Zhou Yongjie, Pei Chenran, Yin Hailong, Zhu Rongting, Yan Nan, Wang Lan, Zhang Xuankun, Lan Tian, Li Junchang, Zeng Lingyun, Huo Lijuan
Shenzhen Mental Health Center, Shenzhen Kangning Hospital, Shenzhen, China.
Key Laboratory of Brain, Cognition and Education Science, Ministry of Education, Institute for Brain Research and Rehabilitation, Guangdong Key Laboratory of Mental Health and Cognitive Science, South China Normal University, Guangzhou, China.
Behav Res Ther. 2025 Jun;189:104749. doi: 10.1016/j.brat.2025.104749. Epub 2025 Apr 15.
Smartphone addiction (SA) significantly impacts the physical and mental health of adolescents, and can further exacerbate existing mental health issues in those with depression. However, fewer studies have focused on the predictors of SA in adolescents with depression. This study employs machine learning methods to identify key risk factors for SA, using the interpretable SHapley Additive exPlanations (SHAP) method to enhance interpretability. Additionally, by constructing a mediation moderation model, the interactions between significant risk factors are analyzed. The study included 2203 adolescents with depression. Machine learning results from four models (Random Forest, Support Vector Machine, Logistic Regression, XGBoost) consistently identified emotion-focused coping, rumination, and school bullying as the strongest predictors of SA. Further mediation moderation analyses based on the Interaction of Person-Affect-Cognition-Execution (I-PACE) model revealed that rumination significantly mediated the relationship between school bullying and SA, and emotion-focused coping significantly moderated the relationships between school bullying and both rumination and SA. This is the first study to use machine learning to explore the predictors of SA in depressive adolescents and further analyze the interactions among these predictors. Future interventions for SA in adolescents with depression may benefit from psychotherapy that addresses emotion-focused coping and rumination.
智能手机成瘾(SA)对青少年的身心健康有显著影响,并且会进一步加剧抑郁症患者现有的心理健康问题。然而,较少有研究关注抑郁症青少年中智能手机成瘾的预测因素。本研究采用机器学习方法来识别智能手机成瘾的关键风险因素,并使用可解释的SHapley加法解释(SHAP)方法来增强可解释性。此外,通过构建中介调节模型,分析显著风险因素之间的相互作用。该研究纳入了2203名抑郁症青少年。来自四个模型(随机森林、支持向量机、逻辑回归、XGBoost)的机器学习结果一致表明,以情绪为中心的应对方式、沉思和校园欺凌是智能手机成瘾最强的预测因素。基于人-情感-认知-执行交互(I-PACE)模型的进一步中介调节分析表明,沉思显著介导了校园欺凌与智能手机成瘾之间的关系,以情绪为中心的应对方式显著调节了校园欺凌与沉思以及校园欺凌与智能手机成瘾之间的关系。这是第一项使用机器学习来探索抑郁症青少年中智能手机成瘾的预测因素,并进一步分析这些预测因素之间相互作用的研究。未来针对抑郁症青少年智能手机成瘾的干预措施可能会受益于解决以情绪为中心的应对方式和沉思的心理治疗。