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High-density EEG and independent component analysis mixture models distinguish knee contractions from ankle contractions

机译:高密度脑电图和独立成分分析混合模型可区分膝盖收缩和踝部收缩

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Decoding human motor tasks from single trial electroencephalography (EEG) signals can help scientists better understand cortical neurophysiology and may lead to brain computer interfaces (BCI) for motor augmentation. Spatial characteristics of EEG have been used to distinguish left from right hand motor imagery and motor action. We used independent component analysis (ICA) of EEG to distinguish right knee action from right ankle action. We recorded 264-channel EEG while 5 subjects performed a variety of knee and ankle exercises. An adaptive mixture independent component analysis (ICA) algorithm generated two distinct mixture models from a merged set of EEG signals (including both knee and ankle actions) without prior knowledge of the underlying exercise. The ICA mixture models parsed EEG signals into maximally independent component (IC) processes representing electrocortical sources, muscle sources, and artifacts. We calculated a spatially fixed equivalent current dipole for each IC using an inverse modeling approach. The fit of the models to the single trial EEG signals distinguished knee exercises from ankle exercise with 90% accuracy. For 3 of 5 subjects, accuracy was 100%. Electrocortical current dipole locations revealed significant differences in the knee and ankle mixture models that were consistent with the somatotopy of the tasks. These data demonstrate that EEG mixture models can distinguish motor tasks that have different somatotopic arrangements, even within the same brain hemisphere.
机译:从单次试验脑电图(EEG)信号解码人的运动任务可以帮助科学家更好地了解皮层神经生理学,并可能导致脑计算机接口(BCI)进行运动增强。脑电图的空间特征已被用于区分左手运动图像和右手运动图像。我们使用脑电图的独立成分分析(ICA)来区分右膝动作和右脚踝动作。我们记录了264通道的脑电图,同时有5位受试者进行了各种膝盖和踝关节锻炼。自适应混合独立成分分析(ICA)算法无需事先了解基础运动,即可从一组合并的EEG信号(包括膝盖和脚踝动作)中生成两个截然不同的混合模型。 ICA混合物将解析的EEG信号建模为最大独立分量(IC)过程,这些过程代表电皮层源,肌肉源和伪像。我们使用逆建模方法为每个IC计算了空间固定的等效电流偶极子。模型与单次EEG信号的拟合可将膝部锻炼与踝部锻炼区别开来,并具有90%的准确性。对于5名受试者中的3名,准确性为100%。皮层电流偶极子的位置显示膝盖和脚踝混合模型的显着差异,与任务的体解剖学一致。这些数据表明,即使在同一大脑半球内,EEG混合模型也可以区分具有不同体位排列的运动任务。

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