k-Space Deep Learning for Accelerated MRI
About
The annihilating filter-based low-rank Hankel matrix approach (ALOHA) is one of the state-of-the-art compressed sensing approaches that directly interpolates the missing k-space data using low-rank Hankel matrix completion. The success of ALOHA is due to the concise signal representation in the k-space domain thanks to the duality between structured low-rankness in the k-space domain and the image domain sparsity. Inspired by the recent mathematical discovery that links convolutional neural networks to Hankel matrix decomposition using data-driven framelet basis, here we propose a fully data-driven deep learning algorithm for k-space interpolation. Our network can be also easily applied to non-Cartesian k-space trajectories by simply adding an additional regridding layer. Extensive numerical experiments show that the proposed deep learning method consistently outperforms the existing image-domain deep learning approaches.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| MRI Reconstruction | fastMRI 4X acceleration (test) | PSNR31 | 32 | |
| MRI Reconstruction | HCP | PSNR (dB)45.1545 | 15 | |
| Image Inpainting | Urban100 (test) | PSNR18.9 | 15 | |
| Parallel MRI Reconstruction | 8-coil knee k-space Cartesian trajectory R=3 | PSNR36.9931 | 8 | |
| Sparse-View CT Reconstruction | CT100 (test) | PSNR29.2 | 5 | |
| MRI Reconstruction | Single-coil knee MRI | PSNR (dB)35.9586 | 4 | |
| Parallel MRI Reconstruction | 8-coil HCP dataset (radial trajectory, R=6) (test) | PSNR (dB)50.8136 | 4 | |
| Parallel MRI Reconstruction | 8-coil parallel imaging Spiral trajectory, R=4 (test) | PSNR (dB)53.5643 | 4 | |
| MRI Reconstruction | HCP radial, R=6, single-coil (test) | PSNR (dB)42.8454 | 3 |