论文标题

通过突变在多层网络上传播过程

Spreading Processes with Mutations over Multi-layer Networks

论文作者

Sood, Mansi, Sridhar, Anirudh, Eletreby, Rashad, Wu, Chai Wah, Levin, Simon A., Poor, H. Vincent, Yagan, Osman

论文摘要

新型传染病爆发期间的一项关键科学挑战是预测在限制人口相互作用的不同对策下流行病的过程如何变化。大多数流行病学模型不考虑突变和异质性在接触事件类型中的作用。但是,病原体具有响应不断变化的环境的能力,尤其是由于人口对现有菌株的免疫力的增加而引起的,而新病原体菌株的出现则构成了对公共卫生的持续威胁。此外,鉴于不同聚集环境(例如学校和办公室)的传播风险不同,可能需要采用不同的缓解策略来控制感染的传播。我们通过同时考虑i)病原体中突变的途径来分析多层多应变模型,导致新病原体菌株的出现,ii)在不同聚集环境中的不同传播风险(以网络层为模型)。假设菌株之间完全的交叉免疫力,即,从任何感染中恢复都可以防止其他任何其他感染(这是需要放松的假设以应对Covid-19或流感),我们为拟议的多层多层多晶体框架提供了关键的流行病学参数。我们证明,减少基于网络的模型,这些模型在应变或网络层中打折异质性可能会导致爆发过程中的预测不正确。此外,我们的结果强调,应评估有关不同接触网络层(例如,学校关闭或工作中的政策)的施加/提升缓解措施的影响,应与它们对新病原体型出现的可能性的影响有关。

A key scientific challenge during the outbreak of novel infectious diseases is to predict how the course of the epidemic changes under different countermeasures that limit interaction in the population. Most epidemiological models do not consider the role of mutations and heterogeneity in the type of contact events. However, pathogens have the capacity to mutate in response to changing environments, especially caused by the increase in population immunity to existing strains and the emergence of new pathogen strains poses a continued threat to public health. Further, in light of differing transmission risks in different congregate settings (e.g., schools and offices), different mitigation strategies may need to be adopted to control the spread of infection. We analyze a multi-layer multi-strain model by simultaneously accounting for i) pathways for mutations in the pathogen leading to the emergence of new pathogen strains, and ii) differing transmission risks in different congregate settings, modeled as network-layers. Assuming complete cross-immunity among strains, namely, recovery from any infection prevents infection with any other (an assumption that will need to be relaxed to deal with COVID-19 or influenza), we derive the key epidemiological parameters for the proposed multi-layer multi-strain framework. We demonstrate that reductions to existing network-based models that discount heterogeneity in either the strain or the network layers can lead to incorrect predictions for the course of the outbreak. In addition, our results highlight that the impact of imposing/lifting mitigation measures concerning different contact network layers (e.g., school closures or work-from-home policies) should be evaluated in connection with their effect on the likelihood of the emergence of new pathogen strains.

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