Faculty of Psychology and Educational Sciences, KU Leuven, University of Leuven, Kortrijk, Belgium.
Imec-Itec, KU Leuven, University of Leuven, Leuven, Belgium.
Behav Res Methods. 2019 Feb;51(1):316-331. doi: 10.3758/s13428-018-1123-7.
The synthesis of standardized regression coefficients is still a controversial issue in the field of meta-analysis. The difficulty lies in the fact that the standardized regression coefficients belonging to regression models that include different sets of covariates do not represent the same parameter, and thus their direct combination is meaningless. In the present study, a new approach called concealed correlations meta-analysis is proposed that allows for using the common information that standardized regression coefficients from different regression models contain to improve the precision of a combined focal standardized regression coefficient estimate. The performance of this new approach was compared with that of two other approaches: (1) carrying out separate meta-analyses for standardized regression coefficients from studies that used the same regression model, and (2) performing a meta-regression on the focal standardized regression coefficients while including an indicator variable as a moderator indicating the regression model to which each standardized regression coefficient belongs. The comparison was done through a simulation study. The results showed that, as expected, the proposed approach led to more accurate estimates of the combined standardized regression coefficients under both random- and fixed-effect models.
综合标准化回归系数在荟萃分析领域仍是一个有争议的问题。困难在于,包含不同协变量集的回归模型的标准化回归系数并不代表相同的参数,因此它们的直接组合没有意义。在本研究中,提出了一种新的方法,称为隐蔽相关荟萃分析,它允许利用来自不同回归模型的标准化回归系数所包含的共同信息来提高组合焦点标准化回归系数估计的精度。该新方法的性能与其他两种方法进行了比较:(1)对使用相同回归模型的研究的标准化回归系数进行单独的荟萃分析;(2)对焦点标准化回归系数进行元回归,同时包含一个指示变量作为调节变量,指示每个标准化回归系数所属的回归模型。通过模拟研究进行了比较。结果表明,预期的是,在所提出的方法下,无论是随机效应模型还是固定效应模型,组合标准化回归系数的估计都更加准确。