Rethinking meta-analysis: assessing case-mix heterogeneity when combining treatment effects across patient populations

08/28/2019
by   Tat-Thang Vo, et al.
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Case-mix heterogeneity across studies complicates meta-analyses. As a result of this, treatments that are equally effective on patient subgroups may appear to have different effectiveness on patient populations with different case mix. It is therefore important that meta-analyses be explicit for what patient population they describe the treatment effect. To achieve this, we develop alternative approaches for meta-analysis of randomized clinical trials, which use individual patient data (IPD) from all trials to infer the treatment effect for the patient population in a given trial, based on direct standardization using either outcome regression (OCR) or inverse probability weighting (IPW). Accompanying random-effect meta-analysis models are developed. The new approaches enable disentangling heterogeneity due to case-mix inconsistency from that due to beyond case-mix reasons.

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