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使用张量鲁棒主成分分析对 EEG 数据中的双变量相位-幅度耦合进行多元分析。

Multivariate Analysis of Bivariate Phase-Amplitude Coupling in EEG Data Using Tensor Robust PCA.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2021;29:1268-1279. doi: 10.1109/TNSRE.2021.3092890. Epub 2021 Jul 12.

Abstract

Cross-frequency coupling is emerging as a crucial mechanism that coordinates the integration of spectrally and spatially distributed neuronal oscillations. Recently, phase-amplitude coupling, a form of cross-frequency coupling, where the phase of a slow oscillation modulates the amplitude of a fast oscillation, has gained attention. Existing phase-amplitude coupling measures are mostly confined to either coupling within a region or between pairs of brain regions. Given the availability of multi-channel electroencephalography recordings, a multivariate analysis of phase amplitude coupling is needed to accurately quantify the coupling across multiple frequencies and brain regions. In the present work, we propose a tensor based approach, i.e., higher order robust principal component analysis, to identify response-evoked phase-amplitude coupling across multiple frequency bands and brain regions. Our experiments on both simulated and electroencephalography data demonstrate that the proposed multivariate phase-amplitude coupling method can capture the spatial and spectral dynamics of phase-amplitude coupling more accurately compared to existing methods. Accordingly, we posit that the proposed higher order robust principal component analysis based approach filters out the background phase-amplitude coupling activity and predominantly captures the event-related phase-amplitude coupling dynamics to provide insight into the spatially distributed brain networks across different frequency bands.

摘要

跨频耦合正在成为一种协调频谱和空间分布神经元振荡整合的关键机制。最近,相位-幅度耦合作为一种跨频耦合形式,其中慢波的相位调制快波的幅度,引起了人们的关注。现有的相位-幅度耦合测量方法大多局限于区域内或脑区对之间的耦合。鉴于多通道脑电图记录的可用性,需要对相位幅度耦合进行多元分析,以准确量化多个频率和脑区之间的耦合。在本工作中,我们提出了一种基于张量的方法,即高阶鲁棒主成分分析,以识别多个频带和脑区的反应诱发相位-幅度耦合。我们在模拟和脑电图数据上的实验表明,与现有方法相比,所提出的多变量相位-幅度耦合方法可以更准确地捕捉相位-幅度耦合的空间和频谱动态。因此,我们假设所提出的基于高阶鲁棒主成分分析的方法可以滤除背景相位-幅度耦合活动,主要捕获与事件相关的相位-幅度耦合动力学,从而深入了解不同频段的空间分布脑网络。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71bf/8544646/f3c9c6c5e51c/nihms-1723808-f0001.jpg

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