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Using deep learning techniques in medical imaging: a systematic review of applications on CT and PET

机译:医学成像中的深度学习技术:对CT和PET的应用系统综述

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Medical imaging is a rich source of invaluable information necessary for clinical judgements. However, the analysis of those exams is not a trivial assignment. In recent times, the use of deep learning (DL) techniques, supervised or unsupervised, has been empowered and it is one of the current research key areas in medical image analysis. This paper presents a survey of the use of DL architectures in computer-assisted imaging contexts, attending two different image modalities: the actively studied computed tomography and the under-studied positron emission tomography, as well as the combination of both modalities, which has been an important landmark in several decisions related to numerous diseases. In the making of this review, we analysed over 180 relevant studies, published between 2014 and 2019, that are sectioned by the purpose of the research and the imaging modality type. We conclude by addressing research issues and suggesting future directions for further improvement. To our best knowledge, there is no previous work making a review of this issue.
机译:医学成像是临床判断所必需的丰富信息的丰富来源。但是,这些考试的分析不是琐碎的任务。最近,使用深度学习(DL)技术,监督或无监督,已经有权,并且是医学图像分析中的当前研究关键领域之一。本文介绍了在计算机辅助成像背景下使用DL架构的调查,参加了两个不同的图像方式:积极研究的计算机断层扫描和所研究的正电子发射断层扫描,以及两种方式的组合与众多疾病有关的几项决策中的一个重要地标。在制定本综述中,我们分析了超过180项相关研究,2014年至2019年在2014年至2019年之间,这是通过研究和成像模型类型的目的分开的。我们通过解决研究问题并建议进一步改进的未来方向来结束。为了我们的最佳知识,之前没有任何作品对此问题进行了审查。

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