Division of Epidemiology and Biostatistics, School of Population and Public Health, University of British Columbia, British Columbia, Canada.
Stat Med. 2010 May 20;29(11):1239-49. doi: 10.1002/sim.3875.
Recent literature on Bayesian disease mapping presents shared component models (SCMs) for joint spatial modeling of two or more diseases with common risk factors. In this study, Bayesian hierarchical formulations of shared component disease mapping and ecological models are explored and developed in the context of ecological regression, taking into consideration errors in covariates. A review of multivariate disease mapping models (MultiVMs) such as the multivariate conditional autoregressive models that are also part of the more recent Bayesian disease mapping literature is presented. Some insights into the connections and distinctions between the SCM and MultiVM procedures are communicated. Important issues surrounding (appropriate) formulation of shared- and disease-specific components, consideration/choice of spatial or non-spatial random effects priors, and identification of model parameters in SCMs are explored and discussed in the context of spatial and ecological analysis of small area multivariate disease or health outcome rates and associated ecological risk factors. The methods are illustrated through an in-depth analysis of four-variate road traffic accident injury (RTAI) data: gender-specific fatal and non-fatal RTAI rates in 84 local health areas in British Columbia (Canada). Fully Bayesian inference via Markov chain Monte Carlo simulations is presented.
近期贝叶斯疾病制图文献提出了共享分量模型(SCM),用于对具有共同风险因素的两种或多种疾病进行联合空间建模。本研究探讨并发展了共享分量疾病制图和生态模型的贝叶斯层次公式,同时考虑了协变量的误差。对多变量疾病制图模型(MultiVM)进行了综述,例如也是最近贝叶斯疾病制图文献的一部分的多元条件自回归模型。介绍了 SCM 和 MultiVM 程序之间的联系和区别的一些见解。在对小区域多变量疾病或健康结果率和相关生态风险因素进行空间和生态分析的背景下,探讨并讨论了(适当)共享分量和特定疾病分量的制定、空间或非空间随机效应先验的考虑/选择以及 SCM 中模型参数的识别等重要问题。通过对不列颠哥伦比亚省(加拿大)84 个地方卫生区的性别特异性致命和非致命道路交通伤害(RTAI)率的四变量 RTAI 数据的深入分析,说明了这些方法。提出了通过马尔可夫链蒙特卡罗模拟进行完全贝叶斯推断。