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Survey of Deep Learning Applications to Medical Image Analysis

机译:深度学习应用对医学图像分析的调查

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摘要

Recently, a machine learning (ML) area called deep learning emerged in the computer-vision field and became very popular in many fields. It started from an event in late 2012, when a deep-learning approach based on a convolutional neural network (CNN) won an overwhelming victory in the best-known worldwide computer-vision competition, ImageNet Classification. Since then, researchers in many fields, including medical image analysis, have started actively participating in the explosively growing field of deep learning. In this paper, deep learning techniques and their applications to medical image analysis are surveyed. This survey overviewed 1) standard ML techniques in the computer-vision field, 2) what has changed in ML before and after the introduction of deep learning, 3) ML models in deep learning, and 4) applications of deep learning to medical image analysis. The comparisons between MLs before and after deep learning revealed that ML with feature input (or fea-ture-based ML) was dominant before the introduction of deep learning, and that the major and essential difference between ML before and after deep learning is learning image data directly without object segmentation or feature extraction; thus, it is the source of the power of deep learning, although the depth of the model is an important attribute. The survey of deep learning also revealed that there is a long history of deep-learning techniques in the class of ML with image input, except a new term, "deep learning". "Deep learning" even before the term existed, namely, the class of ML with image input was applied to various problems in medical image analysis including classification between lesions and non-lesions, classification between lesion types, segmentation of lesions or organs, and detection of lesions. ML with image input including deep learning is a very powerful, versatile technology with higher performance, which can bring the current state-of-the-art performance level of medical image analysis to the next level, and it is expected that deep learning will be the mainstream technology in medical image analysis in the next few decades. "Deep learning",or ML with image input, in medical image analysis is an explosively growing, promising field. It is expected that ML with image input will be the mainstream area in the field of medical image analysis in the next few decades.
机译:最近,在计算机视野领域中出现了一种称为深度学习的机器学习(ML)区域,并且在许多领域中非常受欢迎。它从2012年底开始的活动开始,当基于卷积神经网络(CNN)的深度学习方法赢得了在全球最着名的计算机视觉竞争中赢得了压倒性的胜利,Imagenet分类。从那时起,许多领域的研究人员在内,包括医学图像分析,已经开始积极参与爆炸性的深入学习领域。在本文中,调查了深度学习技术及其对医学图像分析的应用。这项调查概述了1)计算机视野中的标准ML技术,2)在引入深度学习之前和之后的ML在深度学习中的模型,4)深度学习应用于医学图像分析的应用程序。深度和深度学习之前和之后MLS的比较显示,在引入深度学习之前,具有特征输入(或基于FEA-TURE的ML)的ML的统治性,并且在深度学习之前和之后ML的主要和基本差异是学习形象直接数据没有对象分割或特征提取;因此,虽然模型的深度是一个重要的属性,但它是深度学习的力量。深度学习的调查还透露,除了一个新的术语“深度学习”之外,毫秒毫克深度学习技术历史悠久。即使在术语存在之前,“深度学习”也是应用具有图像输入的M1的类别应用于医学图像分析的各种问题,包括病变和非病变之间的分类,病变类型之间的分类,病变或器官的分段,以及检测病变。具有图像输入的ML包括深度学习是一种非常强大的多功能技术,性能更高,可以将目前最先进的性能水平带到下一个水平,预计将是深度学习未来几十年中医学图像分析中的主流技术。 “深度学习”,或ML与图像输入,在医学图像分析中是一种爆炸​​性的发展,有前景的领域。预计未来几十年的ML具有图像输入的ML将是医学图像分析领域的主流区域。

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