In social, medical, and behavioral research we often encounter datasets with a multilevel structure and multiple correlated dependent variables. These data are frequently collected from a study population that distinguishes several subpopulations with different (i.e. heterogeneous) effects of an intervention. Despite the frequent occurrence of such data, methods to analyze them are less common and researchers often resort to either ignoring the multilevel and/or heterogeneous structure, analyzing only a single dependent variable, or a combination of these. These analysis strategies are suboptimal: Ignoring multilevel structures inflates Type I error rates, while neglecting the multivariate or heterogeneous structure masks detailed insights. To analyze such data comprehensively, the current paper presents a novel Bayesian multilevel multivariate logistic regression model. The clustered structure of multilevel data is taken into account, such that posterior inferences can be made with accurate error rates. Further, the model shares information between different subpopulations in the estimation of average and conditional average multivariate treatment effects. To facilitate interpretation, multivariate logistic regression parameters are transformed to posterior success probabilities and differences between them. A numerical evaluation compared our framework to less comprehensive alternatives and highlighted the need to model the multilevel structure: Treatment comparisons based on the multilevel model had targeted Type I error rates, while single-level alternatives resulted in inflated Type I errors. A re-analysis of the Third International Stroke Trial data illustrated how incorporating a multilevel structure, assessing treatment heterogeneity, and combining dependent variables contributed to an in-depth understanding of treatment effects.
翻译:在社会、医学和行为研究中,我们经常遇到具有多层次结构的数据集和多个相关依附变量。这些数据经常从研究组群中收集,该组群对若干亚组群进行了区分,具有不同的干预效果(即差异性),尽管这些数据经常出现,但分析它们的方法不那么常见,研究人员往往采用忽视多层次和(或)差异性结构的方法,只分析一个单一依赖变量,或结合这些数据。这些分析战略不尽如人意:注意多层次结构,放大类型I的误差率,而忽视多变或差异性结构,掩盖详细的洞察力。为了全面分析这些数据,当前文件展示了一种新型的巴伊西亚多层次多变量后勤回归模型模型模型模型模型模型模型模型。考虑到多层次数据的组合结构,因此可以使用准确的误差率来推断后推论。此外,模型在估计平均和有条件的多变量处理效果时,在不同亚组群群之间共享信息。为了便于解释,多变的逻辑性回归参数被转换为后推力模型模型的概率值,在模型级模型级级级结构中,同时突出显示单一层次的误差率,同时对比。 对比的模型框架比重标度框架,在矩阵中显示了I的误差值结构。