Zhang Naixin, Liu Chuanxin, Chen Zhixuan, An Lin, Ren Decheng, Yuan Fan, Yuan Ruixue, Ji Lei, Bi Yan, Guo Zhenming, Ma Gaini, Xu Fei, Yang Fengping, Zhu Liping, Robert Gabirel, Xu Yifeng, He Lin, Bai Bo, Yu Tao, He Guang
Bio-X Institutes, Shanghai Jiao Tong University, Shanghai, China.
Shanghai Key Laboratory of Psychotic Disorders, and Brain Science and Technology Research Center, Shanghai Jiao Tong University, Shanghai, China.
Gen Psychiatr. 2019 Sep 8;32(5):e100096. doi: 10.1136/gpsych-2019-100096. eCollection 2019.
Subjective well-being (SWB), also known as happiness, plays an important role in evaluating both mental and physical health. Adolescents deserve specific attention because they are under a great variety of stresses and are at risk for mental disorders during adulthood.
The present paper aims to predict undergraduate students' SWB by machine learning method.
Gradient Boosting Classifier which was an innovative yet validated machine learning approach was used to analyse data from 10 518 Chinese adolescents. The online survey included 298 factors such as depression and personality. Quality control procedure was used to minimise biases due to online survey reports. We applied feature selection to achieve the balance between optimal prediction and result interpretation.
The top 20 happiness risks and protective factors were finally brought into the predicting model. Approximately 90% individuals' SWB can be predicted correctly, and the sensitivity and specificity were about 92% and 90%, respectively.
This result identifies at-risk individuals according to new characteristics and established the foundation for adolescent prevention strategies.
主观幸福感(SWB),也被称为幸福,在评估心理健康和身体健康方面都起着重要作用。青少年值得特别关注,因为他们面临着各种各样的压力,并且在成年期有患精神障碍的风险。
本文旨在通过机器学习方法预测本科生的主观幸福感。
梯度提升分类器是一种创新且经过验证的机器学习方法,用于分析来自10518名中国青少年的数据。在线调查包括抑郁和性格等298个因素。采用质量控制程序以尽量减少在线调查报告带来的偏差。我们应用特征选择来实现最佳预测与结果解释之间的平衡。
最终将前20个幸福风险和保护因素纳入预测模型。大约90%个体的主观幸福感能够被正确预测,敏感性和特异性分别约为92%和90%。
该结果根据新特征识别出有风险的个体,并为青少年预防策略奠定了基础。