| Literature DB >> 33834174 |
Paidamoyo Chapfuwa1, Chenyang Tao1, Chunyuan Li1, Courtney Page1, Benjamin Goldstein1, Lawrence Carin1, Ricardo Henao1.
Abstract
Modern health data science applications leverage abundant molecular and electronic health data, providing opportunities for machine learning to build statistical models to support clinical practice. Time-to-event analysis, also called survival analysis, stands as one of the most representative examples of such statistical models. We present a deep-network-based approach that leverages adversarial learning to address a key challenge in modern time-to-event modeling: nonparametric estimation of event-time distributions. We also introduce a principled cost function to exploit information from censored events (events that occur subsequent to the observation window). Unlike most time-to-event models, we focus on the estimation of time-to-event distributions, rather than time ordering. We validate our model on both benchmark and real datasets, demonstrating that the proposed formulation yields significant performance gains relative to a parametric alternative, which we also propose.Entities:
Year: 2018 PMID: 33834174 PMCID: PMC8025546
Source DB: PubMed Journal: Proc Mach Learn Res