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BCDnet: Parallel heterogeneous eight-class classification model of breast pathology

机译:BCDNet:乳房病理学的平行异构八类分类模型

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Breast cancer is the cancer with the highest incidence of malignant tumors in women, which seriously endangers women’s health. With the help of computer vision technology, it has important application value to automatically classify pathological tissue images to assist doctors in rapid and accurate diagnosis. Breast pathological tissue images have complex and diverse characteristics, and the medical data set of breast pathological tissue images is small, which makes it difficult to automatically classify breast pathological tissues. In recent years, most of the researches have focused on the simple binary classification of benign and malignant, which cannot meet the actual needs for classification of pathological tissues. Therefore, based on deep convolutional neural network, model ensembleing, transfer learning, feature fusion technology, this paper designs an eight-class classification breast pathology diagnosis model BCDnet. A user inputs the patient’s breast pathological tissue image, and the model can automatically determine what the disease is (Adenosis, Fibroadenoma, Tubular Adenoma, Phyllodes Tumor, Ductal Carcinoma, Lobular Carcinoma, Mucinous Carcinoma or Papillary Carcinoma). The model uses the VGG16 convolution base and Resnet50 convolution base as the parallel convolution base of the model. Two convolutional bases (VGG16 convolutional base and Resnet50 convolutional base) obtain breast tissue image features from different fields of view. After the information output by the fully connected layer of the two convolutional bases is fused, it is classified and output by the SoftMax function. The model experiment uses the publicly available BreaKHis data set. The number of samples of each class in the data set is extremely unevenly distributed. Compared with the binary classification, the number of samples in each class of the eight-class classification is also smaller. Therefore, the image segmentation method is used to expand the data set and the non-repeated random cropping method is used to balance the data set. Based on the balanced data set and the unbalanced data set, the BCDnet model, the pre-trained model Resnet50+ fine-tuning, and the pre-trained model VGG16+ fine-tuning are used for multiple comparison experiments. In the comparison experiment, the BCDnet model performed outstandingly, and the correct recognition rate of the eight-class classification model is higher than 98%. The results show that the model proposed in this paper and the method of improving the data set are reasonable and effective.
机译:乳腺癌是癌症的癌症,妇女的恶性肿瘤发病率最高,这严重危及妇女的健康。在计算机视觉技术的帮助下,它具有重要的应用价值,以自动对病理组织图像进行分类,以帮助医生快速准确诊断。乳房病理组织图像具有复杂和不同的特性,并且乳房病理组织图像的医学数据集很小,这使得难以自动分类乳房病理组织。近年来,大多数研究都集中在良性和恶性的简单二进制分类,这不能满足病理组织分类的实际需求。因此,基于深度卷积神经网络,型号集合,转移学习,特征融合技术,本文设计了八级分类乳房病理诊断模型BCDNet。用户输入患者的乳房病理组织图像,并且该模型可以自动确定疾病是什么(腺度,纤维腺瘤,管状腺瘤,植物肿瘤,导管癌,小叶癌,粘液癌或乳头状癌)。该模型使用VGG16卷积基础和Reset50卷积基础作为模型的并行卷积基础。两个卷积底座(VGG16卷积基础和Reset50卷积底座)从不同的视野中获得乳房组织图像特征。在融合两个卷积基地的完全连接层的信息之后,SoftMax函数被分类和输出。模型实验使用公开的Breakhis数据集。数据集中的每个类的样本数量非常不均匀地分布。与二进制分类相比,八级分类中的每种类别中的样本数量也更小。因此,使用图像分割方法展开数据集,并且使用非重复的随机裁剪方法来平衡数据集。基于平衡数据集和不平衡数据集,BCDNet模型,预先培训的模型Reset50 +微调,以及预先培训的型号VGG16 +微调用于多个比较实验。在比较实验中,BCDnet模型突出地执行,八类分类模型的正确识别率高于98%。结果表明,本文提出的模型及改进数据集的方法是合理且有效的。

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