Modeling the interplay between disease spread, behaviors, and disease perception with a data-driven approach

IF 1.9 4区 数学 Q2 BIOLOGY
Alessandro De Gaetano , Alain Barrat , Daniela Paolotti
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引用次数: 0

Abstract

Individuals’ perceptions of disease influence their adherence to preventive measures, shaping the dynamics of disease spread. Despite extensive research on the interaction between disease spread, human behaviors, and interventions, few models have incorporated real-world behavioral data on disease perception, limiting their applicability. In this study, we propose an approach to integrate survey data on contact patterns and disease perception into a data-driven compartmental model, by hypothesizing that perceived severity is a determinant of behavioral change. We explore scenarios involving a competition between a COVID-19 wave and a vaccination campaign, where individuals’ behaviors vary based on their perceived severity of the disease. Results indicate that behavioral heterogeneities influenced by perceived severity affect epidemic dynamics, in a way depending on the interplay between two contrasting effects. On the one hand, longer adherence to protective measures by groups with high perceived severity provides greater protection to vulnerable individuals, while premature relaxation of behaviors by low perceived severity groups facilitates virus spread. Differences in behavior across different population groups may impact strongly the epidemiological curves, with a transition from a scenario with two successive epidemic peaks to one with only one (higher) peak and overall more numerous severe outcomes and deaths. The specific modeling choices for how perceived severity modulates behavior parameters do not strongly impact the model’s outcomes. Moreover, the study of several simplified models indicate that the observed phenomenology depends on the combination of data describing age-stratified contact patterns and of the feedback loop between disease perception and behavior, while it is robust with respect to the lack of precise information on the distribution of perceived severity in the population. Sensitivity analyses confirm the robustness of our findings, emphasizing the consistent impact of behavioral heterogeneities across various scenarios. Our study underscores the importance of integrating risk perception into infectious disease transmission models and gives hints on the type of data that further extensive data collection should target to enhance model accuracy and relevance.
用数据驱动法模拟疾病传播、行为和疾病感知之间的相互作用。
个人对疾病的认知会影响他们对预防措施的坚持,从而影响疾病传播的动态。尽管对疾病传播、人类行为和干预措施之间的相互作用进行了广泛的研究,但很少有模型纳入现实世界中关于疾病认知的行为数据,这限制了它们的适用性。在本研究中,我们提出了一种将接触模式和疾病感知调查数据整合到数据驱动的分区模型中的方法,假设感知的严重程度是行为变化的决定因素。我们探讨了 COVID-19 浪潮与疫苗接种运动之间的竞争情景,在这种情景下,个人行为会根据其对疾病严重性的感知而变化。结果表明,行为异质性受感知严重性的影响,会影响流行病的动态变化,其方式取决于两种截然不同的效应之间的相互作用。一方面,认为疾病严重程度高的人群会更长时间地坚持采取保护措施,为易感人群提供更多保护,而认为疾病严重程度低的人群过早放松行为则会促进病毒传播。不同人群的行为差异可能会对流行病学曲线产生强烈影响,从连续出现两个流行高峰的情景过渡到只有一个(较高)流行高峰的情景,而且总体上会出现更多的严重后果和死亡人数。对严重程度感知如何调节行为参数的具体建模选择并不会对模型结果产生强烈影响。此外,对几个简化模型的研究表明,观察到的现象取决于描述年龄分层接触模式的数据组合以及疾病感知与行为之间的反馈环路,同时,在缺乏关于人群中感知严重程度分布的精确信息的情况下,观察到的现象也是稳健的。敏感性分析证实了我们研究结果的稳健性,强调了行为异质性在各种情况下的一致影响。我们的研究强调了将风险认知纳入传染病传播模型的重要性,并提示了进一步广泛收集数据以提高模型准确性和相关性所应针对的数据类型。
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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来源期刊
Mathematical Biosciences
Mathematical Biosciences 生物-生物学
CiteScore
7.50
自引率
2.30%
发文量
67
审稿时长
18 days
期刊介绍: Mathematical Biosciences publishes work providing new concepts or new understanding of biological systems using mathematical models, or methodological articles likely to find application to multiple biological systems. Papers are expected to present a major research finding of broad significance for the biological sciences, or mathematical biology. Mathematical Biosciences welcomes original research articles, letters, reviews and perspectives.
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