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首页> 外文期刊>Open Journal of Statistics >Spatio-Temporal Variation of HIV Infection in Kenya
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Spatio-Temporal Variation of HIV Infection in Kenya

机译:肯尼亚艾滋病毒感染的时空变化

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摘要

Disease mapping is the study of the distribution of disease relative risks or rates in space and time, and normally uses generalized linear mixed models (GLMMs) which includes fixed effects and spatial, temporal, and spatio-temporal random effects. Model fitting and statistical inference are commonly accomplished through the empirical Bayes (EB) and fully Bayes (FB) approaches. The EB approach usually relies on the penalized quasi - likelihood (PQL), while the FB approach, which has increasingly become more popular in the recent past, usually uses Markov chain Monte Carlo (McMC) techniques. However, there are many challenges in conventional use of posterior sampling via McMC for inference. This includes the need to evaluate convergence of posterior samples, which often requires extensive simulation and can be very time consuming. Spatio-temporal models used in disease mapping are often very complex and McMC methods may lead to large Monte Carlo errors if the dimension of the data at hand is large. To address these challenges, a new strategy based on integrated nested Laplace approximations (INLA) has recently been recently developed as a promising alternative to the McMC. This technique is now becoming more popular in disease mapping because of its ability to fit fairly complex space-time models much more quickly than the McMC. In this paper, we show how to fit different spatio-temporal models for disease mapping with INLA using the Leroux CAR prior for the spatial component, and we compare it with McMC using Kenya HIV incidence data during the period 2013-2016.
机译:疾病制图是研究疾病相对风险或时空分布的方法,通常使用广义线性混合模型(GLMM),其中包括固定效应以及时空,时空和时空随机效应。模型拟合和统计推断通常通过经验贝叶斯(EB)和完全贝叶斯(FB)方法来完成。 EB方法通常依赖于惩罚拟可能性(PQL),而FB方法在最近变得越来越流行,通常使用马尔可夫链蒙特卡洛(McMC)技术。但是,在通过McMC进行后验采样的常规使用中,存在许多挑战。这包括需要评估后验样本的收敛性,这通常需要大量的模拟并且非常耗时。疾病映射中使用的时空模型通常非常复杂,如果手头的数据量很大,McMC方法可能会导致较大的蒙特卡洛误差。为了应对这些挑战,最近已经开发了一种基于集成嵌套拉普拉斯近似(INLA)的新策略,作为McMC的有希望的替代方法。由于该技术能够比McMC更快地拟合相当复杂的时空模型,因此它现在在疾病作图中变得越来越流行。在本文中,我们展示了如何使用Leroux CAR作为空间分量,使用INLA拟合疾病时空模型的不同时空模型,并使用2013-2016年期间肯尼亚HIV发病率数据与McMC进行比较。

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