IEEE J Biomed Health Inform. 2024 May;28(5):2581-2591. doi: 10.1109/JBHI.2023.3274486. Epub 2024 May 6.
Current research has examined the use of user-generated data from online media to identify and diagnose depression as a serious mental health issue that can significantly impact an individual's daily life. To this end, many studies examined words in personal statements to identify depression. In addition to aiding in the diagnosis and treatment of depression, this study uses and utilizes a Graph Attention Network (GAT) model for the classification of depression from online media. The model is based on masked self-attention layers, that assigns different weight to each node in a neighborhood without costly matrix operations. In addition, an emotion lexicon was extended using hypernyms to improve the model performance. Furthermore, embedding of the model was used to illustrate the contribution of the activated words to each symptom and to obtain qualitative agreement from psychiatrists. This technique uses previously learned embedding to illustrate the contribution of activated words to depressive symptoms in online forums. A significant improvement was observed in the model's performance through the use of the lexicon extension method, resulting in an increase in the ROC performance. The performance was also enhanced by an increase in vocabulary and the adoption of a graph-based curriculum. The lexicon expansion method involves the generation of additional words with similar semantic attributes, utilizing similarity metrics to reinforce lexical features. The graph-based curriculum learning also utilized to handle more challenging training samples, allowing the model to develop increasing expertise in learning complex correlations between input data and output labels.
目前的研究已经检验了使用来自在线媒体的用户生成数据来识别和诊断抑郁症作为一种严重的心理健康问题,这可能会严重影响个人的日常生活。为此,许多研究都检查了个人陈述中的单词,以识别抑郁症。本研究使用并利用图注意网络(GAT)模型从在线媒体对抑郁症进行分类,除了有助于抑郁症的诊断和治疗外。该模型基于掩蔽的自注意层,无需昂贵的矩阵运算即可为邻域中的每个节点分配不同的权重。此外,通过使用上下义词扩展了情感词典,以提高模型性能。此外,还使用模型的嵌入来说明激活词对每个症状的贡献,并从精神科医生那里获得定性一致性。该技术使用先前学习的嵌入来说明在线论坛中激活词对抑郁症状的贡献。通过使用词汇扩展方法,观察到模型性能有了显著提高,ROC 性能有所提高。词汇量的增加和基于图的课程的采用也提高了性能。词汇扩展方法涉及生成具有相似语义属性的附加单词,利用相似度度量来增强词汇特征。基于图的课程学习也被用于处理更具挑战性的训练样本,使模型能够在学习输入数据和输出标签之间的复杂相关性方面发展出越来越多的专业知识。