Using Virtual Reality to Examine the Neural and Physiological Anxiety-Related Responses to Balance-Demanding Target-Reaching Leaning Tasks

Rachneet Kaur, Rongyi Sun, Liran Ziegelman, Richard B. Sowers, M. Hernandez
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引用次数: 5

Abstract

We examine the feasibility and effectiveness of a virtual reality (VR) based experimental setup to monitor and modify the neural and physiological anxiety-related responses to balance-demanding target-reaching whole body leaning tasks. In our system, electroencephalography (EEG) and electrocardiography (EKG) signals are used to analyze the subjects' real-time neural and cardiac activities, respectively, while subjects perform accuracy-constrained whole body movements as quickly and as accurately as possible in high fall-risk VR conditions. Salient features of neural and cardiac responses are analyzed to monitor anxiety-related changes in subjects during the performance of balance-demanding tasks. Validation of the proposed framework, integrating VR and sensor-based monitoring, may pave the way to smart and intuitive human-robot or brain-computer interface systems that can detect anxiety in human users during the performance of demanding motor tasks. The application of linear and radial basis function support vector machine classifiers suggest good performance in detecting anxiety using power of the alpha band from F3 and F4 channels of the EEG head cap. Our results suggest that frontal alpha asymmetry (FAA) may be used as bio-marker for quantifying both trait and state anxiety, and further conclude that state anxiety is correlated with motor task performance.
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利用虚拟现实研究平衡要求的学习任务的神经和生理焦虑相关反应
我们研究了基于虚拟现实(VR)的实验设置的可行性和有效性,以监测和修改神经和生理焦虑相关的反应,以平衡要求达到目标的全身学习任务。在我们的系统中,脑电图(EEG)和心电图(EKG)信号分别用于分析受试者的实时神经和心脏活动,同时受试者在高跌倒风险的VR条件下尽可能快速准确地进行准确性受限的全身运动。分析了神经和心脏反应的显著特征,以监测受试者在执行平衡要求任务时的焦虑相关变化。验证提议的框架,整合VR和基于传感器的监测,可能为智能和直观的人机或脑机接口系统铺平道路,这些系统可以在执行苛刻的运动任务时检测人类用户的焦虑。线性和径向基函数支持向量机分类器的应用表明,利用EEG头帽F3和F4通道的α波段功率检测焦虑具有良好的性能。我们的研究结果表明,额叶α不对称(FAA)可以作为量化特征焦虑和状态焦虑的生物标记,并进一步得出状态焦虑与运动任务表现相关的结论。
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