Sparse regularization for fiber ODF reconstruction: from the suboptimality of $\ell_2$ and $\ell_1$ priors to $\ell_0$
Alessandro Daducci, Dimitri Van De Ville, Jean-Philippe Thiran, Yves, Wiaux

TL;DR
This paper introduces an l0-norm constrained regularization method for fiber orientation distribution reconstruction in diffusion MRI, demonstrating improved accuracy over traditional l2 and l1 approaches.
Contribution
It proposes a novel l0-norm based formulation that better exploits sparsity and addresses limitations of existing l2 and l1 regularization methods.
Findings
l0 formulation reduces modeling errors significantly
Outperforms state-of-the-art l2 and l1 regularization methods
Validated on synthetic and real diffusion MRI data
Abstract
Diffusion MRI is a well established imaging modality providing a powerful way to probe the structure of the white matter non-invasively. Despite its potential, the intrinsic long scan times of these sequences have hampered their use in clinical practice. For this reason, a large variety of methods have been recently proposed to shorten the acquisition times. Among them, spherical deconvolution approaches have gained a lot of interest for their ability to reliably recover the intra-voxel fiber configuration with a relatively small number of data samples. To overcome the intrinsic instabilities of deconvolution, these methods use regularization schemes generally based on the assumption that the fiber orientation distribution (FOD) to be recovered in each voxel is sparse. The well known Constrained Spherical Deconvolution (CSD) approach resorts to Tikhonov regularization, based on an…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · Sparse and Compressive Sensing Techniques
