Meta-analysis using effect size distributions of only statistically significant studies

Marcel A L M Van Assen*, Robbie C M Van Aert, Jelte M. Wicherts

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Publication bias threatens the validity of meta-analytic results and leads to overestimation of the effect size in traditional meta-analysis. This particularly applies to meta-analyses that feature small studies, which are ubiquitous in psychology. Here we develop a new method for meta-analysis that deals with publication bias. This method, p-uniform, enables (a) testing of publication bias, (b) effect size estimation, and (c) testing of the null-hypothesis of no effect. No current method for meta-analysis possesses all 3 qualities. Application of p-uniform is straightforward because no additional data on missing studies are needed and no sophisticated assumptions or choices need to be made before applying it. Simulations show that p-uniform generally outperforms the trim-and-fill method and the test of excess significance (TES; Ioannidis & Trikalinos, 2007b) if publication bias exists and population effect size is homogenous or heterogeneity is slight. For illustration, p-uniform and other publication bias analyses are applied to the meta-analysis of McCall and Carriger (1993) examining the association between infants' habituation to a stimulus and their later cognitive ability (IQ). We conclude that p-uniform is a valuable technique for examining publication bias and estimating population effects in fixed-effect meta-analyses, and as sensitivity analysis to draw inferences about publication bias.

Original languageEnglish
Pages (from-to)293-309
Number of pages17
JournalPsychological Methods
Volume20
Issue number3
DOIs
Publication statusPublished - 1 Sept 2015

Keywords

  • Meta-analysis
  • Publication bias
  • Sensitivity analysis
  • Test of excess significance
  • The trim-and-fill method

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