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Decoding of object categories from brain signals using cross frequency coupling methods

机译:使用交叉频率耦合方法从大脑信号解码对象类别

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The procedure by which information about conceptual category of visual objects is encoded in brain signals, is the topic of many studies in the field of visual system. A phenomenon that is recently mentioned as one of information encoding strategies in the brain is cross frequency coupling (CFC), means the interactions between different frequency bands in physiological signals such as EEG. This interaction can occur between various components of such signals including amplitude or power, phase and frequency. Different types of CFC have been reported in various cognitive tasks and within or between different brain regions. However the role of CFC in encoding of information about the category of visual objects is greatly unknown and here we attempted to investigate it. So in this paper, we used machine learning algorithms to find out whether CFC contains such information. To this end, we recorded EEG from 10 participants while they were observing stimuli from 12 different visual object categories. Then amplitude-amplitude coupling (AAC), phase-amplitude coupling (PAC) and phase-phase coupling (PPC) within each electrode were calculated for the recorded signals in order to use them as input to SVM classifier. The results show that phase-phase coupling can provide more information about the category of objects compared to other types of CFC, by classification performance of 92.33% against 70.28% and 60.52% for phase-amplitude and amplitude-amplitude coupling, respectively. In addition, this feature was more informative when occurred between alpha and gamma frequency bands. The performance of classification by means of CFC features was then compared with the result of classification by wavelet transform on the same data. We observed that PAC can improve the performance of categorical-based classification relative to wavelet coefficients (with the performance of 70.73%). So we can conclude that cross frequency coupling encompass useful information about semantic category of stimuli which is not available in time-frequency components of the signal obtained by wavelet transform. (C) 2016 Elsevier Ltd. All rights reserved.
机译:关于视觉对象的概念类别的信息被编码在大脑信号中的过程是视觉系统领域中许多研究的主题。最近被称为大脑中一种信息编码策略的现象是交叉频率耦合(CFC),这意味着生理信号(例如EEG)中不同频段之间的相互作用。这种相互作用可以在这种信号的各种分量之间发生,包括振幅或功率,相位和频率。在各种认知任务中以及在不同大脑区域之内或之间,已经报道了不同类型的CFC。但是,CFC在有关视觉对象类别的信息的编码中的作用是非常未知的,在这里我们尝试对其进行研究。因此,在本文中,我们使用机器学习算法来找出CFC是否包含此类信息。为此,我们记录了10名参与者在观察来自12种不同视觉对象类别的刺激时的脑电图。然后,为记录的信号计算每个电极内的振幅-振幅耦合(AAC),相位-振幅耦合(PAC)和相位-相位耦合(PPC),以便将它们用作SVM分类器的输入。结果表明,与其他类型的CFC相比,相-相耦合可以提供更多有关对象类别的信息,分类性能分别为92.33%,70.28%和60.52%。此外,此功能在出现在alpha和gamma频段之间时更具参考价值。然后将通过CFC特征进行分类的性能与通过对相同数据进行小波变换进行分类的结果进行比较。我们观察到,相对于小波系数,PAC可以提高基于分类的分类的性能(具有70.73%的性能)。因此,我们可以得出结论,交叉频率耦合包含有关刺激的语义类别的有用信息,而这些信息在小波变换获得的信号的时频分量中不可用。 (C)2016 Elsevier Ltd.保留所有权利。

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