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通过社会支持预测抑郁症状:军事人群中的机器学习方法

Predicting depressive symptoms through social support: a machine learning approach in military populations.

作者信息

Chen Kun-Huang, Chiu Pao-Lung, Chen Ming-Hsuan

机构信息

Department of Industrial Engineering and Management, Ming Chi University of Technology, Taipei, Taiwan.

Department of Graduate Institute of Science and Technology Law, National Kaohsiung University of Science and Technology, Kaohsiung, Taiwan.

出版信息

Eur J Psychotraumatol. 2025 Dec;16(1):2527547. doi: 10.1080/20008066.2025.2527547. Epub 2025 Jul 28.

Abstract

Perceived Social support has been consistently shown to reduce depressive symptoms among military personnel. However, limited research has explored how different types of support, emotional, informational, and instrumental, from multiple sources uniquely predict mental health outcomes. Subgroup differences based on gender, socioeconomic status (SES), and future orientation also remain under-investigated. This study used machine learning (ML) to examine the predictive effects of perceived social support on depressive symptoms among military cadets, while identifying key subgroup variations to inform tailored mental health strategies. Data were drawn from the Career Development Study of Military Personnel across four waves: SES at Wave 1 (W1), personal future orientation at Wave 2 (W2), perceived military social support at Wave 3 (W3), and depressive symptoms at Wave 4 (W4) ( = 2,978). Five ML classifiers, Random Forest, Decision Tree, Support Vector Machine (SVM), AdaBoost, and k-Nearest Neighbors, were applied to predict depressive symptoms, with model performance evaluated across full and subgroup samples. The Random Forest model achieved the highest area under the precision-recall curve (AUPRC) at 96.3% and consistently outperformed other classifiers across a range of evaluation metrics. Subgroup analyses demonstrated similarly high prediction performance, measured by AUPRC, across gender, SES, and future orientation subgroups. Feature importance analyses using the Gini index indicated that different support sources (e.g. leader, peer, senior student) played varying roles across subgroups. Machine learning approaches demonstrate high AUPRC in predicting depressive symptoms and reveal nuanced subgroup patterns in perceived social support needs. These findings can inform the development of more responsive and personalized mental health interventions in military contexts.

摘要

一直以来,感知到的社会支持被证明能够减轻军人的抑郁症状。然而,仅有有限的研究探讨了来自多个来源的不同类型的支持(情感支持、信息支持和工具性支持)如何独特地预测心理健康结果。基于性别、社会经济地位(SES)和未来取向的亚组差异也仍未得到充分研究。本研究使用机器学习(ML)来检验感知到的社会支持对军校学员抑郁症状的预测作用,同时识别关键的亚组差异,以为量身定制的心理健康策略提供依据。数据取自军事人员职业发展研究的四个阶段:第一阶段(W1)的SES、第二阶段(W2)的个人未来取向、第三阶段(W3)的感知到的军事社会支持以及第四阶段(W4)的抑郁症状(n = 2,978)。应用了五种ML分类器,即随机森林、决策树、支持向量机(SVM)、AdaBoost和k近邻,来预测抑郁症状,并在全样本和亚组样本中评估模型性能。随机森林模型在精确召回曲线下面积(AUPRC)方面达到了最高的96.3%,并且在一系列评估指标上始终优于其他分类器。亚组分析表明,以AUPRC衡量,在性别、SES和未来取向亚组中预测性能同样很高。使用基尼指数的特征重要性分析表明,不同的支持来源(如领导、同伴、高年级学生)在各亚组中发挥着不同的作用。机器学习方法在预测抑郁症状方面显示出较高的AUPRC,并揭示了感知到的社会支持需求中的细微亚组模式。这些发现可为军事环境中更具响应性和个性化的心理健康干预措施的制定提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2c89/12305876/b4a5de4b8aac/ZEPT_A_2527547_F0001_OC.jpg

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