Toward an information theoretical description of communication in brain networks
Modeling communication dynamics in the brain is a key challenge in network neuroscience. We present here a framework that combines two measurements for any system where different communication processes are taking place on top of a fixed structural topology: path processing score (PPS) estimates how...
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Veröffentlicht in: | Network neuroscience (Cambridge, Mass.) Mass.), 2021-01, Vol.5 (3), p.646-665 |
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Sprache: | eng |
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Zusammenfassung: | Modeling communication dynamics in the brain is a key challenge in network
neuroscience. We present here a framework that combines two measurements for any
system where different communication processes are taking place on top of a
fixed structural topology: path processing score (PPS) estimates how much the
brain signal has changed or has been transformed between any two brain regions
(source and target); path broadcasting strength (PBS) estimates the propagation
of the signal through edges adjacent to the path being assessed. We use PPS and
PBS to explore communication dynamics in large-scale brain networks. We show
that brain communication dynamics can be divided into three main
“communication regimes” of information transfer:
(no communication happening);
(information is being transferred almost intact); and
(the information is being
transformed). We use PBS to categorize brain regions based on the way they
broadcast information. Subcortical regions are mainly direct broadcasters to
multiple receivers; Temporal and frontal nodes mainly operate as broadcast relay
brain stations; visual and somatomotor cortices act as multichannel transducted
broadcasters. This work paves the way toward the field of brain network
information theory by providing a principled methodology to explore
communication dynamics in large-scale brain networks. |
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ISSN: | 2472-1751 2472-1751 |
DOI: | 10.1162/netn_a_00185 |