LASSO Based State Transition Modeling with Interactions in Adaptive Interdisciplinary Pain Management
Degree granted by The University of Texas at Arlington
Abstract
The Eugene McDermott Center for Pain Management at the University of Texas Southwestern Medical Center has an interdisciplinary pain management program for chronic pain. This program treats patients with a holistic view of reducing chronic pain and improving their physical, mental, and social well-being through treatment interventions. The development of an adaptive treatment decision tool is main goal of the research project. This program is modeled as a two-stage adaptive treatment decision problem, with state transition models representing the transition of patient state, treatment, and outcome variables from stage 1 to stage 2. Interactions between the patient state and treatments play a major role in determining a personalized treatment plan for individual patients. In this research, we address the challenge of modeling state-treatment interactions. We propose a LASSO based approach to develop the state transition models. The proposed approach is studied using a simulated case study structured based on the McDermott Center data. The state transition models built using the proposed method are then formulated within the multi-objective two-stage stochastic programming optimization to obtain an optimal treatment plan.