Deep Residual Network for Off-Resonance Artifact Correction with Application to Pediatric Body Magnetic Resonance Angiography with 3D Cones
David Y Zeng, Jamil Shaikh, Dwight G Nishimura, Shreyas S Vasanawala,, Joseph Y Cheng

TL;DR
This paper presents a deep residual neural network that effectively corrects off-resonance artifacts in rapid pediatric 3D cones MRI scans, enabling shorter scan times without compromising image quality.
Contribution
The study introduces Off-ResNet, a novel deep learning model trained on prospectively acquired pediatric MRA data to correct off-resonance artifacts in fast MRI scans.
Findings
Off-ResNet outperforms uncorrected images in NRMSE, SSIM, and PSNR.
Corrected long-readout scans are non-inferior to standard short-readout scans.
Method reduces scan time by approximately 59%.
Abstract
Purpose: Off-resonance artifact correction by deep-learning, to facilitate rapid pediatric body imaging with a scan time efficient 3D cones trajectory. Methods: A residual convolutional neural network to correct off-resonance artifacts (Off-ResNet) was trained with a prospective study of 30 pediatric magnetic resonance angiography exams. Each exam acquired a short-readout scan (1.18 ms +- 0.38) and a long-readout scan (3.35 ms +- 0.74) at 3T. Short-readout scans, with longer scan times but negligible off-resonance blurring, were used as reference images and augmented with additional off-resonance for supervised training examples. Long-readout scans, with greater off-resonance artifacts but shorter scan time, were corrected by autofocus and Off-ResNet and compared to short-readout scans by normalized root-mean-square error (NRMSE), structural similarity index (SSIM), and peak…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Cardiac Imaging and Diagnostics · Photoacoustic and Ultrasonic Imaging
