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A framework for meta-analysis of prediction model studies with binary and time-to-event outcomes.


ABSTRACT: It is widely recommended that any developed-diagnostic or prognostic-prediction model is externally validated in terms of its predictive performance measured by calibration and discrimination. When multiple validations have been performed, a systematic review followed by a formal meta-analysis helps to summarize overall performance across multiple settings, and reveals under which circumstances the model performs suboptimal (alternative poorer) and may need adjustment. We discuss how to undertake meta-analysis of the performance of prediction models with either a binary or a time-to-event outcome. We address how to deal with incomplete availability of study-specific results (performance estimates and their precision), and how to produce summary estimates of the c-statistic, the observed:expected ratio and the calibration slope. Furthermore, we discuss the implementation of frequentist and Bayesian meta-analysis methods, and propose novel empirically-based prior distributions to improve estimation of between-study heterogeneity in small samples. Finally, we illustrate all methods using two examples: meta-analysis of the predictive performance of EuroSCORE II and of the Framingham Risk Score. All examples and meta-analysis models have been implemented in our newly developed R package "metamisc".

SUBMITTER: Debray TP 

PROVIDER: S-EPMC6728752 | biostudies-literature | 2019 Sep

REPOSITORIES: biostudies-literature

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A framework for meta-analysis of prediction model studies with binary and time-to-event outcomes.

Debray Thomas Pa TP   Damen Johanna Aag JA   Riley Richard D RD   Snell Kym K   Reitsma Johannes B JB   Hooft Lotty L   Collins Gary S GS   Moons Karel Gm KG  

Statistical methods in medical research 20180723 9


It is widely recommended that any developed-diagnostic or prognostic-prediction model is externally validated in terms of its predictive performance measured by calibration and discrimination. When multiple validations have been performed, a systematic review followed by a formal meta-analysis helps to summarize overall performance across multiple settings, and reveals under which circumstances the model performs suboptimal (alternative poorer) and may need adjustment. We discuss how to undertak  ...[more]

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