Resolving The Connectome, Spectrally-Specific Functional Connectivity Networks And Their Distinct Contributions To Behavior

ENEURO(2020)

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摘要
The resting human brain exhibits spontaneous patterns of activity that reflect features of the underlying neural substrate. Examination of interareal coupling of resting-state oscillatory activity has revealed that the brain's resting activity is composed of functional networks, whose topographies differ depending on oscillatory frequency, suggesting a role for carrier frequency as a means of creating multiplexed, or functionally segregated, communication channels between brain areas. Using canonical correlation analysis (CCA), we examined spectrally resolved resting-state connectivity patterns derived from magnetoencephalography (MEG) recordings to determine the relationship between connectivity intrinsic to different frequency channels and a battery of over a hundred behavioral and demographic indicators, in a group of 89 young healthy participants. We demonstrate that each of the classical frequency bands in the range 1-40 Hz (delta, theta, alpha, beta, and gamma) delineates a subnetwork that is behaviorally relevant, spatially distinct, and whose expression is either negatively or positively predictive of individual traits, with the strongest link in the a- band being negative and networks oscillating at different frequencies, such as theta, beta, and gamma carrying positive function.
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关键词
canonical correlation analysis, connectome, networks, oscillations, resting state, variability
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