Over time, the performance of clinical prediction models may deteriorate due to changes in clinical management, data quality, disease risk and/or patient mix. Such prediction models must be updated in order to remain useful. In this study, we investigate dynamic model updating of clinical survival prediction models. In contrast to discrete or one-time updating, dynamic updating refers to a repeated process for updating a prediction model with new data. We aim to extend previous research which focused largely on binary outcome prediction models by concentrating on time-to-event outcomes. We were motivated by the rapidly changing environment seen during the COVID-19 pandemic where mortality rates changed over time and new treatments and vaccines were introduced.
CITATION STYLE
Tanner, K. T., Keogh, R. H., Coupland, C. A. C., Hippisley-Cox, J., & Diaz-Ordaz, K. (2023). Dynamic updating of clinical survival prediction models in a changing environment. Diagnostic and Prognostic Research, 7(1). https://doi.org/10.1186/s41512-023-00163-z
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