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Semi-Structured Deep Piecewise Exponential Models

MCML Authors

Abstract

We propose a versatile framework for survival analysis that combines advanced concepts from statistics with deep learning. The presented framework is based on piecewise expo-nential models and thereby supports various survival tasks, such as competing risks and multi-state modeling, and further allows for estimation of time-varying effects and time-varying features. To also include multiple data sources and higher-order interaction effects into the model, we embed the model class in a neural network and thereby enable the si-multaneous estimation of both inherently interpretable structured regression inputs as well as deep neural network components which can potentially process additional unstructured data sources. A proof of concept is provided by using the framework to predict Alzheimer’s disease progression based on tabular and 3D point cloud data and applying it to synthetic data.

inproceedings KPW+21


AAAI-SPACA 2021

AAAI Spring Symposium Series on Survival Prediction: Algorithms, Challenges and Applications. Palo Alto, California, USA, Mar 21-24, 2021.

Authors

P. Kopper • S. Pölsterl • C. WachingerB. BischlA. BenderD. Rügamer

Links

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Research Areas

 A1 | Statistical Foundations & Explainability

 C1 | Medicine

BibTeXKey: KPW+21

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