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增强青少年重度抑郁症发作的预测:一种机器学习方法。

Enhancing prediction of major depressive disorder onset in adolescents: A machine learning approach.

作者信息

LoParo Devon, Matos Ana Paula, Arnarson Eiríkur Örn, Craighead W Edward

机构信息

Department of Psychiatry and Behavioral Sciences, Emory University School of Medicine, Atlanta, Georgia.

Department of Psychology, University of Coimbra, Coimbra, Portugal.

出版信息

J Psychiatr Res. 2025 Feb;182:235-242. doi: 10.1016/j.jpsychires.2025.01.007. Epub 2025 Jan 9.

Abstract

Major Depressive Disorder (MDD) is a prevalent mental health condition that often begins in adolescence, with significant long-term implications. Indicated prevention programs targeting adolescents with mild symptoms have shown efficacy, yet the methods for identifying at-risk individuals need improvement. This study aims to evaluate the utility of Partial Least Squares Regression (PLSR) in predicting the onset of MDD among non-depressed adolescents, compared to traditional screening methods. The study recruited 1462 Portuguese adolescents aged 13-16, who were assessed using various self-report measures and followed for two years. Participants were randomly divided into training (70%, N = 1023) and testing (30%, N = 439) samples. PLSR models were developed to predict the occurrence of a major depressive episode (MDE) within two years, using 331 variables. The model's performance was compared to the Children's Depression Inventory (CDI) in predicting MDE onset. The best-fitting PLSR model with two components explained 19.1% and 16.9% of the variance in the training and testing samples, respectively, significantly outperforming the CDI, which explained 7.7% of the variance. The area under the ROC curve was 0.78 for PLSR, compared to 0.71 for CDI. An empirically derived cut-off point was used to create dichotomous risk categories, and it showed a significant difference in MDE rates between predicted high-risk and low-risk groups. The balanced accuracy of the PLSR model was 0.77, compared to 0.65 for the CDI method. The PLSR model effectively identified adolescents at risk for developing MDD, demonstrating superior predictive power over the CDI. This study supports the potential utility of ML techniques (e.g., PLSR) in enhancing early identification and prevention efforts for adolescent depression.

摘要

重度抑郁症(MDD)是一种常见的心理健康状况,通常始于青春期,具有重大的长期影响。针对有轻微症状青少年的指示性预防项目已显示出有效性,但识别高危个体的方法仍需改进。本研究旨在评估偏最小二乘回归(PLSR)与传统筛查方法相比,在预测非抑郁青少年中MDD发病情况方面的效用。该研究招募了1462名年龄在13 - 16岁的葡萄牙青少年,使用各种自我报告测量方法对他们进行评估,并随访两年。参与者被随机分为训练样本(70%,N = 1023)和测试样本(30%,N = 439)。使用331个变量开发了PLSR模型,以预测两年内重度抑郁发作(MDE)的发生情况。将该模型在预测MDE发作方面的表现与儿童抑郁量表(CDI)进行比较。具有两个成分的最佳拟合PLSR模型分别解释了训练样本和测试样本中19.1%和16.9%的方差,显著优于解释了7.7%方差的CDI。PLSR的ROC曲线下面积为0.78,而CDI为0.71。使用经验推导的临界点创建二分风险类别,结果显示预测的高风险组和低风险组之间的MDE发生率存在显著差异。PLSR模型的平衡准确率为0.77,而CDI方法为0.65。PLSR模型有效地识别了有发展为MDD风险的青少年,显示出比CDI更强的预测能力。本研究支持了机器学习技术(如PLSR)在加强青少年抑郁症早期识别和预防工作方面的潜在效用。

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