Accurate parameter estimation using scan-specific unsupervised deep
learning for relaxometry and MR fingerprinting
- URL: http://arxiv.org/abs/2112.03815v2
- Date: Wed, 8 Dec 2021 14:54:34 GMT
- Title: Accurate parameter estimation using scan-specific unsupervised deep
learning for relaxometry and MR fingerprinting
- Authors: Mengze Gao, Huihui Ye, Tae Hyung Kim, Zijing Zhang, Seohee So, Berkin
Bilgic
- Abstract summary: We propose an unsupervised convolutional neural network (CNN) for relaxation parameter estimation.
This network incorporates signal relaxation and Bloch simulations while taking advantage of residual learning and spatial relations across neighboring voxels.
- Score: 1.233122988113145
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose an unsupervised convolutional neural network (CNN) for relaxation
parameter estimation. This network incorporates signal relaxation and Bloch
simulations while taking advantage of residual learning and spatial relations
across neighboring voxels. Quantification accuracy and robustness to noise is
shown to be significantly improved compared to standard parameter estimation
methods in numerical simulations and in vivo data for multi-echo T2 and T2*
mapping. The combination of the proposed network with subspace modeling and MR
fingerprinting (MRF) from highly undersampled data permits high quality T1 and
T2 mapping.
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