TL;DR
This paper introduces a nonlinear, directed, and dynamic measure of brain functional connectivity that captures temporal lags and offers new insights into brain co-activation patterns, demonstrated on an autism dataset.
Contribution
It proposes a novel nonlinear dynamic directed functional connectivity metric that reveals temporal and directional information in brain activity beyond traditional correlation methods.
Findings
The new metric captures directed information and temporal lags in brain regions.
Application to autism data provides new interpretations of functional correlations.
The approach simplifies analysis without extensive numerical complexity.
Abstract
The center stage of neuro-imaging is currently occupied by studies of functional correlations between brain regions. These correlations define the brain functional networks, which are the most frequently used framework to represent and interpret a variety of experimental findings. In previous work we first demonstrated that the relatively stronger BOLD activations contain most of the information relevant to understand functional connectivity and subsequent work confirmed that a large compression of the original signals can be obtained without significant loss of information. In this work we revisit the correlation properties of these epochs to define a measure of nonlinear dynamic directed functional connectivity (nldFC) across regions of interest. We show that the proposed metric provides at once, without extensive numerical complications, directed information of the functional…
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