论文标题
在没有匹配的培训数据的情况下,加速3D飞行时间MRA的两阶段深度学习
Two-Stage Deep Learning for Accelerated 3D Time-of-Flight MRA without Matched Training Data
论文作者
论文摘要
飞行时间磁共振血管造影(TOF-MRA)是可视化血管的最广泛使用的非对比度MR成像方法之一,但由于3-D体积采集,高度加速的采集是必要的。因此,从不足的TOF-MRA中进行的高质量重建是深度学习的重要研究主题。但是,大多数现有的深度学习工作都需要匹配的参考数据进行监督培训,这通常很难获得。通过从最佳运输理论中扩展对自行车的最新理论理解,在这里,我们提出了一种新型的两阶段无监督的深度学习方法,该方法由沿冠状平面的多层型重建网络组成,然后是沿轴向平面的多平面细化网络。具体而言,第一个网络在正方形(SSO)域的平方根中进行了训练,以实现高质量的平行图像重建,而第二次改进网络旨在有效地利用双头最大型号歧视器来有效学习高度激活血流的特征。广泛的实验表明,没有匹配参考的提议的学习过程超过了最新的压缩感应(CS)基于最新的方法的性能,并且比监督的学习方法提供了可比甚至更好的结果。
Time-of-flight magnetic resonance angiography (TOF-MRA) is one of the most widely used non-contrast MR imaging methods to visualize blood vessels, but due to the 3-D volume acquisition highly accelerated acquisition is necessary. Accordingly, high quality reconstruction from undersampled TOF-MRA is an important research topic for deep learning. However, most existing deep learning works require matched reference data for supervised training, which are often difficult to obtain. By extending the recent theoretical understanding of cycleGAN from the optimal transport theory, here we propose a novel two-stage unsupervised deep learning approach, which is composed of the multi-coil reconstruction network along the coronal plane followed by a multi-planar refinement network along the axial plane. Specifically, the first network is trained in the square-root of sum of squares (SSoS) domain to achieve high quality parallel image reconstruction, whereas the second refinement network is designed to efficiently learn the characteristics of highly-activated blood flow using double-headed max-pool discriminator. Extensive experiments demonstrate that the proposed learning process without matched reference exceeds performance of state-of-the-art compressed sensing (CS)-based method and provides comparable or even better results than supervised learning approaches.