University of Zürich, Switzerland.
University of Vienna, Austria.
J Interpers Violence. 2022 Jan;37(1-2):602-622. doi: 10.1177/0886260520913641. Epub 2020 Apr 20.
This study employs machine learning algorithms to examine the causes for engaging in violent offending in individuals with schizophrenia spectrum disorders. Data were collected from 370 inpatients at the Centre for Inpatient Forensic Therapy, Zurich University Hospital of Psychiatry, Switzerland. Based on findings of the general strain theory and using logistic regression and machine learning algorithms, it was analyzed whether accumulation and type of stressors in the inpatients' history influenced the severity of an offense. A higher number of stressors led to more violent offenses, and five types of stressors were identified as being highly influential regarding violent offenses. Our findings suggest that an accumulation of stressful experiences in the course of life and certain types of stressors might be particularly important in the development of violent offending in individuals suffering from schizophrenia spectrum disorders. A better understanding of risk factors that lead to violent offenses should be helpful for the development of preventive and therapeutic strategies for patients at risk and could thus potentially reduce the prevalence of violent offenses.
本研究采用机器学习算法探讨精神分裂症谱系障碍个体暴力犯罪的原因。数据来自瑞士苏黎世大学精神病学医院住院法医治疗中心的 370 名住院患者。基于一般应激理论的发现,使用逻辑回归和机器学习算法,分析了住院患者病史中的应激源积累和类型是否影响犯罪的严重程度。应激源数量越多,暴力犯罪越严重,确定了五种类型的应激源对暴力犯罪具有高度影响。我们的研究结果表明,在生活过程中积累的压力体验和某些类型的压力源可能在精神分裂症谱系障碍个体暴力犯罪的发展中尤为重要。更好地了解导致暴力犯罪的风险因素有助于为有风险的患者制定预防和治疗策略,从而可能降低暴力犯罪的发生率。