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When should meta-analysis avoid making hidden normality assumptions?

期刊

BIOMETRICAL JOURNAL
卷 60, 期 6, 页码 1040-1058

出版社

WILEY
DOI: 10.1002/bimj.201800071

关键词

central limit theorem; distributional assumptions; normal approximation; random effects models

资金

  1. Medical Research Council [MC_UU_12023/21]
  2. MRC [MC_UU_12023/21, MR/L003120/1, G0800270] Funding Source: UKRI

向作者/读者索取更多资源

Meta-analysis is a widely used statistical technique. The simplicity of the calculations required when performing conventional meta-analyses belies the parametric nature of the assumptions that justify them. In particular, the normal distribution is extensively, and often implicitly, assumed. Here, we review how the normal distribution is used in meta-analysis. We discuss when the normal distribution is likely to be adequate and also when it should be avoided. We discuss alternative and more advanced methods that make less use of the normal distribution. We conclude that statistical methods that make fewer normality assumptions should be considered more often in practice. In general, statisticians and applied analysts should understand the assumptions made by their statistical analyses. They should also be able to defend these assumptions. Our hope is that this article will foster a greater appreciation of the extent to which assumptions involving the normal distribution are made in statistical methods for meta-analysis. We also hope that this article will stimulate further discussion and methodological work.

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