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运用网络分析方法了解高校艺术专业学生中焦虑、抑郁、睡眠问题和智能手机成瘾之间的复杂网络关系。

Understanding the complex network of anxiety, depression, sleep problems, and smartphone addiction among college art students using network analysis.

作者信息

Luo Jincheng, Xu Jinni, Lin Yifei, Chen Qingquan

机构信息

Xiamen Academy of Arts and Design, Fuzhou University, Xiamen, Fujian, China.

Fujian Medical University, Fuzhou, Fujian, China.

出版信息

Front Psychiatry. 2025 Mar 4;16:1533757. doi: 10.3389/fpsyt.2025.1533757. eCollection 2025.

Abstract

BACKGROUND

This study employs a network analysis approach to explore the interconnections between anxiety, depression, and sleep problems and smartphone addiction among college students using network analysis, offering a new perspective on these prevalent mental health issues.

METHODS

A cross-sectional study was conducted among art students at a public university in the province of Fujian, China. Data were collected using the Generalized Anxiety Disorder Scale-7, Patient Health Questionnaire-9, Pittsburgh Sleep Quality Index, and Mobile Phone Addiction Index. The R package was used in the analysis for statistical analysis, and information was collected using multi-stage sampling as well as stratified sampling. Network analysis was utilized to identify bivariate associations between symptoms, core components, co-occurring patterns, and key nodes within the network. Network stability and accuracy were assessed using the bootstrap method, and network comparisons were conducted across subgroups based on gender, residential condition, and sibling status.

RESULTS

The study included 2,057 participants. The network analysis revealed uncontrollable worry as the most central symptom, with low energy and excessive worry also identified as key symptoms within the network. Bridge symptoms such as daytime dysfunction, self-harm or suicidal ideation, abnormal behavior and speech, and sensory fear were found to be critical in linking anxiety, depression, and sleep problems. The network of comorbid symptoms and smartphone addiction highlighted inefficiency and loss of control as central factors influencing mental health. No significant differences in network characteristics were found across the subgroups, suggesting the universality of the identified network structure.

CONCLUSION

This study delineates the intricate network of anxiety, depression, sleep problems, and smartphone addiction among college students, identifying key symptomatic intersections and their implications for mental health.

摘要

背景

本研究采用网络分析方法,运用网络分析探索大学生焦虑、抑郁、睡眠问题与智能手机成瘾之间的相互联系,为这些普遍存在的心理健康问题提供了新视角。

方法

在中国福建省一所公立大学的艺术专业学生中开展了一项横断面研究。使用广泛性焦虑障碍量表-7、患者健康问卷-9、匹兹堡睡眠质量指数和手机成瘾指数收集数据。分析中使用R软件包进行统计分析,采用多阶段抽样以及分层抽样收集信息。利用网络分析确定网络中症状之间的双变量关联、核心成分、共现模式和关键节点。使用自助法评估网络稳定性和准确性,并根据性别、居住条件和兄弟姐妹状况对亚组进行网络比较。

结果

该研究纳入了2057名参与者。网络分析显示,无法控制的担忧是最核心的症状,精力不足和过度担忧也被确定为网络中的关键症状。诸如日间功能障碍、自我伤害或自杀意念、异常行为和言语以及感觉恐惧等桥梁症状在连接焦虑、抑郁和睡眠问题方面至关重要。共病症状和智能手机成瘾网络突出显示效率低下和失控是影响心理健康的核心因素。各亚组在网络特征方面未发现显著差异,这表明所确定的网络结构具有普遍性。

结论

本研究描绘了大学生焦虑、抑郁、睡眠问题和智能手机成瘾的复杂网络,确定了关键症状交叉点及其对心理健康的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7c3e/11913800/08c0112689a3/fpsyt-16-1533757-g001.jpg

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