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小世界网络中的反复流行。

Recurrent epidemics in small world networks.

作者信息

Verdasca J, Telo da Gama M M, Nunes A, Bernardino N R, Pacheco J M, Gomes M C

机构信息

Centro de Física Teórica e Computacional and Departamento de Física, Faculdade de Ciências da Universidade de Lisboa, Avenida Professor Gama Pinto 2, P-1649-003 Lisboa Codex, Portugal.

出版信息

J Theor Biol. 2005 Apr 21;233(4):553-61. doi: 10.1016/j.jtbi.2004.10.031. Epub 2004 Dec 15.

Abstract

The effect of spatial correlations on the spread of infectious diseases was investigated using a stochastic susceptible-infective-recovered (SIR) model on complex networks. It was found that in addition to the reduction of the effective transmission rate, through the screening of infectives, spatial correlations have another major effect through the enhancement of stochastic fluctuations, which may become considerably larger than in the homogeneously mixed stochastic model. As a consequence, in finite spatially structured populations significant differences from the solutions of deterministic models are to be expected, since sizes even larger than those found for homogeneously mixed stochastic models are required for the effects of fluctuations to be negligible. Furthermore, time series of the (unforced) model provide patterns of recurrent epidemics with slightly irregular periods and realistic amplitudes, suggesting that stochastic models together with complex networks of contacts may be sufficient to describe the long-term dynamics of some diseases. The spatial effects were analysed quantitatively by modelling measles and pertussis, using a susceptible-exposed-infective-recovered (SEIR) model. Both the period and the spatial coherence of the epidemic peaks of pertussis are well described by the unforced model for realistic values of the parameters.

摘要

利用复杂网络上的随机易感-感染-康复(SIR)模型研究了空间相关性对传染病传播的影响。研究发现,除了通过对感染者的筛选降低有效传播率外,空间相关性还通过增强随机波动产生另一个主要影响,这种随机波动可能比均匀混合随机模型中的波动大得多。因此,在有限的空间结构化种群中,预计会与确定性模型的解存在显著差异,因为要使波动的影响可以忽略不计,所需的种群规模甚至比均匀混合随机模型中的规模还要大。此外,(无强迫)模型的时间序列提供了周期略有不规则且幅度现实的反复流行模式,这表明随机模型与复杂的接触网络可能足以描述某些疾病的长期动态。通过使用易感-暴露-感染-康复(SEIR)模型对麻疹和百日咳进行建模,对空间效应进行了定量分析。对于现实的参数值,无强迫模型很好地描述了百日咳流行高峰的周期和空间相干性。

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