优化空间滤波器提取包络耦合神经振荡

Sven Dähne, V. Nikulin, D. Ramírez, P. Schreier, K. Müller, S. Haufe
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引用次数: 1

摘要

神经振荡之间的振幅对振幅的相互作用是一个特别的兴趣,因为它们显示了在给定任务中不同神经元群的空间同步强度如何相互关联。在此之前,振幅与振幅之间的相关性主要是在传感器水平上进行研究,而我们提出了一种使用空间滤波器的源分离方法,该方法可以最大限度地利用脑电/脑磁图(EEG/MEG)或颅内多通道记录记录的脑振荡包络之间的相关性。因此,我们的方法被称为典型源功率相关分析(cSPoC),即使在信号的信噪比很低的情况下,也能够仅基于假设的耦合行为提取真实的大脑振荡。
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Optimizing spatial filters for the extraction of envelope-coupled neural oscillations
Amplitude-to-amplitude interactions between neural oscillations are of a special interest as they show how the strength of spatial synchronization in different neuronal populations relates to each other during a given task. While, previously, amplitude-to-amplitude correlations were studied primarily on the sensor level, we present a source separation approach using spatial filters which maximize the correlation between the envelopes of brain oscillations recorded with electro-/magnetencephalography (EEG/MEG) or intracranial multichannel recordings. Our approach, which is called canonical source power correlation analysis (cSPoC), is thereby capable of extracting genuine brain oscillations solely based on their assumed coupling behavior even when the signal-to-noise ratio of the signals is low.
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