Black Andrew J, House Thomas, Keeling Matt J, Ross Joshua V
School of Mathematical Sciences, The University of Adelaide, Adelaide SA 5005, Australia.
Mathematics Institute, Zeeman Building, University of Warwick, Gibbet Hill Road, Coventry CV4 7AL, UK; Warwick Infectious Disease Epidemiology Research (WIDER) Centre, University of Warwick, Gibbet Hill Road, Coventry CV4 7AL, UK.
J Theor Biol. 2014 Oct 21;359:45-53. doi: 10.1016/j.jtbi.2014.05.042. Epub 2014 Jun 6.
Processes that spread through local contact, including outbreaks of infectious diseases, are inherently noisy, and are frequently observed to be far noisier than predicted by standard stochastic models that assume homogeneous mixing. One way to reproduce the observed levels of noise is to introduce significant individual-level heterogeneity with respect to infection processes, such that some individuals are expected to generate more secondary cases than others. Here we consider a population where individuals can be naturally aggregated into clumps (subpopulations) with stronger interaction within clumps than between them. This clumped structure induces significant increases in the noisiness of a spreading process, such as the transmission of infection, despite complete homogeneity at the individual level. Given the ubiquity of such clumped aggregations (such as homes, schools and workplaces for humans or farms for livestock) we suggest this as a plausible explanation for noisiness of many epidemic time series.
通过局部接触传播的过程,包括传染病的爆发,本质上是有噪声的,并且经常观察到其噪声程度远高于假设均匀混合的标准随机模型所预测的水平。重现观察到的噪声水平的一种方法是在感染过程中引入显著的个体层面异质性,使得一些个体预计会比其他个体产生更多的二代病例。在这里,我们考虑一个人群,其中个体可以自然地聚集为团块(亚群体),团块内部的相互作用比团块之间更强。这种团块结构会导致传播过程(如感染传播)的噪声显著增加,尽管在个体层面是完全均匀的。鉴于这种团块聚集(如人类的家庭、学校和工作场所或牲畜的农场)无处不在,我们认为这是许多流行时间序列噪声的一个合理原因。