Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
3045498 | Clinical Neurophysiology | 2012 | 8 Pages |
ObjectiveWe present a novel method for the extraction of neuronal components showing cross-frequency phase synchronization.MethodsIn general the method can be applied for the detection of phase interactions between components with frequencies f1 and f2, where f2 ≈≈ rf1 and r is some integer. We refer to the method as cross-frequency decomposition (CFD), which consists of the following steps: (a) extraction of f1-oscillations with the spatio-spectral decomposition algorithm (SSD); (b) frequency modification of the f1-oscillations obtained with SSD; and (c) finding f2-oscillations synchronous with f1-oscillations using least-squares estimation.ResultsOur simulations showed that CFD was capable of recovering interacting components even when the signal-to-noise ratio was as low as 0.01. An application of CFD to the real EEG data demonstrated that cross-frequency phase synchronization between alpha and beta oscillations can originate from the same or remote neuronal populations.ConclusionsCFD allows a compact representation of the sets of interacting components. The application of CFD to EEG data allows differentiating cross-frequency synchronization arising due to genuine neurophysiological interactions from interactions occurring due to quasi-sinusoidal waveform of neuronal oscillations.SignificanceCFD is a method capable of extracting cross-frequency coupled neuronal oscillations even in the presence of strong noise.
► We present a novel cross-frequency decomposition (CFD) technique. ► CFD recovers oscillatory components phase-coupled at different frequencies. ► CFD recovered complex relationships between EEG alpha and beta oscillations in the human brain.