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Abstract #3638

Improving Abdominal MR Image Quality at 0.55T Using Deep Learning Reconstruction: A Comparative Study with Commercial 0.55T and High-Field Scans

Lauren J. Kelsey1, Nicole Seiberlich1, Shane A. Wells1, Robert Sellers2, Anupama Ramachandran1, Jacob Richardson1, Vikas Gulani1, and Hero K. Hussain1
1Department of Radiology, University of Michigan, Ann Arbor, MI, United States, 2Siemens Healthineers, Erlangen, Germany

Synopsis

Keywords: Hepatobiliary, Low-Field MRI, Abdomen, deep-learning reconstruction

Motivation: Deep-learning reconstruction may overcome two shortcomings of 0.55T, low SNR and extended scan time, without compromising lesion conspicuity.

Goal(s): To demonstrate that image quality and SNR of deep-learning reconstructed 0.55T images are at least similar to 1.5T/3T images, while maintaining visibility of pathologies.

Approach: 23 patients imaged at 0.55T using standard and deep-learning HASTE and DWI. Three radiologists rated IQ and SNR at 0.55T and HF. Pathologies were evaluated in deep-learning images.

Results: Deep-learning reconstructed HASTE and DWI 0.55T images were of same or better quality and SNR than 1.5T/3T images. All pathologies were visible on deep-learning 0.55T images. DL reduced HASTE scan-time.

Impact: Deep-learning reconstruction algorithms of select sequences at 0.55T can help overcome low SNR and extended scan times of current 0.55T abdominal imaging, making it comparable or superior to standard-of-care 1.5/3T, thereby expanding global use of a more accessible MRI system.

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Keywords