English

Survival-oriented embeddings for improving accessibility to complex data structures

Machine Learning 2021-11-04 v2

Abstract

Deep learning excels in the analysis of unstructured data and recent advancements allow to extend these techniques to survival analysis. In the context of clinical radiology, this enables, e.g., to relate unstructured volumetric images to a risk score or a prognosis of life expectancy and support clinical decision making. Medical applications are, however, associated with high criticality and consequently, neither medical personnel nor patients do usually accept black box models as reason or basis for decisions. Apart from averseness to new technologies, this is due to missing interpretability, transparency and accountability of many machine learning methods. We propose a hazard-regularized variational autoencoder that supports straightforward interpretation of deep neural architectures in the context of survival analysis, a field highly relevant in healthcare. We apply the proposed approach to abdominal CT scans of patients with liver tumors and their corresponding survival times.

Keywords

Cite

@article{arxiv.2110.11303,
  title  = {Survival-oriented embeddings for improving accessibility to complex data structures},
  author = {Tobias Weber and Michael Ingrisch and Matthias Fabritius and Bernd Bischl and David Rügamer},
  journal= {arXiv preprint arXiv:2110.11303},
  year   = {2021}
}

Comments

NeurIPS 2021 Workshop, Bridging the Gap: From Machine Learning Research to Clinical Practice

R2 v1 2026-06-24T07:04:57.538Z