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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.

Abstract

Accelerated 3D late gadolinium enhancement (LGE) MRI requires robust reconstruction methods to recover thin atrial structures from undersampled k-space data. While unrolled model-based networks effectively integrate physics-driven data consistency with learned priors, they operate at the acquired resolution and may fail to fully recover high-frequency detail. We propose a hybrid unrolled reconstruction framework in which an Enhanced Deep Super-Resolution (EDSR) network replaces the proximal operator within each iteration of the optimization loop, enabling joint super-resolution enhancement and data consistency enforcement. The model is trained end-to-end on retrospectively undersampled preclinical 3D LGE datasets and compared against compressed sensing, Model-Based Deep Learning (MoDL), and self-guided Deep Image Prior (DIP) baselines. Across acceleration factors, the proposed method consistently improves PSNR and SSIM over standard unrolled reconstruction and better preserves fine cardiac structures, leading to improved LA (left atrium) segmentation performance. These results demonstrate that integrating super-resolution priors directly within model-based reconstruction provides measurable gains in accelerated 3D LGE MRI.