NODDI-SH: a computational efficient NODDI extension for fODF estimation in diffusion MRI
Mauro Zucchelli, Maxime Descoteaux, Gloria Menegaz

TL;DR
NODDI-SH is a computationally efficient extension of NODDI that estimates fiber orientations and neurite density from diffusion MRI data, demonstrating robustness, accuracy, and suitability for clinical use.
Contribution
It introduces NODDI-SH, a novel model combining NODDI and spherical harmonics for fast, robust fODF and neurite density estimation with limited data samples.
Findings
Competitive performance against benchmarks like CSD.
Requires only 60 samples for reliable results.
Reduces computational cost significantly.
Abstract
Diffusion Magnetic Resonance Imaging (DMRI) is the only non-invasive imaging technique which is able to detect the principal directions of water diffusion as well as neurites density in the human brain. Exploiting the ability of Spherical Harmonics (SH) to model spherical functions, we propose a new reconstruction model for DMRI data which is able to estimate both the fiber Orientation Distribution Function (fODF) and the relative volume fractions of the neurites in each voxel, which is robust to multiple fiber crossings. We consider a Neurite Orientation Dispersion and Density Imaging (NODDI) inspired single fiber diffusion signal to be derived from three compartments: intracellular, extracellular, and cerebrospinal fluid. The model, called NODDI-SH, is derived by convolving the single fiber response with the fODF in each voxel. NODDI-SH embeds the calculation of the fODF and the…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Bone and Joint Diseases · Advanced MRI Techniques and Applications
