Abstract #2845
Joint Brain Connectivity Estimation from Diffusion and Functional MRI Using a Network Flow Model
Shu-Hsien Chu 1 , Keshab K. Parhi 1 , and Christophe Lenglet 1
1
University of Minnesota, Minneapolis,
Minnesota, United States
In the paper, a novel brain network is proposed with
nodes as brain regions, links as possible white matter
fiber bundles, flow as electrochemical signal, link
capacities characterized by fiber strength based on
diffusion MRI, and node demands as neural reaction
estimated from functional MRI. The signaling pathways
are discovered through solving the proposed brain
network model. Comparing with the connectivity derived
from either diffusion MRI, functional MRI, or a joint
model using the expectation-maximization algorithm
presented in a prior work, the proposed model finds the
maximum true connections with fewest number of false
connections.
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