State Key Laboratory of Magnetic Resonance and Atomic and Molecular Physics, National Center for Magnetic Resonance in Wuhan, Wuhan Institute of Physics and Mathematics, Chinese Academy of Sciences - Wuhan National Laboratory for Optoelectronics, Wuhan, P. R. China.
University of Chinese Academy of Sciences, Beijing, P. R. China.
Magn Reson Med. 2019 Dec;82(6):2273-2285. doi: 10.1002/mrm.27889. Epub 2019 Jul 19.
To fast and accurately reconstruct human lung gas MRI from highly undersampled k-space using deep learning.
The scheme was comprised of coarse-to-fine nets (C-net and F-net). Zero-filling images from retrospectively undersampled k-space at an acceleration factor of 4 were used as input for C-net, and then output intermediate results which were fed into F-net. During training, a L2 loss function was adopted in C-net, while a function that united L2 loss with proton prior knowledge was used in F-net. The 871 hyperpolarized Xe pulmonary ventilation images from 72 volunteers were randomly arranged as training (90%) and testing (10%) data. Ventilation defect percentage comparisons were implemented using a paired 2-tailed Student's t-test and correlation analysis. Furthermore, prospective acquisitions were demonstrated in 5 healthy subjects and 5 asymptomatic smokers.
Each image with size of 96 × 84 could be reconstructed within 31 ms (mean absolute error was 4.35% and structural similarity was 0.7558). Compared with conventional compressed sensing MRI, the mean absolute error decreased by 17.92%, but the structural similarity increased by 6.33%. For ventilation defect percentage, there were no significant differences between the fully sampled and reconstructed images through the proposed algorithm (P = 0.932), but had significant correlations (r = 0.975; P < 0.001). The prospectively undersampled results validated a good agreement with fully sampled images, with no significant differences in ventilation defect percentage but significantly higher signal-to-noise ratio values.
The proposed algorithm outperformed classical undersampling methods, paving the way for future use of deep learning in real-time and accurate reconstruction of gas MRI.
利用深度学习技术,从高度欠采样的 k 空间中快速准确地重建人类肺部气体 MRI。
该方案由粗到精网络(C 网络和 F 网络)组成。将回顾性欠采样的 k 空间中的零填充图像(加速因子为 4)用作 C 网络的输入,然后输出中间结果,再将其输入 F 网络。在训练过程中,C 网络采用 L2 损失函数,而 F 网络采用联合 L2 损失和质子先验知识的函数。从 72 名志愿者中随机排列了 871 张 hyperpolarized Xe 肺部通气图像,作为训练(90%)和测试(10%)数据。采用配对双侧学生 t 检验和相关性分析比较通气缺陷百分比。此外,还在 5 名健康受试者和 5 名无症状吸烟者中进行了前瞻性采集。
每个 96×84 大小的图像都可以在 31ms 内重建(平均绝对误差为 4.35%,结构相似度为 0.7558)。与传统的压缩感知 MRI 相比,平均绝对误差降低了 17.92%,但结构相似度提高了 6.33%。对于通气缺陷百分比,通过所提出的算法,完全采样和重建图像之间没有显著差异(P=0.932),但具有显著相关性(r=0.975;P<0.001)。前瞻性欠采样结果与完全采样图像吻合良好,通气缺陷百分比无显著差异,但信号噪声比显著升高。
所提出的算法优于经典的欠采样方法,为深度学习在气体 MRI 的实时、准确重建中的未来应用铺平了道路。