Fast MRI for All: Bridging Access Gaps by Training without Raw Data
Ya\c{s}ar Utku Al\c{c}alar, Merve G\"ulle, Mehmet Ak\c{c}akaya

TL;DR
This paper introduces CUPID, a novel unsupervised deep learning method for fast MRI reconstruction that trains solely on routine clinical images, bypassing the need for raw data and enhancing accessibility in underserved areas.
Contribution
CUPID is the first PD-DL training approach that uses only reconstructed images, enabling broader access to fast MRI without raw data requirements.
Findings
CUPID achieves image quality comparable to methods requiring raw data.
It outperforms compressed sensing and diffusion-based generative models.
Effective in zero-shot training for various sampling schemes.
Abstract
Physics-driven deep learning (PD-DL) approaches have become popular for improved reconstruction of fast magnetic resonance imaging (MRI) scans. Though PD-DL offers higher acceleration rates than existing clinical fast MRI techniques, their use has been limited outside specialized MRI centers. A key challenge is generalization to rare pathologies or different populations, noted in multiple studies, with fine-tuning on target populations suggested for improvement. However, current approaches for PD-DL training require access to raw k-space measurements, which is typically only available at specialized MRI centers that have research agreements for such data access. This is especially an issue for rural and under-resourced areas, where commercial MRI scanners only provide access to a final reconstructed image. To tackle these challenges, we propose Compressibility-inspired Unsupervised…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Advanced MRI Techniques and Applications · Nuclear Physics and Applications
