Depression is highly recurrent, even following successful pharmacological and/or psychological intervention. We aimed
to develop clinical prediction models to inform adults with recurrent depression choosing between antidepressant
medication (ADM) maintenance or switching to mindfulness-based cognitive therapy (MBCT). Using ...
Depression is highly recurrent, even following successful pharmacological and/or psychological intervention. We aimed
to develop clinical prediction models to inform adults with recurrent depression choosing between antidepressant
medication (ADM) maintenance or switching to mindfulness-based cognitive therapy (MBCT). Using previously
published data (N = 424), we constructed prognostic models using elastic-net regression that combined demographic,
clinical, and psychological factors to predict relapse at 24 months under ADM or MBCT. Only the ADM model
(discrimination performance: area under the curve [AUC] = .68) predicted relapse better than baseline depression
severity (AUC = .54; one-tailed DeLong’s test: z = 2.8, p = .003). Individuals with the poorest ADM prognoses who
switched to MBCT had better outcomes compared with individuals who maintained ADM (48% vs. 70% relapse,
respectively; superior survival times, z = −2.7, p = .008). For individuals with moderate to good ADM prognoses, both
treatments resulted in similar likelihood of relapse. If replicated, the results suggest that predictive modeling can inform
clinical decision-making around relapse prevention in recurrent depression.