BOLDSimNet: Examining Brain Network Similarity between Task and Resting-State fMRI
Journal:
arXiv
Published Date:
Apr 2, 2025
Abstract
Traditional causal connectivity methods in task-based and resting-state
functional magnetic resonance imaging (fMRI) face challenges in accurately
capturing directed information flow due to their sensitivity to noise and
inability to model multivariate dependencies. These limitations hinder the
effective comparison of brain networks between cognitive states, making it
difficult to analyze network reconfiguration during task and resting states. To
address these issues, we propose BOLDSimNet, a novel framework utilizing
Multivariate Transfer Entropy (MTE) to measure causal connectivity and network
similarity across different cognitive states. Our method groups functionally
similar regions of interest (ROIs) rather than spatially adjacent nodes,
improving accuracy in network alignment. We applied BOLDSimNet to fMRI data
from 40 healthy controls and found that children exhibited higher similarity
scores between task and resting states compared to adolescents, indicating
reduced variability in attention shifts. In contrast, adolescents showed more
differences between task and resting states in the Dorsal Attention Network
(DAN) and the Default Mode Network (DMN), reflecting enhanced network
adaptability. These findings emphasize developmental variations in the
reconfiguration of the causal brain network, showcasing BOLDSimNet's ability to
quantify network similarity and identify attentional fluctuations between
different cognitive states.