English

White Matter Fiber Segmentation Using Functional Varifolds

Computer Vision and Pattern Recognition 2017-09-20 v1 Neurons and Cognition Quantitative Methods

Abstract

The extraction of fibers from dMRI data typically produces a large number of fibers, it is common to group fibers into bundles. To this end, many specialized distance measures, such as MCP, have been used for fiber similarity. However, these distance based approaches require point-wise correspondence and focus only on the geometry of the fibers. Recent publications have highlighted that using microstructure measures along fibers improves tractography analysis. Also, many neurodegenerative diseases impacting white matter require the study of microstructure measures as well as the white matter geometry. Motivated by these, we propose to use a novel computational model for fibers, called functional varifolds, characterized by a metric that considers both the geometry and microstructure measure (e.g. GFA) along the fiber pathway. We use it to cluster fibers with a dictionary learning and sparse coding-based framework, and present a preliminary analysis using HCP data.

Keywords

Cite

@article{arxiv.1709.06144,
  title  = {White Matter Fiber Segmentation Using Functional Varifolds},
  author = {Kuldeep Kumar and Pietro Gori and Benjamin Charlier and Stanley Durrleman and Olivier Colliot and Christian Desrosiers},
  journal= {arXiv preprint arXiv:1709.06144},
  year   = {2017}
}
R2 v1 2026-06-22T21:47:27.872Z