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运用网络分析对大学生抑郁症状的风险因素进行亚组分析。

Using Network Analysis to Subgroup Risk Factors for Depressive Symptoms in College Students.

作者信息

Ding Jinqi, Wu Yue, Li Hanxiaoran, Wang Shengsheng, Cai Jia, Cheng Hong, Liang Sugai

机构信息

Affiliated Mental Health Center & Hangzhou Seventh People's Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang, People's Republic of China.

Mental Health Center & Psychiatric Laboratory, State Key Laboratory of Biotherapy, West China Hospital, Sichuan University, Chengdu, Sichuan, People's Republic of China.

出版信息

Psychol Res Behav Manag. 2024 Oct 21;17:3625-3636. doi: 10.2147/PRBM.S479975. eCollection 2024.

Abstract

PURPOSE

Network modeling has been suggested as an effective method to explore intricate relationships among antecedents, mediators, and symptoms. In this study, we aimed to investigate whether the severity of depressive symptoms in college students affects the multivariate relationships among anhedonia, smartphone addiction, and mediating factors.

METHODS

A survey was conducted among 1347 Chinese college students (587 female) to assess depressive symptoms, anhedonia, addictive behaviors, anxiety, and insomnia. The participants were categorized the non-depressive symptom (NDS) and depressive symptom (DS) groups based on a cut-off score of 5 on the 9-item Patient Health Questionnaire-9. Network analysis was performed to investigate the symptom-to-symptom influences of symptoms in these two groups.

RESULTS

The network of the DS group was more densely connected than that of the NDS group. Social anticipatory anhedonia was a central factor for DS, while withdraw/escape (one factor of smartphone addiction) was a central factor for NDS. The DS group exhibited greater strength between the PHQ9 score and social anticipatory anhedonia, as well as between the PHQ9 score and alcohol misuse score, compared to the NDS group. On the other hand, the NDS group had higher strength between anxiety and feeling lost, as well as between anxiety and withdraw/escape, compared to the DS group.

CONCLUSION

The findings suggest that there is a close relationship between social anhedonia, smartphone addiction, and alcohol consumption in the DS group. Addressing on ameliorating social anhedonia and smartphone addiction may be effective in preventing and managing depression in college students.

摘要

目的

网络建模被认为是探索前因、中介因素和症状之间复杂关系的有效方法。在本研究中,我们旨在调查大学生抑郁症状的严重程度是否会影响快感缺乏、智能手机成瘾和中介因素之间的多变量关系。

方法

对1347名中国大学生(587名女性)进行了一项调查,以评估抑郁症状、快感缺乏、成瘾行为、焦虑和失眠情况。根据9项患者健康问卷-9中5分的临界值,将参与者分为无抑郁症状(NDS)组和抑郁症状(DS)组。进行网络分析以研究这两组症状之间的症状对症状的影响。

结果

DS组的网络连接比NDS组更密集。社交预期性快感缺乏是DS组的核心因素,而退缩/逃避(智能手机成瘾的一个因素)是NDS组的核心因素。与NDS组相比,DS组在PHQ9评分与社交预期性快感缺乏之间以及PHQ9评分与酒精滥用评分之间表现出更强的关联。另一方面,与DS组相比,NDS组在焦虑与迷失感之间以及焦虑与退缩/逃避之间的关联更强。

结论

研究结果表明,DS组中社交快感缺乏、智能手机成瘾和酒精消费之间存在密切关系。改善社交快感缺乏和智能手机成瘾可能对预防和管理大学生抑郁症有效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e40c/11505380/511fec92257e/PRBM-17-3625-g0001.jpg

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