| Literature DB >> 28161314 |
Guillermo Gallardo1, William Wells2, Rachid Deriche3, Demian Wassermann3.
Abstract
Current theories hold that brain function is highly related to long-range physical connections through axonal bundles, namely extrinsic connectivity. However, obtaining a groupwise cortical parcellation based on extrinsic connectivity remains challenging. Current parcellation methods are computationally expensive; need tuning of several parameters or rely on ad-hoc constraints. Furthermore, none of these methods present a model for the cortical extrinsic connectivity of the cortex. To tackle these problems, we propose a parsimonious model for the extrinsic connectivity and an efficient parceling technique based on clustering of tractograms. Our technique allows the creation of single subject and groupwise parcellations of the whole cortex. The parcellations obtained with our technique are in agreement with structural and functional parcellations in the literature. In particular, the motor and sensory cortex are subdivided in agreement with the human homunculus of Penfield. We illustrate this by comparing our resulting parcels with the motor strip mapping included in the Human Connectome Project data.Entities:
Keywords: Statistical clustering models; Structural connectivity; Structural parcellation; Tractography
Mesh:
Year: 2017 PMID: 28161314 PMCID: PMC5538957 DOI: 10.1016/j.neuroimage.2017.01.070
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556