Wearable Technology Insights: Unveiling Physiological Responses During Three Different Socially Anxious Activities

N. K. Sahu, Snehil Gupta, Haroon Lone
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Abstract

Wearable technology holds promise for monitoring and managing Social Anxiety Disorder (SAD), yet the absence of clear biomarkers specific to SAD hampers its effectiveness. This paper explores this issue by presenting a study investigating variances in heart rate, heart rate variability, and skin conductance between socially anxious and non-anxious individuals. One hundred eleven non-clinical student participants participated in groups of three in three anxiety-provoking activities (i.e., speech, group discussion, and interview) in a controlled lab-based study. During the study, electrocardiogram (ECG) and electrodermal activity (EDA) signals were captured via on-body electrodes. During data analysis, participants were divided into four groups based on their self-reported anxiety level (“None”, “mild”, “moderate”, and “severe”). Between-group analysis shows that discriminating ECG features (i.e., HR and MeanNN) could identify anxious individuals during anxiety-provoking activities, while EDA could not. Moreover, the discriminating ECG features improved the classification accuracy of anxious and non-anxious individuals in different machine-learning techniques. The findings need to be further scrutinized in real-world settings for the generalizability of the results.
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可穿戴技术透视:揭示三种不同社交焦虑活动中的生理反应
可穿戴技术为监控和管理社交焦虑症(SAD)带来了希望,但由于缺乏针对 SAD 的明确生物标志物,其有效性受到了影响。本文通过研究社交焦虑症患者和非焦虑症患者的心率、心率变异性和皮肤电导率的差异来探讨这一问题。在一项实验室对照研究中,111 名非临床医学专业的学生以三人一组的形式参加了三种引发焦虑的活动(即演讲、小组讨论和访谈)。在研究过程中,研究人员通过身上的电极采集了心电图(ECG)和皮肤电活动(EDA)信号。在数据分析过程中,根据参与者自我报告的焦虑程度("无"、"轻度"、"中度 "和 "重度")将其分为四组。组间分析表明,辨别性心电图特征(即心率和 MeanNN)可以识别在焦虑诱发活动中焦虑的个体,而 EDA 则不能。此外,在不同的机器学习技术中,辨别心电图特征提高了焦虑和非焦虑个体的分类准确性。这些发现还需要在真实世界环境中进一步仔细研究,以确定结果的可推广性。
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