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Identification of risk factors for involuntary psychiatric hospitalization: using environmental socioeconomic data and methods of machine learning to improve prediction

机译:非自愿精神医院危险因素的识别:利用环境社会经济数据和机器学习方法改进预测

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The purpose of this study was to identify factors associated with a high risk of involuntary psychiatric in-patient hospitalization both on the individual level and on the level of mental health services and the socioeconomic environment that patients live in. The present study expands on a previous analysis of the health records of 5764 cases admitted as in-patients in the four psychiatric hospitals of the Metropolitan City of Cologne, Germany, in the year 2011 (1773 cases treated under the Mental Health Act and 3991 cases treated voluntarily). Our previous analysis had included medical, sociodemographic and socioeconomic data of every case and used a machine learning-based prediction model employing chi-squared automatic interaction detection (CHAID). Our current analysis attempts to improve the previous one through (1) optimizing the machine learning procedures (use of a different type of decision-tree prediction model (Classification and Regression Trees (CART) and application of hyperparameter tuning (HT)), and (2) the addition of patients’ environmental socioeconomic data (ESED) to the data set. Compared to our previous analysis, model fit was improved. Main diagnoses of an organic mental or a psychotic disorder (ICD-10 groups F0 and F2), suicidal behavior upon admission, admission outside of regular service hours and absence of outpatient treatment prior to admission were confirmed as powerful predictors of detention. Particularly high risks were shown for (1) patients with an organic mental disorder, specifically if they were retired, admitted outside of regular service hours and lived in assisted housing, (2) patients with suicidal tendencies upon admission who did not suffer from an affective disorder, specifically if it was unclear whether there had been previous suicide attempts, or if the affected person lived in areas with high unemployment rates, and (3) patients with psychosis, specifically those who lived in densely built areas with a large proportion of small or one-person households. Certain psychiatric diagnoses and suicidal tendencies are major risk factors for involuntary psychiatric hospitalization. In addition, service-related and environmental socioeconomic factors contribute to the risk for detention. Identifying modifiable risk factors and particularly vulnerable risk groups should help to develop suitable preventive measures.
机译:本研究的目的是确定与个人水平和心理健康服务水平和患者住在的心理健康服务水平以及患者所居住的社会经济环境相关的因素。目前的研究拓展了前一个2011年,德国大都会城市科隆四川科隆四川精神病院患者患有5764例患者的健康记录(1773例患有精神卫生法,3991例自愿治疗)。我们以前的分析包括每种情况的医疗,社会造影和社会经济数据,并使用了采用Chi平方的自动交互检测(CHAID)的机器学习的预测模型。我们目前的分析试图改进前一到(1)优化机器学习程序(使用不同类型的决策树预测模型(分类和回归树(推车)和超参数调整(HT)的应用),以及( 2)向数据集添加患者的环境社会经济数据(ESED)。与我们之前的分析相比,改进了模型拟合。主要诊断有机精神或精神病症(ICD-10组F0和F2),自杀入学时的行为,在入院前常规服务时间和缺乏门诊治疗的入学,被证实是拘留的强大预测因子。(1)有机精神障碍的患者显示出特别高的风险,特别是如果他们被退休,则在外面被退休常规服务时间和居住在辅助住房,(2)入院后的自杀趋势患者,他没有患有情感障碍,特别是如果是目前不清楚是否有过了自杀企图,或者如果受影响的人在高失业率的地区生活,(3)精神病患者,特别是那些生活在浓密建造的地区的患者,具有大部分小或一体的家庭。某些精神病诊断和自杀趋势是非自愿精神病院治疗的主要危险因素。此外,与服务相关和环境社会经济因素有助于拘留风险。确定可修改的风险因素,特别是脆弱的风险群体应有助于制定适当的预防措施。

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