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Capturing the time-varying drivers of an epidemic using stochastic dynamical systems

机译:使用随机动力学系统捕获流行病随时间变化的驱动因素

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摘要

Epidemics are often modeled using non-linear dynamical systems observed through partial and noisy data. In this paper, we consider stochastic extensions in order to capture unknown influences (changing behaviors, public interventions, seasonal effects, etc.). These models assign diffusion processes to the time-varying parameters, and our inferential procedure is based on a suitably adjusted adaptive particle Markov chain Monte Carlo algorithm. The performance of the proposed computational methods is validated on simulated data and the adopted model is applied to the 2009 H1N1 pandemic in England. In addition to estimating the effective contact rate trajectories, the methodology is applied in real time to provide evidence in related public health decisions. Diffusion-driven susceptible exposed infected retired-type models with age structure are also introduced.
机译:流行病通常使用通过部分和嘈杂数据观察到的非线性动力学系统进行建模。在本文中,我们考虑随机扩展,以捕获未知的影响(行为变化,公共干预,季节性影响等)。这些模型将扩散过程分配给时变参数,并且我们的推理过程基于适当调整的自适应粒子马尔可夫链蒙特卡罗算法。模拟数据验证了所提计算方法的性能,并将所采用的模型应用于英格兰的2009 H1N1大流行。除了估算有效接触率轨迹外,该方法还可以实时应用,以提供相关公共卫生决策的依据。还介绍了具有年龄结构的扩散驱动的易感暴露的受感染退休型模型。

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