Suicide detection in Chile: proposing a predictive model for suicide risk in a clinical sample of patients with mood disorders

J. Barros, S. Morales, O. Echávarri, Arnol García, J. Ortega, Takeshi Asahi, C. Moya, R. Fischman, M. P. Maino, Catalina Núñez
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引用次数: 31

Abstract

Objective: To analyze suicidal behavior and build a predictive model for suicide risk using data mining (DM) analysis. Methods: A study of 707 Chilean mental health patients (with and without suicide risk) was carried out across three healthcare centers in the Metropolitan Region of Santiago, Chile. Three hundred forty-three variables were studied using five questionnaires. DM and machine-learning tools were used via the support vector machine technique. Results: The model selected 22 variables that, depending on the circumstances in which they all occur, define whether a person belongs in a suicide risk zone (accuracy = 0.78, sensitivity = 0.77, and specificity = 0.79). Being in a suicide risk zone means patients are more vulnerable to suicide attempts or are thinking about suicide. The interrelationship between these variables is highly nonlinear, and it is interesting to note the particular ways in which they are configured for each case. The model shows that the variables of a suicide risk zone are related to individual unrest, personal satisfaction, and reasons for living, particularly those related to beliefs in one’s own capacities and coping abilities. Conclusion: These variables can be used to create an assessment tool and enables us to identify individual risk and protective factors. This may also contribute to therapeutic intervention by strengthening feelings of personal well-being and reasons for staying alive. Our results prompted the design of a new clinical tool, which is fast and easy to use and aids in evaluating the trajectory of suicide risk at a given moment.
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智利的自杀检测:在情绪障碍患者的临床样本中提出自杀风险的预测模型
目的:利用数据挖掘(DM)分析自杀行为,建立自杀风险预测模型。方法:在智利圣地亚哥大都会区的三个医疗中心对707名智利精神健康患者(有和没有自杀风险)进行了研究。采用5份问卷对343个变量进行了研究。通过支持向量机技术使用DM和机器学习工具。结果:该模型选择了22个变量,根据它们发生的情况来定义一个人是否属于自杀风险区(准确性= 0.78,灵敏度= 0.77,特异性= 0.79)。处于自杀风险区意味着患者更容易有自杀企图或正在考虑自杀。这些变量之间的相互关系是高度非线性的,注意它们在每种情况下的特定配置方式是很有趣的。该模型表明,自杀风险区的变量与个人不安、个人满意度和生活原因有关,特别是与个人对自己能力和应对能力的信念有关的变量。结论:这些变量可以用来创建一个评估工具,使我们能够识别个人的风险和保护因素。这也可能有助于通过加强个人幸福感和生存理由的治疗干预。我们的研究结果促使了一种新的临床工具的设计,这种工具既快速又易于使用,并有助于评估特定时刻的自杀风险轨迹。
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