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首页> 外文期刊>Statistical methods in medical research >On fitting spatio-temporal disease mapping models using approximate Bayesian inference
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On fitting spatio-temporal disease mapping models using approximate Bayesian inference

机译:利用近似贝叶斯推断拟合时空疾病图模型

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摘要

Spatio-temporal disease mapping comprises a wide range of models used to describe the distribution of a disease in space and its evolution in time. These models have been commonly formulated within a hierarchical Bayesian framework with two main approaches: an empirical Bayes (EB) and a fully Bayes (FB) approach. The EB approach provides point estimates of the parameters relying on the well-known penalized quasi-likelihood (PQL) technique. The FB approach provides the posterior distribution of the target parameters. These marginal distributions are not usually available in closed form and common estimation procedures are based on Markov chain Monte Carlo (MCMC) methods. However, the spatio-temporal models used in disease mapping are often very complex and MCMC methods may lead to large Monte Carlo errors and a huge computation time if the dimension of the data at hand is large. To circumvent these potential inconveniences, a new technique called integrated nested Laplace approximations (INLA), based on nested Laplace approximations, has been proposed for Bayesian inference in latent Gaussian models. 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 PQL via a simulation study. The spatio-temporal distribution of male brain cancer mortality in Spain during the period 1986-2010 is also analysed.
机译:时空疾病制图包括多种模型,用于描述疾病在空间中的分布及其随时间的演变。这些模型通常是在分层贝叶斯框架内用两种主要方法制定的:经验贝叶斯(EB)方法和完全贝叶斯(FB)方法。 EB方法依赖于众所周知的惩罚拟似然(PQL)技术来提供参数的点估计。 FB方法提供了目标参数的后验分布。这些边际分布通常不以封闭形式提供,常用的估算程序基于马尔可夫链蒙特卡洛(MCMC)方法。但是,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和巨大的计算时间。为了避免这些潜在的不便,已经提出了一种基于嵌套拉普拉斯近似值的称为集成嵌套拉普拉斯近似值(INLA)的新技术,用于潜在高斯模型中的贝叶斯推断。在本文中,我们展示了如何使用Leroux CAR优先考虑空间分量,从而使用INLA拟合不同的时空模型进行疾病映射,并通过模拟研究将其与PQL进行比较。还分析了西班牙在1986-2010年期间男性脑癌死亡率的时空分布。

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