外源性因素,如传播季节性、病毒突变或公共卫生干预措施的实施。我们表明,流行病波可以从感染动力学和人类行为之间的反馈循环中自主出现。我们的结果基于一个行为框架,在这个框架中,个体根据他们感知到的感染风险不断调整他们的风险缓解水平,这取决于信息的可用性和疾病的严重程度。我们表明,延迟的行为反应本身就可以导致多次流行波的出现。这些波的大小和频率取决于行为因素(反应的延迟、严重程度和敏感性)和疾病因素(传播率和恢复率)之间的相互作用。值得注意的是,如果响应过于迅速或过于延迟,则无法出现多个波。我们的结果进一步与先前的观察结果一致,即适应性人类行为可以产生非单调的最终流行病规模,由各种生物和行为因素之间的权衡决定,即风险敏感性、反应严格性和疾病产生时间。有趣的是,我们发现最小的最终流行规模发生在表现出一些阻尼振荡的制度上。总之,我们的研究结果强调了将社会和操作因素纳入传染病模型的重要性,以便捕捉适应性行为反应和流行病动态的共同演变。
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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CiteScore
1.80
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