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Application of deep learning-based image reconstruction in MR imaging of the shoulder joint to improve image quality and reduce scan time.

Malwina KaniewskaEva Deininger-CzermakJonas M GetzmannXinzeng WangMaelene LohezicRoman Guggenberger
Published in: European radiology (2022)
• MRI of the shoulder requires long scan times and can be hampered by motion artifacts. • Deep learning-based convolutional neural networks are used to reduce image noise and scan time while maintaining optimal image quality. The radial k-space acquisition technique (PROPELLER) can reduce the scan time and has potential to reduce motion artifacts. • DL sequences show a higher diagnostic confidence than conventional sequences and therefore are preferred for assessment of the subacromial bursa, while conventional and DL sequences show comparable performance in the evaluation of the shoulder joint.
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