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Rhythmicity of neuronal oscillations delineates their cortical and spectral architecture.


ABSTRACT: Neuronal oscillations are commonly analyzed with power spectral methods that quantify signal amplitude, but not rhythmicity or 'oscillatoriness' per se. Here we introduce a new approach, the phase-autocorrelation function (pACF), for the direct quantification of rhythmicity. We applied pACF to human intracerebral stereoelectroencephalography (SEEG) and magnetoencephalography (MEG) data and uncovered a spectrally and anatomically fine-grained cortical architecture in the rhythmicity of single- and multi-frequency neuronal oscillations. Evidencing the functional significance of rhythmicity, we found it to be a prerequisite for long-range synchronization in resting-state networks and to be dynamically modulated during event-related processing. We also extended the pACF approach to measure 'burstiness' of oscillatory processes and characterized regions with stable and bursty oscillations. These findings show that rhythmicity is double-dissociable from amplitude and constitutes a functionally relevant and dynamic characteristic of neuronal oscillations.

SUBMITTER: Myrov V 

PROVIDER: S-EPMC10991572 | biostudies-literature | 2024 Apr

REPOSITORIES: biostudies-literature

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Rhythmicity of neuronal oscillations delineates their cortical and spectral architecture.

Myrov Vladislav V   Siebenhühner Felix F   Juvonen Joonas J JJ   Arnulfo Gabriele G   Palva Satu S   Palva J Matias JM  

Communications biology 20240403 1


Neuronal oscillations are commonly analyzed with power spectral methods that quantify signal amplitude, but not rhythmicity or 'oscillatoriness' per se. Here we introduce a new approach, the phase-autocorrelation function (pACF), for the direct quantification of rhythmicity. We applied pACF to human intracerebral stereoelectroencephalography (SEEG) and magnetoencephalography (MEG) data and uncovered a spectrally and anatomically fine-grained cortical architecture in the rhythmicity of single- an  ...[more]

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