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运用潜在剖面分析和 K-均值聚类来识别学生焦虑模式。

Use of latent profile analysis and k-means clustering to identify student anxiety profiles.

机构信息

School of Public Health, China Medical University, No.77 Puhe Road, Shenyang North New District, Shenyang, 110122, Liaoning, China.

Nanchong Physical and Mental Hospital (Nanchong Sixth People's Hospital), No.99 Jincheng Street, Yingshan County, Nanchong, 637000, Sichuan, China.

出版信息

BMC Psychiatry. 2022 Jan 5;22(1):12. doi: 10.1186/s12888-021-03648-7.

Abstract

BACKGROUND

Anxiety disorders are often the first presentation of psychopathology in youth and are considered the most common psychiatric disorders in children and adolescents. This study aimed to identify distinct student anxiety profiles to develop targeted interventions.

METHODS

A cross-sectional study was conducted with 9738 students in Yingshan County. Background characteristics were collected and Mental Health Test (MHT) were completed. Latent profile analysis (LPA) was applied to define student anxiety profiles, and then the analysis was repeated using k-means clustering.

RESULTS

LPA yielded 3 profiles: the low-risk, mild-risk and high-risk groups, which comprised 29.5, 38.1 and 32.4% of the sample, respectively. Repeating the analysis using k-means clustering resulted in similar groupings. Most students in a particular k-means cluster were primarily in a single LPA-derived student profile. The multinomial ordinal logistic regression results showed that the high-risk group was more likely to be female, junior, and introverted, to live in a town, to have lower or average academic performance, to have heavy or average academic pressure, and to be in schools that have never or occasionally have organized mental health education activities.

CONCLUSIONS

The findings suggest that students with anxiety symptoms may be categorized into distinct profiles that are amenable to varying strategies for coordinated interventions.

摘要

背景

焦虑障碍通常是青少年精神病理学的首发表现,被认为是儿童和青少年中最常见的精神障碍。本研究旨在确定不同的学生焦虑特征,以便制定有针对性的干预措施。

方法

对英山县的 9738 名学生进行了横断面研究。收集了背景特征,并完成了心理健康测试(MHT)。应用潜在剖面分析(LPA)来确定学生的焦虑特征,然后使用 K 均值聚类重复分析。

结果

LPA 产生了 3 种特征:低危、中危和高危组,分别占样本的 29.5%、38.1%和 32.4%。使用 K 均值聚类重复分析得到了类似的分组。特定 K 均值聚类中的大多数学生主要属于单一的 LPA 衍生的学生特征。多分类有序逻辑回归结果显示,高危组更可能是女性、初中生、内向型,居住在城镇,学业成绩较低或中等,学业压力较大或中等,所在学校从未或偶尔组织过心理健康教育活动。

结论

研究结果表明,具有焦虑症状的学生可能被分为不同的特征,这些特征可以采用不同的策略进行协调干预。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c07f/8728926/9b9e968357c0/12888_2021_3648_Fig1_HTML.jpg

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