Unrolled Reconstruction with Integrated Super-Resolution for Accelerated 3D LGE MRI
arXiv cs.CV / 3/20/2026
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Key Points
- The authors propose a hybrid unrolled reconstruction framework for accelerated 3D LGE MRI that integrates an Enhanced Deep Super-Resolution (EDSR) network within each iteration to enable joint reconstruction and super-resolution.
- They replace the proximal operator in the optimization loop with an EDSR network and train the model end-to-end on retrospectively undersampled 3D LGE data.
- The method is evaluated against compressed sensing, MoDL, and self-guided DIP baselines, showing consistent PSNR and SSIM gains across various acceleration factors.
- It yields better preservation of fine cardiac structures and improves left atrium segmentation performance, illustrating the value of embedding super-resolution priors in model-based MRI reconstruction.
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