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Imagined Hand Clenching Force and Speed Modulate Brain Activity and Are Classified by NIRS Combined With EEG.想象中的手握力和速度调节大脑活动,并通过近红外光谱结合脑电图进行分类。
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Neurophysiological predictor of SMR-based BCI performance.基于运动想象的脑-机接口性能的神经生理预测指标。
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一种通过想象等长力量水平实现的新型非侵入性脑机接口。

A novel noninvasive brain-computer interface by imagining isometric force levels.

作者信息

Hualiang Li, Xupeng Ye, Yuzhong Liu, Tingjun Xie, Wei Tan, Yali Shen, Qiru Wang, Chaolin Xiong, Yu Wang, Weilin Lin, Long Jinyi

机构信息

Key Laboratory of Occupational Health and Safety of Guangdong Power Grid Co., Ltd., Guangzhou, Guangdong China.

Electric Power Research Institute of Guangdong Power Grid Co., Ltd., Guangzhou, Guangdong China.

出版信息

Cogn Neurodyn. 2023 Aug;17(4):975-983. doi: 10.1007/s11571-022-09875-2. Epub 2022 Sep 5.

DOI:10.1007/s11571-022-09875-2
PMID:37522042
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10374494/
Abstract

Physiological circuits differ across increasing isometric force levels during unilateral contraction. Therefore, we first explored the possibility of predicting the force level based on electroencephalogram (EEG) activity recorded during a single trial of unilateral 5% or 40% of maximal isometric voluntary contraction (MVC) in right-hand grip imagination. Nine healthy subjects were involved in this study. The subjects were required to randomly perform 20 trials for each force level while imagining a right-hand grip. We proposed the use of common spatial patterns (CSPs) and coherence between EEG signals as features in a support vector machine for force level prediction. The results showed that the force levels could be predicted through single-trial EEGs while imagining the grip (mean accuracy = 81.4 ± 13.29%). Additionally, we tested the possibility of online control of a ball game using the above paradigm through unilateral grip imagination at different force levels (i.e., 5% of MVC imagination and 40% of MVC imagination for right-hand movement control). Subjects played the ball games effectively by controlling direction with our novel BCI system (n = 9, mean accuracy = 76.67 ± 9.35%). Data analysis validated the use of our BCI system in the online control of a ball game. This information may provide additional commands for the control of robots by users through combinations with other traditional brain-computer interfaces, e.g., different limb imaginations.

摘要

在单侧收缩过程中,生理回路会随着等长力量水平的增加而有所不同。因此,我们首先探讨了基于在右手握力想象中单次最大等长自主收缩(MVC)的5%或40%的单侧试验期间记录的脑电图(EEG)活动来预测力量水平的可能性。九名健康受试者参与了这项研究。受试者被要求在想象右手握力时,针对每个力量水平随机进行20次试验。我们提出将共同空间模式(CSPs)和EEG信号之间的相干性作为支持向量机中力量水平预测的特征。结果表明,在想象握力时可以通过单次试验EEG预测力量水平(平均准确率 = 81.4 ± 13.29%)。此外,我们测试了使用上述范式通过在不同力量水平(即右手运动控制的MVC想象的5%和MVC想象的40%)下的单侧握力想象来在线控制球类游戏的可能性。受试者通过我们新颖的脑机接口系统有效地控制方向来进行球类游戏(n = 9,平均准确率 = 76.67 ± 9.35%)。数据分析验证了我们的脑机接口系统在球类游戏在线控制中的应用。这些信息可能通过与其他传统脑机接口(例如不同肢体想象)相结合,为用户控制机器人提供额外的指令。