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Space-by-time decomposition for single-trial decoding of M/EEG activity

机译:M / EEG活动的单次解码的空时分解

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摘要

We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimaging signals. We introduce the space-by-time M/EEG decomposition, based on Non-negative Matrix Factorization (NMF), which describes single-trial M/EEG signals using a set of non-negative spatial and temporal components that are linearly combined with signed scalar activation coefficients. We illustrate the effectiveness of the proposed approach on an EEG dataset recorded during the performance of a visual categorization task. Our method extracts three temporal and two spatial functional components achieving a compact yet full representation of the underlying structure, which validates and summarizes succinctly results from previous studies. Furthermore, we introduce a decoding analysis that allows determining the distinct functional role of each component and relating them to experimental conditions and task parameters. In particular, we demonstrate that the presented stimulus and the task difficulty of each trial can be reliably decoded using specific combinations of components from the identified space-by-time representation. When comparing with a sliding-window linear discriminant algorithm, we show that our approach yields more robust decoding performance across participants. Overall, our findings suggest that the proposed space-by-time decomposition is a meaningful low-dimensional representation that carries the relevant information of single-trial M/EEG signals.
机译:我们为多通道时变神经影像信号的单次试验分析开发了一种新颖的方法。我们介绍了基于非负矩阵分解(NMF)的时空M / EEG分解,该分解使用一组与符号线性组合的非负时空分量来描述单次M / EEG信号标量激活系数。我们说明了在视觉分类任务的执行过程中记录的脑电数据集上提出的方法的有效性。我们的方法提取了三个时间和两个空间功能成分,从而实现了对基础结构的紧凑而完整的表示,从而验证并总结了先前研究的简洁结果。此外,我们介绍了一种解码分析,该解码分析可以确定每个组件的独特功能,并将它们与实验条件和任务参数相关联。特别是,我们证明了使用来自识别的时空表示的组件的特定组合,可以可靠地解码每个试验的刺激和任务难度。与滑动窗口线性判别算法相比,我们证明了我们的方法在参与者之间产生了更强大的解码性能。总体而言,我们的发现表明,所提出的时空分解是一种有意义的低维表示形式,可以承载单次试验M / EEG信号的相关信息。

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