Joint multi-contrast Variational Network reconstruction (jVN) with application to rapid 2D and 3D imaging
Daniel Polak, Stephen Cauley, Berkin Bilgic, Enhao Gong, Peter, Bachert, Elfar Adalsteinsson, Kawin Setsompop

TL;DR
This paper introduces a joint variational network for multi-contrast MRI reconstruction that leverages shared anatomical information to improve image quality and enable rapid high-resolution imaging at high acceleration factors.
Contribution
The paper presents a novel joint variational network architecture that reconstructs multiple MRI contrasts simultaneously, incorporating advanced encoding techniques for significantly accelerated imaging.
Findings
Better preservation of anatomical details compared to single-contrast methods
Achieved up to 16-fold acceleration with good image quality
Synergistic use of complementary sampling and encoding techniques enhances reconstruction
Abstract
Purpose: To improve the image quality of highly accelerated multi-channel MRI data by learning a joint variational network that reconstructs multiple clinical contrasts jointly. Methods: Data from our multi-contrast acquisition was embedded into the variational network architecture where shared anatomical information is exchanged by mixing the input contrasts. Complementary k-space sampling across imaging contrasts and Bunch-Phase/Wave-Encoding were used for data acquisition to improve the reconstruction at high accelerations. At 3T, our joint variational network approach across T1w, T2w and T2-FLAIR-weighted brain scans was tested for retrospective under-sampling at R=6 (2D) and R=4x4 (3D) acceleration. Prospective acceleration was also performed for 3D data where the combined acquisition time for whole brain coverage at 1 mm isotropic resolution across three contrasts was less than…
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