Author:
Giannakopoulos Ilias I.,Muckley Matthew J.,Kim Jesi,Breen Matthew,Johnson Patricia M.,Lui Yvonne W.,Lattanzi Riccardo
Abstract
AbstractWe introduce three architecture modifications to enhance the performance of the end-to-end (E2E) variational network (VarNet) for undersampled MRI reconstructions. We first implemented the Feature VarNet, which propagates information throughout the cascades of the network in an N-channel feature-space instead of a 2-channel feature-space. Then, we add an attention layer that utilizes the spatial locations of Cartesian undersampling artifacts to further improve performance. Lastly, we combined the Feature and E2E VarNets into the Feature-Image (FI) VarNet, to facilitate cross-domain learning and boost accuracy. Reconstructions were evaluated on the fastMRI dataset using standard metrics and clinical scoring by three neuroradiologists. Feature and FI VarNets outperformed the E2E VarNet for 4$$\times$$
×
, 5$$\times$$
×
and 8$$\times$$
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Cartesian undersampling in all studied metrics. FI VarNet secured second place in the public fastMRI leaderboard for 4$$\times$$
×
Cartesian undersampling, outperforming all open-source models in the leaderboard. Radiologists rated FI VarNet brain reconstructions with higher quality and sharpness than the E2E VarNet reconstructions. FI VarNet excelled in preserving anatomical details, including blood vessels, whereas E2E VarNet discarded or blurred them in some cases. The proposed FI VarNet enhances the reconstruction quality of undersampled MRI and could enable clinically acceptable reconstructions at higher acceleration factors than currently possible.
Funder
National Institutes of Health
Publisher
Springer Science and Business Media LLC