首页> 外文期刊>JMIR formative research. >Detecting Subclinical Social Anxiety Using Physiological Data From a Wrist-Worn Wearable: Small-Scale Feasibility Study
【24h】

Detecting Subclinical Social Anxiety Using Physiological Data From a Wrist-Worn Wearable: Small-Scale Feasibility Study

机译:使用手腕穿戴的生理数据检测亚临床社会焦虑:小规模可行性研究

获取原文
           

摘要

Background Subclinical (ie, threshold) social anxiety can greatly affect young people’s lives, but existing solutions appear inadequate considering its rising prevalence. Wearable sensors may provide a novel way to detect social anxiety and result in new opportunities for monitoring and treatment, which would be greatly beneficial for persons with social anxiety, society, and health care services. Nevertheless, indicators such as skin temperature measured by wrist-worn sensors have not been used in prior work on physiological social anxiety detection. Objective This study aimed to investigate whether subclinical social anxiety in young adults can be detected using physiological data obtained from wearable sensors, including heart rate, skin temperature, and electrodermal activity (EDA). Methods Young adults (N=12) with self-reported subclinical social anxiety (measured using the widely used self-reported version of the Liebowitz Social Anxiety Scale) participated in an impromptu speech task. Physiological data were collected using an E4 Empatica wearable device. Using the preprocessed data and following a supervised machine learning approach, various classification algorithms such as Support Vector Machine, Decision Tree, Random Forest, and K-Nearest Neighbours (KNN) were used to develop models for 3 different contexts. Models were trained to differentiate (1) between baseline and socially anxious states, (2) among baseline, anticipation anxiety, and reactive anxiety states, and (3) social anxiety among individuals with social anxiety of differing severity. The predictive capability of the singular modalities was also explored in each of the 3 supervised learning experiments. The generalizability of the developed models was evaluated using 10-fold cross-validation as a performance index. Results With modalities combined, the developed models yielded accuracies between 97.54% and 99.48% when differentiating between baseline and socially anxious states. Models trained to differentiate among baseline, anticipation anxiety, and reactive anxiety states yielded accuracies between 95.18% and 98.10%. Furthermore, the models developed to differentiate between social anxiety experienced by individuals with anxiety of differing severity scores successfully classified with accuracies between 98.86% and 99.52%. Surprisingly, EDA was identified as the most effective singular modality when differentiating between baseline and social anxiety states, whereas ST was the most effective modality when differentiating anxiety among individuals with social anxiety of differing severity. Conclusions The results indicate that it is possible to accurately detect social anxiety as well as distinguish between levels of severity in young adults by leveraging physiological data collected from wearable sensors.
机译:背景技术亚临床(即阈值)社交焦虑会极大地影响年轻人的生命,但考虑到其普遍存兴的普遍存在,现有的解决方案显得不足。可穿戴传感器可以提供一种检测社交焦虑的新方法,并导致新的监测和治疗机会,这对于社交焦虑,社会和医疗保健服务的人来说将是极大的有益。然而,腕带传感器测量的皮肤温度等指标尚未在生理社会焦虑检测的事先工作中使用。目的本研究旨在调查使用从可穿戴传感器中获得的生理数据,包括心率,皮肤温度和电熨斗活动(EDA)的生理数据检测是否可以检测到年轻成年人的亚临床社会焦虑。方法患有自我报告的亚临床社会焦虑的年轻成年人(n = 12)(使用广泛使用的自我报告的Liebowitz社会焦虑规模测量)参与了一个即兴演奏任务。使用E4 Empatica可穿戴设备收集生理数据。使用预处理数据和遵循监督机器学习方法,使用各种分类算法,例如支持向量机,决策树,随机林和k - 最近的邻居(knn)来开发3种不同上下文的模型。培训模型在基线和社会焦虑状态之间进行区分(1),(2)在基线,预期焦虑和反应性焦虑状态中,以及(3)社会焦虑的社交焦虑的社会焦虑的严重程度。在3个监督学习实验中的每一个中也探讨了单数模型的预测能力。使用10倍交叉验证作为性能指标评估开发模型的普遍性。随着方式的方式,典型的效果,在基线和社会焦虑状态之间区分时,发达模型的准确度为97.54%和99.48%。培训的模型在基线,预期焦虑和反应性焦虑状态中区分,产生的准确性为95.18%和98.10%。此外,开发的模型在焦虑患者中冒充不同严重程度的社会焦虑的模型成功归类为98.86%和99.52%的准确性。令人惊讶的是,当区分基线和社交焦虑状态时,艾玛被鉴定为最有效的奇异模塑,而ST是在患有不同严重程度的社会焦虑的个体之间的焦虑时最有效的方式。结论结果表明,通过利用从可穿戴传感器收集的生理数据,可以准确地检测社交焦虑,以及区分年轻成年人的严重程度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号