Deep Learning-based Accelerated MR Cholangiopancreatography without Fully-sampled Data
- URL: http://arxiv.org/abs/2405.03732v2
- Date: Thu, 10 Oct 2024 14:35:35 GMT
- Title: Deep Learning-based Accelerated MR Cholangiopancreatography without Fully-sampled Data
- Authors: Jinho Kim, Marcel Dominik Nickel, Florian Knoll,
- Abstract summary: We trained deep learning (DL) reconstructions using supervised (SV) and self-supervised (SSV) approaches.
We evaluated the DL reconstructions against standard techniques, parallel imaging (PI) and compressed sensing (CS)
Both DL reconstructions demonstrated a remarkable reduction in average acquisition time from 599/542 to 255/180 seconds for MRCP at 3T/0.55T.
- Score: 0.8422467541029346
- License:
- Abstract: The purpose of this study was to accelerate MR cholangiopancreatography (MRCP) acquisitions using deep learning-based (DL) reconstruction at 3T and 0.55T. A total of 35 healthy volunteers underwent conventional two-fold accelerated MRCP scans at field strengths of 3T and 0.55T. We trained DL reconstructions using two different training strategies, supervised (SV) and self-supervised (SSV), with retrospectively six-fold undersampled data obtained at 3T. We then evaluated the DL reconstructions against standard techniques, parallel imaging (PI) and compressed sensing (CS), focusing on peak signal-to-noise ratio (PSNR) and structural similarity (SSIM) as metrics. We also tested DL reconstructions in a prospectively accelerated scenario to reflect real-world clinical applications and evaluated their adaptability to MRCP at 0.55T. Both DL reconstructions demonstrated a remarkable reduction in average acquisition time from 599/542 to 255/180 seconds for MRCP at 3T/0.55T. In both retrospective and prospective undersampling scenarios, PSNR and SSIM of DL reconstructions were higher than those of PI and CS. At the same time, DL reconstructions preserved the image quality of undersampled data, including sharpness and the visibility of hepatobiliary ducts. In addition, both DL approaches produced high-quality reconstructions at 0.55T. In summary, DL reconstructions trained for highly accelerated MRCP enabled a reduction in acquisition time by a factor of 2.4/3.0 at 3T/0.55T while maintaining the image quality of conventional acquisition.
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