Predicting non-response to ketamine for depression: An exploratory symptom-level analysis of real-world data among military veterans.

Journal: Psychiatry research

Volume: 335

Issue: 

Year of Publication: 

Affiliated Institutions:  Department of Mental Health, VA San Diego Medical Center, San Diego, CA , USA; Department of Psychiatry, UC San Diego, La Jolla, CA , USA. Department of Psychiatry, UC San Diego, La Jolla, CA , USA; Center of Excellence for Stress and Mental Health, VA San Diego Medical Center, USA. Department of Psychiatry, University of Toronto, Toronto, Canada; Department of Pharmacology, University of Toronto, Toronto, Canada; Brain and Cognition Discovery Foundation, Toronto, Canada. Department of Mental Health, VA San Diego Medical Center, San Diego, CA , USA; Department of Psychiatry, UC San Diego, La Jolla, CA , USA; Center of Excellence for Stress and Mental Health, VA San Diego Medical Center, USA. Electronic address: dramanathan@ucsd.edu.

Abstract summary 

Ketamine helps some patients with treatment resistant depression (TRD), but reliable methods for predicting which patients will, or will not, respond to treatment are lacking. Herein, we aim to inform prediction models of non-response to ketamine/esketamine in adults with TRD. This is a retrospective analysis of PHQ-9 item response data from 120 patients with TRD who received repeated doses of intravenous racemic ketamine or intranasal eskatamine in a real-world clinic. Regression models were fit to patients' symptom trajectories, showing that all symptoms improved on average, but depressed mood improved relatively faster than low energy. Principal component analysis revealed a first principal component (PC) representing overall treatment response, and a second PC that reflects variance across affective versus somatic symptom subdomains. We then trained logistic regression classifiers to predict overall response (improvement on PC1) better than chance using patients' baseline symptoms alone. Finally, by parametrically adjusting the classifier decision thresholds, we identified optimal models for predicting non-response with a negative predictive value of over 96 %, while retaining a specificity of 22 %. Thus, we could identify 22 % of patients who would not respond based purely on their baseline symptoms. This approach could inform rational treatment recommendations to avoid additional treatment failures.

Authors & Co-authors:  Miller Afshar Mishra McIntyre Ramanathan

Study Outcome 

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Statistics
Citations : 
Authors :  5
Identifiers
Doi : 10.1016/j.psychres.2024.115858
SSN : 1872-7123
Study Population
Male,Female
Mesh Terms
Other Terms
Esketamine;Ketamine;Predictive modeling;Symptom trajectories;Treatment resistant depression
Study Design
Study Approach
Country of Study
Publication Country
Ireland