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Effective degree network disease models

机译:有效度网络疾病模型

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An effective degree approach to modeling the spread of infectious diseases on a network is introduced and applied to a disease that confers no immunity (a Susceptible-Infectious-Susceptible model, abbreviated as SIS) and to a disease that confers permanent immunity (a Susceptible-Infectious-Recovered model, abbreviated as SIR). Each model is formulated as a large system of ordinary differential equations that keeps track of the number of susceptible and infectious neighbors of an individual. From numerical simulations, these effective degree models are found to be in excellent agreement with the corresponding stochastic processes of the network on a random graph, in that they capture the initial exponential growth rates, the endemic equilibrium of an invading disease for the SIS model, and the epidemic peak for the SIR model. For each of these effective degree models, a formula for the disease threshold condition is derived. The threshold parameter for the SIS model is shown to be larger than that derived from percolation theory for a model with the same disease and network parameters, and consequently a disease may be able to invade with lower transmission than predicted by percolation theory. For the SIR model, the threshold condition is equal to that predicted by percolation theory. Thus unlike the classical homogeneous mixing disease models, the SIS and SIR effective degree models have different disease threshold conditions.
机译:引入了一种对网络上的传染病传播进行建模的有效程度方法,并将其应用于没有免疫力的疾病(易感性-传染病-易感性模型,缩写为SIS)和具有永久性免疫力的疾病(易感性-传染恢复模型,缩写为SIR。每个模型都被公式化为一个大型的常微分方程组,该系统跟踪一个人的易感和传染性邻居的数量。从数值模拟中,发现这些有效度模型与随机图上网络的相应随机过程非常吻合,因为它们捕获了SIS模型的初始指数增长率,入侵疾病的地方平衡,以及SIR模型的流行高峰。对于这些有效程度模型中的每一个,都可以得出疾病阈值条件的公式。对于具有相同疾病和网络参数的模型,SIS模型的阈值参数显示大于从渗透理论得出的阈值参数,因此,与渗透理论所预测的相比,疾病可能以较低的传播率入侵。对于SIR模型,阈值条件等于渗滤理论预测的条件。因此,与经典的均质混合疾病模型不同,SIS和SIR有效程度模型具有不同的疾病阈值条件。

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