Vincent Bansaye, François Deslandes, Madeleine Kubasch, Elisabeta Vergu
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引用次数: 0
Abstract
Models with several levels of mixing (households, workplaces), as well as various corresponding formulations for , have been proposed in the literature. However, little attention has been paid to the impact of the distribution of the population size within social structures, effect that can help plan effective interventions. We focus on the influence on the model outcomes of teleworking strategies, consisting in reshaping the distribution of workplace sizes. We consider a stochastic SIR model with two levels of mixing, accounting for a uniformly mixing general population, each individual belonging also to a household and a workplace. The variance of the workplace size distribution appears to be a good proxy for the impact of this distribution on key outcomes of the epidemic, such as epidemic size and peak. In particular, our findings suggest that strategies where the proportion of individuals teleworking depends sublinearly on the size of the workplace outperform the strategy with linear dependence. Besides, one drawback of the model with multiple levels of mixing is its complexity, raising interest in a reduced model. We propose a homogeneously mixing SIR ODE-based model, whose infection rate is chosen as to observe the growth rate of the initial model. This reduced model yields a generally satisfying approximation of the epidemic. These results, robust to various changes in model structure, are very promising from the perspective of implementing effective strategies based on social distancing of specific contacts. Furthermore, they contribute to the effort of building relevant approximations of individual based models at intermediate scales.
文献中提出了多个混合层次(家庭、工作场所)的模型以及 R 0 的各种相应公式。然而,人们很少关注社会结构中人口规模分布的影响,而这种影响有助于规划有效的干预措施。我们将重点放在远程工作策略对模型结果的影响上,包括重塑工作场所规模的分布。我们考虑的是一个具有两级混合的随机 SIR 模型,即一个均匀混合的普通人群,每个人同时属于一个家庭和一个工作场所。工作场所规模分布的方差似乎可以很好地反映该分布对流行病主要结果(如流行病规模和高峰)的影响。特别是,我们的研究结果表明,远程工作的个人比例与工作场所规模呈亚线性关系的策略优于线性关系的策略。此外,多级混合模型的一个缺点是其复杂性,这引起了人们对简化模型的兴趣。我们提出了一种基于 SIR ODE 的同质混合模型,其感染率的选择是为了观察初始模型的增长率。这种简化模型可以得到一个基本令人满意的流行病近似值。这些结果对模型结构的各种变化都很稳健,从实施基于特定接触者社会距离的有效策略的角度来看,这些结果是非常有前景的。此外,它们还有助于在中间尺度上建立基于个体的相关近似模型。