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 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 multiple treatment contrasts. The bvNMA methods estimate the effects on both outcomes for all treatment contrasts individually in a single analysis. At the same time, they allow us to model the trial‐level surrogacy patterns within each treatment contrast and treatment‐level surrogacy, thus enabling predictions of the treatment effect on the final outcome either for a new study in a new population or for a new treatment. Modelling assumptions about the between‐studies heterogeneity and the network consistency, and their impact on predictions, are investigated using an illustrative example in advanced colorectal cancer and in a simulation study. When the strength of the surrogate relationships varies across treatment contrasts, bvNMA has the advantage of identifying treatment comparisons for which surrogacy holds, thus leading to better predictions.
Highlights
Surrogate endpoints are very important in the drug development process, at both the trial design and the evaluation stage
When applying bivariate network meta-analysis (bvNMA) models 1a to 1c and 2a to 2c to the data, the between-studies correlations differ across treatment contrasts, with the highest correlation obtained for treatment contrast AC
We presented there an additional scenario, with a mixed surrogacy pattern across treatment contrasts to illustrate better how the proposed methods differentiate between the surrogate relationships across treatment contrasts and allow for identifying treatment contrasts with high surrogacy patterns
Summary
Surrogate endpoints are very important in the drug development process, at both the trial design and the evaluation stage. They are useful when they can provide early measurement of the treatment effect, in settings where a long. PFS may be of primary interest and tumour response (TR) is investigated as a short term surrogate endpoint to PFS. Before they can be used in evaluation of new health technologies, candidate surrogate endpoints have to be assessed for their predictive value of the treatment effect on the final clinical outcome. Surrogate outcomes are validated by estimating the pattern of association between the treatment effects on surrogate and final endpoints across trials, in different populations and/or investigating different treatments, using meta-analytic techniques.
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