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TraCeR: Transformer-Based Competing Risk Analysis with Longitudinal Covariates

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Survival analysis is a critical tool for modeling time-to-event data. Recent deep learning-based models have reduced various modeling assumptions including proportional hazard and linearity. However, a persistent challenge remains in incorporating longitudinal covariates, with prior work largely focusing on cross-sectional features, and in assessing calibration of these models, with research primarily focusing on discrimination during evaluation. We introduce TraCeR, a transformer-based survival analysis framework for incorporating longitudinal covariates. Based on a factorized self-attention architecture, TraCeR estimates the hazard function from a sequence of measurements, naturally capturing temporal covariate interactions without assumptions about the underlying data-generating process. The framework is inherently designed to handle censored data and competing events. Experiments on multiple real-world datasets demonstrate that TraCeR achieves substantial and statistically significant performance improvements over state-of-the-art methods. Furthermore, our evaluation extends beyond discrimination metrics and assesses model calibration, addressing a key oversight in literature.

Maxmillan Ries, Sohan Seth• 2025

Related benchmarks

TaskDatasetResultRank
Death PredictionMIMIC IV
Integrated Brier Score (IBS)0.014
8
Death PredictionPBC2
IBS0.113
8
Hemorrhage PredictionMIMIC-III
Integrated Brier Score0.014
8
Infarction PredictionMIMIC-III
Integrated Brier Score (IBS)0.011
8
Pneumonia PredictionMIMIC-III
Integrated Brier Score0.005
8
Respiratory Failure PredictionMIMIC-III
IBS0.049
8
Sepsis PredictioneICU
IBS0.055
8
Sepsis PredictionMIMIC IV
IBS0.111
8
Septicemia PredictionMIMIC-III
Integrated Brier Score (IBS)0.06
8
Survival Analysis (Death)MIMIC IV
Ctd0.918
8
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