An optimal dynamic treatment regime estimator for indefinite-horizon survival outcomes

Matthew Egberg Co-Author
Department of Pediatrics, Division of Pediatric Gastroenterology, University of North Carolina Schoo
 
Michael Kosorok Co-Author
University of North Carolina at Chapel Hill
 
Jane She First Author
 
Jane She Presenting Author
 
Sunday, Aug 3: 2:20 PM - 2:35 PM
1186 
Contributed Papers 
Music City Center 

Description

We propose a new method in indefinite-horizon settings for estimating optimal dynamic treatment regimes for time-to-event outcomes. This method allows patients to have different numbers of treatment stages and is constructed using generalized survival random forests to maximize mean survival time. We use summarized history and data pooling, preventing data from growing in dimension as a patient's decision points increase. The algorithm operates through model re-fitting, resulting in a single model optimized for all patients and all stages. We have derived theoretical properties of the estimator such as consistency of the estimator and value function and characterize the number of refitting iterations needed. We have also conducted a simulation study of patients with a flexible number of treatment stages to examine finite-sample performance of the estimator. We will illustrate use of the algorithm using administrative insurance claims data for pediatric Crohn's disease patients.

Keywords

precision medicine

survival analysis

dynamic treatment regimes

random forests 

Main Sponsor

Biopharmaceutical Section