Advanced methods and implementations for the meta-analyses of animal models: Current practices and future recommendations

Neurosci Biobehav Rev. 2023 Mar:146:105016. doi: 10.1016/j.neubiorev.2022.105016. Epub 2022 Dec 23.

Abstract

Meta-analytic techniques have been widely used to synthesize data from animal models of human diseases and conditions, but these analyses often face two statistical challenges due to complex nature of animal data (e.g., multiple effect sizes and multiple species): statistical dependency and confounding heterogeneity. These challenges can lead to unreliable and less informative evidence, which hinders the translation of findings from animal to human studies. We present a literature survey of meta-analysis using animal models (animal meta-analysis), showing that these issues are not adequately addressed in current practice. To address these challenges, we propose a meta-analytic framework based on multilevel (linear mixed-effects) models. Through conceptualization, formulations, and worked examples, we illustrate how this framework can appropriately address these issues while allowing for testing new questions. Additionally, we introduce other advanced techniques such as multivariate models, robust variance estimation, and meta-analysis of emergent effect sizes, which can deliver robust inferences and novel biological insights. We also provide a tutorial with annotated R code to demonstrate the implementation of these techniques.

Keywords: Animal experiment; Animal research; Meta-regression; Multilevel meta-analysis; Multivariate meta-analysis; New effect size; PRISMA; Publication bias; Quantitative method; Research synthesis; Systematic review.

Publication types

  • Meta-Analysis
  • Review
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Humans
  • Models, Animal*
  • Statistics as Topic