Feingold Alan
Oregon Social Learning Center.
J Consult Clin Psychol. 2017 Mar;85(3):262-266. doi: 10.1037/ccp0000162. Epub 2017 Jan 9.
Findings from multilevel and latent growth modeling analysis (GMA) need to be included in literature reviews, and this article explicates 4 rarely discussed approaches for using GMA studies in meta-analysis.
Extant and new equations are presented for calculating the effect size (d) and its variance (v) from reported statistics from GMA studies with each method, and a fixed effects meta-analysis of results from 5 randomized clinical trials was conducted to demonstrate their applications.
Two common problematic practices--one that introduces bias in effect sizes because of attrition, measurement errors, and probable violations of assumptions for classical analysis, and the other that confounds the treatment effect with the intraclass correlation--were both found to yield smaller effect sizes from retrieved studies than were obtained with a newer model-based framework and its associated GMA d statistic.
The optimal strategy for including a GMA study in a meta-analysis is to use GMA d and its v calculated with the standard error of the unstandardized coefficient for the treatment effect. When that standard error is unknown, the use of GMA d and its v estimated with an alternative equation that requires only GMA d and sample size is recommended. (PsycINFO Database Record
多层次和潜在增长模型分析(GMA)的研究结果需要纳入文献综述,本文阐述了在荟萃分析中使用GMA研究的4种很少被讨论的方法。
给出了从GMA研究报告的统计数据中使用每种方法计算效应量(d)及其方差(v)的现有方程和新方程,并对5项随机临床试验的结果进行了固定效应荟萃分析以展示其应用。
发现了两种常见的有问题的做法——一种由于损耗、测量误差以及可能违反经典分析的假设而在效应量中引入偏差,另一种将组内相关与治疗效果混淆——结果发现,与基于更新的模型框架及其相关的GMA d统计量相比,从检索到的研究中得到的效应量更小。
在荟萃分析中纳入GMA研究的最佳策略是使用用治疗效果的非标准化系数的标准误计算的GMA d及其v。当该标准误未知时,建议使用仅需GMA d和样本量的替代方程估计的GMA d及其v。(PsycINFO数据库记录