Yuan Ying, Little Roderick J A
Department of Biostatistics, University of Texas MD Anderson Cancer Center, Houston, Texas 77030, USA.
Biometrics. 2009 Jun;65(2):487-96. doi: 10.1111/j.1541-0420.2008.01068.x. Epub 2008 May 18.
Consider a meta-analysis of studies with varying proportions of patient-level missing data, and assume that each primary study has made certain missing data adjustments so that the reported estimates of treatment effect size and variance are valid. These estimates of treatment effects can be combined across studies by standard meta-analytic methods, employing a random-effects model to account for heterogeneity across studies. However, we note that a meta-analysis based on the standard random-effects model will lead to biased estimates when the attrition rates of primary studies depend on the size of the underlying study-level treatment effect. Perhaps ignorable within each study, these types of missing data are in fact not ignorable in a meta-analysis. We propose three methods to correct the bias resulting from such missing data in a meta-analysis: reweighting the DerSimonian-Laird estimate by the completion rate; incorporating the completion rate into a Bayesian random-effects model; and inference based on a Bayesian shared-parameter model that includes the completion rate. We illustrate these methods through a meta-analysis of 16 published randomized trials that examined combined pharmacotherapy and psychological treatment for depression.
考虑对具有不同比例患者水平缺失数据的研究进行荟萃分析,并假设每项原始研究都已进行了某些缺失数据调整,以使报告的治疗效应大小和方差估计值有效。这些治疗效应估计值可以通过标准荟萃分析方法在各研究间进行合并,采用随机效应模型来解释各研究间的异质性。然而,我们注意到,当原始研究的失访率取决于潜在研究水平治疗效应的大小时,基于标准随机效应模型的荟萃分析将导致有偏估计。这些类型的缺失数据在每项研究中可能是可忽略的,但在荟萃分析中实际上并非如此。我们提出了三种方法来纠正荟萃分析中此类缺失数据导致的偏差:按完成率对DerSimonian-Laird估计值进行重新加权;将完成率纳入贝叶斯随机效应模型;以及基于包含完成率的贝叶斯共享参数模型进行推断。我们通过对16项已发表的随机试验进行荟萃分析来说明这些方法,这些试验研究了联合药物治疗和心理治疗对抑郁症的疗效。