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年轻人的焦虑:来自机器学习模型的分析。

Anxiety in young people: Analysis from a machine learning model.

机构信息

Grupo Telesalud, Universidad de Caldas, Colombia.

Grupo Promoción de la Salud y Prevención de la Enfermedad, Universidad de Caldas, Colombia.

出版信息

Acta Psychol (Amst). 2024 Aug;248:104410. doi: 10.1016/j.actpsy.2024.104410. Epub 2024 Jul 20.

DOI:10.1016/j.actpsy.2024.104410
PMID:39032273
Abstract

The study addresses the detection of anxiety symptoms in young people using artificial intelligence models. Questionnaires such as the Patient Health Questionnaire-9 (PHQ-9) and Generalized Anxiety Disorder 7-item scale (GAD-7) are used to collect data, with a focus on early detection of anxiety. Three machine learning models are employed: Support Vector Machine (SVM), K Nearest Neighbors (KNN), and Random Forest (RF), with cross-validation to assess their effectiveness. Results show that the RF model is the most efficient, with an accuracy of 91 %, surpassing previous studies. Significant predictors of anxiety are identified, such as parental education level, alcohol consumption, and social security affiliation. A relationship is observed between anxiety and personal and family history of mental illness, as well as with characteristics external to the model, such as family and personal history of depression. The analysis of the results highlights the importance of considering not only clinical but also social and family aspects in mental health interventions. It is suggested that the sample size be expanded in future studies to improve the robustness of the model. In summary, the study demonstrates the usefulness of artificial intelligence in the early detection of anxiety in young people and highlights the relevance of addressing multidimensional factors in the assessment and treatment of this condition.

摘要

本研究旨在利用人工智能模型检测年轻人的焦虑症状。采用问卷调查,如患者健康问卷-9(PHQ-9)和广泛性焦虑障碍 7 项量表(GAD-7),收集数据,重点在于早期发现焦虑。研究使用了三种机器学习模型:支持向量机(SVM)、K 最近邻(KNN)和随机森林(RF),并通过交叉验证评估它们的有效性。结果表明,RF 模型是最有效的,准确率为 91%,超过了以往的研究。确定了焦虑的显著预测因素,如父母的教育水平、饮酒和社会保障关系。观察到焦虑与个人和家族精神病史之间存在关联,以及与模型外部特征之间存在关联,如家庭和个人抑郁史。结果分析强调了在心理健康干预中不仅要考虑临床因素,还要考虑社会和家庭因素的重要性。建议在未来的研究中扩大样本量,以提高模型的稳健性。总之,本研究表明人工智能在早期检测年轻人焦虑方面的有效性,并强调在评估和治疗这种疾病时需要考虑多维度因素。

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