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A Pilot Study on Falling-Risk Detection Method Based on Postural Perturbation Evoked Potential Features

机译:基于姿势扰动诱发潜在特征的下降风险检测方法试验研究

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摘要

In the human-robot hybrid system, due to the error recognition of the pattern recognition system, the robot may perform erroneous motor execution, which may lead to falling-risk. While, the human can clearly detect the existence of errors, which is manifested in the central nervous activity characteristics. To date, the majority of studies on falling-risk detection have focused primarily on computer vision and physical signals. There are no reports of falling-risk detection methods based on neural activity. In this study, we propose a novel method to monitor multi erroneous motion events using electroencephalogram (EEG) features. There were 15 subjects who participated in this study, who kept standing with an upper limb supported posture and received an unpredictable postural perturbation. EEG signal analysis revealed a high negative peak with a maximum averaged amplitude of −14.75 ± 5.99 μV, occurring at 62 ms after postural perturbation. The xDAWN algorithm was used to reduce the high-dimension of EEG signal features. And, Bayesian linear discriminant analysis (BLDA) was used to train a classifier. The detection rate of the falling-risk onset is 98.67%. And the detection latency is 334ms, when we set detection rate beyond 90% as the standard of dangerous event onset. Further analysis showed that the falling-risk detection method based on postural perturbation evoked potential features has a good generalization ability. The model based on typical event data achieved 94.2% detection rate for unlearned atypical perturbation events. This study demonstrated the feasibility of using neural response to detect dangerous fall events.
机译:在人机混合系统中,由于图案识别系统的错误识别,机器人可以执行错误的电动机执行,这可能导致风险下降。虽然,人可以清楚地检测到存在的错误,这表明在中枢神经活动特征中。迄今为止,大多数关于下降风险检测的研究主要集中在计算机视觉和物理信号上。基于神经活动的风险下降检测方法没有报道。在本研究中,我们提出了一种使用脑电图(EEG)特征来监测多错误运动事件的新方法。有15名受试者参加了这项研究,他们一直坚持支持姿势的上肢,并获得了不可预测的姿势扰动。 EEG信号分析显示出高负峰,最大平均幅度为-14.75±5.99μV,术后扰动后62ms发生。 XDAWN算法用于减少EEG信号特征的高维度。而且,贝叶斯线性判别分析(BLDA)用于培训分类器。下降风险发病的检出率为98.67%。当我们将检测率设置为超过90%以超过90%的检测延迟是危险事件发作的标准时,检测延迟为334ms。进一步的分析表明,基于姿势扰动诱发潜在特征的下降风险检测方法具有良好的泛化能力。基于典型事件数据的模型实现了94.2%的检测率,以实现未经读数的非典型扰动事件。本研究表明,使用神经反应来检测危险秋季事件的可行性。

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