深度学习在医学图像重建中的研究进展

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2021-09-01 DOI:10.1016/j.imed.2021.03.003
Emmanuel Ahishakiye , Martin Bastiaan Van Gijzen , Julius Tumwiine , Ruth Wario , Johnes Obungoloch
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引用次数: 47

摘要

医学图像重建旨在以最小的成本和风险获得高质量的医学图像供临床使用。近年来,深度学习及其在医学成像,特别是图像重建中的应用受到了文献的广泛关注。本研究回顾了通过主要科学数据库(磁共振成像期刊、Google Scholar、Scopus、Science Direct、Elsevier和其他期刊出版物)以电子方式获得的记录,使用三组关键词进行检索:(1)深度学习、图像重建、医学成像;(2)医学成像,深度学习,图像重建;(3)开放科学,开放影像数据,开放软件。综述表明,基于深度学习的重建方法从定性和定量上提高了重建图像的质量。然而,深度学习技术通常在计算上是昂贵的,需要大量的训练数据集,缺乏像样的理论来解释为什么算法工作,并且存在泛化和鲁棒性问题。目前,迁移学习技术正在解决缺乏足够训练数据集的问题。
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A survey on deep learning in medical image reconstruction

Medical image reconstruction aims to acquire high-quality medical images for clinical usage at minimal cost and risk to the patients. Deep learning and its applications in medical imaging, especially in image reconstruction have received considerable attention in the literature in recent years. This study reviews records obtained electronically through the leading scientific databases (Magnetic Resonance Imaging journal, Google Scholar, Scopus, Science Direct, Elsevier, and from other journal publications) searched using three sets of keywords: (1) Deep learning, image reconstruction, medical imaging; (2) Medical imaging, Deep learning, Image reconstruction; (3) Open science, Open imaging data, Open software. The articles reviewed revealed that deep learning-based reconstruction methods improve the quality of reconstructed images qualitatively and quantitatively. However, deep learning techniques are generally computationally expensive, require large amounts of training datasets, lack decent theory to explain why the algorithms work, and have issues of generalization and robustness. The challenge of lack of enough training datasets is currently being addressed by using transfer learning techniques.

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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
期刊最新文献
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