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Adversarial Time-to-Event Modeling

2018·24 Zitationen·PubMedOpen Access
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24

Zitationen

7

Autoren

2018

Jahr

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.

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Autoren

Institutionen

Themen

Statistical Methods and InferenceMachine Learning in HealthcareMetabolomics and Mass Spectrometry Studies
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