Ball Frank, Neal Peter
School of Mathematical Sciences, University of Nottingham, University Park, Nottingham, UK.
Math Biosci. 2008 Mar;212(1):69-87. doi: 10.1016/j.mbs.2008.01.001. Epub 2008 Jan 11.
The study of epidemics on social networks has attracted considerable attention recently. In this paper, we consider a stochastic SIR (susceptible-->infective-->removed) model for the spread of an epidemic on a finite network, having an arbitrary but specified degree distribution, in which individuals also make casual contacts, i.e. with people chosen uniformly from the population. The behaviour of the model as the network size tends to infinity is investigated. In particular, the basic reproduction number R(0), that governs whether or not an epidemic with few initial infectives can become established is determined, as are the probability that an epidemic becomes established and the proportion of the population who are ultimately infected by such an epidemic. For the case when the infectious period is constant and all individuals in the network have the same degree, the asymptotic variance and a central limit theorem for the size of an epidemic that becomes established are obtained. Letting the rate at which individuals make casual contacts decrease to zero yields, heuristically, corresponding results for the model without casual contacts, i.e. for the standard SIR network epidemic model. A deterministic model that approximates the spread of an epidemic that becomes established in a large population is also derived. The theory is illustrated by numerical studies, which demonstrate that the asymptotic approximations work well, even for only moderately sized networks, and that the degree distribution and the inclusion of casual contacts can each have a major impact on the outcome of an epidemic.
近期,社交网络上的流行病研究备受关注。在本文中,我们考虑一个随机的SIR(易感者→感染者→康复者)模型,用于研究有限网络上流行病的传播,该网络具有任意但特定的度分布,其中个体还会进行偶然接触,即与从总体中均匀选取的人接触。研究了网络规模趋于无穷时该模型的行为。特别地,确定了基本再生数(R(0)),它决定了初始感染者较少的流行病能否流行起来,还确定了流行病流行起来的概率以及最终被此类流行病感染的人口比例。对于感染期恒定且网络中所有个体度相同的情况,得到了流行起来的流行病规模的渐近方差和中心极限定理。让个体进行偶然接触的速率降至零,从直观上可得到无偶然接触模型(即标准SIR网络流行病模型)的相应结果。还推导了一个确定性模型,用于近似大群体中流行起来的流行病的传播。通过数值研究对该理论进行了说明,结果表明渐近近似效果良好,即使对于规模适中的网络也是如此,并且度分布和偶然接触的纳入都会对流行病的结果产生重大影响。