MMODELYST
Papers/Isotonic Survival Regression: Calibrated Survival Distributions from Deep Cox Models
PAP

Isotonic Survival Regression: Calibrated Survival Distributions from Deep Cox Models

May 15, 2026

arXiv
Abstract

Time-to-event data is widespread across the life sciences and engineering, but it is typically encountered together with censoring, which complicates the application of standard machine learning methods. Deep Cox models have emerged as a popular method for analyzing time-to-event data because they gracefully handle censoring and can be used with unstructured data such as clinical text reports, genomic sequences, and pathology images. However, their predicted survival probabilities are often poorly calibrated, thus limiting their practical utility. In this paper, we propose a novel post hoc calibration method for Deep Cox models that uses isotonic regression to refine predicted survival probabilities without affecting discriminative power. We establish favorable theoretical guarantees, including a double-robustness property and asymptotic calibration. Experiments on synthetic and real-world clinical data demonstrate the empirical effectiveness of our method.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Anchit Jain, Kevin Zhang, Stephen Bates
Your notes (browser-local)
saved
arXiv:2605.16571