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首页> 外文期刊>Frontiers in Psychiatry >Identifying Violent Behavior Using the Oxford Mental Illness and Violence Tool in a Psychiatric Ward of a German Prison Hospital
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Identifying Violent Behavior Using the Oxford Mental Illness and Violence Tool in a Psychiatric Ward of a German Prison Hospital

机译:在德国监狱医院的精神病房中使用牛津心理疾病和暴力工具识别暴力行为

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Background: Although there is evidence that individuals who suffer from severe mental disorders are at higher risk for aggressive behavior, only a minority eventually become violent. In 2017, Fazel et al. developed a risk calculator (Oxford Mental Illness and Violence tool, OxMIV) to identify the risk of violent crime in patients with mental disorders. For the first time, we tested the predictive validity of the OxMIV in the department of psychiatry at the prison hospital in Berlin, Germany, and presented findings from our internal validation. Materials and Methods: We designed a cohort study with 474 patients aged 16–65 years old who met the inclusion criteria of schizophrenia-spectrum or bipolar disorder and classified the patients into two groups: a violent group with 191 patients and a nonviolent group with 283 patients. Violence was defined as the aggressive behavior of a patient with the necessity of special observation. We obtained all the required information retrospectively through patient files, applied the OxMIV tool on each subject, and compared the results of both groups. Sensitivity, specificity, and positiveegative predictive values were determined. We used logistic regression including variable selection and internal validation to identify relevant predictors of aggressive behavior in our cohort. Results: The OxMIV score was significantly higher in the violent group [median 4.21%; Interquartile range (IQR) 8.51%] compared to the nonviolent group (median 1.77%; IQR 2.01%; p & 0.0001). For the risk of violent behavior, using the 5% cutoff for “increased risk,” the sensitivity was 44%, and the specificity was 89%, with a positive predictive value of 72% and a negative predictive value of 70%. Applying logistic regression, four items were statistically significant in predicting violent behavior: previous violent crime (adjusted odds ratio 5.29 [95% CI 3.10–9.05], p & 0.0001), previous drug abuse (1.80 [1.08–3.02], p = 0.025), and previous alcohol abuse (1.89 [1.21–2.95], p = 0.005). The item recent antidepressant treatment (0.28 [0.17–0.47]. p & 0.0001) had a statistically significant risk reduction effect. Conclusions: In our opinion, the risk assessment tool OxMIV succeeded in predicting violent behavior in imprisoned psychiatric patients. As a result, it may be applicable for identification of patients with special needs in a prison environment and, thus, improving prison safety.
机译:背景:尽管有证据表明患有严重精神障碍的人更有可能遭受侵略行为,但最终只有少数人成为暴力行为。在2017年,Fazel等人。开发了风险计算器(牛津心理疾病和暴力工具,OxMIV)来识别精神障碍患者发生暴力犯罪的风险。我们首次在德国柏林监狱医院的精神病科中检验了OxMIV的预测效度,并提出了我们内部验证的结果。资料和方法:我们设计了一项队列研究,研究对象为474位年龄在16-65岁之间的患者,这些患者符合精神分裂症频谱或双相情感障碍的纳入标准,并将患者分为两组:暴力组191例,非暴力组283例耐心。暴力定义为需要特殊观察的患者的攻击行为。我们通过患者档案回顾性地获得了所有必需的信息,将OxMIV工具应用于每个受试者,并比较了两组的结果。确定了敏感性,特异性和阳性/阴性预测值。我们使用了包括变量选择和内部验证在内的逻辑回归来确定队列中攻击行为的相关预测因子。结果:暴力组的OxMIV评分显着更高[中位数为4.21%;四分位数间距(IQR)8.51%],而非非暴力组(中位数1.77%; IQR 2.01%; p <0.0001)。对于发生暴力行为的风险,将5%的临界值用于“增加的风险”,灵敏度为44%,特异性为89%,阳性预测值为72%,阴性预测值为70%。应用逻辑回归分析,有四项在预测暴力行为方面具有统计学意义:先前的暴力犯罪(调整后的优势比5.29 [95%CI 3.10-9.05],p <0.0001),先前的药物滥用(1.80 [1.08-3.02],p = 0.025)和以前的酗酒行为(1.89 [1.21-2.95],p = 0.005)。最近的抗抑郁药治疗项目(0.28 [0.17-0.47]。p <0.0001)具有统计学上显着的降低风险的作用。结论:我们认为,风险评估工具OxMIV成功地预测了被囚禁的精神病患者的暴力行为。结果,它可能适用于在监狱环境中识别有特殊需要的患者,从而改善监狱安全。

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