Spectral Synchronicity in Brain Signals
Carolina Euan, Hernando Ombao, Joaquin Ortega

TL;DR
This paper introduces the spectral merger clustering (SMC) method to identify synchronized brain regions in EEG data, revealing evolving brain organization during resting state through spectral analysis.
Contribution
The paper develops a novel spectral merger clustering method that segments EEGs based on spectral similarity, advancing analysis of neuronal coordination during resting state.
Findings
SMC accurately clusters EEGs based on spectral similarity.
Identifies non-contiguous brain regions that are spectrally synchronized.
Shows brain organization evolves over resting state.
Abstract
Brain activity following stimulus presentation and during resting state are often the result of highly coordinated responses of large numbers of neurons both locally and globally. Coordinated activity of neurons can give rise to oscillations which are captured by electroencephalograms (EEG). In this paper, we examine EEGs as this is the primary data being used by our collaborators who are studying coordination of neuronal response during the execution of tasks such as learning, and memory formation, retention and retrieval. In this paper, we develop the spectral merger clustering (SMC) method that identifies synchronized brain regions during resting state in a sense that these regions share similar oscillations or waveforms. The SMC method, produces clusters of EEGs which serve as a proxy for segmenting the brain cortical surface since the EEGs capture neuronal activity over a locally…
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