Abstract
The resting-state human brain networks underlie fundamental cognitive functions and consist of complex interactions among brain regions. However, the level of complexity of the resting-state networks has not been quantified, which has prevented comprehensive descriptions of the brain activity as an integrative system. Here, we address this issue by demonstrating that a pairwise maximum entropy model, which takes into account region-specific activity rates and pairwise interactions, can be robustly and accurately fitted to resting-state human brain activities obtained by functional magnetic resonance imaging. Furthermore, to validate the approximation of the resting-state networks by the pairwise maximum entropy model, we show that the functional interactions estimated by the pairwise maximum entropy model reflect anatomical connexions more accurately than the conventional functional connectivity method. These findings indicate that a relatively simple statistical model not only captures the structure of the resting-state networks but also provides a possible method to derive physiological information about various large-scale brain networks.
Full Text
Topics from this Paper
Pairwise Maximum Entropy Model
Pairwise Model
Resting-state Human Brain
Resting-state Networks
Resting-state Brain Networks
+ Show 5 more
Create a personalized feed of these topics
Get StartedTalk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Similar Papers
iScience
Jan 1, 2021
Pediatric Research
Sep 1, 2009
PLOS Computational Biology
Oct 2, 2017
Frontiers in Human Neuroscience
Jan 1, 2013
NeuroImage
Jun 1, 2011
Frontiers in Psychiatry
Aug 6, 2020
Sep 22, 2022
Feb 16, 2021
Brain Sciences
Apr 21, 2022
Journal of Computational Neuroscience
Jul 16, 2010
Scientific Reports
Oct 12, 2015
Physica A: Statistical Mechanics and its Applications
Mar 1, 2013
Nature Communications
Nature Communications
Nov 27, 2023
Nature Communications
Nov 27, 2023
Nature Communications
Nov 26, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023
Nature Communications
Nov 25, 2023