4.5 Article

Determination of Dynamic Brain Connectivity via Spectral Analysis

Journal

FRONTIERS IN HUMAN NEUROSCIENCE
Volume 15, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fnhum.2021.655576

Keywords

brain connectivity; neural field theory; effective connectivity; functional connectivity; modeling

Funding

  1. Australian Research Council [FL1401000225, CE140100007]

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Spectral analysis based on neural field theory is used to analyze dynamic connectivity by examining the physical eigenmodes that are the building blocks of brain dynamics. The study demonstrates that functional connectivity is dynamic, dominated by a few eigenmodes, and that common artifacts introduced by statistical analyses can be avoided by using spectral analysis with eigenmodes. Eigenmodes, unlike artificially discretized resting state networks, overlap and provide directly interpretable insights related to brain structure and function.
Spectral analysis based on neural field theory is used to analyze dynamic connectivity via methods based on the physical eigenmodes that are the building blocks of brain dynamics. These approaches integrate over space instead of averaging over time and thereby greatly reduce or remove the temporal averaging effects, windowing artifacts, and noise at fine spatial scales that have bedeviled the analysis of dynamical functional connectivity (FC). The dependences of FC on dynamics at various timescales, and on windowing, are clarified and the results are demonstrated on simple test cases, demonstrating how modes provide directly interpretable insights that can be related to brain structure and function. It is shown that FC is dynamic even when the brain structure and effective connectivity are fixed, and that the observed patterns of FC are dominated by relatively few eigenmodes. Common artifacts introduced by statistical analyses that do not incorporate the physical nature of the brain are discussed and it is shown that these are avoided by spectral analysis using eigenmodes. Unlike most published artificially discretized resting state networks and other statistically-derived patterns, eigenmodes overlap, with every mode extending across the whole brain and every region participating in every mode-just like the vibrations that give rise to notes of a musical instrument. Despite this, modes are independent and do not interact in the linear limit. It is argued that for many purposes the intrinsic limitations of covariance-based FC instead favor the alternative of tracking eigenmode coefficients vs. time, which provide a compact representation that is directly related to biophysical brain dynamics.

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