Affiliation:
1. Department of Psychology University of Victoria Victoria BC Canada
2. Department of Psychiatry Columbia University New York NY USA
3. Division of Child and Adolescent Psychiatry New York State Psychiatric Institute New York NY USA
4. Department of Psychology Queen's University Kingston ON Canada
Abstract
BackgroundNon‐suicidal self‐injury (NSSI) is common among adolescents receiving inpatient psychiatric treatment and the months post‐discharge is a high‐risk period for self‐injurious behavior. Thus, identifying predictors that shape the course of post‐discharge NSSI may provide insights into ways to improve clinical outcomes. Accordingly, we used machine learning to identify the strongest predictors of NSSI trajectories drawn from a comprehensive clinical assessment.MethodsThe study included adolescents (N = 612; females n = 435; 71.1%) aged 13–19‐years‐old (M = 15.6, SD = 1.4) undergoing inpatient treatment. Youth were administered clinical interviews and symptom questionnaires at intake (baseline) and before termination. NSSI frequency was assessed at 1‐, 3‐, and 6‐month follow‐ups. Latent class growth analyses were used to group adolescents based on their pattern of NSSI across follow‐ups.ResultsThree classes were identified: Low Stable (n = 83), Moderate Fluctuating (n = 260), and High Persistent (n = 269). Important predictors of the High Persistent class in our regularized regression models (LASSO) included baseline psychiatric symptoms and comorbidity, past‐week suicidal ideation (SI) severity, lifetime average and worst‐point SI intensity, and NSSI in the past 30 days (bs = 0.75–2.33). Only worst‐point lifetime suicide ideation intensity was identified as a predictor of the Low Stable class (b = −8.82); no predictors of the Moderate Fluctuating class emerged.ConclusionsThis study found a set of intake clinical variables that indicate which adolescents may experience persistent NSSI post‐discharge. Accordingly, this may help identify youth that may benefit from additional monitoring and support post‐hospitalization.
Funder
National Institute of Mental Health
Tommy Fuss Fund