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Impact of analysing continuous outcomes using final values change scores and analysis of covariance on the performance of meta‐analytic methods: a simulation study

机译:使用最终值变化得分和协方差分析对连续结果进行分析对荟萃分析方法性能的影响:模拟研究

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摘要

When meta‐analysing intervention effects calculated from continuous outcomes, meta‐analysts often encounter few trials, with potentially a small number of participants, and a variety of trial analytical methods. It is important to know how these factors affect the performance of inverse‐variance fixed and DerSimonian and Laird random effects meta‐analytical methods. We examined this performance using a simulation study.Meta‐analysing estimates of intervention effect from final values, change scores, ANCOVA or a random mix of the three yielded unbiased estimates of pooled intervention effect. The impact of trial analytical method on the meta‐analytic performance measures was important when there was no or little heterogeneity, but was of little relevance as heterogeneity increased. On the basis of larger than nominal type I error rates and poor coverage, the inverse‐variance fixed effect method should not be used when there are few small trials.When there are few small trials, random effects meta‐analysis is preferable to fixed effect meta‐analysis. Meta‐analytic estimates need to be cautiously interpreted; type I error rates will be larger than nominal, and confidence intervals will be too narrow. Use of trial analytical methods that are more efficient in these circumstances may have the unintended consequence of further exacerbating these issues. © 2015 The Authors. Research Synthesis Methods published by John Wiley & Sons, Ltd. © 2015 The Authors. Research Synthesis Methods published by John Wiley & Sons, Ltd.
机译:当通过连续结果计算荟萃分析干预效果时,荟萃分析人员通常会遇到很少的试验,可能会有少量参与者,并且会遇到多种试验分析方法。重要的是要知道这些因素如何影响固定的反方差,DerSimonian和Laird随机效应的荟萃分析方法的性能。我们通过模拟研究检查了这种表现。从最终值,变更得分,ANCOVA或这三个因素的随机混合中对干预效果的评估进行了元分析,得出了综合干预效果的无偏估计。当没有异质性或异质性很少时,试验分析方法对元分析性能指标的影响就很重要,但随着异质性的增加,相关性几乎没有相关性。由于I型错误率高于正常值且覆盖范围较差,因此在小规模试验较少的情况下不应使用反方差固定效应方法;在小规模试验较少的情况下,随机效应荟萃分析优于固定效应荟萃分析。需谨慎解释荟萃分析的估计; I型错误率将大于标称值,并且置信区间将太窄。在这种情况下使用更有效的试验分析方法可能会带来意想不到的后果,从而进一步加剧这些问题。 ©2015作者。研究综合方法,由John Wiley&Sons,Ltd.出版。©2015作者。研究综合方法,由John Wiley&Sons,Ltd.发布。

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