Department of Educational Measurement and Research, University of South Florida, Tampa, FL, USA.
Behav Res Methods. 2012 Sep;44(3):795-805. doi: 10.3758/s13428-011-0180-y.
Numerous ways to meta-analyze single-case data have been proposed in the literature; however, consensus has not been reached on the most appropriate method. One method that has been proposed involves multilevel modeling. For this study, we used Monte Carlo methods to examine the appropriateness of Van den Noortgate and Onghena's (2008) raw-data multilevel modeling approach for the meta-analysis of single-case data. Specifically, we examined the fixed effects (e.g., the overall average treatment effect) and the variance components (e.g., the between-person within-study variance in the treatment effect) in a three-level multilevel model (repeated observations nested within individuals, nested within studies). More specifically, bias of the point estimates, confidence interval coverage rates, and interval widths were examined as a function of the number of primary studies per meta-analysis, the modal number of participants per primary study, the modal series length per primary study, the level of autocorrelation, and the variances of the error terms. The degree to which the findings of this study are supportive of using Van den Noortgate and Onghena's (2008) raw-data multilevel modeling approach to meta-analyzing single-case data depends on the particular parameter of interest. Estimates of the average treatment effect tended to be unbiased and produced confidence intervals that tended to overcover, but did come close to the nominal level as Level-3 sample size increased. Conversely, estimates of the variance in the treatment effect tended to be biased, and the confidence intervals for those estimates were inaccurate.
已经有许多方法被提出用于对单案例数据进行元分析;然而,对于最合适的方法尚未达成共识。其中一种方法涉及多层次建模。在这项研究中,我们使用蒙特卡罗方法来检验 Van den Noortgate 和 Onghena(2008)原始数据多层次建模方法是否适用于单案例数据的元分析。具体来说,我们在一个三级多层次模型(重复观察嵌套在个体中,嵌套在研究中)中检验了固定效应(例如,总体平均处理效应)和方差分量(例如,治疗效果在个体内研究中的个体间方差)。更具体地说,我们检验了点估计的偏差、置信区间覆盖率和区间宽度作为每个元分析的主要研究数量、每个主要研究的典型参与者数量、每个主要研究的典型系列长度、自相关程度和误差项方差的函数。这项研究的结果在何种程度上支持使用 Van den Noortgate 和 Onghena(2008)原始数据多层次建模方法对单案例数据进行元分析取决于特定的感兴趣参数。治疗效果的平均估计值往往没有偏差,产生的置信区间往往过度覆盖,但随着三级样本量的增加,接近名义水平。相反,治疗效果方差的估计值往往存在偏差,并且这些估计值的置信区间不准确。