Difference between revisions of "Projects:BrainManifold"
From NAMIC Wiki
m |
|||
Line 19: | Line 19: | ||
= Publications = | = Publications = | ||
− | |||
− | |||
− | |||
''Published in MICCAI and ICCV'' | ''Published in MICCAI and ICCV'' |
Revision as of 18:46, 7 October 2009
Home < Projects:BrainManifoldBack to Utah Algorithms
Brain Manifold Learning
This work investigates the use of manifold learning approaches in the context of brain population analysis. The goal is to construct a manifold model from a set of brain images that captures variability in shape, a parametrization of the shape space. Such a manifold model is interesting in several ways
- The low dimensional parametrization simplifies statistical analysis of populations.
- Applications to searching and browsing large database
- The manifold represents a localized Atlas. Alternative to template based applications. For example as a segmentation prior.
- Aid in clinical diagnosis. Different regions on the manifold can indicate different pathologies.
Description
Key Investigators
- Utah: Samuel Gerber, Tolga Tasdizen, Sarang Joshi, Tom Fletcher, Ross Whitaker
Publications
Published in MICCAI and ICCV