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Second look at the spread of epidemics on networks

机译:二看网络上流行病的传播

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摘要

In an important paper, M.E.J. Newman claimed that a general network-based stochastic Susceptible-Infectious-Removed (SIR) epidemic model is isomorphic to a bond percolation model, where the bonds are the edges of the contact network and the bond occupation probability is equal to the marginal probability of transmission from an infected node to a susceptible neighbor. In this paper, we show that this isomorphism is incorrect and define a semi-directed random network we call the epidemic percolation network that is exactly isomorphic to the SIR epidemic model in any finite population. In the limit of a large population, (i) the distribution of (self-limited) outbreak sizes is identical to the size distribution of (small) out-components, (ii) the epidemic threshold corresponds to the phase transition where a giant strongly-connected component appears, (iii) the probability of a large epidemic is equal to the probability that an initial infection occurs in the giant in-component, and (iv) the relative final size of an epidemic is equal to the proportion of the network contained in the giant out-component. For the SIR model considered by Newman, we show that the epidemic percolation network predicts the same mean outbreak size below the epidemic threshold, the same epidemic threshold, and the same final size of an epidemic as the bond percolation model. However, the bond percolation model fails to predict the correct outbreak size distribution and probability of an epidemic when there is a nondegenerate infectious period distribution. We confirm our findings by comparing predictions from percolation networks and bond percolation models to the results of simulations. In an appendix, we show that an isomorphism to an epidemic percolation network can be defined for any time-homogeneous stochastic SIR model.
机译:M.E.J.在重要论文中纽曼(Newman)声称,基于网络的一般随机易感传染病(SIR)流行模型与债券渗透模型是同构的,其中债券是接触网络的边缘,债券占用概率等于传播的边际概率从受感染的节点到易受感染的邻居。在本文中,我们证明了这种同构是不正确的,并定义了一个半定向随机网络,我们将其称为流行渗流网络,该网络与SIR流行模型在任何有限人口中都完全同构。在人口众多的情况下,(i)(自限)暴发规模的分布与(小)暴发部分的规模分布相同,(ii)流行阈值对应于相变,其中一个巨大的强-连接的组件出现,(iii)大流行的可能性等于初始感染发生在巨型组件内部的可能性,并且(iv)流行的相对最终规模等于网络的比例包含在巨大的外部组件中。对于纽曼(Newman)考虑的SIR模型,我们表明,流行病渗滤网络预测的流行阈值以下的平均爆发大小,流行病阈值相同以及流行的最终大小与债券渗透模型相同。但是,当存在非简并的传染期分布时,债券渗透模型无法预测正确的暴发规模分布和流行的可能性。我们通过将渗滤网络和键渗滤模型的预测结果与模拟结果进行比较,来证实我们的发现。在附录中,我们表明可以为任何时间均质随机SIR模型定义流行病渗滤网络的同构。

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    Eben Kenah; James M. Robins;

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  • 年(卷),期 -1(76),3 Pt 2
  • 年度 -1
  • 页码 036113
  • 总页数 24
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