MLAIMEAug 6, 2016

Deep Survival Analysis

arXiv:1608.02158v2226 citations
AI Analysis

This work addresses the problem of improving predictive tools for physicians using EHR data, representing a novel method for a known bottleneck in survival analysis.

The paper tackled survival analysis for electronic health record data by introducing a hierarchical generative model that jointly models observations and aligns them by failure time, resulting in significantly superior patient risk stratification for coronary heart disease compared to the Framingham risk score.

The electronic health record (EHR) provides an unprecedented opportunity to build actionable tools to support physicians at the point of care. In this paper, we investigate survival analysis in the context of EHR data. We introduce deep survival analysis, a hierarchical generative approach to survival analysis. It departs from previous approaches in two primary ways: (1) all observations, including covariates, are modeled jointly conditioned on a rich latent structure; and (2) the observations are aligned by their failure time, rather than by an arbitrary time zero as in traditional survival analysis. Further, it (3) scalably handles heterogeneous (continuous and discrete) data types that occur in the EHR. We validate deep survival analysis model by stratifying patients according to risk of developing coronary heart disease (CHD). Specifically, we study a dataset of 313,000 patients corresponding to 5.5 million months of observations. When compared to the clinically validated Framingham CHD risk score, deep survival analysis is significantly superior in stratifying patients according to their risk.

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