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arxiv:2101.03170

BDNNSurv: Bayesian deep neural networks for survival analysis using pseudo values

Published on Jan 7, 2021
Authors:
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Abstract

A Bayesian hierarchical deep neural network model is proposed for survival data analysis, providing both point estimates and uncertainty quantification.

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There has been increasing interest in modeling survival data using deep learning methods in medical research. In this paper, we proposed a Bayesian hierarchical deep neural networks model for modeling and prediction of survival data. Compared with previously studied methods, the new proposal can provide not only point estimate of survival probability but also quantification of the corresponding uncertainty, which can be of crucial importance in predictive modeling and subsequent decision making. The favorable statistical properties of point and uncertainty estimates were demonstrated by simulation studies and real data analysis. The Python code implementing the proposed approach was provided.

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