Variable selection in high dimensions for discrete-outcome individualized treatment rules: Reducing severity of depression symptoms

Biostatistics. 2023 Aug 31:kxad022. doi: 10.1093/biostatistics/kxad022. Online ahead of print.

Abstract

Despite growing interest in estimating individualized treatment rules, little attention has been given the binary outcome setting. Estimation is challenging with nonlinear link functions, especially when variable selection is needed. We use a new computational approach to solve a recently proposed doubly robust regularized estimating equation to accomplish this difficult task in a case study of depression treatment. We demonstrate an application of this new approach in combination with a weighted and penalized estimating equation to this challenging binary outcome setting. We demonstrate the double robustness of the method and its effectiveness for variable selection. The work is motivated by and applied to an analysis of treatment for unipolar depression using a population of patients treated at Kaiser Permanente Washington.

Keywords: Adaptive treatment strategies; Antidepressant treatment; Estimating equations; Precision medicine; Regularization.