| Literature DB >> 29454104 |
Farras Abdelnour1, Michael Dayan2, Orrin Devinsky3, Thomas Thesen4, Ashish Raj2.
Abstract
How structural connectivity (SC) gives rise to functional connectivity (FC) is not fully understood. Here we mathematically derive a simple relationship between SC measured from diffusion tensor imaging, and FC from resting state fMRI. We establish that SC and FC are related via (structural) Laplacian spectra, whereby FC and SC share eigenvectors and their eigenvalues are exponentially related. This gives, for the first time, a simple and analytical relationship between the graph spectra of structural and functional networks. Laplacian eigenvectors are shown to be good predictors of functional eigenvectors and networks based on independent component analysis of functional time series. A small number of Laplacian eigenmodes are shown to be sufficient to reconstruct FC matrices, serving as basis functions. This approach is fast, and requires no time-consuming simulations. It was tested on two empirical SC/FC datasets, and was found to significantly outperform generative model simulations of coupled neural masses.Entities:
Keywords: Eigen decomposition; Functional network; Graph theory; Laplacian; Networks; Structural network
Mesh:
Year: 2018 PMID: 29454104 PMCID: PMC6170160 DOI: 10.1016/j.neuroimage.2018.02.016
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556