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首页> 外文期刊>Journal of medical Internet research >Skin Cancer Classification Using Convolutional Neural Networks: Systematic Review
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Skin Cancer Classification Using Convolutional Neural Networks: Systematic Review

机译:使用卷积神经网络进行皮肤癌分类:系统评价

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BackgroundState-of-the-art classifiers based on convolutional neural networks (CNNs) were shown to classify images of skin cancer on par with dermatologists and could enable lifesaving and fast diagnoses, even outside the hospital via installation of apps on mobile devices. To our knowledge, at present there is no review of the current work in this research area.ObjectiveThis study presents the first systematic review of the state-of-the-art research on classifying skin lesions with CNNs. We limit our review to skin lesion classifiers. In particular, methods that apply a CNN only for segmentation or for the classification of dermoscopic patterns are not considered here. Furthermore, this study discusses why the comparability of the presented procedures is very difficult and which challenges must be addressed in the future.MethodsWe searched the Google Scholar, PubMed, Medline, ScienceDirect, and Web of Science databases for systematic reviews and original research articles published in English. Only papers that reported sufficient scientific proceedings are included in this review.ResultsWe found 13 papers that classified skin lesions using CNNs. In principle, classification methods can be differentiated according to three principles. Approaches that use a CNN already trained by means of another large dataset and then optimize its parameters to the classification of skin lesions are the most common ones used and they display the best performance with the currently available limited datasets.ConclusionsCNNs display a high performance as state-of-the-art skin lesion classifiers. Unfortunately, it is difficult to compare different classification methods because some approaches use nonpublic datasets for training and/or testing, thereby making reproducibility difficult. Future publications should use publicly available benchmarks and fully disclose methods used for training to allow comparability.
机译:背景技术展示了基于卷积神经网络(CNN)的最新分类器,可以与皮肤科医生对皮肤癌的图像进行分类,即使在医院外,也可以通过在移动设备上安装应用程序来实现救生和快速诊断。据我们所知,目前尚无有关该研究领域的当前工作的综述。目的本研究提出了有关用CNN进行皮肤病变分类的最新研究的第一个系统综述。我们的审查仅限于皮肤病变分类器。特别是,此处未考虑仅将CNN用于分割或皮肤镜模式分类的方法。此外,本研究还讨论了为什么所提出的程序的可比性非常困难,以及将来必须解决哪些挑战。用英语讲。结果我们发现了13篇使用CNN对皮肤病变进行分类的论文。原则上,分类方法可以根据三个原则进行区分。使用已经通过另一个大型数据集进行训练的CNN然后优化其参数以对皮肤病变进行分类的方法是最常用的方法,它们在当前可用的有限数据集中显示出最佳性能。最先进的皮肤病变分类器。不幸的是,由于某些方法将非公开数据集用于训练和/或测试,因此很难比较不同的分类方法,从而使重现性变得困难。将来的出版物应使用可公开获得的基准,并充分披露用于培训的方法,以实现可比性。

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