Development of a model to predict psychotherapy response for depression among Veterans

Author:

Ziobrowski Hannah N.,Cui Ruifeng,Ross Eric L.,Liu Howard,Puac-Polanco Victor,Turner Brett,Leung Lucinda B.,Bossarte Robert M.,Bryant Corey,Pigeon Wilfred R.,Oslin David W.,Post Edward P.,Zaslavsky Alan M.,Zubizarreta Jose R.,Nierenberg Andrew A.,Luedtke Alex,Kennedy Chris J.,Kessler Ronald C.ORCID

Abstract

Abstract Background Fewer than half of patients with major depressive disorder (MDD) respond to psychotherapy. Pre-emptively informing patients of their likelihood of responding could be useful as part of a patient-centered treatment decision-support plan. Methods This prospective observational study examined a national sample of 807 patients beginning psychotherapy for MDD at the Veterans Health Administration. Patients completed a self-report survey at baseline and 3-months follow-up (data collected 2018–2020). We developed a machine learning (ML) model to predict psychotherapy response at 3 months using baseline survey, administrative, and geospatial variables in a 70% training sample. Model performance was then evaluated in the 30% test sample. Results 32.0% of patients responded to treatment after 3 months. The best ML model had an AUC (SE) of 0.652 (0.038) in the test sample. Among the one-third of patients ranked by the model as most likely to respond, 50.0% in the test sample responded to psychotherapy. In comparison, among the remaining two-thirds of patients, <25% responded to psychotherapy. The model selected 43 predictors, of which nearly all were self-report variables. Conclusions Patients with MDD could pre-emptively be informed of their likelihood of responding to psychotherapy using a prediction tool based on self-report data. This tool could meaningfully help patients and providers in shared decision-making, although parallel information about the likelihood of responding to alternative treatments would be needed to inform decision-making across multiple treatments.

Funder

U.S. Department of Veterans Affairs

Publisher

Cambridge University Press (CUP)

Subject

Psychiatry and Mental health,Applied Psychology

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