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- Title
Deep learning–enhanced T<sub>1</sub> mapping with spatial‐temporal and physical constraint.
- Authors
Li, Yuze; Wang, Yajie; Qi, Haikun; Hu, Zhangxuan; Chen, Zhensen; Yang, Runyu; Qiao, Huiyu; Sun, Jie; Wang, Tao; Zhao, Xihai; Guo, Hua; Chen, Huijun
- Abstract
Purpose: To propose a reconstruction framework to generate accurate T1 maps for a fast MR T1 mapping sequence. Methods: A deep learning–enhanced T1 mapping method with spatial‐temporal and physical constraint (DAINTY) was proposed. This method explicitly imposed low‐rank and sparsity constraints on the multiframe T1‐weighted images to exploit the spatial‐temporal correlation. A deep neural network was used to efficiently perform T1 mapping as well as denoise and reduce undersampling artifacts. Additionally, the physical constraint was used to build a bridge between low‐rank and sparsity constraint and deep learning prior, so the benefits of constrained reconstruction and deep learning can be both available. The DAINTY method was trained on simulated brain data sets, but tested on real acquired phantom, 6 healthy volunteers, and 7 atherosclerosis patients, compared with the narrow‐band k‐space‐weighted image contrast filter conjugate‐gradient SENSE (NK‐CS) method, kt‐sparse‐SENSE (kt‐SS) method, and low‐rank plus sparsity (L+S) method with least‐squares T1 fitting and direct deep learning mapping. Results: The DAINTY method can generate more accurate T1 maps and higher‐quality T1‐weighted images compared with other methods. For atherosclerosis patients, the intraplaque hemorrhage can be successfully detected. The computation speed of DAINTY was 10 times faster than traditional methods. Meanwhile, DAINTY can reconstruct images with comparable quality using only 50% of k‐space data. Conclusion: The proposed method can provide accurate T1 maps and good‐quality T1‐weighted images with high efficiency.
- Subjects
DEEP learning; SIMULATED patients; ATHEROSCLEROSIS; COGNITIVE training; PRIOR learning
- Publication
Magnetic Resonance in Medicine, 2021, Vol 86, Issue 3, p1647
- ISSN
0740-3194
- Publication type
Article
- DOI
10.1002/mrm.28793