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Channel Selection in EEG-based Prediction of Shoulder/Elbow Movement Intentions involving Stroke Patients: A Computational Approach

机译:基于脑电图预测中风患者肩/肘运动意图的通道选择:一种计算方法

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Brain computer interface (BCI) has gained a lot of attention recently, as a means to detect individuals'' intents using brain signals such as electroencephalographic (EEG) for control of machines. In order to achieve the possible use of BCI in stroke rehabilitation, computational intelligent algorithms are important for reliable separation of shoulder versus elbow movement intentions. Efforts have been made on developing data processing and classification algorithm for such task. Differently, this paper investigates the optimal use of electrodes and signal channels, which is formulated as a data-driven feature selection problem. 163 EEG electrodes are used to collect scalp recordings to predict shoulder abduction and elbow flexion intentions in healthy and stroke subjects. We combine the support vector channel selection with a time-frequency synthesized classification algorithm and examine the performances of using different subsets of channel inputs. Preliminary results show that 1) a reduced number of electrodes can be used to achieve the same or better performance than using the full set of signal channels; 2) besides the fact that the accuracy on able-bodied subjects is expectedly higher than the stroke subject, the stroke subject tends to need more electrodes to achieve the best performance; 3) visualization of spatial distribution of channel rankings shows reasonable connection with functional motor cortex areas
机译:最近,脑计算机接口(BCI)作为使用脑电图(EEG)来控制机器的脑信号来检测个人意图的一种手段,引起了广泛关注。为了实现BCI在中风康复中的可能使用,计算智能算法对于可靠地分离肩膀和肘部运动意图非常重要。已经致力于开发用于这种任务的数据处理和分类算法。与此不同,本文研究了电极和信号通道的最佳使用,这被表述为数据驱动的特征选择问题。 163个EEG电极用于收集头皮记录,以预测健康和中风受试者的肩膀外展和肘部屈曲意图。我们将支持向量通道选择与时频综合分类算法相结合,并研究了使用通道输入的不同子集的性能。初步结果表明:1)与使用整套信号通道相比,减少数量的电极可实现相同或更好的性能; 2)除了预期身体强壮的对象的准确性要比中风的对象高之外,中风的对象还倾向于需要更多的电极以达到最佳性能; 3)可视化通道等级的空间分布,显示与运动皮质区域的合理连接

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