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基于多层感知器的文献阅读偏好可预测大学生的焦虑和抑郁。

Multilayer perceptron-based literature reading preferences predict anxiety and depression in university students.

作者信息

Liu Yamei

机构信息

School of Languages and Cultures, Shanghai University of Political Science and Law, Shanghai, China.

出版信息

Front Psychol. 2024 Jul 31;15:1425471. doi: 10.3389/fpsyg.2024.1425471. eCollection 2024.

Abstract

OBJECTIVE

This study aims to precisely model the nonlinear relationship between university students' literature reading preferences (LRP) and their levels of anxiety and depression using a multilayer perceptron (MLP) to identify reading-related risk factors affecting anxiety and depression among university students.

METHODS

In this cross-sectional study, an internet-based questionnaire was conducted among 2,092 undergraduate students (aged 18-22, 62.7% female, from seven provinces in China). Participants completed a customized questionnaire on their LRP, followed by standardized assessments of anxiety and depression using the Generalized Anxiety Disorder 7-item Scale and the Beck Depression Inventory, respectively. An MLP with residual connections was employed to establish the nonlinear relationship between LRP and anxiety and depression.

RESULTS

The MLP model achieved an average accuracy of 86.8% for predicting non-anxious individuals and 81.4% for anxious individuals. In the case of depression, the model's accuracy was 90.1% for non-depressed individuals and 84.1% for those with depression. SHAP value analysis identified "Tense/Suspenseful-Emotional Tone," "War and Peace-Thematic Content," and "Infrequent Reading-Reading Habits" as the top contributors to anxiety prediction accuracy. Similarly, "Sad-Emotional Tone Preference," "Emotional Depictions-Thematic Content," and "Thought-Provoking-Emotional Tone" were the primary contributors to depression prediction accuracy.

CONCLUSION

The MLP accurately models the nonlinear relationship between LRP and mental health in university students, indicating the significance of specific reading preferences as risk factors. The study underscores the importance of literature emotional tone and themes in mental health. LRP should be integrated into psychological assessments to help prevent anxiety and depression among university students.

摘要

目的

本研究旨在使用多层感知器(MLP)精确模拟大学生文学阅读偏好(LRP)与其焦虑和抑郁水平之间的非线性关系,以识别影响大学生焦虑和抑郁的阅读相关风险因素。

方法

在这项横断面研究中,对2092名本科生(年龄在18 - 22岁之间,62.7%为女性,来自中国七个省份)进行了基于网络的问卷调查。参与者完成了一份关于其LRP的定制问卷,随后分别使用广泛性焦虑障碍7项量表和贝克抑郁量表对焦虑和抑郁进行标准化评估。采用具有残差连接的MLP来建立LRP与焦虑和抑郁之间的非线性关系。

结果

MLP模型预测非焦虑个体的平均准确率为86.8%,预测焦虑个体的平均准确率为81.4%。在抑郁方面,该模型预测非抑郁个体的准确率为90.1%,预测抑郁个体的准确率为84.1%。SHAP值分析确定“紧张/悬疑 - 情感基调”“战争与和平 - 主题内容”和“阅读频率低 - 阅读习惯”是焦虑预测准确率的主要贡献因素。同样,“悲伤 - 情感基调偏好”“情感描写 - 主题内容”和“发人深省 - 情感基调”是抑郁预测准确率的主要贡献因素。

结论

MLP准确地模拟了大学生LRP与心理健康之间的非线性关系,表明特定阅读偏好作为风险因素的重要性。该研究强调了文学情感基调及主题在心理健康中的重要性。LRP应纳入心理评估,以帮助预防大学生的焦虑和抑郁。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09eb/11322452/4f017cb1e1cb/fpsyg-15-1425471-g001.jpg

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