Invention Grant
- Patent Title: Denoising magnetic resonance images using unsupervised deep convolutional neural networks
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Application No.: US17605078Application Date: 2020-04-24
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Publication No.: US11954578B2Publication Date: 2024-04-09
- Inventor: Craig H Meyer , Xue Feng
- Applicant: UNIVERSITY OF VIRGINIA PATENT FOUNDATION
- Applicant Address: US VA Charlottesville
- Assignee: UNIVERSITY OF VIRGINIA PATENT FOUNDATION
- Current Assignee: UNIVERSITY OF VIRGINIA PATENT FOUNDATION
- Current Assignee Address: US VA Charlottesville
- Agency: Meunier Carlin & Curfman LLC
- International Application: PCT/US2020/029866 2020.04.24
- International Announcement: WO2020/219915A 2020.10.29
- Date entered country: 2021-10-20
- Main IPC: G06N3/045
- IPC: G06N3/045 ; A61B5/055 ; G01R33/56 ; G06N3/047 ; G06N3/088 ; G06T5/00

Abstract:
Systems and methods for denoising a magnetic resonance (MR) image utilize an unsupervised deep convolutional neural network (U-DCNN). Magnetic resonance (MR) image data of an area of interest of a subject can be acquired, which can include noisy input images that comprise noise data and noise free image data. For each of the noisy input images, iterations can be run of a converging sequence in an unsupervised deep convolutional neural network. In each iteration, parameter settings are updated; the parameter settings are used in calculating a series of image feature sets with the U-DCNN. The image feature sets predict an output image. The converging sequence of the U-DCNN is terminated before the feature sets predict a respective output image that replicates all of the noise data from the noisy input image. Based on a selected feature set, a denoised MR image of the area of interest of the subject can be output.
Public/Granted literature
- US20220188602A1 DENOISING MAGNETIC RESONANCE IMAGES USING UNSUPERVISED DEEP CONVOLUTIONAL NEURAL NETWORKS Public/Granted day:2022-06-16
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