Deep learning for radial SMS myocardial perfusion reconstruction using the 3D residual booster U-net
To develop an end-to-end deep learning solution for quickly reconstructing radial simultaneous multi-slice (SMS) myocardial perfusion datasets with comparable quality to the pixel tracking spatiotemporal constrained reconstruction (PT-STCR) method. Dynamic contrast enhanced (DCE) radial SMS myocardi...
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| Published in | Magnetic resonance imaging Vol. 83; pp. 178 - 188 |
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| Main Authors | , , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
Elsevier Inc
01.11.2021
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| Subjects | |
| Online Access | Get full text |
| ISSN | 0730-725X 1873-5894 1873-5894 |
| DOI | 10.1016/j.mri.2021.08.007 |
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| Summary: | To develop an end-to-end deep learning solution for quickly reconstructing radial simultaneous multi-slice (SMS) myocardial perfusion datasets with comparable quality to the pixel tracking spatiotemporal constrained reconstruction (PT-STCR) method.
Dynamic contrast enhanced (DCE) radial SMS myocardial perfusion data were obtained from 20 subjects who were scanned at rest and/or stress with or without ECG gating using a saturation recovery radial CAIPI turboFLASH sequence. Input to the networks consisted of complex coil combined images reconstructed using the inverse Fourier transform of undersampled radial SMS k-space data. Ground truth images were reconstructed using the PT-STCR pipeline. The performance of the residual booster 3D U-Net was tested by comparing it to state-of-the-art network architectures including MoDL, CRNN-MRI, and other U-Net variants.
Results demonstrate significant improvements in speed requiring approximately 8 seconds to reconstruct one radial SMS dataset which is approximately 200 times faster than the PT-STCR method. Images reconstructed with the residual booster 3D U-Net retain quality of ground truth PT-STCR images (0.963 SSIM/40.238 PSNR/0.147 NRMSE). The residual booster 3D U-Net has superior performance compared to existing network architectures in terms of image quality, temporal dynamics, and reconstruction time.
Residual and booster learning combined with the 3D U-Net architecture was shown to be an effective network for reconstructing high-quality images from undersampled radial SMS datasets while bypassing the reconstruction time of the PT-STCR method. |
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| Bibliography: | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 23 Jason Mendes: Conceptualization, Data Curation, Investigation, Writing – Review and Editing Ganesh Adluru: Conceptualization, Investigation, Supervision, Project Administration, Resources, Funding Acquisition, Writing – Review and Editing Johnathan Le: Conceptualization, Methodology, Software, Validation, Formal Analysis, Investigation, Data Curation, Writing – Original Draft, Writing – Review and Editing, Visualization Edward DiBella: Conceptualization, Supervision, Project Administration, Resources, Funding Acquisition, Writing – Review and Editing Author Statement Mark Ibrahim: Resources Ye Tian: Conceptualization, Data Curation, Investigation, Writing – Review and Editing Brent Wilson: Resources |
| ISSN: | 0730-725X 1873-5894 1873-5894 |
| DOI: | 10.1016/j.mri.2021.08.007 |