Spherical deconvolution of multichannel diffusion MRI data with non-Gaussian noise models and spatial regularization
Erick J. Canales-Rodr\'iguez, Alessandro Daducci, Stamatios N., Sotiropoulos, Emmanuel Caruyer, Santiago Aja-Fern\'andez, Joaquim Radua,, Jes\'us Mar\'ia Yurramendi Mendizabal, Yasser Iturria-Medina, Lester, Melie-Garc\'ia, Yasser Alem\'an-G\'omez, Jean-Philippe Thiran, Salvador

TL;DR
This paper introduces RUMBA-SD, a spherical deconvolution method tailored for realistic non-Gaussian MRI noise, enhanced by spatial regularization, significantly improving fiber orientation estimation in diffusion MRI.
Contribution
The study develops a novel RUMBA-SD algorithm that models non-Gaussian noise and incorporates spatial regularization, advancing the accuracy of fiber orientation estimation in diffusion MRI.
Findings
Proper noise modeling improves fiber crossing resolution.
Spatial regularization enhances resolution power.
Method performs well on synthetic and brain data.
Abstract
Spherical deconvolution (SD) methods are widely used to estimate the intra-voxel white-matter fiber orientations from diffusion MRI data. However, while some of these methods assume a zero-mean Gaussian distribution for the underlying noise, its real distribution is known to be non-Gaussian and to depend on the methodology used to combine multichannel signals. Indeed, the two prevailing methods for multichannel signal combination lead to Rician and noncentral Chi noise distributions. Here we develop a Robust and Unbiased Model-BAsed Spherical Deconvolution (RUMBA-SD) technique, intended to deal with realistic MRI noise, based on a Richardson-Lucy (RL) algorithm adapted to Rician and noncentral Chi likelihood models. To quantify the benefits of using proper noise models, RUMBA-SD was compared with dRL-SD, a well-established method based on the RL algorithm for Gaussian noise. Another aim…
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