4.7 Article

Development of a model to predict combined antidepressant medication and psychotherapy treatment response for depression among veterans

Journal

JOURNAL OF AFFECTIVE DISORDERS
Volume 326, Issue -, Pages 111-119

Publisher

ELSEVIER
DOI: 10.1016/j.jad.2023.01.082

Keywords

Antidepressant medication; Clinical decision support; Depression; Machine learning; Treatment response; Veterans Health Administration

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A machine learning model was developed to predict treatment response to combined antidepressant and psychotherapy among patients in the US Veterans Health Administration. The model showed that various factors such as episode characteristics, personality/psychological resilience, recent stressors, and treatment characteristics were strong predictors of treatment response.
Background: Although research shows that more depressed patients respond to combined antidepressants (ADM) and psychotherapy than either alone, many patients do not respond even to combined treatment. A reliable prediction model for this could help treatment decision-making. We attempted to create such a model using machine learning methods among patients in the US Veterans Health Administration (VHA). Methods: A 2018-2020 national sample of VHA patients beginning combined depression treatment completed self-report assessments at baseline and 3 months (n = 658). A learning model was developed using baseline selfreport, administrative, and geospatial data to predict 3-month treatment response defined by reductions in the Quick Inventory of Depression Symptomatology Self-Report and/or in the Sheehan Disability Scale. The model was developed in a 70 % training sample and tested in the remaining 30 % test sample. Results: 30.0 % of patients responded to treatment. The prediction model had a test sample AUC-ROC of 0.657. A strong gradient was found in probability of treatment response from 52.7 % in the highest predicted quintile to 14.4 % in the lowest predicted quintile. The most important predictors were episode characteristics (symptoms, comorbidities, history), personality/psychological resilience, recent stressors, and treatment characteristics. Limitations: Restrictions in sample definition, a low recruitment rate, and reliance on patient self-report rather than clinician assessments to determine treatment response limited the generalizability of results. Conclusions: A machine learning model could help depressed patients and providers predict likely response to combined ADM-psychotherapy. Parallel information about potential harms and costs of alternative treatments would be needed, though, to inform optimal treatment selection.

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