Time-varying changes in whole-brain connectivity patterns, or connectome state dynamics, hold significant implications for cognition. However, connectome dynamics at fast (>1 Hz) timescales highly relevant to cognition are poorly understood due to the dominance of inherently slow fMRI in connectome studies. Here, we investigated the behavioral significance of rapid electrophysiological connectome dynamics using source-localized EEG connectomes during resting state (N = 926, 473 females). We focused on dynamic connectome features pertinent to individual differences, specifically those with established heritability: Fractional Occupancy (i.e., the overall duration spent in each recurrent connectome state) in beta and gamma bands and Transition Probability (i.e., the frequency of state switches) in theta, alpha, beta, and gamma bands. Canonical correlation analysis found a significant relationship between the heritable phenotypes of subsecond connectome dynamics and cognition. Specifically, principal components of Transition Probabilities in alpha (followed by theta and gamma bands) and a cognitive factor representing visuospatial processing (followed by verbal and auditory working memory) most notably contributed to the relationship. We conclude that rapid connectome state transitions shape individuals' cognitive abilities and traits. Such subsecond connectome dynamics may inform about behavioral function and dysfunction and serve as endophenotypes for cognitive abilities.
Keywords: Canonical correlation analysis; Cognition; Dynamic functional connectivity; Electrophysiology; Hidden Markov modeling; Individual differences.
This study investigates the behavioral significance of rapid electrophysiological connectome dynamics features with established heritability. The heritable phenotypes that describe the duration (Fractional Occupancy) and frequency of connectome state switches (Transition Probability) were obtained using hidden Markov model on source-localized EEG data at rest. Using the canonical correlation analysis approach, we found that connectome state transitions unfolding at multiple speeds (e.g., alpha, theta, and gamma) collectively contribute to shape cognitive abilities.
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