Lv Jianping, Ren Hui, Guo Xinmeng, Meng Cuicui, Fei Junsong, Mei Hechen, Mei Songli
Department of Social Medicine and Health Management, School of Public Health of Jilin University, No. 1163 Xinmin Street, Changchun 130021, China.
the First Hospital of Jilin University, Changchun 130021, China.
J Affect Disord. 2022 Apr 15;303:264-272. doi: 10.1016/j.jad.2022.02.037. Epub 2022 Feb 15.
The purpose of this study was to construct a cross-sectional study to predict the risk of bullying victimization among adolescents.
The study recruited 17,365 Chinese adolescents using stratified random cluster sampling method. The classical regression methods (logistic regression and Lasso regression) and machine learning model were combined to identify the most significant predictors of bullying victimization. Nomogram was built based on multivariable logistic regression model. The discrimination, calibration and generalization of nomogram were evaluated by the receiver operating characteristic curves (ROC), the calibration curve and a high-quality external validation.
Grade, gender, peer violence, family violence, body mass index, family structure, depressive symptoms and Internet addiction, recognized as the best combination, were included in the multivariable regression. The nomogram established based on the non-overfitting multivariable model was verified by internal validation (Area Under Curve: 0.749) and external validation (Area Under Curve: 0.755), showing decent prediction of discrimination, calibration and generalization.
Comprehensive nomogram constructed in this study was a useful and convenient tool to evaluate the risk of bullying victimization of adolescents. It is helpful for health-care professionals to assess the risk of bullying victimization among adolescents, and to identify high-risk groups and take more effective preventive measures.
本研究旨在构建一项横断面研究,以预测青少年受欺凌受害的风险。
本研究采用分层随机整群抽样方法招募了17365名中国青少年。将经典回归方法(逻辑回归和套索回归)与机器学习模型相结合,以确定受欺凌受害的最显著预测因素。基于多变量逻辑回归模型构建列线图。通过受试者工作特征曲线(ROC)、校准曲线和高质量外部验证来评估列线图的区分度、校准度和泛化能力。
多变量回归纳入了年级、性别、同伴暴力、家庭暴力、体重指数、家庭结构、抑郁症状和网络成瘾,这些因素被认为是最佳组合。基于非过拟合多变量模型建立的列线图通过内部验证(曲线下面积:0.749)和外部验证(曲线下面积:0.755)得到验证,显示出良好的区分度、校准度和泛化预测能力。
本研究构建的综合列线图是评估青少年受欺凌受害风险的一种有用且便捷的工具。它有助于医护人员评估青少年受欺凌受害的风险,识别高危人群并采取更有效的预防措施。