局部场电位的变异性。

Mohsen Parto-Dezfouli, Elizabeth L Johnson, Eleni Psarou, Conrado Arturo Bosman, B Suresh Krishna, Pascal Fries
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引用次数: 0

摘要

如果神经元的反应是高度可变的,那么神经元的编码和解码就会受到损害。有趣的是,神经元峰值计数(SCs)显示,当SC方差通过SC均值归一化时,即使用Fano因子1时,对感觉刺激的反应中,跨试验方差(ATV)减少。受这一开创性发现的启发,ATV也在脑电图(EEG)信号中进行了研究,揭示了各种刺激和认知因素以及疾病状态的影响。在这里,我们通过经验证明,在诱发电位之外,EEG的ATV或局部场电位(LFP)与试验内方差(ITV)高度相关,这对应于众所周知的功率度量。我们建议LFP功率,而不是原始LFP信号,应该考虑到其可变性的假定变化。我们将LFP功率变异性量化为活动条件和基线条件之间功率比的对数的标准偏差,通过对数(功率比)的平均值归一化,即对数(功率比)的变异系数(CV)。当刺激增强时,CV(log(功率比))减小,而当刺激降低时,CV(log(功率比))增大。这表明带限功率的变化与相应的CV之间存在潜在的反比关系。我们建议CV(log(功率比))是一个有用的度量,可以计算许多现有和未来的LFP, EEG或MEG数据集,这将提供对这些信号频率特异性变异性的见解,以及如何将它们用于神经元编码和解码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On variability in local field potentials.

Neuronal coding and decoding would be compromised if neuronal responses were highly variable. Intriguingly, neuronal spike counts (SCs) show a reduction in across-trial variance (ATV) in response to sensory stimulation, when SC variance is normalized by SC mean, that is, when using the Fano factor 1 . Inspired by this seminal finding, ATV has also been studied in electroencephalography (EEG) signals, revealing effects of various stimulus and cognitive factors as well as disease states. Here, we empirically show that outside of evoked potentials, the ATV of the EEG or local field potential (LFP) is very highly correlated to the intra-trial variance (ITV), which corresponds to the well-known power metric. We propose that the LFP power, rather than the raw LFP signal, should be considered with regard to putative changes of its variability. We quantify LFP power variability as the standard deviation of the logarithm of the power ratio between an active and a baseline condition, normalized by the mean of that log(power ratio), that is the coefficient of variation (CV) of the log(power ratio). This CV(log(power ratio)) is reduced for gamma and alpha power when they are enhanced by stimulation, and it is enhanced for alpha power when it is reduced by stimulation. This suggests a potential inverse relation between changes in band-limited power and the corresponding CV. We propose that the CV(log(power ratio)) is a useful metric that can be computed for numerous existing and future LFP, EEG or MEG datasets, which will provide insights into those signals' frequency-specific variability and how they might be used for neuronal coding and decoding.

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