Berkey C S, Hoaglin D C, Antczak-Bouckoms A, Mosteller F, Colditz G A
Department of Medicine, Brigham and Women's Hospital, Boston, MA, USA.
Stat Med. 1998 Nov 30;17(22):2537-50. doi: 10.1002/(sici)1097-0258(19981130)17:22<2537::aid-sim953>3.0.co;2-c.
Earlier work showed how to perform fixed-effects meta-analysis of studies or trials when each provides results on more than one outcome per patient and these multiple outcomes are correlated. That fixed-effects generalized-least-squares approach analyzes the multiple outcomes jointly within a single model, and it can include covariates, such as duration of therapy or quality of trial, that may explain observed heterogeneity of results among the trials. Sometimes the covariates explain all the heterogeneity, and the fixed-effects regression model is appropriate. However, unexplained heterogeneity may often remain, even after taking into account known or suspected covariates. Because fixed-effects models do not make allowance for this remaining unexplained heterogeneity, the potential exists for bias in estimated coefficients, standard errors and p-values. We propose two random-effects approaches for the regression meta-analysis of multiple correlated outcomes. We compare their use with fixed-effects models and with separate-outcomes models in a meta-analysis of periodontal clinical trials. A simulation study shows the advantages of the random-effects approach. These methods also facilitate meta-analysis of trials that compare more than two treatments.
早期的研究表明,当每项研究或试验针对每位患者提供多个相关结局的结果时,如何进行固定效应荟萃分析。这种固定效应广义最小二乘法在单个模型中联合分析多个结局,并且可以纳入协变量,如治疗持续时间或试验质量,这些协变量可能解释试验间观察到的结果异质性。有时,协变量可以解释所有的异质性,此时固定效应回归模型是合适的。然而,即使考虑了已知或可疑的协变量,未解释的异质性通常仍然存在。由于固定效应模型没有考虑这种剩余的未解释异质性,估计系数、标准误和p值可能存在偏差。我们提出了两种用于多个相关结局回归荟萃分析的随机效应方法。在一项牙周临床试验的荟萃分析中,我们将它们的使用与固定效应模型和单独结局模型进行了比较。一项模拟研究显示了随机效应方法的优势。这些方法也有助于对比较两种以上治疗方法的试验进行荟萃分析。