心理健康门诊住院病人伤害与攻击风险的预测模型

The Psychiatric quarterly Pub Date : 2021-09-01 Epub Date: 2021-01-22 DOI:10.1007/s11126-020-09880-w
Emanuele Blasioli, Elkafi Hassini, Peter J Bieling
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引用次数: 0

摘要

严重的精神疾病是侵略和暴力的主要危险因素。目前的研究旨在开发和测试一种算法,以预测住院患者的攻击行为,包括伤害自己或他人的风险。这项工作基于一项回顾性研究,旨在调查2016年至2017年间汉密尔顿圣约瑟夫医疗中心伤害和攻击风险的预测。对与有害事件最密切相关的风险因素进行分析,然后描述用于估计危害风险的预测模型的开发过程。最后评估了所开发模型的效率,显示出75%的总体准确性:识别被认为没有危害风险的事件的特异性等于91.85%,而识别被认为有害的事件的敏感性等于28.57%。所提出的模型可以被视为一个开创性的项目,旨在开发一种更全面、更精确、更有效的工具,能够预测住院患者环境中的伤害风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictive Model for Estimating Risk of Harm and Aggression in Inpatient Mental Health Clinics.

Serious mental illness is a major risk factor for aggression and violence. The present study aimed to develop and test an algorithm to predict inpatient aggressions that involve a risk of harm to self or others. This work is based on a retrospective study aimed to investigate the prediction of risk of harm and aggressions at St. Joseph's Healthcare Hamilton, between 2016 and 2017. An analysis of the risk factors most strongly associated with harmful incidents is, followed by the description of the process involved in the development of a predictive model which estimates the risk of harm. The efficiency of the model developed is finally evaluated, showing an overall accuracy of 75%: the specificity to identify episodes considered not at risk of harm is equal to 91.85%, whereas the sensitivity to identify episodes considered harmful is equal to 28.57%. The model proposed can be seen as a seminal project towards the development of a more comprehensive, precise and effective tool capable to predict the risk of harm in the inpatient setting.

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