Individuals high in social anxiety symptoms often exhibit elevated state anxiety in social situations. Research has shown it is possible to detect state anxiety by leveraging digital biomarkers and machine learning techniques. However, most existing work trains models on an entire group of participants, failing to capture individual differences in their psychological and behavioral responses to social contexts. To address this concern, in Study 1, we collected linguistic data from N=35 high socially anxious participants in a variety of social contexts, finding that digital linguistic biomarkers significantly differ between evaluative vs. non-evaluative social contexts and between individuals having different trait psychological symptoms, suggesting the likely importance of personalized approaches to detect state anxiety. In Study 2, we used the same data and results from Study 1 to model a multilayer personalized machine learning pipeline to detect state anxiety that considers contextual and individual differences. This personalized model outperformed the baseline F1-score by 28.0%. Results suggest that state anxiety can be more accurately detected with personalized machine learning approaches, and that linguistic biomarkers hold promise for identifying periods of state anxiety in an unobtrusive way.
翻译:社交焦虑症状高的个体在社交场合中通常表现出较高的状态焦虑。研究表明,利用数字生物标志和机器学习技术可以检测状态焦虑。然而,大多数现有的工作在整个参与者群体上训练模型,未能捕捉他们心理和行为反应在社交情境中的个体差异。为解决这一问题,在研究1中,我们收集了N=35高社交焦虑参与者在各种社交情境中的语言数据,发现数字语言生物标志在评估和非评估社交情境以及在具有不同特质心理症状的个体之间显着不同,表明个性化方法可能是检测状态焦虑的重要手段。在研究2中,我们使用与研究1相同的数据和结果,建立了一个多层个性化机器学习管道模型来检测状态焦虑,考虑到背景和个体差异。这种个性化模型的F1分数比基准线高28.0%。结果表明,采用个性化机器学习方法可以更准确地检测状态焦虑,并且语言生物标志有望在不引人注目的情况下识别状态焦虑时段。