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首页> 外文期刊>Laser Physics: An International Journal devoted to Theoretical and Experimental Laser Research and Application >Generative adversarial network-convolution neural network based breast cancer classification using optical coherence tomographic images
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Generative adversarial network-convolution neural network based breast cancer classification using optical coherence tomographic images

机译:生成对抗network-convolution神经基于网络的乳腺癌分类使用光学相干层析图像

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摘要

Currently, breast tissue images are primarily classified by pathologists, which is time-consuming and subjective. Deep learning, however, can perform this task with the utmost precision. In order to achieve an improved performance, a large number of annotated datasets are required to train the network, which is a challenging task in the medical field. In this paper, we propose an intelligent system, based on generative adversarial networks (GANs) and a convolution neural network (CNN) for the automatic classification of breast cancer, using optical coherence tomography (OCT) images. In this network, the GAN is used to generate synthetic datasets and to further utilize these synthetic datasets to increase the quantity of information, so as to improve the classification performance of the CNN. Our method is demonstrated by means of a limited set of OCT images of breast tissue. The classification performance of our method, using only the classic data increase, yielded a sensitivity level of 93.6%, with 90.8% specificity and 91.7% accuracy, based on the test datasets. By adding the synthetic data increase, the accuracy of the training datasets increased to 93.7% from 92.0%. We believe that this approach will help radiologists and pathologists to improve their diagnotic capability.
机译:目前,主要是乳房组织图像通过病理学家机密,这是耗时的和主观的。然而,可以执行这个任务以最大的精度。性能,大量的带注释的数据集需要训练网络,这是一个在医学领域具有挑战性的任务。篇论文里,我们提出一种智能系统,基于生成(甘斯)和对抗的网络卷积神经网络(CNN)乳腺癌的自动分类,使用光学相干断层扫描(OCT)图像。这个网络,用于生成氮化镓合成数据集和进一步利用这些合成数据集的数量增加信息,以提高分类CNN的性能。证明了通过一组有限的10月乳房组织的图像。性能的方法,用经典数据的增加,产生了一个敏感性水平93.6%,特异性90.8%,准确性91.7%,基于测试数据集。合成增加,数据的准确性训练数据集从93.7%增加到92.0%。我们相信这种方法会有所帮助放射科医生和病理学家改善故障诊断功能。

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