What if we had built a prediction model with a survival super learner instead of a Cox model 10 years ago?
Arthur Chatton, \'Emilie Pilote, Kevin Assob Feugo and, H\'elo\"ise Cardinal, Robert W. Platt, Mireille E Schnitzer

TL;DR
This study compares a survival super learner and a Cox model for predicting kidney transplant failure, showing the super learner's superior discrimination initially but similar calibration drift over time.
Contribution
It introduces a survival super learner approach for time-to-event prediction and evaluates its performance and calibration stability over a decade.
Findings
Super learner achieved higher initial discrimination than the Cox model.
Discrimination of the super learner decreased over time, while Cox remained stable.
Both models exhibited calibration drift, suggesting recalibration is necessary.
Abstract
Objective: This study sought to compare the drop in predictive performance over time according to the modeling approach (regression versus machine learning) used to build a kidney transplant failure prediction model with a time-to-event outcome. Study Design and Setting: The Kidney Transplant Failure Score (KTFS) was used as a benchmark. We reused the data from which it was developed (DIVAT cohort, n=2,169) to build another prediction algorithm using a survival super learner combining (semi-)parametric and non-parametric methods. Performance in DIVAT was estimated for the two prediction models using internal validation. Then, the drop in predictive performance was evaluated in the same geographical population approximately ten years later (EKiTE cohort, n=2,329). Results: In DIVAT, the super learner achieved better discrimination than the KTFS, with a tAUROC of 0.83 (0.79-0.87)…
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