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Across-subjects classification of stimulus modality from human MEG high frequency activity

机译:人MEG高频活动对刺激模态的跨学科分类

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摘要

Single-trial analyses have the potential to uncover meaningful brain dynamics that are obscured when averaging across trials. However, low signal-to-noise ratio (SNR) can impede the use of single-trial analyses and decoding methods. In this study, we investigate the applicability of a single-trial approach to decode stimulus modality from magnetoencephalographic (MEG) high frequency activity. In order to classify the auditory versus visual presentation of words, we combine beamformer source reconstruction with the random forest classification method. To enable group level inference, the classification is embedded in an across-subjects framework. We show that single-trial gamma SNR allows for good classification performance (accuracy across subjects: 66.44%). This implies that the characteristics of high frequency activity have a high consistency across trials and subjects. The random forest classifier assigned informational value to activity in both auditory and visual cortex with high spatial specificity. Across time, gamma power was most informative during stimulus presentation. Among all frequency bands, the 75 Hz to 95 Hz band was the most informative frequency band in visual as well as in auditory areas. Especially in visual areas, a broad range of gamma frequencies (55 Hz to 125 Hz) contributed to the successful classification. Thus, we demonstrate the feasibility of single-trial approaches for decoding the stimulus modality across subjects from high frequency activity and describe the discriminative gamma activity in time, frequency, and space.
机译:单项试验分析有可能发现有意义的大脑动力学,而这些动力学在各个试验之间平均时会被掩盖。但是,低信噪比(SNR)可能会阻碍单次分析和解码方法的使用。在这项研究中,我们调查了单试验方法从磁脑电图(MEG)高频活动中解码刺激形态的适用性。为了对单词的听觉与视觉表现进行分类,我们将波束形成器源重构与随机森林分类方法结合在一起。为了启用组级别的推断,将分类嵌入到跨主题框架中。我们显示,单次试验γSNR可以实现良好的分类性能(跨受试者的准确性:66.44%)。这意味着高频活动的特征在各个试验和受试者之间具有高度一致性。随机森林分类器以较高的空间特异性为听觉和视觉皮层的活动分配信息值。纵观时间,在刺激表现期间,伽马能提供的信息最多。在所有频带中,75 Hz至95 Hz频带是视觉和听觉区域中信息最丰富的频带。特别是在视觉领域,广泛的伽马频率范围(55 Hz至125 Hz)有助于成功进行分类。因此,我们证明了单次尝试方法可用于解码来自高频率活动的受试者的刺激模态的可行性,并描述了在时间,频率和空间上具有区别性的伽马活动。

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