Wen Haiguang, Liu Zhongming
School of Electrical and Computer Engineering, College of Engineering, Purdue University, West Lafayette, IN, 47907, USA.
Weldon School of Biomedical Engineering, College of Engineering, Purdue University, West Lafayette, IN, 47907, USA.
Brain Topogr. 2016 Jan;29(1):13-26. doi: 10.1007/s10548-015-0448-0. Epub 2015 Aug 29.
Neurophysiological field-potential signals consist of both arrhythmic and rhythmic patterns indicative of the fractal and oscillatory dynamics arising from likely distinct mechanisms. Here, we present a new method, namely the irregular-resampling auto-spectral analysis (IRASA), to separate fractal and oscillatory components in the power spectrum of neurophysiological signal according to their distinct temporal and spectral characteristics. In this method, we irregularly resampled the neural signal by a set of non-integer factors, and statistically summarized the auto-power spectra of the resampled signals to separate the fractal component from the oscillatory component in the frequency domain. We tested this method on simulated data and demonstrated that IRASA could robustly separate the fractal component from the oscillatory component. In addition, applications of IRASA to macaque electrocorticography and human magnetoencephalography data revealed a greater power-law exponent of fractal dynamics during sleep compared to wakefulness. The temporal fluctuation in the broadband power of the fractal component revealed characteristic dynamics within and across the eyes-closed, eyes-open and sleep states. These results demonstrate the efficacy and potential applications of this method in analyzing electrophysiological signatures of large-scale neural circuit activity. We expect that the proposed method or its future variations would potentially allow for more specific characterization of the differential contributions of oscillatory and fractal dynamics to distributed neural processes underlying various brain functions.
神经生理场电位信号由不规则和有节奏的模式组成,这些模式表明了可能由不同机制产生的分形和振荡动力学。在此,我们提出一种新方法,即不规则重采样自谱分析(IRASA),根据神经生理信号功率谱中不同的时间和频谱特征来分离分形和振荡成分。在该方法中,我们通过一组非整数因子对神经信号进行不规则重采样,并对重采样信号的自功率谱进行统计汇总,以便在频域中将分形成分与振荡成分分离。我们在模拟数据上测试了该方法,并证明IRASA能够稳健地将分形成分与振荡成分分离。此外,将IRASA应用于猕猴皮层脑电图和人类脑磁图数据显示,与清醒状态相比,睡眠期间分形动力学的幂律指数更大。分形成分宽带功率的时间波动揭示了闭眼、睁眼和睡眠状态内及跨这些状态的特征动力学。这些结果证明了该方法在分析大规模神经回路活动的电生理特征方面的有效性和潜在应用。我们期望所提出的方法或其未来的变体可能会更具体地刻画振荡和分形动力学对各种脑功能背后分布式神经过程的不同贡献。