Detecting and correcting for publication bias in meta-analysis - A truncated normal distribution approach

Stat Methods Med Res. 2018 Sep;27(9):2722-2741. doi: 10.1177/0962280216684671. Epub 2016 Dec 26.

Abstract

Publication bias can significantly limit the validity of meta-analysis when trying to draw conclusion about a research question from independent studies. Most research on detection and correction for publication bias in meta-analysis focus mainly on funnel plot-based methodologies or selection models. In this paper, we formulate publication bias as a truncated distribution problem, and propose new parametric solutions. We develop methodologies of estimating the underlying overall effect size and the severity of publication bias. We distinguish the two major situations, in which publication bias may be induced by: (1) small effect size or (2) large p-value. We consider both fixed and random effects models, and derive estimators for the overall mean and the truncation proportion. These estimators will be obtained using maximum likelihood estimation and method of moments under fixed- and random-effects models, respectively. We carried out extensive simulation studies to evaluate the performance of our methodology, and to compare with the non-parametric Trim and Fill method based on funnel plot. We find that our methods based on truncated normal distribution perform consistently well, both in detecting and correcting publication bias under various situations.

Keywords: Maximum likelihood; Trim and Fill; meta-analysis; method of moments; publication bias; selection methods; truncated normal distribution.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Data Interpretation, Statistical
  • Meta-Analysis as Topic*
  • Normal Distribution*
  • Publication Bias*