Luo Yunjiao, Wang Yuhao, Wang Yingxue, Wang Yihan, Yan Na, Shiferaw Blen Dereje, Mackay Louisa Esi, Zhang Ziyang, Zhang Caiyi, Wang Wei
School of Public Health, Xuzhou Medical University, Xuzhou, Jiangsu, People's Republic of China.
St. Luke's College of Nursing, Trinity University of Asia, Quezon, Philippines.
Psychol Res Behav Manag. 2024 Dec 25;17:4413-4429. doi: 10.2147/PRBM.S498396. eCollection 2024.
Suicidal mortality is high in rural areas, and suicidal ideation, an early psychology of suicidal behavior, is particularly important for the early prevention and intervention of suicide. This study aimed to establish a nomogram model to predict high-risk groups among rural adolescents who might develop suicidal ideation.
This study conducted a cross-sectional survey of 1900 rural secondary school students in Xuzhou, China. The samples were randomly divided into a training set (1330) and a validation set (570), and a nomogram prediction model was constructed using the potential predictors of suicidal ideation screened from the training set using Lasso-Logistic regression. The model was validated using ROC, calibration, and clinical decision curves.
The reported rate of suicidal ideation among rural adolescents is 18.9%. Lasso-Logistic regression found that emotional abuse, emotional neglect, hostility, subjective sleep quality, daytime dysfunction, withdrawal/escape, and depression were significant risk factors for suicidal ideation. A nomogram was built using the above 7 predictors. The area under the ROC curve (AUC) of our predictive model was 0.821 in the training set and 0.765 in the validation set, with corrected C-indices of 0.817 and 0.764, respectively. Furthermore, the calibration curves demonstrated good alignment with the ideal line ( > 0.05), and the decision curve analysis results indicated positive clinical utility.
The nomogram model constructed in this study may be an effective tool for predicting suicidal ideation in rural middle school students. It helps identify high-risk groups with suicidal ideation and provides more reliable information for the early prevention and intervention of suicide.
农村地区自杀死亡率较高,自杀意念作为自杀行为的早期心理状态,对于自杀的早期预防和干预尤为重要。本研究旨在建立一个列线图模型,以预测可能出现自杀意念的农村青少年中的高危人群。
本研究对中国徐州的1900名农村中学生进行了横断面调查。样本被随机分为训练集(1330名)和验证集(570名),并使用Lasso-Logistic回归从训练集中筛选出自杀意念的潜在预测因素,构建列线图预测模型。使用ROC、校准和临床决策曲线对该模型进行验证。
农村青少年自杀意念报告率为18.9%。Lasso-Logistic回归发现,情感虐待、情感忽视、敌意、主观睡眠质量、日间功能障碍、退缩/逃避和抑郁是自杀意念的显著危险因素。使用上述7个预测因素构建了列线图。我们预测模型的ROC曲线下面积(AUC)在训练集中为0.821,在验证集中为0.765,校正后的C指数分别为0.817和0.764。此外,校准曲线与理想线显示出良好的一致性(>0.05),决策曲线分析结果表明具有积极的临床实用性。
本研究构建的列线图模型可能是预测农村中学生自杀意念的有效工具。它有助于识别有自杀意念的高危人群,并为自杀的早期预防和干预提供更可靠的信息。