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Can graph metrics be used for EEG-BCIs based on hand motor imagery?

机译:可以基于手运动图像将图形指标用于EEG-BCI吗?

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HighlightsAn alternative method for classifying motor imagery signals is proposed.Combining graph features can increase accuracy rates for this problem.The method’s performance was comparable to a more traditional approach.AbstractThe study of motor imagery (MI) has been a subject of great interest within the brain-computer interface (BCI) community. Several approaches have been proposed to solve the problem of classifying cerebral responses due to MI, mostly based on the power spectral density of the mu and beta bands; however, no optimum manner of proceeding through the fundamental steps of a MI-BCI has yet been established. In this work, we explored a relatively novel approach regarding feature generation for a MI-BCI by assuming that functional connectivity patterns of the brain are altered during hand MI. We modelled interactions among EEG electrodes by a graph, extracted metrics from it during left and right hand MI from eight subjects and classified the signals using commonly employed techniques in the BCI community (LDA and SVM). We also compared this approach to the more established method of using the signal power spectral density as the classifier features. With the graph method, we confirmed that only specific electrodes provide relevant information for data classification. A first approach provided maximum average classification rates across all subjects for the graph method of 86% for the mu band and 87% for the beta band. For the PSD method, average rates were of 98% and 99% for the mu and beta bands, respectively. However, a much larger number of features was needed: (130±44) and (273±89) for the mu and beta bands, respectively. Aiming to reproduce these rates using the graph method, pairwise inputs combinations of graph metrics were tested. They proved to be sufficient to obtain essentially the same classification accuracy rates, but with a considerably smaller number of features – about 60 features, for both bands. We thus conclude that the graph method is a feasible option for classification of hand MI signals.
机译: 突出显示 提出了一种用于分类运动图像信号的替代方法。 组合图形功能可以提高此问题的准确性。 该方法的性能与 摘要 对运动图像(MI)的研究一直是大脑中非常感兴趣的主题,计算机接口(BCI)社区。已经提出了几种方法来解决对由于MI引起的脑反应进行分类的问题,这些方法主要基于mu和β谱带的功率谱密度。但是,尚未确定进行MI-BCI基本步骤的最佳方式。在这项工作中,我们通过假设手部MI期间大脑的功能连接模式发生了变化,探索了一种有关MI-BCI特征生成的相对新颖的方法。我们通过图形对脑电图电极之间的相互作用进行建模,从八个对象的左手和右手心梗期间从中提取指标,并使用BCI社区(LDA和SVM)中常用的技术对信号进行分类。我们还将这种方法与使用信号功率频谱密度作为分类器功能的更成熟的方法进行了比较。使用图法,我们确认只有特定的电极才能为数据分类提供相关信息。对于图谱方法,第一种方法提供了所有受试者的最大平均分类率,亩带为86%,贝塔带为87%。对于PSD方法,μ和β谱带的平均比率分别为98%和99%。但是,需要大量特征:μ和β带分别为(130±44)和(273±89)。为了使用图方法重现这些速率,测试了图指标的成对输入组合。事实证明,它们足以获得基本相同的分类准确率,但特征数量却少得多(两个波段约60个特征)。因此,我们得出结论,图法是对手部MI信号进行分类的可行选择。

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