University Hospital of Psychiatry Zurich, University of Zurich, Zurich, Switzerland.
University Hospital Zurich, University of Zurich, Zurich, Switzerland.
Sex Abuse. 2024 Oct;36(7):821-847. doi: 10.1177/10790632231200838. Epub 2023 Sep 11.
Forensic psychiatric populations commonly contain a subset of persons with schizophrenia spectrum disorders (SSD) who have committed sex offenses. A comprehensive delineation of the features that distinguish persons with SSD who have committed sex offenses from persons with SSD who have committed violent non-sex offenses could be relevant to the development of differentiated risk assessment, risk management and treatment approaches. This analysis included the patient records of 296 men with SSD convicted of at least one sex and/or violent offense who were admitted to the Centre for Inpatient Forensic Therapy at the University Hospital of Psychiatry Zurich between 1982 and 2016. Using supervised machine learning, data on 461 variables retrospectively collected from the records were compared with respect to their relative importance in differentiating between men who had committed sex offenses and men who had committed violent non-sex offenses. The final machine learning model was able to differentiate between the two types of offenders with a balanced accuracy of 71.5% (95% CI = [60.7, 82.1]) and an AUC of .80 (95% CI = [.67, .93]). The main distinguishing features included sexual behaviours and interests, psychopathological symptoms and characteristics of the index offense. Results suggest that when assessing and treating persons with SSD who have committed sex offenses, it appears to be relevant to not only address the core symptoms of the disorder, but to also take into account general risk factors for sexual recidivism, such as atypical sexual interests and sexual preoccupation.
法医学精神病患者群体中通常包含一部分患有精神分裂症谱系障碍(SSD)的人,他们曾犯下性犯罪。全面描述区分患有 SSD 并犯下性犯罪与患有 SSD 但犯下暴力非性犯罪的人的特征,可能与制定差异化的风险评估、风险管理和治疗方法相关。本分析纳入了自 1982 年至 2016 年期间,在苏黎世大学精神病院住院法医治疗中心入院的 296 名至少犯下一项性犯罪和/或暴力犯罪的 SSD 男性患者的病历。使用有监督的机器学习,对病历中回顾性收集的 461 个变量的数据进行了比较,以确定它们在区分犯下性犯罪的男性和犯下暴力非性犯罪的男性方面的相对重要性。最终的机器学习模型能够以 71.5%的平衡准确率(95%CI=[60.7,82.1])和 0.80 的 AUC(95%CI=[0.67,0.93])区分这两种类型的罪犯。主要的区别特征包括性行为和兴趣、精神病理学症状以及犯罪行为的特征。结果表明,在评估和治疗患有 SSD 并犯下性犯罪的人时,不仅要解决该疾病的核心症状,还需要考虑到性犯罪再犯的一般风险因素,例如非典型性兴趣和性痴迷。