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SUSCEPTIBLE-INFECTED-REMOVED EPIDEMIC MODELS WITH DYNAMIC PARTNERSHIPS

机译:具有动态伙伴关系的可感染传染病模型

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The author extends the classical, stochastic, Susceptible-Infected-Removed (SIR) epidemic model to allow for disease transmission through a dynamic network of partnerships. A new method of analysis allows for a fairly complete understanding of the dynamics of the system for small and large time. The key insight is to analyze the model by tracking the configurations of all possible dyads, rather than individuals. For large populations, the initial dynamics are approximated by a branching process whose threshold for growth determines the epidemic threshold, R(0), and whose growth rate, Lambda, determines the rate at which the number of cases increases. The fraction of the population that is ever infected, Omega, is shown to bear the same relationship to R(0) as in models without partnerships. Explicit formulas for these three fundamental quantities are obtained for the simplest version of the model, in which the population is treated as homogeneous, and all transitions are Markov. The formulas allow a modeler to determine the error introduced by the usual assumption of instantaneous contacts for any particular set of biological and sociological parameters. The model and the formulas are then generalized to allow for non-Markov partnership dynamics, non-uniform contact rates within partnerships, and variable infectivity. The model and the method of analysis could also be further generalized to allow for demographic effects, recurrent susceptibility and heterogeneous populations, using the same strategies that have been developed for models without partnerships. [References: 16]
机译:作者扩展了经典的,随机的,易感性感染消除(SIR)流行病模型,以允许疾病通过动态的伙伴关系网络传播。一种新的分析方法可以在较小的时间和较大的时间内对系统的动力学有一个相当完整的了解。关键见解是通过跟踪所有可能的二元组而不是个人的配置来分析模型。对于较大的种群,初始动态可通过分支过程进行近似,该分支过程的增长阈值确定了流行阈值R(0),其增长速度Lambda决定了病例数的增加速率。与没有伙伴关系的模型相比,曾经感染过的人口中的一部分欧米茄与R(0)具有相同的关系。对于模型的最简单版本,获得了这三个基本数量的显式公式,其中将总体视为同质,并且所有跃迁均为马尔可夫。这些公式允许建模人员确定对于任何特定的生物学和社会学参数集,通常由瞬时接触的通常假设引起的误差。然后,对模型和公式进行泛化,以考虑非马尔可夫伙伴关系动力学,伙伴关系内的非均匀接触率以及可变的传染性。使用与没有伙伴关系的模型相同的策略,该模型和分析方法也可以进一步推广,以考虑到人口统计学影响,经常性敏感性和异质性种群。 [参考:16]

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