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从马尔可夫型到成对流行病模型以及矩闭合近似的性能。

From Markovian to pairwise epidemic models and the performance of moment closure approximations.

作者信息

Taylor Michael, Simon Péter L, Green Darren M, House Thomas, Kiss Istvan Z

机构信息

School of Mathematical and Physical Sciences, Department of Mathematics, University of Sussex, Falmer, Brighton BN1 9QH, UK.

出版信息

J Math Biol. 2012 May;64(6):1021-42. doi: 10.1007/s00285-011-0443-3. Epub 2011 Jun 14.

Abstract

Many if not all models of disease transmission on networks can be linked to the exact state-based Markovian formulation. However the large number of equations for any system of realistic size limits their applicability to small populations. As a result, most modelling work relies on simulation and pairwise models. In this paper, for a simple SIS dynamics on an arbitrary network, we formalise the link between a well known pairwise model and the exact Markovian formulation. This involves the rigorous derivation of the exact ODE model at the level of pairs in terms of the expected number of pairs and triples. The exact system is then closed using two different closures, one well established and one that has been recently proposed. A new interpretation of both closures is presented, which explains several of their previously observed properties. The closed dynamical systems are solved numerically and the results are compared to output from individual-based stochastic simulations. This is done for a range of networks with the same average degree and clustering coefficient but generated using different algorithms. It is shown that the ability of the pairwise system to accurately model an epidemic is fundamentally dependent on the underlying large-scale network structure. We show that the existing pairwise models are a good fit for certain types of network but have to be used with caution as higher-order network structures may compromise their effectiveness.

摘要

许多(即便不是所有)网络疾病传播模型都可与基于精确状态的马尔可夫公式相联系。然而,对于任何实际规模的系统而言,大量的方程限制了它们在小群体中的适用性。因此,大多数建模工作依赖于模拟和成对模型。在本文中,对于任意网络上的简单SIS动态,我们将一个著名的成对模型与精确的马尔可夫公式之间的联系形式化。这涉及根据对和三元组的期望数量,在对的层面严格推导精确的常微分方程模型。然后使用两种不同的封闭方法来封闭精确系统,一种是已确立的,另一种是最近提出的。给出了对这两种封闭方法的新解释,这解释了它们之前观察到的几个性质。对封闭的动力系统进行数值求解,并将结果与基于个体的随机模拟输出进行比较。针对一系列具有相同平均度和聚类系数但使用不同算法生成的网络进行了此操作。结果表明,成对系统准确模拟流行病的能力从根本上取决于底层的大规模网络结构。我们表明,现有的成对模型对某些类型的网络很适用,但由于高阶网络结构可能会损害其有效性,因此必须谨慎使用。

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