Publication | Open Access
Functional Brain Networks Develop from a “Local to Distributed” Organization
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2009
Year
The mature human brain consists of specialized functional networks that flexibly interact to support cognition, and developmental studies aim to uncover the principles guiding their maturation. The study aims to analyze four functional networks using resting‑state fMRI, graph theory, community detection, and spring‑embedding visualization. We employed rs‑fMRI data, graph analysis, community detection, and spring‑embedding visualization to examine connectivity patterns across the four networks. Across development, connectivity shifts from local anatomical segregation to distributed integration, with children’s communities organized by proximity and adults’ by functional relationships, preserving small‑world properties while altering community structure.
The mature human brain is organized into a collection of specialized functional networks that flexibly interact to support various cognitive functions. Studies of development often attempt to identify the organizing principles that guide the maturation of these functional networks. In this report, we combine resting state functional connectivity MRI (rs-fcMRI), graph analysis, community detection, and spring-embedding visualization techniques to analyze four separate networks defined in earlier studies. As we have previously reported, we find, across development, a trend toward ‘segregation’ (a general decrease in correlation strength) between regions close in anatomical space and ‘integration’ (an increased correlation strength) between selected regions distant in space. The generalization of these earlier trends across multiple networks suggests that this is a general developmental principle for changes in functional connectivity that would extend to large-scale graph theoretic analyses of large-scale brain networks. Communities in children are predominantly arranged by anatomical proximity, while communities in adults predominantly reflect functional relationships, as defined from adult fMRI studies. In sum, over development, the organization of multiple functional networks shifts from a local anatomical emphasis in children to a more “distributed” architecture in young adults. We argue that this “local to distributed” developmental characterization has important implications for understanding the development of neural systems underlying cognition. Further, graph metrics (e.g., clustering coefficients and average path lengths) are similar in child and adult graphs, with both showing “small-world”-like properties, while community detection by modularity optimization reveals stable communities within the graphs that are clearly different between young children and young adults. These observations suggest that early school age children and adults both have relatively efficient systems that may solve similar information processing problems in divergent ways.
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