Channel selection

频道选择
  • 文章类型: Journal Article
    我们提出了一种对睡眠阶段进行分类的新方法,该方法结合了基于通道选择排列的计算成本低廉的方法,并利用了深度学习能力。特别是门控循环单位(GRU)模型,以及其他深度学习方法。通过系统地排列脑电图(EEG)通道,评估EEG通道的不同组合,以识别5类睡眠阶段分类的信息最丰富的子集。为了进行分析,我们使用了日本筑波大学国际综合睡眠医学研究所(WPI-IIIS)收集的EEG数据集.这些探索的结果提供了许多新的见解,例如(1)当通道少于3时性能急剧下降,(2)通过排列选择的3个随机通道提供了与美国推荐的3个通道相同或更好的预测睡眠医学学会(AASM),(3)N1类在预测精度方面的影响最大,因为通道从128个随机下降到3个或3个AASM,并且(4)在5个类别的预测中没有单通道提供可接受的准确度水平。获得的结果表明,GRU能够从EEG数据中保留基本的时间信息,这允许有效地捕获与每个睡眠阶段相关的基本模式。使用基于排列的通道选择,我们增强或至少保持与使用高密度脑电图时一样高的模型效率,仅包含信息最丰富的EEG通道。
    We present a new approach to classifying the sleep stage that incorporates a computationally inexpensive method based on permutations for channel selection and takes advantage of deep learning power, specifically the gated recurrent unit (GRU) model, along with other deep learning methods. By systematically permuting the electroencephalographic (EEG) channels, different combinations of EEG channels are evaluated to identify the most informative subset for the classification of the 5-class sleep stage. For analysis, we used an EEG dataset that was collected at the International Institute for Integrative Sleep Medicine (WPI-IIIS) at the University of Tsukuba in Japan. The results of these explorations provide many new insights such as the (1) drastic decrease in performance when channels are fewer than 3, (2) 3-random channels selected by permutation provide the same or better prediction than the 3 channels recommended by the American Academy of Sleep Medicine (AASM), (3) N1 class suffers the most in prediction accuracy as the channels drop from 128 to 3 random or 3 AASM, and (4) no single channel provides acceptable levels of accuracy in the prediction of 5 classes. The results obtained show the GRU\'s ability to retain essential temporal information from EEG data, which allows capturing the underlying patterns associated with each sleep stage effectively. Using permutation-based channel selection, we enhance or at least maintain as high model efficiency as when using high-density EEG, incorporating only the most informative EEG channels.
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  • 文章类型: Journal Article
    目的:受HealthCare4.0的启发,本研究旨在基于手动提取的特征来降低传统EEG特征的维数,包括时域和频域的统计特征。
    方法:使用4阶Butterworth滤波器和小波包变换从UNM和Iowa数据集中提取了总共22个多尺度特征。基于单通道验证,从59个公共频道的池中选择具有最高R2得分的29个频道。所提出的信道选择方案在UNM数据集上进行了验证,并在Iowa数据集上进行了测试,以将其可泛化性与未经信道选择训练的模型进行比较。
    结果:实验结果表明,所提出的模型实现了100%的最佳分类精度。此外,通过基于Iowa数据集的样本外测试验证了通道选择方法的泛化能力。结论:使用单通道验证,提出了一种基于传统统计特征的信道选择方案,导致29个频道的选择。该方案将与帕金森病相关的EEG特征向量的维数显著降低了50%。值得注意的是,这种方法在UNM和Iowa数据集上都表现出相当大的分类性能.对于闭眼状态,达到的最高分类准确率为100%,而对于睁眼状态,最高精度达到93.75%。
    OBJECTIVE: Motivated by Health Care 4.0, this study aims to reducing the dimensionality of traditional EEG features based on manual extracted features, including statistical features in the time and frequency domains.
    METHODS: A total of 22 multi-scale features were extracted from the UNM and Iowa datasets using a 4th order Butterworth filter and wavelet packet transform. Based on single-channel validation, 29 channels with the highest R2 scores were selected from a pool of 59 common channels. The proposed channel selection scheme was validated on the UNM dataset and tested on the Iowa dataset to compare its generalizability against models trained without channel selection.
    RESULTS: The experimental results demonstrate that the proposed model achieves an optimal classification accuracy of 100%. Additionally, the generalization capability of the channel selection method is validated through out-of-sample testing based on the Iowa dataset Conclusions: Using single-channel validation, we proposed a channel selection scheme based on traditional statistical features, resulting in a selection of 29 channels. This scheme significantly reduced the dimensionality of EEG feature vectors related to Parkinson\'s disease by 50%. Remarkably, this approach demonstrated considerable classification performance on both the UNM and Iowa datasets. For the closed-eye state, the highest classification accuracy achieved was 100%, while for the open-eye state, the highest accuracy reached 93.75%.
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  • 文章类型: Journal Article
    Objective.脑机接口(BCI)研究中的多通道脑电图(EEG)技术提供了增强的空间分辨率和系统性能的优势。然而,这也意味着在数据处理阶段需要更多的时间,不利于BCI的快速反应。因此,在保持解码有效性的同时减少EEG通道的数量是一项必要且具有挑战性的任务。方法。在本文中,我们提出了一种基于Fisher评分的受试者内脑电通道选择的局部优化方法。最初,提取不同波段脑电信号的共同空间模式特征,根据这些特征计算每个通道的Fisher分数,并对它们进行相应的排名。随后,我们采用局部优化方法来完成信道选择。主要结果。关于BCI竞赛IV数据集IIa,我们的方法在四个波段平均选择11个通道,平均准确率为79.37%。这表示与使用22个通道的全组相比6.52%的改进。在我们自己收集的数据集上,我们的方法同样用不到一半的通道实现了24.20%的显著改进,平均准确率为76.95%。意义。这项研究探讨了信道组合在信道选择任务中的重要性,并揭示了适当的信道组合可以进一步提高信道选择的质量。结果表明,该模型在两类运动想象脑电分类任务中选择了少量具有较高准确性的通道。此外,它通过信道选择和组合提高了BCI系统的可移植性,为便携式BCI系统的开发提供了潜力。
    Objective. Multi-channel electroencephalogram (EEG) technology in brain-computer interface (BCI) research offers the advantage of enhanced spatial resolution and system performance. However, this also implies that more time is needed in the data processing stage, which is not conducive to the rapid response of BCI. Hence, it is a necessary and challenging task to reduce the number of EEG channels while maintaining decoding effectiveness.Approach. In this paper, we propose a local optimization method based on the Fisher score for within-subject EEG channel selection. Initially, we extract the common spatial pattern characteristics of EEG signals in different bands, calculate Fisher scores for each channel based on these characteristics, and rank them accordingly. Subsequently, we employ a local optimization method to finalize the channel selection.Main results. On the BCI Competition IV Dataset IIa, our method selects an average of 11 channels across four bands, achieving an average accuracy of 79.37%. This represents a 6.52% improvement compared to using the full set of 22 channels. On our self-collected dataset, our method similarly achieves a significant improvement of 24.20% with less than half of the channels, resulting in an average accuracy of 76.95%.Significance. This research explores the importance of channel combinations in channel selection tasks and reveals that appropriately combining channels can further enhance the quality of channel selection. The results indicate that the model selected a small number of channels with higher accuracy in two-class motor imagery EEG classification tasks. Additionally, it improves the portability of BCI systems through channel selection and combinations, offering the potential for the development of portable BCI systems.
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  • 文章类型: Journal Article
    通道选择已成为影响非侵入性脑机接口系统在现实世界中的广泛应用的关键问题。然而,构建合适的多目标问题模型以及有效的搜索策略是影响多目标信道选择算法性能的关键因素。本文提出了一种两阶段稀疏多目标进化算法(TS-MOEA),以解决脑机接口系统中的通道选择问题。
    在TS-MOEA中,一个两阶段的框架,包括早期和晚期,是为了防止算法停滞。此外,这两个阶段集中在不同的多目标问题模型上,从而平衡TS-MOEA中的趋同和种群多样性。受通道相关矩阵稀疏性的启发,稀疏初始化运算符,它对决策变量使用基于领域知识的分数分配策略,被引入以生成初始种群。此外,利用基于分数的变异算子来提高TS-MOEA的搜索效率。
    使用基于62通道EEG的脑机接口系统评估了TS-MOEA和其他五种最先进的多目标算法的性能,用于疲劳检测任务,结果证明了TS-MOEA的有效性。
    提出的两阶段框架可以帮助TS-MOEA摆脱停滞,并促进多样性和收敛性之间的平衡。综合信道相关矩阵的稀疏性和问题域知识可以有效降低TS-MOEA的计算复杂度,同时提高其优化效率。
    UNASSIGNED: Channel selection has become the pivotal issue affecting the widespread application of non-invasive brain-computer interface systems in the real world. However, constructing suitable multi-objective problem models alongside effective search strategies stands out as a critical factor that impacts the performance of multi-objective channel selection algorithms. This paper presents a two-stage sparse multi-objective evolutionary algorithm (TS-MOEA) to address channel selection problems in brain-computer interface systems.
    UNASSIGNED: In TS-MOEA, a two-stage framework, which consists of the early and late stages, is adopted to prevent the algorithm from stagnating. Furthermore, The two stages concentrate on different multi-objective problem models, thereby balancing convergence and population diversity in TS-MOEA. Inspired by the sparsity of the correlation matrix of channels, a sparse initialization operator, which uses a domain-knowledge-based score assignment strategy for decision variables, is introduced to generate the initial population. Moreover, a Score-based mutation operator is utilized to enhance the search efficiency of TS-MOEA.
    UNASSIGNED: The performance of TS-MOEA and five other state-of-the-art multi-objective algorithms has been evaluated using a 62-channel EEG-based brain-computer interface system for fatigue detection tasks, and the results demonstrated the effectiveness of TS-MOEA.
    UNASSIGNED: The proposed two-stage framework can help TS-MOEA escape stagnation and facilitate a balance between diversity and convergence. Integrating the sparsity of the correlation matrix of channels and the problem-domain knowledge can effectively reduce the computational complexity of TS-MOEA while enhancing its optimization efficiency.
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  • 文章类型: Journal Article
    脑机接口(BCI)中广泛采用的范式涉及运动图像(MI),改善人与机器之间的交流。脑电信号从MI产生,由于其固有的特点,提出了几个挑战,这导致了对特定参与者的潜在任务进行分类和查找的复杂过程。另一个问题是BCI系统可能导致嘈杂的数据和冗余通道,这反过来会导致设备和计算成本的增加。为了解决这些问题,提出了基于带有注意力块的融合卷积神经网络(FCNNA)的多类MI分类的最佳通道选择。在这项研究中,我们开发了一个由多层卷积块和多个时空滤波器组成的CNN模型。这些滤波器专门设计用于捕获不同电极位置的信号特征的分布和关系,以及分析这些特征随时间的演变。在这些层之后,卷积块注意模块(CBAM)用于,进一步,增强脑电信号特征提取。在频道选择的过程中,遗传算法用于选择最佳的渠道集,使用一种新技术为所有参与者提供固定和可变的渠道。所提出的方法经过验证,与大多数基线模型相比,多类分类提高了6.41%。值得注意的是,对于涉及左手和右手运动的二进制类,我们获得了93.09%的最高结果。此外,多类别分类的跨主题策略产生了68.87%的惊人准确率.选择频道后,多类分类精度得到提高,达到84.53%。总的来说,我们的实验说明了所提出的EEGMI模型在通道选择和分类方面的效率,显示出较好的结果,无论是一个完整的通道集或减少数量的通道。
    The widely adopted paradigm in brain-computer interfaces (BCIs) involves motor imagery (MI), enabling improved communication between humans and machines. EEG signals derived from MI present several challenges due to their inherent characteristics, which lead to a complex process of classifying and finding the potential tasks of a specific participant. Another issue is that BCI systems can result in noisy data and redundant channels, which in turn can lead to increased equipment and computational costs. To address these problems, the optimal channel selection of a multiclass MI classification based on a Fusion convolutional neural network with Attention blocks (FCNNA) is proposed. In this study, we developed a CNN model consisting of layers of convolutional blocks with multiple spatial and temporal filters. These filters are designed specifically to capture the distribution and relationships of signal features across different electrode locations, as well as to analyze the evolution of these features over time. Following these layers, a Convolutional Block Attention Module (CBAM) is used to, further, enhance EEG signal feature extraction. In the process of channel selection, the genetic algorithm is used to select the optimal set of channels using a new technique to deliver fixed as well as variable channels for all participants. The proposed methodology is validated showing 6.41% improvement in multiclass classification compared to most baseline models. Notably, we achieved the highest results of 93.09% for binary classes involving left-hand and right-hand movements. In addition, the cross-subject strategy for multiclass classification yielded an impressive accuracy of 68.87%. Following channel selection, multiclass classification accuracy was enhanced, reaching 84.53%. Overall, our experiments illustrated the efficiency of the proposed EEG MI model in both channel selection and classification, showing superior results with either a full channel set or a reduced number of channels.
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  • 文章类型: Journal Article
    脑电图(EEG)有效地用于描述与脑机接口(BCI)实现的运动功能的不同任务相对应的认知模式。显式信息处理对于降低实际BCI系统的计算复杂度是必要的。本文提出了一种基于熵的方法,用于在脑机接口(BCI)系统中选择有效的EEG通道进行运动想象(MI)分类。该方法识别具有较高熵分数的频道,这是一个更大的信息含量的迹象。它丢弃冗余或嘈杂的通道,从而降低了计算复杂度并提高了分类精度。高熵意味着更无序的模式,而低熵意味着信息较少的无序模式。计算各个试验的每个通道的熵。每个信道的权重由所有试验中信道的平均熵表示。选择具有较高平均熵的一组通道作为MI分类的有效通道。通过分解所选择的信道来创建有限数量的子带信号。要提取空间特征,将公共空间模式(CSP)应用于EEG信号的每个子带空间。基于CSP的特征用于使用支持向量机(SVM)对右手和右脚MI任务进行分类。使用两个公开可用的EEG数据集验证了所提出方法的有效性,称为BCI竞争III-IV(A)和BCI竞争IV-I。实验结果表明,该方法超越了前沿技术。
    Electroencephalography (EEG) is effectively employed to describe cognitive patterns corresponding to different tasks of motor functions for brain-computer interface (BCI) implementation. Explicit information processing is necessary to reduce the computational complexity of practical BCI systems. This paper presents an entropy-based approach to select effective EEG channels for motor imagery (MI) classification in brain-computer interface (BCI) systems. The method identifies channels with higher entropy scores, which is an indication of greater information content. It discards redundant or noisy channels leading to reduced computational complexity and improved classification accuracy. High entropy means a more disordered pattern, whereas low entropy means a less disordered pattern with less information. The entropy of each channel for individual trials is calculated. The weight of each channel is represented by the mean entropy of the channel over all the trials. A set of channels with higher mean entropy are selected as effective channels for MI classification. A limited number of sub-band signals are created by decomposing the selected channels. To extract the spatial features, the common spatial pattern (CSP) is applied to each sub-band space of EEG signals. The CSP-based features are used to classify the right-hand and right-foot MI tasks using a support vector machine (SVM). The effectiveness of the proposed approach is validated using two publicly available EEG datasets, known as BCI competition III-IV(A) and BCI competition IV-I. The experimental results demonstrate that the proposed approach surpasses cutting-edge techniques.
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  • 文章类型: Journal Article
    The electroencephalogram (EEG) signal is the key signal carrier of the brain-computer interface (BCI) system. The EEG data collected by the whole-brain electrode arrangement is conducive to obtaining higher information representation. Personalized electrode layout, while ensuring the accuracy of EEG signal decoding, can also shorten the calibration time of BCI and has become an important research direction. This paper reviews the EEG signal channel selection methods in recent years, conducts a comparative analysis of the combined effects of different channel selection methods and different classification algorithms, obtains the commonly used channel combinations in motor imagery, P300 and other paradigms in BCI, and explains the application scenarios of the channel selection method in different paradigms are discussed, in order to provide stronger support for a more accurate and portable BCI system.
    脑电(EEG)信号是脑机接口(BCI)系统的关键信号载体。全脑电极排布采集的EEG数据有利于获得较高的信息表征。而个性化的电极布局,在保证EEG信号解码精度的基础上,亦能缩短BCI的校准时间,已成为一个重要的研究方向。本文梳理了近几年的EEG信号通道选择方法,对不同的通道选择方法与不同的分类算法的结合效果进行了比较分析,总结了BCI中运动想象、P300等范式中常用的通道组合,并阐述了通道选择方法在不同范式中的应用场景,以期为实现更精准和更便携的BCI系统提供较有力的支持。.
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  • 文章类型: Journal Article
    目标:尽管情感识别已经研究了几十年,仍然需要一种更准确的分类方法,需要更少的计算。目前,在许多研究中,从所有通道中提取EEG特征以识别情绪状态,然而,缺乏提高分类性能并减少EEG通道数量的有效特征域。
    方法:在本研究中,提出了一种基于连续小波变换(CWT)的多通道EEG数据特征表示方法,用于自动情感识别。在建议的功能中,通过使用CWT系数来保留时频域信息。对于特定的EEG通道,每个CWT系数被映射成强度与熵分量比,以获得2D表示。最后,2D特征矩阵,即CEF2D,是通过连接来自不同通道的这些表示来创建的,并将其馈送到深度卷积神经网络架构中。基于CWT域能量熵比,还提出了有效的信道和CWT尺度选择方案以降低计算复杂度。
    结果:与以前的研究相比,这项研究的结果表明,在3类和2类病例中,效价和唤醒分类的准确性都有所提高。对于2类问题,效价和唤醒维度的平均准确度为98.83%和98.95%,分别,对于三等舱,准确率分别为98.25%和98.68%,分别。
    结论:我们的发现表明,CWT域中基于熵的EEG数据特征对于情绪识别是有效的。利用建议的特征域,一种有效的信道选择方法可以降低计算复杂度。
    Objective.Although emotion recognition has been studied for decades, a more accurate classification method that requires less computing is still needed. At present, in many studies, EEG features are extracted from all channels to recognize emotional states, however, there is a lack of an efficient feature domain that improves classification performance and reduces the number of EEG channels.Approach.In this study, a continuous wavelet transform (CWT)-based feature representation of multi-channel EEG data is proposed for automatic emotion recognition. In the proposed feature, the time-frequency domain information is preserved by using CWT coefficients. For a particular EEG channel, each CWT coefficient is mapped into a strength-to-entropy component ratio to obtain a 2D representation. Finally, a 2D feature matrix, namely CEF2D, is created by concatenating these representations from different channels and fed into a deep convolutional neural network architecture. Based on the CWT domain energy-to-entropy ratio, effective channel and CWT scale selection schemes are also proposed to reduce computational complexity.Main results.Compared with previous studies, the results of this study show that valence and arousal classification accuracy has improved in both 3-class and 2-class cases. For the 2-class problem, the average accuracies obtained for valence and arousal dimensions are 98.83% and 98.95%, respectively, and for the 3-class, the accuracies are 98.25% and 98.68%, respectively.Significance.Our findings show that the entropy-based feature of EEG data in the CWT domain is effective for emotion recognition. Utilizing the proposed feature domain, an effective channel selection method can reduce computational complexity.
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  • 文章类型: Journal Article
    癫痫发作是由患者脑细胞异常放电引起的不可预测的事件。已经进行了广泛的研究以开发基于长期连续脑电图(EEG)信号的癫痫发作预测算法。本文介绍了一种针对患者的癫痫发作预测方法,该方法可以作为轻量级设计的基础,可穿戴和有效的癫痫发作预测设备。我们使用这种方法来实现两个目标。第一个目标是从多通道EEG信号中提取鲁棒的特征表示,第二个目的是通过从多通道EEG信号中选择一组最佳通道来减少用于预测的通道数量,同时确保良好的预测性能。我们设计了一种基于视觉变换器(ViT)模型的癫痫发作预测算法。该算法从22个通道的脑电信号中选择在癫痫发作预测中起关键作用的通道。首先,我们对处理后的时间序列信号进行时频分析,以获得EEG频谱图。然后,我们将多个通道的频谱图分割成许多相同大小的非重叠斑块,它们被输入到所提出的模型的信道选择层,名为Sel-JPM-ViT,使其能够选择频道。将Sel-JPM-ViT模型应用于波士顿儿童医院-麻省理工学院头皮脑电图数据集,仅使用三到六个通道的脑电图信号得出的结果略好于使用22通道的脑电图信号获得的结果。总的来说,Sel-JPM-ViT模型的平均分类准确率为93.65%,平均灵敏度为94.70%,平均特异度为92.78%。
    Epileptic seizures are unpredictable events caused by abnormal discharges of a patient\'s brain cells. Extensive research has been conducted to develop seizure prediction algorithms based on long-term continuous electroencephalogram (EEG) signals. This paper describes a patient-specific seizure prediction method that can serve as a basis for the design of lightweight, wearable and effective seizure-prediction devices. We aim to achieve two objectives using this method. The first aim is to extract robust feature representations from multichannel EEG signals, and the second aim is to reduce the number of channels used for prediction by selecting an optimal set of channels from multichannel EEG signals while ensuring good prediction performance. We design a seizure-prediction algorithm based on a vision transformer (ViT) model. The algorithm selects channels that play a key role in seizure prediction from 22 channels of EEG signals. First, we perform a time-frequency analysis of processed time-series signals to obtain EEG spectrograms. We then segment the spectrograms of multiple channels into many non-overlapping patches of the same size, which are input into the channel selection layer of the proposed model, named Sel-JPM-ViT, enabling it to select channels. Application of the Sel-JPM-ViT model to the Boston Children\'s Hospital-Massachusetts Institute of Technology scalp EEG dataset yields results using only three to six channels of EEG signals that are slightly better that the results obtained using 22 channels of EEG signals. Overall, the Sel-JPM-ViT model exhibits an average classification accuracy of 93.65%, an average sensitivity of 94.70% and an average specificity of 92.78%.
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  • 文章类型: Journal Article
    目的:基于运动图像的脑机接口(MI-BCI)系统中电极通道的数量不仅影响其解码性能,而且在应用中使用也很方便。尽管文献中已经提出了许多信道选择方法,它们通常基于单通道的单变量特征。这导致信道之间的交互和在不同频带操作的网络之间的信息交换的损失。&#xD;方法:我们将包含四个频段的大脑网络集成到多层网络框架中,并提出了一种用于MI-BCI系统的基于多层网络的信道选择(MNCS)方法。基于图形学习的方法用于从通过多个频带过滤的脑电图(EEG)数据中估计多层网络。然后计算多层网络的多层参与系数(MPC)以选择不包含冗余信息的EEG通道。此外,利用公共空间模式(CSP)方法提取有效特征。最后,训练具有线性核的支持向量机(SVM)分类器以准确识别MI任务。主要结果:我们使用了来自BCI竞赛的三个公开可用的数据集,其中包含12名健康受试者的数据和一个包含15名中风患者数据的数据集,以验证我们提出的方法的有效性。结果表明,所提出的MNCS方法优于所有通道(85.8%vs.93.1%,84.4%vs.89.0%,71.7%与79.4%,和72.7%vs.84.0%)。此外,它在MI-BCI系统上的解码精度明显高于最先进的方法(配对t检验,p<0.05)。&#xD;意义:实验结果表明,所提出的MNCS方法可以选择合适的通道,以提高解码性能以及MI-BCI系统应用的便利性。
    Objective. The number of electrode channels in a motor imagery-based brain-computer interface (MI-BCI) system influences not only its decoding performance, but also its convenience for use in applications. Although many channel selection methods have been proposed in the literature, they are usually based on the univariate features of a single channel. This leads to a loss of the interaction between channels and the exchange of information between networks operating at different frequency bands.Approach. We integrate brain networks containing four frequency bands into a multilayer network framework and propose a multilayer network-based channel selection (MNCS) method for MI-BCI systems. A graph learning-based method is used to estimate the multilayer network from electroencephalogram (EEG) data that are filtered by multiple frequency bands. The multilayer participation coefficient of the multilayer network is then computed to select EEG channels that do not contain redundant information. Furthermore, the common spatial pattern (CSP) method is used to extract effective features. Finally, a support vector machine classifier with a linear kernel is trained to accurately identify MI tasks.Main results. We used three publicly available datasets from the BCI Competition containing data on 12 healthy subjects and one dataset containing data on 15 stroke patients to validate the effectiveness of our proposed method. The results showed that the proposed MNCS method outperforms all channels (85.8% vs. 93.1%, 84.4% vs. 89.0%, 71.7% vs. 79.4%, and 72.7% vs. 84.0%). Moreover, it achieved significantly higher decoding accuracies on MI-BCI systems than state-of-the-art methods (pairedt-tests,p< 0.05).Significance. The experimental results showed that the proposed MNCS method can select appropriate channels to improve the decoding performance as well as the convenience of the application of MI-BCI systems.
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