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在新冠疫情期间,哪些因素与青少年情绪障碍最为密切相关?一项基于中国山东省1771名青少年的横断面研究。

What Factors Are Most Closely Associated With Mood Disorders in Adolescents During the COVID-19 Pandemic? A Cross-Sectional Study Based on 1,771 Adolescents in Shandong Province, China.

作者信息

Ren Ziyuan, Xin Yaodong, Wang Zhonglin, Liu Dexiang, Ho Roger C M, Ho Cyrus S H

机构信息

Department of Medical Psychology and Ethics, School of Basic Medicine Sciences, Cheeloo College of Medicine, Shandong University, Jinan, China.

School of Statistics and Management Shanghai University of Finance and Economics, Shanghai, China.

出版信息

Front Psychiatry. 2021 Sep 16;12:728278. doi: 10.3389/fpsyt.2021.728278. eCollection 2021.

Abstract

COVID-19 has been proven to harm adolescents' mental health, and several psychological influence factors have been proposed. However, the importance of these factors in the development of mood disorders in adolescents during the pandemic still eludes researchers, and practical strategies for mental health education are limited. We constructed a sample of 1,771 adolescents from three junior high middle schools, three senior high middle schools, and three independent universities in Shandong province, China. The sample stratification was set as 5:4:3 for adolescent aged from 12 - 15, 15 - 18, 18 - 19. We examined the subjects' anxiety, depression, psychological resilience, perceived social support, coping strategies, subjective social/school status, screen time, and sleep quality with suitable psychological scales. We chose four widely used classification models-k-nearest neighbors, logistic regression, gradient-boosted decision tree (GBDT), and a combination of the GBDT and LR (GBDT + LR)-to construct machine learning models, and we utilized the Shapley additive explanations value (SHAP) to measure how the features affected the dependent variables. The area under the curve (AUC) of the receiver operating characteristic (ROC) curves was used to evaluate the performance of the models. The current rates of occurrence of symptoms of anxiety and depression were 28.3 and 30.8% among the participants. The descriptive and univariate analyses showed that all of the factors included were statistically related to mood disorders. Among the four machine learning algorithms, the GBDT+LR algorithm achieved the best performance for anxiety and depression with average AUC values of 0.819 and 0.857. We found that the poor sleep quality was the most significant risk factor for mood disorders among Chinese adolescents. In addition, according to the feature importance (SHAP) of the psychological factors, we proposed a five-step mental health education strategy to be used during the COVID-19 pandemic (sleep quality-resilience-coping strategy-social support-perceived social status). In this study, we performed a cross-sectional investigation to examine the psychological impact of COVID-19 on adolescents. We applied machine learning algorithms to quantify the importance of each factor. In addition, we proposed a five-step mental health education strategy for school psychologists.

摘要

事实证明,新冠疫情会损害青少年的心理健康,并且已经提出了几个心理影响因素。然而,在疫情期间,这些因素对青少年情绪障碍发展的重要性仍然不为研究人员所知,而且心理健康教育的实用策略也很有限。我们从中国山东省的三所初中、三所高中和三所独立院校选取了1771名青少年作为样本。样本按年龄分层,12至15岁、15至18岁、18至19岁的青少年比例为5:4:3。我们使用合适的心理量表对受试者的焦虑、抑郁、心理复原力、感知到的社会支持、应对策略、主观社会/学校地位、屏幕使用时间和睡眠质量进行了检测。我们选择了四种广泛使用的分类模型——k近邻算法、逻辑回归、梯度提升决策树(GBDT)以及GBDT和LR的组合(GBDT + LR)来构建机器学习模型,并利用夏普利值(SHAP)来衡量各特征如何影响因变量。采用受试者工作特征(ROC)曲线下的面积(AUC)来评估模型的性能。参与者中焦虑和抑郁症状的当前发生率分别为28.3%和30.8%。描述性分析和单变量分析表明,所有纳入的因素都与情绪障碍存在统计学关联。在这四种机器学习算法中,GBDT+LR算法在焦虑和抑郁方面表现最佳,平均AUC值分别为0.819和0.857。我们发现,睡眠质量差是中国青少年情绪障碍最显著的风险因素。此外,根据心理因素的特征重要性(SHAP),我们提出了在新冠疫情期间使用的五步心理健康教育策略(睡眠质量-复原力-应对策略-社会支持-感知社会地位)。在本研究中,我们进行了一项横断面调查,以考察新冠疫情对青少年的心理影响。我们应用机器学习算法来量化各因素的重要性。此外,我们为学校心理专家提出了五步心理健康教育策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef38/8481827/6f2a0205468a/fpsyt-12-728278-g0001.jpg

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