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首页> 外文期刊>Journal of Neuroscience Methods >Detecting time-dependent coherence between non-stationary electrophysiological signals-A combined statistical and time-frequency approach.
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Detecting time-dependent coherence between non-stationary electrophysiological signals-A combined statistical and time-frequency approach.

机译:检测非平稳电生理信号之间的时间相关性-统计和时频方法相结合。

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摘要

Various time-frequency methods have been used to study time-varying properties of non-stationary neurophysiological signals. In the present study, a time-frequency coherence estimate using continuous wavelet transform (CWT) together with its confidence intervals are proposed to evaluate the correlation between two non-stationary processes. The approach is based on averaging over repeat trials. A systematic comparison between approaches using CWT and short-time Fourier transform (STFT) is carried out. Simulated data are generated to test the performance of these methods when estimating time-frequency based coherence. In contrast to some recent studies, we find that CWT based coherence estimates do not supersede STFT based estimates. We suggest that a combination of STFT and CWT would be most suitable for analysing non-stationary neural data. Tests are presented to investigate the time and frequency discrimination capabilities of the two approaches. The methods are applied to two experimental data sets: electroencephalogram (EEG) and surface electromyogram (EMG) during wrist movements in a healthy subject, and local field potential (LFP) and surface EMG recordings during resting tremor in a Parkinsonian patient. Supporting software is available at and .
机译:各种时频方法已用于研究非平稳神经生理信号的时变特性。在本研究中,提出了使用连续小波变换(CWT)及其置信区间的时频相干估计,以评估两个非平稳过程之间的相关性。该方法基于重复试验的平均值。使用CWT和短时傅立叶变换(STFT)的方法之间进行了系统的比较。在估计基于时频的相干性时,会生成模拟数据来测试这些方法的性能。与最近的一些研究相反,我们发现基于CWT的相干估计不会取代基于STFT的估计。我们建议STFT和CWT的组合将最适合分析非平稳神经数据。进行测试以调查两种方法的时间和频率区分能力。该方法应用于两个实验数据集:健康受试者腕部运动期间的脑电图(EEG)和表面肌电图(EMG),以及帕金森氏病患者静息震颤期间的局部场电位(LFP)和表面EMG记录。可在和获得支持软件。

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