Estimating Spatially-Smoothed Fiber Orientation Distribution
Jilei Yang, Seungyong Hwang, Jie Peng

TL;DR
This paper introduces NARM, a novel adaptive regression model that improves fiber orientation distribution estimation in D-MRI by incorporating spatial neighborhood information, leading to more accurate brain connectivity analysis.
Contribution
The paper proposes NARM, a new adaptive spatial smoothing method for FOD estimation that outperforms existing voxel-wise and smoothing techniques in D-MRI data analysis.
Findings
NARM achieves better FOD reconstruction than competing methods.
NARM produces more realistic crossing fiber patterns.
NARM enhances fiber tracking coherence.
Abstract
Diffusion-weighted magnetic resonance imaging (D-MRI) is an in-vivo and non-invasive imaging technology to probe anatomical architectures of biological samples. The anatomy of white matter fiber tracts in the brain can be revealed to help understanding of the connectivity patterns among different brain regions. In this paper, we propose a novel Nearest-neighbor Adaptive Regression Model (NARM) for adaptive estimation of the fiber orientation distribution (FOD) function based on D-MRI data, where spatial homogeneity is used to improve FOD estimation by incorporating neighborhood information. Specifically, we formulate the FOD estimation problem as a weighted linear regression problem, where the weights are chosen to account for spatial proximity and potential heterogeneity due to different fiber configurations. The weights are adaptively updated and a stopping rule based on nearest…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · MRI in cancer diagnosis
