Department of Electronic Science, Xiamen University, Xiamen 361000, China.
Department of Electronic Science, Xiamen University, Xiamen 361000, China.
J Magn Reson. 2019 Aug;305:232-246. doi: 10.1016/j.jmr.2019.07.020. Epub 2019 Jul 9.
When using aggressive undersampling, it is difficult to recover the high quality image with reliably fine features. In this paper, we propose an enhanced recursive residual network (ERRN) that improves the basic recursive residual network with a high-frequency feature guidance, an error-correction unit and dense connections. The feature guidance is designed to predict the underlying anatomy based on image a priori learned from the label data, playing a complementary role to the residual learning. The ERRN is adapted for two important applications: compressed sensing (CS) MRI and super resolution (SR) MRI, while an application-specific error-correction unit is added into the framework, i.e. data consistency for CS-MRI and back projection for SR-MRI due to their different sampling schemes. Our proposed network was evaluated using a real-valued brain dataset, a complex-valued knee dataset, pathological brain data and in vivo rat brain data with different undersampling masks and rates. Experimental results demonstrated that ERRN presented superior reconstructions at all cases with distinctly restored structural features and highest image quality metrics compared to both the state-of-the-art convolutional neural networks and the conventional optimization-based methods, particularly for the undersampling rate over 5-fold. Thus, an excellent framework design can endow the network with a flexible architecture, fewer parameters, outstanding performances for various undersampling schemes, and reduced overfitting in generalization, which will facilitate real-time reconstruction on MRI scanners.
当使用激进的欠采样时,很难可靠地恢复具有精细特征的高质量图像。在本文中,我们提出了一种增强的递归残差网络(ERRN),该网络通过高频特征引导、误差校正单元和密集连接对基本的递归残差网络进行了改进。特征引导旨在根据从标签数据中预先学习的图像预测潜在的解剖结构,与残差学习起到互补作用。ERRN 适用于两种重要的应用:压缩感知(CS)MRI 和超分辨率(SR)MRI,同时由于它们的采样方案不同,在框架中添加了特定于应用的误差校正单元,即 CS-MRI 的数据一致性和 SR-MRI 的反向投影。我们使用真实值脑数据集、复数值膝关节数据集、病理性脑数据和不同欠采样掩模和速率的体内大鼠脑数据对提出的网络进行了评估。实验结果表明,与最先进的卷积神经网络和传统的基于优化的方法相比,ERRN 在所有情况下都表现出了优越的重建效果,具有明显恢复的结构特征和最高的图像质量指标,特别是在欠采样率超过 5 倍的情况下。因此,优秀的框架设计可以赋予网络灵活的架构、较少的参数、针对各种欠采样方案的卓越性能以及减少泛化中的过拟合,这将有助于在 MRI 扫描仪上实现实时重建。