GSTDTAP  > 资源环境科学
DOI10.1073/pnas.1910181117
Strong spatial embedding of social networks generates nonstandard epidemic dynamics independent of degree distribution and clustering
David J. Haw; Rachael Pung; Jonathan M. Read; Steven Riley
2020-09-08
发表期刊Proceedings of the National Academy of Sciences
出版年2020
英文摘要

Some directly transmitted human pathogens, such as influenza and measles, generate sustained exponential growth in incidence and have a high peak incidence consistent with the rapid depletion of susceptible individuals. Many do not. While a prolonged exponential phase typically arises in traditional disease-dynamic models, current quantitative descriptions of nonstandard epidemic profiles are either abstract, phenomenological, or rely on highly skewed offspring distributions in network models. Here, we create large socio-spatial networks to represent contact behavior using human population-density data, a previously developed fitting algorithm, and gravity-like mobility kernels. We define a basic reproductive number R0 for this system, analogous to that used for compartmental models. Controlling for R0, we then explore networks with a household–workplace structure in which between-household contacts can be formed with varying degrees of spatial correlation, determined by a single parameter from the gravity-like kernel. By varying this single parameter and simulating epidemic spread, we are able to identify how more frequent local movement can lead to strong spatial correlation and, thus, induce subexponential outbreak dynamics with lower, later epidemic peaks. Also, the ratio of peak height to final size was much smaller when movement was highly spatially correlated. We investigate the topological properties of our networks via a generalized clustering coefficient that extends beyond immediate neighborhoods, identifying very strong correlations between fourth-order clustering and nonstandard epidemic dynamics. Our results motivate the observation of both incidence and socio-spatial human behavior during epidemics that exhibit nonstandard incidence patterns.

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文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/294050
专题资源环境科学
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David J. Haw,Rachael Pung,Jonathan M. Read,et al. Strong spatial embedding of social networks generates nonstandard epidemic dynamics independent of degree distribution and clustering[J]. Proceedings of the National Academy of Sciences,2020.
APA David J. Haw,Rachael Pung,Jonathan M. Read,&Steven Riley.(2020).Strong spatial embedding of social networks generates nonstandard epidemic dynamics independent of degree distribution and clustering.Proceedings of the National Academy of Sciences.
MLA David J. Haw,et al."Strong spatial embedding of social networks generates nonstandard epidemic dynamics independent of degree distribution and clustering".Proceedings of the National Academy of Sciences (2020).
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