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AnatomiCuts: Hierarchical clustering of tractography streamlines based on anatomical similarity.


ABSTRACT: Diffusion MRI tractography produces massive sets of streamlines that contain a wealth of information on brain connections. The size of these datasets creates a need for automated clustering methods to group the streamlines into meaningful bundles. Conventional clustering techniques group streamlines based on their spatial coordinates. Neuroanatomists, however, define white-matter bundles based on the anatomical structures that they go through or next to, rather than their spatial coordinates. Thus we propose a similarity measure for clustering streamlines based on their position relative to cortical and subcortical brain regions. We incorporate this measure into a hierarchical clustering algorithm and compare it to a measure that relies on Euclidean distance, using data from the Human Connectome Project. We show that the anatomical similarity measure leads to a 20% improvement in the overlap of clusters with manually labeled tracts. Importantly, this is achieved without introducing any prior information from a tract atlas into the clustering algorithm, therefore without imposing the existence of any named tracts.

SUBMITTER: Siless V 

PROVIDER: S-EPMC6152885 | biostudies-literature | 2018 Feb

REPOSITORIES: biostudies-literature

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AnatomiCuts: Hierarchical clustering of tractography streamlines based on anatomical similarity.

Siless Viviana V   Chang Ken K   Fischl Bruce B   Yendiki Anastasia A  

NeuroImage 20171101


Diffusion MRI tractography produces massive sets of streamlines that contain a wealth of information on brain connections. The size of these datasets creates a need for automated clustering methods to group the streamlines into meaningful bundles. Conventional clustering techniques group streamlines based on their spatial coordinates. Neuroanatomists, however, define white-matter bundles based on the anatomical structures that they go through or next to, rather than their spatial coordinates. Th  ...[more]

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