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Selection of Temporal Features for the Detection of Movement Intention in patients with Amyotrophic Lateral Sclerosis

机译:选择肌营养侧面硬化症患者运动意向的时间特征的选择

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Detection of movement intention is a critical step for the development of rehabilitation systems and the induction of plasticity using brain-computer interfacing. The movement-related cortical potential (MRCP), obtained from electroencephalography (EEG) signals, is an attractive modality for movement detection as it can be generated 1–2 s prior to the movement execution. In the present study, monopolar EEG signals were recorded from ten channels in five Amyotrophic Lateral Sclerosis (ALS) patients and ten healthy participants while performing hand movement (hand extension/flexion). Movements were detected offline by using classification (Support Vector Machine) between movement and rest epochs with three different groups of time-domain features. The first group of features were time samples of filtered down-sampled EEG (raw features) while the second group (computed features) included the features calculated from extracted MRCPs and rest epochs (e.g., slope, peak negativity and variations in different time segments). In the third condition, the two groups of features were combined. The results revealed that detection accuracy obtained from raw features $(88pm 3%)$ was higher than either computed features $(83pm 3%)$ or a combination of the two $(84pm 3%)$. Therefore, the time samples of EEG signals seem to be a better choice for movement detection using MRCPs.
机译:运动意图的检测是利用脑电电脑接口开发康复系统和塑性诱导的关键步骤。从脑电图(EEG)信号获得的运动相关皮质电位(MRCP)是运动检测的有吸引力的模态,因为在运动执行之前可以生成1-2秒。在本研究中,单调eEG信号从五个肌营养的外侧硬化症(ALS)患者和十个健康参与者中的十个频道记录,同时进行手动运动(手工延长/屈曲)。通过使用三种不同的时域特征在移动和休息时期之间使用分类(支持向量机)来检测移动移动。第一组特征是过滤的下采样EEG(原始特征)的时间样本,而第二组(计算特征)包括从提取的MRCPS和REST时期计算的特征(例如,斜率,峰值消极性和不同时间段的变化) 。在第三种条件下,组合了两组特征。结果表明,从原始特征获得的检测精度 $(88 PM 3 %)$ 高于计算的功能 $(83 PM 3 %)$ 或两者的组合 $(84 PM 3 %)$ 。因此,EEG信号的时间样本似乎是使用MRCPS移动检测的更好选择。

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