Pal Arghya, Rathi Yogesh
Department of Psychiatry and Radiology, Harvard Medical School, Boston, MA, USA.
J Mach Learn Biomed Imaging. 2022 Mar;1. Epub 2022 Mar 11.
Following the success of deep learning in a wide range of applications, neural network-based machine-learning techniques have received significant interest for accelerating magnetic resonance imaging (MRI) acquisition and reconstruction strategies. A number of ideas inspired by deep learning techniques for computer vision and image processing have been successfully applied to nonlinear image reconstruction in the spirit of compressed sensing for accelerated MRI. Given the rapidly growing nature of the field, it is imperative to consolidate and summarize the large number of deep learning methods that have been reported in the literature, to obtain a better understanding of the field in general. This article provides an overview of the recent developments in neural-network based approaches that have been proposed specifically for improving parallel imaging. A general background and introduction to parallel MRI is also given from a classical view of k-space based reconstruction methods. Image domain based techniques that introduce improved regularizers are covered along with k-space based methods which focus on better interpolation strategies using neural networks. While the field is rapidly evolving with plenty of papers published each year, in this review, we attempt to cover broad categories of methods that have shown good performance on publicly available data sets. Limitations and open problems are also discussed and recent efforts for producing open data sets and benchmarks for the community are examined.
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在加速磁共振成像(MRI)采集和重建策略方面引起了极大关注。受计算机视觉和图像处理深度学习技术启发的一些想法已成功应用于加速MRI的压缩感知精神下的非线性图像重建。鉴于该领域的快速发展,有必要整合和总结文献中报道的大量深度学习方法,以便总体上更好地理解该领域。本文概述了专门为改进并行成像而提出的基于神经网络方法的最新进展。还从基于k空间的重建方法的经典视角给出了并行MRI的一般背景和介绍。涵盖了引入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,后者侧重于使用神经网络的更好插值策略。虽然该领域每年都有大量论文发表,发展迅速,但在本综述中,我们试图涵盖在公开可用数据集上表现良好的广泛方法类别。还讨论了局限性和开放问题,并审视了社区近期为生成开放数据集和基准所做的努力。