Simultaneous Image Quality Improvement and Artefacts Correction in Accelerated MRI
Georgia Kanli, Daniele Perlo, Selma Boudissa, Radovan Jirik, and Olivier Keunen

TL;DR
This paper introduces USArt, a deep learning model that simultaneously accelerates MRI acquisition and corrects artefacts like noise and motion, significantly improving image quality in under-sampled data.
Contribution
The paper presents USArt, the first deep learning approach to jointly address MRI acceleration and artefact correction, enhancing diagnostic image quality from under-sampled data.
Findings
Up to 5x acceleration achieved with artefacts correction.
Gradient under-sampling strategy yields best results.
Significant increase in SNR and contrast in restored images.
Abstract
MR data are acquired in the frequency domain, known as k-space. Acquiring high-quality and high-resolution MR images can be time-consuming, posing a significant challenge when multiple sequences providing complementary contrast information are needed or when the patient is unable to remain in the scanner for an extended period of time. Reducing k-space measurements is a strategy to speed up acquisition, but often leads to reduced quality in reconstructed images. Additionally, in real-world MRI, both under-sampled and full-sampled images are prone to artefacts, and correcting these artefacts is crucial for maintaining diagnostic accuracy. Deep learning methods have been proposed to restore image quality from under-sampled data, while others focused on the correction of artefacts that result from the noise or motion. No approach has however been proposed so far that addresses both…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications · Advanced Image Processing Techniques
