论文标题
通过深度学习,用于推出MR的虚拟线圈增强技术
Virtual Coil Augmentation Technology for MR Coil Extrapolation via Deep Learning
论文作者
论文摘要
磁共振成像(MRI)是一种广泛使用的医学成像方式。但是,由于硬件,扫描时间和吞吐量的局限性,获得高质量的MR图像通常在临床上具有挑战性。在本文中,我们提出了一种使用人工智能扩展渠道以实现生成虚拟线圈的目标的方法。我们工作的主要特征是利用虚拟技术在图像和K空间域中扩展/推断接收线圈。通过通道扩展形成的高维信息用作先验信息,以改善并行成像的重建效果。网络设计中纳入了两个主要组件,即可变的增强技术和正方形(SOS)目标函数。可变增强为网络提供了更高维的先验信息,这对于网络提取数据的深度特征信息很有帮助。 SOS目标函数被用来解决K空间数据训练的不足,同时加快收敛速度。实验结果证明了其在MR图像的超分辨率和加速平行成像重建方面的巨大潜力。
Magnetic resonance imaging (MRI) is a widely used medical imaging modality. However, due to the limitations in hardware, scan time, and throughput, it is often clinically challenging to obtain high-quality MR images. In this article, we propose a method of using artificial intelligence to expand the channel to achieve the goal of generating the virtual coils. The main characteristic of our work is utilizing dummy variable technology to expand/extrapolate the receive coils in both image and k-space domains. The high-dimensional information formed by channel expansion is used as the prior information to improve the reconstruction effect of parallel imaging. Two main components are incorporated into the network design, namely variable augmentation technology and sum of squares (SOS) objective function. Variable augmentation provides the network with more high-dimensional prior information, which is helpful for the network to extract the deep feature information of the data. The SOS objective function is employed to solve the deficiency of k-space data training while speeding up convergence. Experimental results demonstrated its great potentials in super-resolution of MR images and accelerated parallel imaging reconstruction.