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Modelling approaches for meta‐analyses with dependent effect sizes in ecology and evolution: A simulation study
by
Yang, Yefeng
, Williams, Coralie
, Nakagawa, Shinichi
, Warton, David I.
in
cross‐classified data
/ meta‐regression
/ mixed‐effects models
/ multi‐species
/ non‐independence
/ phylogenetic comparative methods
/ sandwich estimators
2025
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Modelling approaches for meta‐analyses with dependent effect sizes in ecology and evolution: A simulation study
by
Yang, Yefeng
, Williams, Coralie
, Nakagawa, Shinichi
, Warton, David I.
in
cross‐classified data
/ meta‐regression
/ mixed‐effects models
/ multi‐species
/ non‐independence
/ phylogenetic comparative methods
/ sandwich estimators
2025
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Do you wish to request the book?
Modelling approaches for meta‐analyses with dependent effect sizes in ecology and evolution: A simulation study
by
Yang, Yefeng
, Williams, Coralie
, Nakagawa, Shinichi
, Warton, David I.
in
cross‐classified data
/ meta‐regression
/ mixed‐effects models
/ multi‐species
/ non‐independence
/ phylogenetic comparative methods
/ sandwich estimators
2025
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Modelling approaches for meta‐analyses with dependent effect sizes in ecology and evolution: A simulation study
Journal Article
Modelling approaches for meta‐analyses with dependent effect sizes in ecology and evolution: A simulation study
2025
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Overview
In ecology and evolution, meta‐analysis is an important tool to synthesise findings across separate studies and identify sources of heterogeneity. However, ecological and evolutionary data often exhibit complex dependence structures, such as shared sources of variation within studies, phylogenetic relationships and hierarchical sampling designs. Recent statistical advancements offer approaches for handling such complexities in dependence, yet these methods remain under‐utilised or unfamiliar to ecologists and evolutionary biologists. We conducted extensive simulations to evaluate modelling approaches for handling dependence in effect sizes and sampling errors in ecological and evolutionary meta‐analyses. We assessed the performance of multilevel models, incorporating an assumed sampling error variance–covariance (VCV) matrix (which account for within‐study correlation), cluster robust variance estimation (CRVE) methods and their combination across different true within‐study correlations. Finally, we showcased the applications of these models in two case studies of published meta‐analyses. Multilevel models produced unbiased regression coefficient estimates, and when a sampling VCV matrix was used, it provided accurate random effect variance components estimates within and among studies. However, the latter had no impact on regression coefficient estimates if the model was misspecified. In simulations involving phylogenetic multilevel meta‐analysis, models using CRVE methods generated narrower confidence intervals and lower coverage rates than the nominal expectations. The case study results showed the importance of considering a sampling error VCV matrix to improve the model fit. Our results provide clear modelling recommendations for ecologists and evolutionary biologists conducting meta‐analyses. To improve the precision of variance component estimates, we recommend constructing a VCV matrix that accounts for dependencies in sampling errors within studies. Although CRVE methods provide robust inference under certain conditions, we caution against their use with crossed random effects, such as phylogenetic multilevel meta‐analyses, as CRVE methods currently do not account for multi‐way clustering and may inflate Type I error rates. Finally, we recommend using multilevel meta‐analytic models to account for heterogeneity at all relevant hierarchical levels and to follow guidance on inference methods to ensure accurate coverage of the overall mean.
Publisher
Wiley
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