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      Quantifying Publication Bias in Meta-Analysis

      research-article
      ,
      Biometrics
      Heterogeneity, Meta-analysis, Publication bias, Skewness, Standardized deviate, Statistical power

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          Summary

          Publication bias is a serious problem in systematic reviews and meta-analyses, which can affect the validity and generalization of conclusions. Currently, approaches to dealing with publication bias can be distinguished into two classes: selection models and funnel-plot-based methods. Selection models use weight functions to adjust the overall effect size estimate and are usually employed as sensitivity analyses to assess the potential impact of publication bias. Funnel-plot-based methods include visual examination of a funnel plot, regression and rank tests, and the nonparametric trim and fill method. Although these approaches have been widely used in applications, measures for quantifying publication bias are seldom studied in the literature. Such measures can be used as a characteristic of a meta-analysis; also, they permit comparisons of publication biases between different meta-analyses. Egger’s regression intercept may be considered as a candidate measure, but it lacks an intuitive interpretation. This article introduces a new measure, the skewness of the standardized deviates, to quantify publication bias. This measure describes the asymmetry of the collected studies’ distribution. In addition, a new test for publication bias is derived based on the skewness. Large sample properties of the new measure are studied, and its performance is illustrated using simulations and three case studies.

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          Author and article information

          Journal
          0370625
          1170
          Biometrics
          Biometrics
          Biometrics
          0006-341X
          1541-0420
          4 November 2017
          15 November 2017
          September 2018
          27 September 2018
          : 74
          : 3
          : 785-794
          Affiliations
          Division of Biostatistics, University of Minnesota, Minneapolis, Minnesota 55455, U.S.A
          Author notes
          Article
          PMC5953768 PMC5953768 5953768 nihpa917284
          10.1111/biom.12817
          5953768
          29141096
          4dd9d59f-7771-4987-a823-15359d3f1475
          History
          Categories
          Article

          Heterogeneity,Meta-analysis,Publication bias,Skewness,Standardized deviate,Statistical power

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