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首页> 外文期刊>Neurocomputing >EMS-Net: Ensemble of Multiscale Convolutional Neural Networks for Classification of Breast Cancer Histology Images
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EMS-Net: Ensemble of Multiscale Convolutional Neural Networks for Classification of Breast Cancer Histology Images

机译:EMS-Net:用于乳腺癌组织学图像分类的多尺度卷积神经网络集成

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Histology images analysis resulted from needle biopsy serves as the gold standard for breast cancer diagnosis. Deep learning-based classification of breast tissues in histology images, however, is less accurate, due to the lack of adequate training data and ignoring the multiscale structural and textural information. In this paper, we propose the Ensemble of MultiScale convolutional neural Networks (EMS-Net) to classify hematoxylin-eosin stained breast histopathological microscopy images into four categories, including normal tissue, benign lesion, in situ carcinoma, invasive carcinoma. We first convert each image to multiple scales, and then use the training patches cropped and augmented at each scale to fine-tune the pre-trained DenseNet-161, ResNet-152, and ResNet-101, respectively. We find that a combination of three fine-tuned models is more accurate than other combinations, and use them to form an ensemble model. We evaluated our algorithm against three recent methods on the BACH challenge dataset. It shows that the proposed EMS-Net algorithm achieved an accuracy of 91.75 +/- 2.32% in the five-fold cross validation using 400 training images, which is higher than the accuracy of other three algorithms, and also achieved an accuracy of 90.00% in the online verification using 100 testing images. (C) 2019 Elsevier B.V. All rights reserved.
机译:穿刺活检的组织学图像分析是诊断乳腺癌的金标准。但是,由于缺乏足够的训练数据并且忽略了多尺度的结构和纹理信息,因此在组织学图像中对乳房组织进行基于深度学习的分类不太准确。在本文中,我们提出了多尺度卷积神经网络集成(EMS-Net),将苏木精-伊红染色的乳腺组织病理学显微镜图像分为四个类别,包括正常组织,良性病变,原位癌,浸润性癌。我们首先将每个图像转换为多个比例,然后使用在每个比例上裁剪和增强的训练补丁分别对预先训练的DenseNet-161,ResNet-152和ResNet-101进行微调。我们发现,三个微调模型的组合比其他组合更准确,并使用它们来形成整体模型。我们针对BACH挑战数据集上的三种最新方法评估了我们的算法。结果表明,所提出的EMS-Net算法在使用400张训练图像进行五重交叉验证时,达到91.75 +/- 2.32%的精度,高于其他三种算法的精度,还达到了90.00%的精度。使用100张测试图像进​​行在线验证。 (C)2019 Elsevier B.V.保留所有权利。

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