热点模型显示了基于位置的超传播如何加速和重塑流行病。

IF 3.8 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2025-09-22 eCollection Date: 2025-09-01 DOI:10.1093/pnasnexus/pgaf299
Brendan Wallace, Dobromir Dimitrov, Laurent Hébert-Dufresne, Andrew M Berdahl
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引用次数: 0

摘要

在许多疾病爆发期间,在所谓的“超级传播事件”中,少数受感染个体造成了不成比例的大量新感染。sse大致可分为四类:(i)由于感染的生物学差异,单个个体的传染性更强;或(ii)他们的社会联系程度更高;或者(iii)疾病在某些高风险设施中更容易传播,或者(iv)大型集会等“机会主义”情况。现有的建模方法可以很好地理解前两个方面,但不太适合描述后两个方面的动态。在这里,我们引入了一个简单的基于主体的模型,该模型捕捉了疾病在高风险地点或聚集点(我们称之为“热点”)更容易传播的基本特征。在我们的模型中,疾病传播,人们恢复,就像在标准的易感,感染,恢复模型中一样,但代理人也以访问疾病更容易传播的热点的个人概率为特征,为人群提供了额外的风险结构。我们使用这个模型来研究在不同的风险异质性假设下爆发的概率、峰值和最终规模是如何变化的。我们展示了冒险行为在人群中的某些特定分布如何加剧了这些影响。我们用分析结果补充我们的模拟,为我们所有的数值结果提供理论基础,并允许稳健的解释和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hotspot model shows how location-based superspreading accelerates and reshapes epidemics.

During outbreaks of many diseases, a small number of infected individuals are responsible for a disproportionately large number of new infections in what are called superspreading events (SSEs). SSEs broadly fall into four categories: (i) a single individual is more infectious due to biological differences in their infection or (ii) their greater degree of social connection; or (iii) the disease spreads more readily in certain high-risk facilities or (iv) "opportunistic" situations such as large gatherings. Existing modeling approaches work well to understand the first two of these but are not well suited to describe the dynamics in the latter two. Here, we introduce a simple agent-based model which captures the essential features of disease spreading more readily at high-risk locations or gatherings, which we call "hotspots." In our model, disease spreads and people recover as in a standard Susceptible, Infected, Recovered model, but agents are also characterized by individual probability of visiting the hotspot where disease spreads much more readily, providing an additional risk structure to the population. We use this model to investigate how an outbreak's probability, peak, and final size all vary under different risk heterogeneity assumptions. We show how some particular distributions of risk-taking behavior across the population heighten these effects. We complement our simulations with analytic results that provide theoretical bases for all of our numerical results and allow for robust interpretation and prediction.

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CiteScore
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