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Accelerated Cardiac MRI with Deep Learning-based Image Reconstruction for Cine Imaging. | LitMetric

Accelerated Cardiac MRI with Deep Learning-based Image Reconstruction for Cine Imaging.

Radiol Cardiothorac Imaging

From the Institute of Diagnostic and Interventional Radiology, Pediatric Radiology and Neuroradiology (A.C.K., L.R., M.M., A.D., M.A.W., F.G.M.), and Department of Cardiology (C.I.L.), Rostock University Medical Center, Schillingallee 36, 18057 Rostock, Germany; GE HealthCare, Munich, Germany (M.G.); GE HealthCare, Menlo Park, Calif (X.Z.); and Department of Radiology, Ludwig-Maximilian University, Munich, Germany (R.L.).

Published: December 2024

Purpose To assess the influence of deep learning (DL)-based image reconstruction on acquisition time, volumetric results, and image quality of cine sequences in cardiac MRI. Materials and Methods This prospective study (performed from January 2023 to March 2023) included 55 healthy volunteers who underwent a noncontrast cardiac MRI examination at 1.5 T. Short-axis stack DL cine sequences of the left ventricle (LV) were performed over one (1RR), three (3RR), and six cardiac (6RR) cycles and compared with a standard cine sequence (without DL, performed over 10-12 cardiac cycles) in regard to acquisition time, subjective image quality, edge sharpness, and volumetric results. Results Total acquisition time (median) for a short-axis stack was 47 seconds for the 1RR cine, 108 seconds for 3RR cine, 184 seconds for 6RR cine, and 227 seconds for the standard sequence. Volumetric results showed no difference for the conventional cine (median LV ejection fraction [EF] 63%), 6RR cine (median LVEF, 62%), and 3RR cine (median LVEF, 61%). The 1RR cine sequence significantly underestimated EF (57%) because of a different segmentation of the papillary muscles. Subjective image quality ( = .37) and edge sharpness ( = .06) of the three-heartbeat DL cine did not differ from the reference standard, while both metrics were lower for single-heartbeat DL cine and higher for six-heartbeat DL cine. Conclusion For DL-based cine sequences, acquisition over three cardiac cycles appears to be the optimal compromise, with no evidence of differences in image quality, edge sharpness, and volumetric results, but with a greater than 50% reduced acquisition time compared with the reference sequence. MR Imaging, Cardiac, Heart, Technical Aspects, Cardiac MRI, Deep Learning, Clinical Imaging, Accelerated Imaging © RSNA, 2024.

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Source
http://dx.doi.org/10.1148/ryct.230419DOI Listing

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