A simulation and case study to evaluate the extrapolation performance of flexible Bayesian survival models when incorporating real-world data
A simulation and case study to evaluate the extrapolation performance of flexible Bayesian survival models when incorporating real-world data
Background: Assessment of long-term survival for health technology assessment often necessitates extrapolation beyond the duration of a clinical trial. Without robust methods and external data, extrapolations are unreliable. Flexible Bayesian survival models that incorporate longer-term data sources, including registry data and population mortality, have been proposed as an alternative to using standard parametric models with trial data alone. Methods: The accuracy and uncertainty of extrapolations from the survextrap Bayesian survival model and R package were evaluated. In case studies and simulations, we assessed the accuracy of estimates with and without long-term data, under different assumptions about the long-term hazard rate and how it differs between datasets, and about treatment effects. Results: The survextrap model gives accurate extrapolations of long-term survival when long-term data on the patients of interest are included. Even using moderately biased external data gives improvements over using the short-term trial data alone. Furthermore, the model gives accurate extrapolations of differences in survival between treatment groups, provided that a reasonably accurate assumption is made about how the treatment effect will change over time. If no long-term data are available, then the model can quantify structural uncertainty about potential future changes in hazard rates. Conclusions: This analysis shows that Bayesian modelling can give accurate and reliable survival extrapolations by making the most of all available trial and real-world data. This work improves confidence in the use of a powerful tool for evidence-based healthcare decision-making.
Iain R. Timmins、Fatemeh Torabi、Christopher H. Jackson、Paul C. Lambert、Michael J. Sweeting
医学研究方法
Iain R. Timmins,Fatemeh Torabi,Christopher H. Jackson,Paul C. Lambert,Michael J. Sweeting.A simulation and case study to evaluate the extrapolation performance of flexible Bayesian survival models when incorporating real-world data[EB/OL].(2025-05-22)[2025-06-15].https://arxiv.org/abs/2505.16835.点此复制
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