Mapping Individual Brain Networks Using Statistical Similarity in Regional Morphology from MRI
Xiang-zhen Kong,
Zhaoguo Liu,
Lijie Huang,
Xu Wang,
Zetian Yang,
Guangfu Zhou,
Zonglei Zhen and
Jia Liu
PLOS ONE, 2015, vol. 10, issue 11, 1-24
Abstract:
Representing brain morphology as a network has the advantage that the regional morphology of ‘isolated’ structures can be described statistically based on graph theory. However, very few studies have investigated brain morphology from the holistic perspective of complex networks, particularly in individual brains. We proposed a new network framework for individual brain morphology. Technically, in the new network, nodes are defined as regions based on a brain atlas, and edges are estimated using our newly-developed inter-regional relation measure based on regional morphological distributions. This implementation allows nodes in the brain network to be functionally/anatomically homogeneous but different with respect to shape and size. We first demonstrated the new network framework in a healthy sample. Thereafter, we studied the graph-theoretical properties of the networks obtained and compared the results with previous morphological, anatomical, and functional networks. The robustness of the method was assessed via measurement of the reliability of the network metrics using a test-retest dataset. Finally, to illustrate potential applications, the networks were used to measure age-related changes in commonly used network metrics. Results suggest that the proposed method could provide a concise description of brain organization at a network level and be used to investigate interindividual variability in brain morphology from the perspective of complex networks. Furthermore, the method could open a new window into modeling the complexly distributed brain and facilitate the emerging field of human connectomics.
Date: 2015
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0141840
DOI: 10.1371/journal.pone.0141840
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