Active MR k-space Sampling with Reinforcement Learning
About
Deep learning approaches have recently shown great promise in accelerating magnetic resonance image (MRI) acquisition. The majority of existing work have focused on designing better reconstruction models given a pre-determined acquisition trajectory, ignoring the question of trajectory optimization. In this paper, we focus on learning acquisition trajectories given a fixed image reconstruction model. We formulate the problem as a sequential decision process and propose the use of reinforcement learning to solve it. Experiments on a large scale public MRI dataset of knees show that our proposed models significantly outperform the state-of-the-art in active MRI acquisition, over a large range of acceleration factors.
Luis Pineda, Sumana Basu, Adriana Romero, Roberto Calandra, Michal Drozdzal• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| MRI Acquisition | Hip MRI 3T simulation (test) | SSIM0.6145 | 13 | |
| MRI Reconstruction | Simulated hip MRI (test) | SSIM0.6248 | 13 | |
| Accelerated MRI reconstruction and metal artifact reduction | FastMRI-based Metal Artifacts Dataset (test) | SSIM53.05 | 7 |
Showing 3 of 3 rows