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Detection of Suicide Attempters among Suicide Ideators Using Machine Learning

机译:使用机器学习检测自杀思想家中的自杀企图者

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Objective We aimed to develop predictive models to identify suicide attempters among individuals with suicide ideation using a machine learning algorithm. Methods Among 35,116 individuals aged over 19 years from the Korea National Health & Nutrition Examination Survey, we selected 5,773 subjects who reported experiencing suicide ideation and had answered a survey question about suicide attempts. Then, we performed resampling with the Synthetic Minority Over-sampling TEchnique (SMOTE) to obtain data corresponding to 1,324 suicide attempters and 1,330 non-suicide attempters. We randomly assigned the samples to a training set (n=1,858) and a test set (n=796). In the training set, random forest models were trained with features selected through recursive feature elimination with 10-fold cross validation. Subsequently, the fitted model was used to predict suicide attempters in the test set. Results In the test set, the prediction model achieved very good performance [area under receiver operating characteristic curve (AUC)=0.947] with an accuracy of 88.9%. Conclusion Our results suggest that a machine learning approach can enable the prediction of individuals at high risk of suicide through the integrated analysis of various suicide risk factors.
机译:目的我们旨在开发一种预测模型,以使用机器学习算法在具有自杀意念的个人中识别自杀未遂者。方法从韩国国民健康与营养检查调查的35116名19岁以上的人中,我们选择了5773名报告有自杀观念并回答了有关自杀未遂的调查问题的受试者。然后,我们使用合成少数族裔过采样技术(SMOTE)进行了重新采样,以获得对应于1,324位自杀未遂者和1,330位非自杀未遂者的数据。我们将样本随机分配给训练集(n = 1,858)和测试集(n = 796)。在训练集中,使用通过10倍交叉验证的递归特征消除选择的特征来训练随机森林模型。随后,将拟合模型用于预测测试集中的自杀未遂者。结果在测试集中,预测模型以88.9%的精度达到了非常好的性能[接收器工作特性曲线下的面积(AUC)= 0.947]。结论我们的结果表明,通过对各种自杀风险因素进行综合分析,机器学习方法可以预测高自杀风险的个体。

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