Journal Article DZNE-2026-00630

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Forensic outcome in schizophrenia: It's the system, not the symptoms.

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2026
Elsevier Amsterdam [u.a.]

Comprehensive psychiatry 149, 152716 () [10.1016/j.comppsych.2026.152716]

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Abstract: Schizophrenia spectrum disorders (SSD) are associated with increased risks of criminal behavior, especially if mediated by factors such as substance use. However, it remains unclear whether these factors retain their predictive relevance once broader social and systemic conditions are considered. To date, comparisons between forensic (FPP) and general psychiatric (GPP) SSD patients that systematically test the weight of these factors in complex contexts are scarce. We sought to evaluate whether established clinical risk factors for criminal behavior hold explanatory power once embedded in wider contextual frameworks. Group membership was used as a proxy for such forensic trajectories.A retrospective study was conducted using data from 740 patients (370 FPP, 370 GPP) diagnosed with SSD receiving treatment at one institution in Switzerland. Several machine learning algorithms were tested. Gradient Boosting emerged as the most suitable model. Performance metrics such as balanced accuracy, area under the curve (AUC), sensitivity, and specificity were used for model evaluation. Key predictive variables were ranked based on their influence.Gradient Boosting achieved a balanced accuracy of 77.5% and an AUC of 0.85 (analysis excluding item 'olanzapine-equivalent dose at discharge', which was identified as a potential downstream marker of institutional placement; primary model with all items: 81.6% and 0.88, respectively), outperforming other algorithms in discriminating between the groups. Notable predictors of a forensic-psychiatric course included social isolation across life span and limited mental health care system integration, while psychopathology did not emerge as a relevant predictor.When comprehensively comparing forensic and general psychiatric SSD patients, social isolation, antipsychotic dosage, and mental health system integration emerge as the primary discriminators, overshadowing well established risk factors. Preventing forensic pathways in SSD requires strengthening social networks and system integration, marking a paradigm shift away from symptom-centered risk models.

Keyword(s): Forensic psychiatry ; Machine learning ; Schizophrenia spectrum disorders ; Social deprivation ; System integration

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Contributing Institute(s):
  1. Mixed Cerebral Pathologies and Cognitive Aging (AG Schreiber)
Research Program(s):
  1. 353 - Clinical and Health Care Research (POF4-353) (POF4-353)

Appears in the scientific report 2026
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 Record created 2026-06-17, last modified 2026-06-23