Hohyun Cho, Markus Adamek, Jon T Willie, Peter Brunner
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引用次数: 0
摘要
确定神经振荡的存在和频率对于了解大脑的动态功能至关重要。传统方法检测功率谱中 1/f 噪声的峰值,但无法区分基频和通常高度非正弦神经振荡的谐波。为了克服这一局限性,我们定义了神经振荡的基本标准,并引入了循环同质振荡(CHO)检测方法。我们基于自相关方法实施了这些标准,以确定振荡的基频。我们通过验证 CHO 在模拟非正弦振荡猝发上的性能对其进行了评估,并验证了它确定 27 名人类受试者记录的皮质图(ECoG)、脑电图(EEG)和立体脑电图(SEEG)信号中神经振荡基频的能力。我们的研究结果表明,CHO 在准确检测振荡方面优于传统技术。总之,CHO 在检测时域和频域的神经振荡方面具有很高的精确度和特异性。该方法的特异性使其能够详细研究振荡的非正弦特征,如振荡的不对称程度和波形。此外,CHO 还可用于确定神经振荡如何支配整个大脑的相互作用,以及确定可指示大脑功能异常的振荡生物标志物。
Novel cyclic homogeneous oscillation detection method for high accuracy and specific characterization of neural dynamics
Determining the presence and frequency of neural oscillations is essential to understanding dynamic brain function. Traditional methods that detect peaks over 1/f noise within the power spectrum fail to distinguish between the fundamental frequency and harmonics of often highly non-sinusoidal neural oscillations. To overcome this limitation, we define fundamental criteria that characterize neural oscillations and introduce the cyclic homogeneous oscillation (CHO) detection method. We implemented these criteria based on an autocorrelation approach to determine an oscillation’s fundamental frequency. We evaluated CHO by verifying its performance on simulated non-sinusoidal oscillatory bursts and validated its ability to determine the fundamental frequency of neural oscillations in electrocorticographic (ECoG), electroencephalographic (EEG), and stereoelectroencephalographic (SEEG) signals recorded from 27 human subjects. Our results demonstrate that CHO outperforms conventional techniques in accurately detecting oscillations. In summary, CHO demonstrates high precision and specificity in detecting neural oscillations in time and frequency domains. The method’s specificity enables the detailed study of non-sinusoidal characteristics of oscillations, such as the degree of asymmetry and waveform of an oscillation. Furthermore, CHO can be applied to identify how neural oscillations govern interactions throughout the brain and to determine oscillatory biomarkers that index abnormal brain function.
期刊介绍:
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