Known operator learning and hybrid machine learning in medical imaging—a review of the past, the present, and the future

IF 5 Q1 ENGINEERING, BIOMEDICAL Progress in biomedical engineering (Bristol, England) Pub Date : 2021-08-10 DOI:10.1088/2516-1091/ac5b13
Andreas Maier, H. Köstler, M. Heisig, P. Krauss, S. Yang
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引用次数: 19

Abstract

In this article, we perform a review of the state-of-the-art of hybrid machine learning in medical imaging. We start with a short summary of the general developments of the past in machine learning and how general and specialized approaches have been in competition in the past decades. A particular focus will be the theoretical and experimental evidence pro and contra hybrid modelling. Next, we inspect several new developments regarding hybrid machine learning with a particular focus on so-called known operator learning and how hybrid approaches gain more and more momentum across essentially all applications in medical imaging and medical image analysis. As we will point out by numerous examples, hybrid models are taking over in image reconstruction and analysis. Even domains such as physical simulation and scanner and acquisition design are being addressed using machine learning grey box modelling approaches. Towards the end of the article, we will investigate a few future directions and point out relevant areas in which hybrid modelling, meta learning, and other domains will likely be able to drive the state-of-the-art ahead.
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医学成像中的已知算子学习和混合机器学习——回顾过去、现在和未来
在本文中,我们对医学成像中混合机器学习的最新进展进行了回顾。我们首先简要总结一下过去机器学习的一般发展,以及过去几十年来通用和专业方法的竞争情况。一个特别的焦点将是理论和实验证据支持和反对混合建模。接下来,我们考察了关于混合机器学习的几个新发展,特别关注所谓的已知算子学习,以及混合方法如何在医学成像和医学图像分析的所有应用中获得越来越多的动力。正如我们将通过许多例子指出的那样,混合模型正在接管图像重建和分析。甚至在物理仿真、扫描仪和采集设计等领域,也在使用机器学习灰盒建模方法进行解决。在文章的最后,我们将研究几个未来的方向,并指出混合建模、元学习和其他领域可能推动最先进技术发展的相关领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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