Methods of multi-indication meta-analysis for health technology assessment: a simulation study
David Glynn, Pedro Saramago, Janharpreet Singh, Sylwia Bujkiewicz, Sofia Dias, Stephen Palmer, Marta Soares

TL;DR
This study evaluates multi-indication meta-analysis methods through simulations to improve health technology assessments by sharing evidence across indications, especially when data are limited or heterogeneous.
Contribution
It introduces and compares univariate and bivariate multi-indication meta-analysis models, highlighting their potential to reduce uncertainty in HTA.
Findings
Univariate methods reduce uncertainty when OS data are available.
Mixture models do not significantly outperform simpler models.
Bivariate surrogacy models can correct bias when OS data are missing and outliers are present.
Abstract
A growing number of oncology treatments, such as bevacizumab, are used across multiple indications. However, in health technology assessment (HTA), their clinical and cost-effectiveness are typically appraised within a single target indication. This approach excludes a broader evidence base across other indications. To address this, we explored multi-indication meta-analysis methods that share evidence across indications. We conducted a simulation study to evaluate alternative multi-indication synthesis models. This included univariate (mixture and non-mixture) methods synthesizing overall survival (OS) data and bivariate surrogacy models jointly modelling treatment effects on progression-free survival (PFS) and OS, pooling surrogacy parameters across indications. Simulated datasets were generated using a multistate disease progression model under various scenarios, including…
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Taxonomy
TopicsTechnology Assessment and Management
