SANDI: a compartment-based model for non-invasive apparent soma and neurite imaging by diffusion MRI
Marco Palombo, Andrada Ianus, Daniel Nunes, Michele Guerreri, Daniel, C. Alexander, Noam Shemesh, Hui Zhang

TL;DR
This paper introduces SANDI, a novel diffusion MRI model that explicitly includes soma compartments, improving brain microstructure imaging and providing new biomarkers for tissue architecture analysis.
Contribution
SANDI is the first model to explicitly incorporate soma in diffusion MRI, enhancing microstructure characterization at high b-values.
Findings
SANDI successfully maps soma and neurite signal fractions in human brain.
The model provides new contrasts reflecting brain cyto- and myelo-architecture.
Validation shows SANDI's potential for biomedical and neuroscience applications.
Abstract
This work introduces a compartment-based model for apparent soma and neurite density imaging (SANDI) using non-invasive diffusion-weighted MRI (DW-MRI). The existing conjecture in brain microstructure imaging trough DW-MRI presents water diffusion in white (WM) and grey (GM) matter as restricted diffusion in neurites, modelled by infinite cylinders of null radius embedded in the hindered extra-neurite water. The extra-neurite pool in WM corresponds to water in the extra-axonal space, but in GM it combines water in the extra-cellular space with water in soma. While several studies showed that this microstructure model successfully describe DW-MRI data in WM and GM at b<3 ms/{\mum^2}, it has been also shown to fail in GM at high b values (b>>3 ms/{\mum^2}). Here we hypothesize that the unmodelled soma compartment may be responsible for this failure and propose SANDI as a new model of…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · MRI in cancer diagnosis
