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Spectral graph theory of brain oscillations.

Authors :
Raj, Ashish
Raj, Ashish
Cai, Chang
Xie, Xihe
Palacios, Eva
Owen, Julia
Mukherjee, Pratik
Nagarajan, Srikantan
Raj, Ashish
Raj, Ashish
Cai, Chang
Xie, Xihe
Palacios, Eva
Owen, Julia
Mukherjee, Pratik
Nagarajan, Srikantan
Source :
Human brain mapping; vol 41, iss 11, 2980-2998; 1065-9471
Publication Year :
2020

Abstract

The relationship between the brain's structural wiring and the functional patterns of neural activity is of fundamental interest in computational neuroscience. We examine a hierarchical, linear graph spectral model of brain activity at mesoscopic and macroscopic scales. The model formulation yields an elegant closed-form solution for the structure-function problem, specified by the graph spectrum of the structural connectome's Laplacian, with simple, universal rules of dynamics specified by a minimal set of global parameters. The resulting parsimonious and analytical solution stands in contrast to complex numerical simulations of high dimensional coupled nonlinear neural field models. This spectral graph model accurately predicts spatial and spectral features of neural oscillatory activity across the brain and was successful in simultaneously reproducing empirically observed spatial and spectral patterns of alpha-band (8-12 Hz) and beta-band (15-30 Hz) activity estimated from source localized magnetoencephalography (MEG). This spectral graph model demonstrates that certain brain oscillations are emergent properties of the graph structure of the structural connectome and provides important insights towards understanding the fundamental relationship between network topology and macroscopic whole-brain dynamics. .

Details

Database :
OAIster
Journal :
Human brain mapping; vol 41, iss 11, 2980-2998; 1065-9471
Notes :
application/pdf, Human brain mapping vol 41, iss 11, 2980-2998 1065-9471
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287298643
Document Type :
Electronic Resource