2020
DOI: 10.1002/ett.4080
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Deep learning in medical imaging: A brief review

Abstract: Researchers have used deep learning methods for a human level or better disease identification and detection. This paper reports, in brief, the recent work in deep learning identification of diseases occurring at three unique parts of the human body: the skin, the thorax, and the eye. While earlier reviews reported on the theory, applications, and challenges of such research, what distinguishes this work from the others is the reporting and comprehensive analysis of the key results. In doing so, the paper not … Show more

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Cited by 53 publications
(23 citation statements)
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“…ResNet-50, mainly used for medical image classification 22 , is a substantially deeper and easier model to train compared to simple models such as VGGnet, and the core structure is a residual block 23 . Residual learning does not allow for error accumulation on the convolution layers but enables a better representation of the content in the convolution layers.…”
Section: Methodsmentioning
confidence: 99%
“…ResNet-50, mainly used for medical image classification 22 , is a substantially deeper and easier model to train compared to simple models such as VGGnet, and the core structure is a residual block 23 . Residual learning does not allow for error accumulation on the convolution layers but enables a better representation of the content in the convolution layers.…”
Section: Methodsmentioning
confidence: 99%
“…ResNet-50, mainly used for medical image classi cation 19 , is a substantially deeper and easier model to train compared to simple models such as VGGnet, and the core structure is a residual block 20 . Residual learning does not allow for error accumulation on the convolution layers but enables a better representation of the content in the convolution layers.…”
Section: Methodsmentioning
confidence: 99%
“…ResNet-50 solves this problem by identifying shortcut connections, skipping certain layers while providing great generalization performance with a relatively small number of parameters. Indeed, ResNet-50 has been successfully used for many medical image classification tasks [32,33]. We therefore selected it for our case as well.…”
Section: Framework For Deep-learning-based Classificationmentioning
confidence: 99%