Multi-Domain Neumann Network with Sensitivity Maps for Parallel MRI Reconstruction
Abstract
:1. Introduction
2. Related Work
2.1. Parallel MRI Reconstruction Formulation
2.2. Deep Learning for Parallel MRI Reconstruction
2.3. Neumann Network
3. Multi-Domain Neumann Network with Sensitivity Maps
3.1. Sensitivity Maps Estimation
3.2. MR Image Reconstruction
3.3. K-Space Domain Accumulation
4. Experiments
4.1. Implementation Details
4.2. Results
4.3. The Amount of Data
4.4. Ablation Studies
- 1
- Sensitivity maps estimation: A comparison of the performance according to the sensitivity maps estimated by ESPIRiT or ;
- 2
- Accumulating domain: A comparison of the performance according to the domain where data accumulates in the skip connections, either in the image domain or the frequency domain;
- 3
- Sharing network parameters: A comparison of the performance according to paramaters that were shared with U-Net for the CNN-based regularization block in each iteration;
4.4.1. Sensitivity Maps Estimation
4.4.2. Accumulating Domain
4.4.3. Sharing the Network Parameters
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Model | 2X Acceleration Factor | 4X Acceleration Factor | 8X Acceleration Factor | |||
---|---|---|---|---|---|---|
NMSE | SSIM | NMSE | SSIM | NMSE | SSIM | |
Zero-filled | 0.0133 | 0.9084 | 0.0360 | 0.8079 | 0.0913 | 0.7003 |
GRAPPA | 0.0049 | 0.9247 | 0.0584 | 0.6823 | 0.0939 | 0.5848 |
U-Net | 0.0020 | 0.9696 | 0.0045 | 0.9501 | 0.0102 | 0.9259 |
Neumann network | 0.0013 | 0.9737 | 0.0028 | 0.9579 | 0.0069 | 0.9362 |
MDNNSM | 0.0012 | 0.9747 | 0.0023 | 0.9612 | 0.0051 | 0.9441 |
Model | 2X Acceleration Factor | 4X Acceleration Factor | 8X Acceleration Factor | |||
---|---|---|---|---|---|---|
NMSE | SSIM | NMSE | SSIM | NMSE | SSIM | |
MDNNSM with ESPRiT | 0.0014 | 0.9711 | 0.0030 | 0.9514 | 0.0068 | 0.9268 |
MDNNSM with | 0.0012 | 0.9747 | 0.0023 | 0.9612 | 0.0051 | 0.9441 |
Model | 2X Acceleration Factor | 4X Acceleration Factor | 8X Acceleration Factor | |||
---|---|---|---|---|---|---|
NMSE | SSIM | NMSE | SSIM | NMSE | SSIM | |
MDNNSM Image sum | 0.0014 | 0.9710 | 0.0024 | 0.9599 | 0.0050 | 0.9439 |
MDNNSM K-space sum | 0.0012 | 0.9747 | 0.0023 | 0.9612 | 0.0051 | 0.9441 |
Model | 2X Acceleration Factor | 4X Acceleration Factor | 8X Acceleration Factor | |||
---|---|---|---|---|---|---|
NMSE | SSIM | NMSE | SSIM | NMSE | SSIM | |
MDNNSM with parameter sharing | 0.0013 | 0.9745 | 0.0025 | 0.9600 | 0.0060 | 0.9404 |
MDNNSM without parameter sharing | 0.0012 | 0.9747 | 0.0023 | 0.9612 | 0.0051 | 0.9441 |
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Lee, J.-H.; Kang, J.; Oh, S.-H.; Ye, D.H. Multi-Domain Neumann Network with Sensitivity Maps for Parallel MRI Reconstruction. Sensors 2022, 22, 3943. https://doi.org/10.3390/s22103943
Lee J-H, Kang J, Oh S-H, Ye DH. Multi-Domain Neumann Network with Sensitivity Maps for Parallel MRI Reconstruction. Sensors. 2022; 22(10):3943. https://doi.org/10.3390/s22103943
Chicago/Turabian StyleLee, Jun-Hyeok, Junghwa Kang, Se-Hong Oh, and Dong Hye Ye. 2022. "Multi-Domain Neumann Network with Sensitivity Maps for Parallel MRI Reconstruction" Sensors 22, no. 10: 3943. https://doi.org/10.3390/s22103943