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Spatio-Angular Convolutions for Super-resolution in Diffusion MRI

About

Diffusion MRI (dMRI) is a widely used imaging modality, but requires long scanning times to acquire high resolution datasets. By leveraging the unique geometry present within this domain, we present a novel approach to dMRI angular super-resolution that extends upon the parametric continuous convolution (PCConv) framework. We introduce several additions to the operation including a Fourier feature mapping, global coordinates, and domain specific context. Using this framework, we build a fully parametric continuous convolution network (PCCNN) and compare against existing models. We demonstrate the PCCNN performs competitively while using significantly less parameters. Moreover, we show that this formulation generalises well to clinically relevant downstream analyses such as fixel-based analysis, and neurite orientation dispersion and density imaging.

Matthew Lyon, Paul Armitage, Mauricio A \'Alvarez• 2023

Related benchmarks

TaskDatasetResultRank
Fixel-based analysisHCP 8 subjects (test)
FOD ACC80.7
36
Fixel-based analysisHCP 8 subjects
FOD ACC85.6
21
dMRI intensity inferenceHCP b=2000 shell (test)
MSSIM0.99
18
dMRI intensity inferenceHCP b=2000s/mm² shell (test)
Absolute Error (AE)28.32
18
dMRI intensity inferenceHCP b=2000 shell (eight subjects)
PSNR40.51
18
dMRI intensity inferenceHCP single-shell (b=1000) (test)
Absolute Error41.88
18
dMRI intensity inferenceHCP single-shell (b=3000) (test)
Absolute Error23.7
18
dMRI Angular Super-ResolutionHCP 8 subjects, q_in=10, b=3000 (test)
MSSIM0.972
6
dMRI Angular Super-ResolutionHCP 8 subjects, q_in=20, b=1000 (test)
MSSIM0.992
6
dMRI Angular Super-ResolutionHCP 8 subjects, q_in=20, b=3000 (test)
MSSIM0.986
6
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