Radiology and Clinical Neuroscience, Hotchkiss Brain Institute, University of Calgary, Calgary, AB, Canada; Seaman Family MR Research Centre, Foothills Medical Center, Calgary, AB, Canada.
Radiology and Clinical Neuroscience, Hotchkiss Brain Institute, University of Calgary, Calgary, AB, Canada; Seaman Family MR Research Centre, Foothills Medical Center, Calgary, AB, Canada; Calgary Image Processing and Analysis Center (CIPAC), Foothills Medical Centre, Calgary, AB, Canada.
Magn Reson Imaging. 2020 Sep;71:140-153. doi: 10.1016/j.mri.2020.06.002. Epub 2020 Jun 17.
The U-net is a deep-learning network model that has been used to solve a number of inverse problems. In this work, the concatenation of two-element U-nets, termed the W-net, operating in k-space (K) and image (I) domains, were evaluated for multi-channel magnetic resonance (MR) image reconstruction. The two-element network combinations were evaluated for the four possible image-k-space domain configurations: a) W-net II, b) W-net KK, c) W-net IK, and d) W-net KI. Selected four element (WW-nets) and six element (WWW-nets) networks were also examined. Two configurations of each network were compared: 1) each coil channel was processed independently, and 2) all channels were processed simultaneously. One hundred and eleven volumetric, T1-weighted, 12-channel coil k-space datasets were used in the experiments. Normalized root mean squared error, peak signal-to-noise ratio and visual information fidelity were used to assess the reconstructed images against the fully sampled reference images. Our results indicated that networks that operate solely in the image domain were better when independently processing individual channels of multi-channel data. Dual-domain methods were better when simultaneously reconstructing all channels of multi-channel data. In addition, the best cascade of U-nets performed better (p < 0.01) than the previously published, state-of-the-art Deep Cascade and Hybrid Cascade models in three out of four experiments.
U 形网络是一种深度学习网络模型,已被用于解决许多反问题。在这项工作中,评估了两个二元 U 形网络的串联,称为 W 形网络,它们在 k 空间 (K) 和图像 (I) 域中运行,用于多通道磁共振 (MR) 图像重建。评估了两种二元网络组合在四个可能的图像 - k 空间域配置中的应用:a)W 形网络 II,b)W 形网络 KK,c)W 形网络 IK,和 d)W 形网络 KI。还研究了选定的四个元素 (WW 网络) 和六个元素 (WWW 网络) 网络。比较了每个网络的两种配置:1)每个线圈通道独立处理,2)所有通道同时处理。实验中使用了 111 个容积、T1 加权、12 通道线圈 k 空间数据集。归一化均方根误差、峰值信噪比和视觉信息保真度用于评估重建图像与完全采样参考图像的比较。我们的结果表明,当独立处理多通道数据的各个通道时,仅在图像域中运行的网络更好。当同时重建多通道数据的所有通道时,双域方法更好。此外,在四个实验中的三个实验中,最好的 U 形网络级联在三个实验中优于先前发表的最先进的深度级联和混合级联模型(p<0.01)。