XPDNet for MRI Reconstruction: an application to the 2020 fastMRI challenge
We present a new neural network, the XPDNet, for MRI reconstruction from periodically under-sampled multi-coil data. We inform the design of this network by taking best practices from MRI reconstruction and computer vision. We show that this network can achieve state-of-the-art reconstruction results, as shown by its ranking of second in the fastMRI 2020 challenge.
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Datasets
Task | Dataset | Model | Metric Name | Metric Value | Global Rank | Benchmark |
---|---|---|---|---|---|---|
MRI Reconstruction | fastMRI Brain 4x | XPDNet | SSIM | 0.9581 | # 2 | |
PSNR | 41.3 | # 1 | ||||
MRI Reconstruction | fastMRI Brain 8x | XPDNet | SSIM | 0.9408 | # 2 | |
PSNR | 38.1 | # 1 | ||||
MRI Reconstruction | fastMRI Knee 4x | XPDNet | SSIM | 0.9287 | # 2 | |
PSNR | 40.2 | # 1 | ||||
MRI Reconstruction | fastMRI Knee 8x | XPDNet | SSIM | 0.8893 | # 4 | |
PSNR | 37.2 | # 2 |