Lawson A B, Carroll R, Faes C, Kirby R S, Aregay M, Watjou K
Department of Public Health Sciences, Medical University of South Carolina.
Interuniversity Institute for Statistics and Statistical Bioinformatics, Hasselt University.
Environmetrics. 2017 Dec;28(8). doi: 10.1002/env.2465. Epub 2017 Sep 25.
It is often the case that researchers wish to simultaneously explore the behavior of and estimate overall risk for multiple, related diseases with varying rarity while accounting for potential spatial and/or temporal correlation. In this paper, we propose a flexible class of multivariate spatio-temporal mixture models to fill this role. Further, these models offer flexibility with the potential for model selection as well as the ability to accommodate lifestyle, socio-economic, and physical environmental variables with spatial, temporal, or both structures. Here, we explore the capability of this approach via a large scale simulation study and examine a motivating data example involving three cancers in South Carolina. The results which are focused on four model variants suggest that all models possess the ability to recover simulation ground truth and display improved model fit over two baseline Knorr-Held spatio-temporal interaction model variants in a real data application.
研究人员常常希望在考虑潜在的空间和/或时间相关性的同时,对多种不同罕见程度的相关疾病的行为进行探索,并估计其总体风险。在本文中,我们提出了一类灵活的多元时空混合模型来发挥这一作用。此外,这些模型具有灵活性,具备模型选择的潜力,并且能够纳入具有空间、时间或两者结构的生活方式、社会经济和物理环境变量。在此,我们通过大规模模拟研究探索了该方法的能力,并研究了一个涉及南卡罗来纳州三种癌症的激励性数据实例。聚焦于四种模型变体的结果表明,在实际数据应用中,所有模型都具备恢复模拟真实情况的能力,并且相较于两种基线克诺尔 - 赫尔德时空交互模型变体,显示出更好的模型拟合度。