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Bayesian inference in an extended SEIR model with nonparametric disease transmission rate: an application to the Ebola epidemic in Sierra Leone

机译:具有非参数疾病传播率的扩展SEIR模型中的贝叶斯推断:对塞拉利昂埃博拉疫情的应用

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摘要

The 2014 Ebola outbreak in Sierra Leone is analyzed using a susceptible-exposed-infectious-removed (SEIR) epidemic compartmental model. The discrete time-stochastic model for the epidemic evolution is coupled to a set of ordinary differential equations describing the dynamics of the expected proportions of subjects in each epidemic state. The unknown parameters are estimated in a Bayesian framework by combining data on the number of new (laboratory confirmed) Ebola cases reported by the Ministry of Health and prior distributions for the transition rates elicited using information collected by the WHO during the follow-up of specific Ebola cases. The time-varying disease transmission rate is modeled in a flexible way using penalized B-splines. Our framework represents a valuable stochastic tool for the study of an epidemic dynamic even when only irregularly observed and possibly aggregated data are available. Simulations and the analysis of the 2014 Sierra Leone Ebola data highlight the merits of the proposed methodology. In particular, the flexible modeling of the disease transmission rate makes the estimation of the effective reproduction number robust to the misspecification of the initial epidemic states and to underreporting of the infectious cases.
机译:使用易感暴露,传染病去除(SEIR)流行病区隔模型对2014年塞拉利昂埃博拉疫情进行了分析。流行病演化的离散时间随机模型与一组描述每个流行病态中受试者预期比例的动力学的常微分方程组耦合。在贝叶斯框架内,通过结合卫生部报告的新的(实验室确诊)埃博拉病例数数据和使用世卫组织在特定的后续行动中收集到的信息得出的过渡率先前分布,估计未知参数埃博拉病例。使用受罚的B样条以灵活的方式对时变疾病的传播速率进行建模。我们的框架代表了一种流行病动态研究的有价值的随机工具,即使只有不定期观察的和可能汇总的数据也可以使用。对2014年塞拉利昂埃博拉病毒数据的模拟和分析突出了所提出方法的优点。特别地,疾病传播速率的灵活建模使得有效繁殖数量的估计对于初始流行病态的错误指定和传染病报告的漏报是可靠的。

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