General-purpose Deep Learning Image Denoising Based on Magnetic Resonance Imaging Physics

Description:

This technology includes a novel method to train deep learning convolution neural network model to improve the signal-noise-ratio for the magnetic resonance (MR) imaging. The novelty lies on the fact that actual MR imaging physics information is used in the deep learning training. The resulting model achieves significant signal-to-noise ratio (SNR) improved for different acceleration factors in MR imaging. The resulting model can be used for many body anatomies (e.g., brain, heart, liver, spine, etc.) to significantly improve the SNR. This solution is fast enough to be used clinically and has already been implemented on MR scanners.

Patent Information:
For Information, Contact:
Wayne Pereanu
NIH Technology Transfer
301-496-7057
wayne.pereanu@nih.gov
Inventors:
Hui Xue
Peter Kellman
Keywords:
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