Authors
Maor Daniel Levitin, Dvora Shmulewitz, Roi Eliashar, Shaul Lev-Ran, Mario Mikulincer
Published in
European addiction research. Pages 1-24. Jul 10, 2026. Epub Jul 10, 2026.
Abstract
Mental health disorders are leading causes of morbidity worldwide and often co-occur with substance use and other addictive behaviors. However, many individuals in mental health care settings are not screened for addictions. General psychopathology measures, such as the Brief Symptom Inventory (BSI), may offer valuable insights into addiction risk. This study explores whether machine learning models can utilize BSI responses to predict problematic substance use (alcohol, drugs) and addictive behaviors (gambling, gaming, hypersexual behavior, and pornography use).
A population sample of Jewish adults in Israel (N=2,451) was assessed for mental health, including the BSI, problematic substance use (alcohol, drugs), and potentially addictive behaviors: gambling, gaming, compulsive sexual behavior, and pornography use. Machine learning models - including decision trees, random forest, boosting, LASSO, subset-selection, and elastic net regression- were employed to predict addiction outcomes based on BSI responses.
The BSI demonstrated varying degrees of predictive ability across different addictions and models. Explained variance (R2) ranged from 2.9% to 27.0%, while Area Under the Curve (AUC) values, indicating classification capabilities according to clinical thresholds, ranged from 0.60 to 0.84. Behavioral addictions generally showed descriptively higher predictability than substance use disorders.
The BSI contains substantial information on addiction risk, demonstrating its potential to enhance screening for comorbid addictions in mental health settings. These findings, also serve as proof of principle for notion that existing psychopathology measures can be leveraged to inform about potential comorbidity. Being able to efficiently identify which mental health patients must be screened for addictions will help to determine the most appropriate interventions.
PMID:
42430290
Bibliographic data and abstract were imported from PubMed on 11 Jul 2026.
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