Robust point and variance estimation for meta‐analyses with selective reporting and dependent effect sizes

Author:

Yang Yefeng1ORCID,Lagisz Malgorzata1ORCID,Williams Coralie12ORCID,Noble Daniel W. A.3ORCID,Pan Jinming4ORCID,Nakagawa Shinichi156ORCID

Affiliation:

1. Evolution and Ecology Research Centre and School of Biological, Earth and Environmental Sciences University of New South Wales Sydney New South Wales Australia

2. School of Mathematics and Statistics University of New South Wales Sydney Australia

3. Division of Ecology and Evolution, Research School of Biology The Australian National University Canberra Australian Capital Territory Australia

4. Department of Biosystems Engineering Zhejiang University Hangzhou China

5. Department of Biological Sciences University of Alberta Edmonton Alberta Canada

6. Theoretical Sciences Visiting Program Okinawa Institute of Science and Technology Graduate University Onna Japan

Abstract

Abstract Meta‐analysis produces a quantitative synthesis of evidence‐based knowledge, shaping not only research trends but also policies and practices in biology. However, two statistical issues, selective reporting and statistical dependence, can severely distort meta‐analytic parameter estimation and inference. Here, we re‐analyse 448 meta‐analyses to demonstrate a new two‐step procedure to deal with two common challenges in biological meta‐analyses that often occur simultaneously: publication bias and non‐independence. First, we employ bias‐robust weighting schemes under the generalized least square estimator to obtain average effect sizes that are more robust to selective reporting. We then use cluster‐robust variance estimation to account for statistical dependence, reducing bias in estimating standard errors and ensuring valid statistical inference. The first step of our approach demonstrates comparable performance in estimating average effect sizes to the existing publication‐bias adjustment methods in the presence of selective reporting. This equivalence holds across two publication bias selection processes. The second step achieves estimates of standard errors consistent with the multilevel meta‐analytic model, a benchmark method with adequate control of Type I error rates for multiple, statistically dependent effect sizes. Re‐analyses of 448 meta‐analyses show that ignoring these two issues tends to overestimate effect sizes by an average of 110% and underestimate standard errors by 120%. To facilitate implementation, we have developed a website including a step‐by‐step tutorial. Complementing current meta‐analytic workflows with the proposed method as a sensitivity analysis can facilitate a transition to a more robust approach in quantitative evidence synthesis.

Funder

Australian Research Council

National Natural Science Foundation of China

Publisher

Wiley

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