2014 22nd International Conference on Pattern Recognition 2014
DOI: 10.1109/icpr.2014.575
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Modeling the Brain Connectivity for Pattern Analysis

Abstract: An information theoretic approach is proposed to estimate the degree of connectivity for each voxel with its neighboring voxels. The neighborhood system is defined by spatial and functional connectivity metrics. Then, a local mesh of variable size is formed around each voxel using spatial or functional neighborhood. The mesh arc weights, called Mesh Arc Descriptors (MAD), are estimated by a linear regression model fitted to the voxel intensity values of the functional Magnetic Resonance Images (fMRI). Finally,… Show more

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“…It is possible to define a different mesh size for each seed voxel by using one of the approaches mentioned above. The interested reader is referred to [31]. In this study, we select a fixed mesh size for the entire brain volume, for each stimulus.…”
Section: Estimation Of Edge Weights Of Meshesmentioning
confidence: 99%
“…It is possible to define a different mesh size for each seed voxel by using one of the approaches mentioned above. The interested reader is referred to [31]. In this study, we select a fixed mesh size for the entire brain volume, for each stimulus.…”
Section: Estimation Of Edge Weights Of Meshesmentioning
confidence: 99%