Key Laboratory for Applied Statistics of MOE, School of Mathematics and Statistics, Northeast Normal University, Changchun, China.
Biom J. 2023 Jun;65(5):e2200231. doi: 10.1002/bimj.202200231. Epub 2023 Mar 12.
Several penalization approaches have been developed to identify homogeneous subgroups based on a regression model with subject-specific intercepts in subgroup analysis. These methods often apply concave penalty functions to pairwise comparisons of the intercepts, such that the subjects with similar intercept values are assigned to the same group, which is very similar to the procedure of the penalization approaches for variable selection. Since the Bayesian methods are commonly used in variable selection, it is worth considering the corresponding approaches to subgroup analysis in the Bayesian framework. In this paper, a Bayesian hierarchical model with appropriate prior structures is developed for the pairwise differences of intercepts based on a regression model with subject-specific intercepts, which can automatically detect and identify homogeneous subgroups. A Gibbs sampling algorithm is also provided to select the hyperparameter and estimate the intercepts and coefficients of the covariates simultaneously, which is computationally efficient for pairwise comparisons compared to the time-consuming procedures for parameter estimation of the penalization methods (e.g., alternating direction method of multiplier) in the case of large sample sizes. The effectiveness and usefulness of the proposed Bayesian method are evaluated through simulation studies and analysis of a Cleveland Heart Disease Dataset.
已经开发了几种惩罚方法,用于根据具有个体截距的回归模型在亚组分析中识别同质亚组。这些方法通常将凹惩罚函数应用于截距的成对比较,使得具有相似截距值的个体被分配到同一个组,这与变量选择惩罚方法的过程非常相似。由于贝叶斯方法通常用于变量选择,因此值得考虑在贝叶斯框架中进行相应的亚组分析方法。本文基于具有个体截距的回归模型,为截距的成对差异开发了一个具有适当先验结构的贝叶斯层次模型,该模型可以自动检测和识别同质亚组。还提供了一种 Gibbs 抽样算法来同时选择超参数并估计截距和协变量的系数,与惩罚方法(例如,交替方向乘子法)的参数估计相比,该算法在大样本量的情况下进行成对比较时计算效率更高。通过模拟研究和克利夫兰心脏病数据集的分析评估了所提出的贝叶斯方法的有效性和实用性。