Subgroup identification in individual patient data meta-analysis using model-based recursive partitioning
Cynthia Huber, Norbert Benda, Tim Friede

TL;DR
This paper introduces metaMOB, a new method using generalized mixed-effects model trees to identify subgroups with different treatment effects in IPD meta-analyses, effectively accounting for between-trial heterogeneity.
Contribution
The paper proposes metaMOB, a novel approach combining GLMM trees with fixed effects to improve subgroup detection in IPD meta-analyses, outperforming existing methods in simulations.
Findings
metaMOB reduces false discovery rates
metaMOB improves subgroup identification accuracy
metaMOB provides better treatment effect estimates
Abstract
Model-based recursive partitioning (MOB) can be used to identify subgroups with differing treatment effects. The detection rate of treatment-by-covariate interactions and the accuracy of identified subgroups using MOB depend strongly on the sample size. Using data from multiple randomized controlled clinical trials can overcome the problem of too small samples. However, naively pooling data from multiple trials may result in the identification of spurious subgroups as differences in study design, subject selection and other sources of between-trial heterogeneity are ignored. In order to account for between-trial heterogeneity in individual participant data (IPD) meta-analysis random-effect models are frequently used. Commonly, heterogeneity in the treatment effect is modelled using random effects whereas heterogeneity in the baseline risks is modelled by either fixed effects or random…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Statistical Methods and Bayesian Inference · Meta-analysis and systematic reviews
