Knoll Florian, Hammernik Kerstin, Zhang Chi, Moeller Steen, Pock Thomas, Sodickson Daniel K, Akçakaya Mehmet
F. Knoll and D. K. Sodickson are with the Center for Biomedical Imaging, Department of Radiology, New York University. K. Hammernik is with the Department of Computing, Imperial College London. T. Pock is with the Institute of Computer Graphics and Vision, Graz University of Technology. C. Zhang and M. Akçakaya are with the Department of Electrical and Computer Engineering, and Center for Magnetic Resonance Research, University of Minnesota, Minneapolis, MN. S. Moeller is with the Center for Magnetic Resonance Research, University of Minnesota, Minneapolis, MN.
IEEE Signal Process Mag. 2020 Jan;37(1):128-140. doi: 10.1109/MSP.2019.2950640. Epub 2020 Jan 20.
Following the success of deep learning in a wide range of applications, neural network-based machine learning techniques have received interest as a means of accelerating magnetic resonance imaging (MRI). A number of ideas inspired by deep learning techniques from computer vision and image processing have been successfully applied to non-linear image reconstruction in the spirit of compressed sensing for both low dose computed tomography and accelerated MRI. The additional integration of multi-coil information to recover missing k-space lines in the MRI reconstruction process, is still studied less frequently, even though it is the de-facto standard for currently used accelerated MR acquisitions. This manuscript provides an overview of the recent machine learning approaches that have been proposed specifically for improving parallel imaging. A general background introduction to parallel MRI is given that is structured around the classical view of image space and k-space based methods. Both linear and non-linear methods are covered, followed by a discussion of recent efforts to further improve parallel imaging using machine learning, and specifically using artificial neural networks. Image-domain based techniques that introduce improved regularizers are covered as well as k-space based methods, where the focus is on better interpolation strategies using neural networks. Issues and open problems are discussed as well as recent efforts for producing open datasets and benchmarks for the community.
随着深度学习在广泛应用中取得成功,基于神经网络的机器学习技术作为加速磁共振成像(MRI)的一种手段受到了关注。受计算机视觉和图像处理中的深度学习技术启发的一些想法已成功应用于低剂量计算机断层扫描和加速MRI的压缩感知精神下的非线性图像重建。在MRI重建过程中额外整合多线圈信息以恢复缺失的k空间线,尽管这是当前使用的加速MR采集的实际标准,但研究仍然较少。本手稿概述了最近专门为改进并行成像而提出的机器学习方法。给出了并行MRI的一般背景介绍,其围绕基于图像空间和k空间的经典方法构建。涵盖了线性和非线性方法,随后讨论了最近使用机器学习,特别是使用人工神经网络进一步改进并行成像的努力。介绍改进正则化器的基于图像域的技术以及基于k空间的方法也被涵盖,其中重点是使用神经网络的更好插值策略。讨论了问题和开放问题以及最近为社区生成开放数据集和基准的努力。