首页> 外文期刊>The Annals of applied statistics >DIRECT LIKELIHOOD-BASED INFERENCE FOR DISCRETELY OBSERVED STOCHASTIC COMPARTMENTAL MODELS OF INFECTIOUS DISEASE
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DIRECT LIKELIHOOD-BASED INFERENCE FOR DISCRETELY OBSERVED STOCHASTIC COMPARTMENTAL MODELS OF INFECTIOUS DISEASE

机译:基于直接的似然推断对传染病的离散观察到的随机分区模型

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摘要

Stochastic compartmental models are important tools for understanding the course of infectious diseases epidemics in populations and in prospective evaluation of intervention policies. However, calculating the likelihood for discretely observed data from even simple models-such as the ubiquitous susceptible-infectious-removed (SIR) model-has been considered computationally intractable, since its formulation almost a century ago. Recently researchers have proposed methods to circumvent this limitation through data augmentation or approximation, but these approaches often suffer from high computational cost or loss of accuracy. We develop the mathematical foundation and an efficient algorithm to compute the likelihood for discretely observed data from a broad class of stochastic compartmental models. We also give expressions for the derivatives of the transition probabilities using the same technique, making possible inference via Hamiltonian Monte Carlo (HMC). We use the 17th century plague in Eyam, a classic example of the SIR model, to compare our recursion method to sequential Monte Carlo, analyze using HMC, and assess the model assumptions. We also apply our direct likelihood evaluation to perform Bayesian inference for the 2014-2015 Ebola outbreak in Guinea. The results suggest that the epidemic infectious rates have decreased since October 2014 in the Southeast region of Guinea, while rates remain the same in other regions, facilitating understanding of the outbreak and the effectiveness of Ebola control interventions.
机译:随机隔间模型是了解人口传染病流行病课程的重要工具,以及对干预政策的前瞻性评估。然而,计算从甚至简单模型的离散地观察数据的可能性 - 例如普遍存在的易感染者被移除(SIR)模型 - 已经被认为是在几乎一个世纪前的制定以来的计算棘手的。最近,研究人员提出了通过数据增强或近似来规避这一限制的方法,但这些方法经常遭受高计算成本或准确性丧失。我们开发了数学基础和高效算法来计算来自广泛的随机隔间模型的离散观察数据的可能性。我们还使用相同的技术给出过渡概率的衍生工具的表达,通过Hamiltonian Monte Carlo(HMC)进行可能推断。我们使用17世纪瘟疫在悦星的鼠标,一个典型的SIR模型的例子,将递归方法与顺序蒙特卡罗进行比较,使用HMC进行分析,并评估模型假设。我们还将我们的直接似然评估执行贝叶斯推论2014-2015埃博拉疫情在几内亚爆发。结果表明,自2014年10月在几内亚东南部地区自2014年10月以来,疫情传染率已经下降,而其他地区的率仍然存在,促进爆发的爆发和埃博拉控制干预措施的有效性。

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