Towards learned optimal q-space sampling in diffusion MRI
Tomer Weiss, Sanketh Vedula, Ortal Senouf, Oleg Michailovich, and, AlexBronstein

TL;DR
This paper introduces a unified framework for optimizing both the sampling scheme and estimation model in diffusion MRI, leading to improved fiber tractography accuracy and potentially enhancing clinical applications.
Contribution
It consolidates sampling optimization and estimation model improvement into a single framework, demonstrating substantial benefits in dMRI signal estimation and tractography.
Findings
Improved signal estimation quality in diffusion MRI.
Enhanced accuracy of fiber tractography results.
Learned sampling schemes outperform fixed schemes.
Abstract
Fiber tractography is an important tool of computational neuroscience that enables reconstructing the spatial connectivity and organization of white matter of the brain. Fiber tractography takes advantage of diffusion Magnetic Resonance Imaging (dMRI) which allows measuring the apparent diffusivity of cerebral water along different spatial directions. Unfortunately, collecting such data comes at the price of reduced spatial resolution and substantially elevated acquisition times, which limits the clinical applicability of dMRI. This problem has been thus far addressed using two principal strategies. Most of the efforts have been extended towards improving the quality of signal estimation for any, yet fixed sampling scheme (defined through the choice of diffusion-encoding gradients). On the other hand, optimization over the sampling scheme has also proven to be effective. Inspired by the…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · MRI in cancer diagnosis · Advanced MRI Techniques and Applications
MethodsDiffusion
