Self-Supervised Weighted Image Guided Quantitative MRI Super-Resolution

arXiv — cs.CVMonday, December 22, 2025 at 5:00:00 AM
  • A new framework for self-supervised weighted image guided quantitative MRI super-resolution has been proposed, utilizing high-resolution weighted MRI scans to enhance the quality of quantitative MRI relaxometry without the need for high-resolution ground truth during training. This approach minimizes discrepancies between synthesized and acquired images, potentially transforming clinical practices in MRI imaging.
  • The development is significant as it addresses the underutilization of high-resolution quantitative MRI due to lengthy acquisition times, offering a more efficient method for tissue characterization that could improve diagnostic accuracy and patient outcomes.
  • This advancement aligns with ongoing efforts in the field of MRI to enhance image quality and reconstruction speed, as seen in various innovative techniques aimed at harmonizing data, improving reconstruction from accelerated acquisitions, and addressing motion artifacts, all of which contribute to the evolution of medical imaging technologies.
— via World Pulse Now AI Editorial System

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