UCL Centre for Cardiovascular Imaging, University College London, London WC1N 1EH, United Kingdom.
University of Oulu, Research Unit of Mathematical Sciences, Oulu, Finland; Department of Computer Science, University College London, London WC1E 6BT, United Kingdom.
Phys Med. 2021 Mar;83:79-87. doi: 10.1016/j.ejmp.2021.02.020. Epub 2021 Mar 13.
Magnetic Resonance Imaging (MRI) plays a vital role in diagnosis, management and monitoring of many diseases. However, it is an inherently slow imaging technique. Over the last 20 years, parallel imaging, temporal encoding and compressed sensing have enabled substantial speed-ups in the acquisition of MRI data, by accurately recovering missing lines of k-space data. However, clinical uptake of vastly accelerated acquisitions has been limited, in particular in compressed sensing, due to the time-consuming nature of the reconstructions and unnatural looking images. Following the success of machine learning in a wide range of imaging tasks, there has been a recent explosion in the use of machine learning in the field of MRI image reconstruction. A wide range of approaches have been proposed, which can be applied in k-space and/or image-space. Promising results have been demonstrated from a range of methods, enabling natural looking images and rapid computation. In this review article we summarize the current machine learning approaches used in MRI reconstruction, discuss their drawbacks, clinical applications, and current trends.
磁共振成像(MRI)在许多疾病的诊断、治疗和监测中起着至关重要的作用。然而,它是一种固有速度较慢的成像技术。在过去的 20 年中,并行成像、时间编码和压缩感知技术通过准确地恢复缺失的 k 空间数据行,使 MRI 数据的采集速度大大提高。然而,由于重建时间长且图像不自然,广泛加速采集的临床应用受到限制,特别是在压缩感知中。在广泛的成像任务中机器学习取得成功之后,机器学习在 MRI 图像重建领域的应用最近也出现了爆炸式增长。已经提出了广泛的方法,可以应用于 k 空间和/或图像空间。从一系列方法中已经证明了有希望的结果,能够实现自然的图像和快速的计算。在这篇综述文章中,我们总结了目前在 MRI 重建中使用的机器学习方法,讨论了它们的缺点、临床应用和当前的趋势。