Shieh Gwowen
Department of Management Science, National Chiao Tung University, Hsinchu, Taiwan.
PLoS One. 2017 May 17;12(5):e0177682. doi: 10.1371/journal.pone.0177682. eCollection 2017.
The appraisals of treatment-covariate interaction have theoretical and substantial implications in all scientific fields. Methodologically, the detection of interaction between categorical treatment levels and continuous covariate variables is analogous to the homogeneity of regression slopes test in the context of ANCOVA. A fundamental assumption of ANCOVA is that the regression slopes associating the response variable with the covariate variable are presumed constant across treatment groups. The validity of homogeneous regression slopes accordingly is the most essential concern in traditional ANCOVA and inevitably determines the practical usefulness of research findings. In view of the limited results in current literature, this article aims to present power and sample size procedures for tests of heterogeneity between two regression slopes with particular emphasis on the stochastic feature of covariate variables. Theoretical implications and numerical investigations are presented to explicate the utility and advantage for accommodating covariate properties. The exact approach has the distinct feature of accommodating the full distributional properties of normal covariates whereas the simplified approximate methods only utilize the partial information of covariate variances. According to the overall accuracy and robustness, the exact approach is recommended over the approximate methods as a reliable tool in practical applications. The suggested power and sample size calculations can be implemented with the supplemental SAS and R programs.
治疗协变量交互作用的评估在所有科学领域都具有理论和实质意义。从方法学角度来看,分类治疗水平与连续协变量变量之间交互作用的检测类似于协方差分析(ANCOVA)背景下回归斜率齐性检验。ANCOVA的一个基本假设是,在各个治疗组中,将响应变量与协变量变量联系起来的回归斜率假定是恒定的。因此,齐性回归斜率的有效性是传统ANCOVA中最关键的问题,并且不可避免地决定了研究结果的实际效用。鉴于当前文献中的结果有限,本文旨在介绍用于检验两个回归斜率异质性的功效和样本量计算方法,特别强调协变量变量的随机特征。本文还给出了理论意义和数值研究,以阐明考虑协变量特性的效用和优势。精确方法具有考虑正态协变量完整分布特性的独特特征,而简化的近似方法仅利用协变量方差的部分信息。根据总体准确性和稳健性,在实际应用中,推荐使用精确方法而非近似方法作为可靠工具。建议的功效和样本量计算可通过补充的SAS和R程序实现。