Weight-conserving characterization of complex functional brain networks
Mikail Rubinov, Olaf Sporns

TL;DR
This paper introduces new methods for analyzing complex, densely connected, weighted brain networks, addressing key methodological challenges to improve the reliability of functional brain network characterization.
Contribution
It generalizes modularity and centrality measures for fully connected weighted networks, detects degenerate high-modularity partitions, and proposes a null model for hypothesis testing.
Findings
Demonstrated degenerate high-modularity partitions in MRI networks
Found strong correlations between centrality measures in resting-state networks
Enhanced reliability of functional brain network analysis
Abstract
Complex functional brain networks are large networks of brain regions and functional brain connections. Statistical characterizations of these networks aim to quantify global and local properties of brain activity with a small number of network measures. Important functional network measures include measures of modularity (measures of the goodness with which a network is optimally partitioned into functional subgroups) and measures of centrality (measures of the functional influence of individual brain regions). Characterizations of functional networks are increasing in popularity, but are associated with several important methodological problems. These problems include the inability to characterize densely connected and weighted functional networks, the neglect of degenerate topologically distinct high-modularity partitions of these networks, and the absence of a network null model for…
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