Center for Biomedical Imaging and Neuromodulation, Nathan Kline Institute for Psychiatric Research, Orangeburg, NY 10962
Department Psychiatry, New York University Grossman School of Medicine, New York, NY 10016.
eNeuro. 2022 Aug 19;9(4). doi: 10.1523/ENEURO.0281-21.2022. Print 2022 Jul-Aug.
Electrophysiological oscillations in the brain have been shown to occur as multicycle events, with onset and offset dependent on behavioral and cognitive state. To provide a baseline for state-related and task-related events, we quantified oscillation features in resting-state recordings. We developed an open-source wavelet-based tool to detect and characterize such oscillation events (OEvents) and exemplify the use of this tool in both simulations and two invasively-recorded electrophysiology datasets: one from human, and one from nonhuman primate (NHP) auditory system. After removing incidentally occurring event-related potentials (ERPs), we used OEvents to quantify oscillation features. We identified ∼2 million oscillation events, classified within traditional frequency bands: δ, θ, α, β, low γ, γ, and high γ. Oscillation events of 1-44 cycles could be identified in at least one frequency band 90% of the time in human and NHP recordings. Individual oscillation events were characterized by nonconstant frequency and amplitude. This result necessarily contrasts with prior studies which assumed frequency constancy, but is consistent with evidence from event-associated oscillations. We measured oscillation event duration, frequency span, and waveform shape. Oscillations tended to exhibit multiple cycles per event, verifiable by comparing filtered to unfiltered waveforms. In addition to the clear intraevent rhythmicity, there was also evidence of interevent rhythmicity within bands, demonstrated by finding that coefficient of variation of interval distributions and Fano factor (FF) measures differed significantly from a Poisson distribution assumption. Overall, our study provides an easy-to-use tool to study oscillation events at the single-trial level or in ongoing recordings, and demonstrates that rhythmic, multicycle oscillation events dominate auditory cortical dynamics.
脑电生理振荡已被证明是多周期事件,其起始和结束取决于行为和认知状态。为了为与状态相关和与任务相关的事件提供基准,我们量化了静息状态记录中的振荡特征。我们开发了一种基于小波的开源工具来检测和描述这种振荡事件(OEvent),并举例说明了该工具在模拟和两个侵入性记录的电生理数据集(一个来自人类,一个来自非人灵长类动物(NHP)听觉系统)中的应用。在去除偶然发生的事件相关电位(ERP)后,我们使用 OEvent 来量化振荡特征。我们确定了约 200 万个振荡事件,并将其分类为传统频段:δ、θ、α、β、低γ、γ 和高γ。在人类和 NHP 记录中,至少有一种频率的 1-44 个周期的振荡事件在 90%的时间内都可以被识别。单个振荡事件的特征是非恒定的频率和幅度。这一结果必然与之前假设频率恒定的研究相矛盾,但与事件相关振荡的证据一致。我们测量了振荡事件的持续时间、频率跨度和波形形状。振荡倾向于在每个事件中表现出多个周期,可以通过比较滤波和未滤波的波形来验证。除了事件内明显的节律性外,在频段内还存在事件间节律性的证据,这表现在间隔分布的变异系数和 Fano 因子(FF)度量与泊松分布假设有显著差异。总的来说,我们的研究提供了一种易于使用的工具,可以在单次试验水平或连续记录中研究振荡事件,并表明有节奏的、多周期的振荡事件主导了听觉皮层的动力学。