Mathematical methods for diffusion MRI processing

  title={Mathematical methods for diffusion MRI processing},
  author={Christophe Lenglet and Jennifer S. W. Campbell and Maxime Descoteaux and Gloria Haro and Peter Savadjiev and Demian Wassermann and Alfred Anwander and Rachid Deriche and G. Bruce Pike and Guillermo Sapiro and Kaleem Siddiqi and Paul M. Thompson},
In this article, we review recent mathematical models and computational methods for the processing of diffusion Magnetic Resonance Images, including state-of-the-art reconstruction of diffusion models, cerebral white matter connectivity analysis, and segmentation techniques. We focus on Diffusion Tensor Images (DTI) and Q-Ball Images (QBI). 
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