Weber Immo, Oehrn Carina Renate
Department of Neurology, Philipps-University Marburg, Marburg, Germany.
Center for Mind, Brain and Behavior (CMBB), Philipps-University Marburg, Marburg, Germany.
Front Neuroinform. 2022 Mar 7;16:800116. doi: 10.3389/fninf.2022.800116. eCollection 2022.
Rhythmic neural activity, so-called oscillations, plays a key role in neural information transmission, processing, and storage. Neural oscillations in distinct frequency bands are central to physiological brain function, and alterations thereof have been associated with several neurological and psychiatric disorders. The most common methods to analyze neural oscillations, e.g., short-time Fourier transform or wavelet analysis, assume that measured neural activity is composed of a series of symmetric prototypical waveforms, e.g., sinusoids. However, usually, the models generating the signal, including waveform shapes of experimentally measured neural activity are unknown. Decomposing asymmetric waveforms of nonlinear origin using these classic methods may result in spurious harmonics visible in the estimated frequency spectra. Here, we introduce a new method for capturing rhythmic brain activity based on recurrences of similar states in phase-space. This method allows for a time-resolved estimation of amplitude fluctuations of recurrent activity irrespective of or specific to waveform shapes. The algorithm is derived from the well-established field of recurrence analysis, which, in comparison to Fourier-based analysis, is still very uncommon in neuroscience. In this paper, we show its advantages and limitations in comparison to short-time Fourier transform and wavelet convolution using periodic signals of different waveform shapes. Furthermore, we demonstrate its application using experimental data, i.e., intracranial and noninvasive electrophysiological recordings from the human motor cortex of one epilepsy patient and one healthy adult, respectively.
节律性神经活动,即所谓的振荡,在神经信息的传递、处理和存储中起着关键作用。不同频段的神经振荡是生理性脑功能的核心,其改变与多种神经和精神疾病相关。分析神经振荡最常用的方法,如短时傅里叶变换或小波分析,假定所测量的神经活动由一系列对称的原型波形组成,如正弦波。然而,通常情况下,生成信号的模型,包括实验测量的神经活动的波形形状是未知的。使用这些经典方法分解非线性起源的不对称波形可能会在估计的频谱中产生虚假谐波。在此,我们引入一种基于相空间中相似状态重现来捕捉节律性脑活动的新方法。该方法允许对重现活动的幅度波动进行时间分辨估计,而不管波形形状如何,也可以针对特定波形形状进行估计。该算法源自成熟的重现分析领域,与基于傅里叶的分析相比,在神经科学中仍然非常少见。在本文中,我们使用不同波形形状的周期性信号,展示了其与短时傅里叶变换和小波卷积相比的优点和局限性。此外,我们分别使用来自一名癫痫患者和一名健康成年人的人类运动皮层的颅内和非侵入性电生理记录的实验数据,展示了该方法的应用。