Theoretical Physics, School of Physics and Astronomy, The University of Manchester, Manchester, M13 9PL, United Kingdom.
Sci Rep. 2017 Oct 11;7(1):13008. doi: 10.1038/s41598-017-12606-x.
Models of biological processes are often subject to different sources of noise. Developing an understanding of the combined effects of different types of uncertainty is an open challenge. In this paper, we study a variant of the susceptible-infective-recovered model of epidemic spread, which combines both agent-to-agent heterogeneity and intrinsic noise. We focus on epidemic cycles, driven by the stochasticity of infection and recovery events, and study in detail how heterogeneity in susceptibilities and propensities to pass on the disease affects these quasi-cycles. While the system can only be described by a large hierarchical set of equations in the transient regime, we derive a reduced closed set of equations for population-level quantities in the stationary regime. We analytically obtain the spectra of quasi-cycles in the linear-noise approximation. We find that the characteristic frequency of these cycles is typically determined by population averages of susceptibilities and infectivities, but that their amplitude depends on higher-order moments of the heterogeneity. We also investigate the synchronisation properties and phase lag between different groups of susceptible and infected individuals.
生物过程模型通常会受到不同来源的噪声的影响。开发一种理解不同类型不确定性的综合影响的方法是一个开放性的挑战。在本文中,我们研究了一种传染病传播的易感性-感染性-恢复性模型的变体,该模型结合了个体间的异质性和内在噪声。我们专注于由感染和恢复事件的随机性驱动的传染病周期,并详细研究了易感性和传播疾病的倾向的异质性如何影响这些准周期。虽然在瞬态状态下,系统只能通过一组庞大的层次化方程来描述,但我们在稳态下推导出了一个针对群体水平数量的简化封闭方程组。我们在线性噪声近似下解析地获得了准周期的频谱。我们发现,这些周期的特征频率通常由易感性和感染性的群体平均值决定,但它们的幅度取决于异质性的更高阶矩。我们还研究了不同的易感人群和感染人群之间的同步特性和相位滞后。