Disease mapping is an important statistical tool used by epidemiologists to assess geographic variation in disease rates and identify lurking environmental risk factors from spatial patterns. Such maps rely upon spatial models for regionally aggregated data, where neighboring regions tend to exhibit similar outcomes than those farther apart. We contribute to the literature on multivariate disease mapping, which deals with measurements on multiple (two or more) diseases in each region. We aim to disentangle associations among the multiple diseases from spatial autocorrelation in each disease. We develop Multivariate Directed Acyclic Graphical Autoregression (MDAGAR) models to accommodate spatial and inter-disease dependence. The hierarchical construction imparts flexibility and richness, interpretability of spatial autocorrelation and inter-disease relationships, and computational ease, but depends upon the order in which the cancers are modeled. To obviate this, we demonstrate how Bayesian model selection and averaging across orders are easily achieved using bridge sampling. We compare our method with a competitor using simulation studies and present an application to multiple cancer mapping using data from the Surveillance, Epidemiology, and End Results (SEER) Program.
翻译:疾病测绘是流行病学家用来评估疾病率地理差异和从空间模式中查明潜伏的环境风险因素的一个重要统计工具。这些地图依靠空间模型来得出区域汇总数据,而相邻区域往往表现出与更相近的结果。我们为关于多变量疾病绘图的文献作出了贡献,该文献涉及对每个区域多种(两个或两个以上)疾病的测量。我们的目标是将多种疾病与每种疾病的空间自动自主关系之间的关联分解开来。我们开发了多变量直接循环图形自动回归模型(MDAGAR),以适应空间和疾病间依赖性。等级结构提供了灵活性和丰富性、空间自动调节和疾病间的关系的可解释性以及计算性,但取决于癌症建模的顺序。为了避免这种情况,我们用桥梁取样来证明巴耶斯模式的选择和不同顺序的平均值是如何容易实现的。我们利用模拟研究将我们的方法与比较器进行比较,并使用监测、流行病学和最终结果(SEER)方案的数据将应用到多种癌症绘图。