Warwick Mathematics Institute, University of Warwick, Coventry, UK.
J Theor Biol. 2011 Mar 7;272(1):1-7. doi: 10.1016/j.jtbi.2010.12.009. Epub 2010 Dec 13.
There has been much recent interest in modelling epidemics on networks, particularly in the presence of substantial clustering. Here, we develop pairwise methods to answer questions that are often addressed using epidemic models, in particular: on the basis of potential observations early in an outbreak, what can be predicted about the epidemic outcomes and the levels of intervention necessary to control the epidemic? We find that while some results are independent of the level of clustering (early growth predicts the level of 'leaky' vaccine needed for control and peak time, while the basic reproductive ratio predicts the random vaccination threshold) the relationship between other quantities is very sensitive to clustering.
最近人们对网络上的传染病模型产生了浓厚的兴趣,尤其是在存在大量聚类的情况下。在这里,我们开发了成对的方法来回答经常使用传染病模型来解决的问题,特别是:根据疫情早期的潜在观察结果,可以预测哪些疫情结果以及控制疫情所需的干预水平?我们发现,虽然某些结果与聚类程度无关(早期增长预测了控制所需的“漏疫苗”的水平和峰值时间,而基本繁殖数则预测了随机接种的阈值),但其他数量之间的关系对聚类非常敏感。