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首页> 外文期刊>plos computational biology >Alpha blocking and 1/f(beta) spectral scaling in resting EEG can be accounted for by a sum of damped alpha band oscillatory processes
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Alpha blocking and 1/f(beta) spectral scaling in resting EEG can be accounted for by a sum of damped alpha band oscillatory processes

机译:静息脑电图中的 α 阻滞和 1/f(β) 频谱缩放可以通过阻尼 α 波段振荡过程的总和来解释

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The dynamical and physiological basis of alpha band activity and 1/f(beta) noise in the EEG are the subject of continued speculation. Here we conjecture, on the basis of empirical data analysis, that both of these features may be economically accounted for through a single process if the resting EEG is conceived of being the sum of multiple stochastically perturbed alpha band damped linear oscillators with a distribution of dampings (relaxation rates). The modulation of alpha-band and 1/f(beta) noise activity by changes in damping is explored in eyes closed (EC) and eyes open (EO) resting state EEG. We aim to estimate the distribution of dampings by solving an inverse problem applied to EEG power spectra. The characteristics of the damping distribution are examined across subjects, sensors and recording condition (EC/EO). We find that there are robust changes in the damping distribution between EC and EO recording conditions across participants. The estimated damping distributions are found to be predominantly bimodal, with the number and position of the modes related to the sharpness of the alpha resonance and the scaling (beta) of the power spectrum (1/f(beta)). The results suggest that there exists an intimate relationship between resting state alpha activity and 1/f(beta) noise with changes in both governed by changes to the damping of the underlying alpha oscillatory processes. In particular, alpha-blocking is observed to be the result of the most weakly damped distribution mode becoming more heavily damped. The results suggest a novel way of characterizing resting EEG power spectra and provides new insight into the central role that damped alpha-band activity may play in characterising the spatio-temporal features of resting state EEG. Author summaryThe resting human electroencephalogram (EEG) exhibits two dominant spectral features: the alpha rhythm (8-13 Hz) and its associated attenuation between eyes-closed and eyes-open resting state (alpha blocking), and the 1/f(beta) scaling of the power spectrum. While these phenomena are well studied a thorough understanding of their respective generative processes remains elusive. By employing a theoretical approach that follows from neural population models of EEG we demonstrate that it is possible to economically account for both of these phenomena using a singular mechanistic framework: resting EEG is assumed to arise from the summed activity of multiple uncorrelated, stochastically driven, damped alpha band linear oscillatory processes having a distribution of relaxation rates or dampings. By numerically estimating these damping distributions from eyes-closed and eyes-open EEG data, in a total of 136 participants, it is found that such damping distributions are predominantly bimodal in shape. The most weakly damped mode is found to account for alpha band power, with alpha blocking being driven by an increase in the damping of this weakly damped mode, whereas the second, and more heavily damped mode, is able to explain 1/f(beta) scaling present in the resting state EEG spectra.
机译:脑电图中α波段活动和1/f(β)噪声的动力学和生理基础是持续推测的主题。在这里,我们推测,在经验数据分析的基础上,如果静息脑电图被设想为具有阻尼分布(弛豫率)的多个随机扰动α波段阻尼线性振荡器的总和,那么这两个特征都可以通过一个单一的过程得到经济地解释。在闭眼 (EC) 和睁眼 (EO) 静息态脑电图中探索了阻尼变化对 α 波段和 1/f(β) 噪声活动的调制。我们的目标是通过求解应用于脑电功率谱的逆问题来估计阻尼的分布。研究了不同受试者、传感器和记录条件 (EC/EO) 的阻尼分布特性。我们发现,参与者的 EC 和 EO 记录条件之间的阻尼分布发生了强劲的变化。估计的阻尼分布主要是双峰分布,模态的数量和位置与α共振的锐度和功率谱的缩放(beta)(1/f(beta))有关。结果表明,静息态α活动与1/f(β)噪声之间存在密切关系,两者的变化都受潜在α振荡过程阻尼变化的控制。特别是,观察到 α 阻塞是阻尼最弱的分布模式变得更严重阻尼的结果。这些结果提出了一种表征静息脑电图功率谱的新方法,并为阻尼α波段活动在表征静息态脑电图的时空特征中可能发挥的核心作用提供了新的见解。作者摘要静息人脑电图 (EEG) 表现出两个主要的频谱特征:α 节律 (8-13 Hz) 及其闭眼和睁眼静息状态之间的相关衰减(α 阻滞),以及功率谱的 1/f(β) 标度。虽然这些现象得到了很好的研究,但对它们各自的生成过程的透彻理解仍然难以捉摸。通过采用遵循脑电图神经群体模型的理论方法,我们证明可以使用单一的机理框架经济地解释这两种现象:假设静息脑电图是由多个不相关的、随机驱动的、阻尼的 α 波段线性振荡过程的总和活动引起的,具有弛豫率或阻尼的分布。通过从闭眼和睁眼脑电图数据中数值估计这些阻尼分布,在总共 136 名参与者中,发现这种阻尼分布主要是双峰形状。发现最弱阻尼模式可以解释 α 波段功率,α 阻塞是由这种弱阻尼模式的阻尼增加驱动的,而第二种阻尼更重的模式能够解释静息态 EEG 光谱中存在的 1/f(β) 缩放。

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