Bivariate network meta-analysis for surrogate endpoint evaluation
Sylwia Bujkiewicz, Dan Jackson, John R Thompson, Rebecca Turner, Keith, R Abrams, Ian R White

TL;DR
This paper introduces bivariate network meta-analysis methods to evaluate and predict treatment effects on surrogate endpoints and final outcomes across heterogeneous trials and treatments.
Contribution
The paper develops a novel bvNMA approach that models treatment effects on surrogate and final outcomes simultaneously, accounting for heterogeneity and varying surrogacy patterns.
Findings
bvNMA effectively estimates treatment effects for multiple contrasts.
It improves prediction accuracy when surrogacy varies across treatments.
The method is demonstrated with colorectal cancer data.
Abstract
Surrogate endpoints are very important in regulatory decision-making in healthcare, in particular if they can be measured early compared to the long-term final clinical outcome and act as good predictors of clinical benefit. Bivariate meta-analysis methods can be used to evaluate surrogate endpoints and to predict the treatment effect on the final outcome from the treatment effect measured on a surrogate endpoint. However, candidate surrogate endpoints are often imperfect, and the level of association between the treatment effects on the surrogate and final outcomes may vary between treatments. This imposes a limitation on the pairwise methods which do not differentiate between the treatments. We develop bivariate network meta-analysis (bvNMA) methods which combine data on treatment effects on the surrogate and final outcomes, from trials investigating heterogeneous treatment contrasts.…
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