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BreastNet: A novel convolutional neural network model through histopathological images for the diagnosis of breast cancer

机译:母乳网:通过组织病理学图像进行新型卷积神经网络模型,用于乳腺癌的诊断

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Breast cancer is one of the most commonly diagnosed cancer types in the woman and automatically classifying breast cancer histopathological images is an important task in computer-assisted pathology analysis. Statistics indicate that the breast cancer rate is about 12% in all cancer cases in the world. Also, approximately 25% of women have breast cancer. Therefore, rapid and accurate analysis of breast cancer images is extremely important for diagnosis. Recently, deep learning models have been used in preference for this purpose. In short, the most important reason why we use a deep learning model for the diagnosis of breast cancer is can give faster and more accurate results than existing machine learning based methods. In this study, we come up with a novel deep learning model developed based on a convolutional neural network. The success of the classification was increased by using the proposed model named as BreastNet. The general structure of the BreastNet model is a residual architecture built on attention modules. Each image data is processed by the augmentation techniques before applying it as input to the model. With augmentation techniques, each image is processed one by one and transferred to BreastNet. There is no increase in the number of data. The features of each image are changed using some augmentation techniques, such as flip, shift, brightness change and rotation. Then, each image that comes to the model performs the selection and processing of important key regions of the image via through attention modules. Also, a more stable and accurate classification of the data is performed by using the hypercolumn technique in the model. Other parts of the BreastNet model consist of convolutional, pooling, residual and dense blocks. As a result, 98.80% classification success was achieved with the proposed model. The success rate of the proposed model was better than the success rates of AlexNet, VGG-16 and VGG-19 models performed on the same data set. In addition, the results obtained in this study yielded better results than the other studies that use the current BreakHis dataset. (C) 2019 Elsevier B.V. All rights reserved.
机译:乳腺癌是女性中最常见的癌症类型之一,并且自动对乳腺癌组织病理学图像进行分类是计算机辅助病理分析中的重要任务。统计数据表明,世界上癌症病例中的乳腺癌率约为12%。此外,大约25%的女性有乳腺癌。因此,对乳腺癌图像的快速和准确分析对于诊断非常重要。最近,为此目的,深入学习模型已被用于优先考虑。简而言之,我们使用深层学习模型的最重要原因是乳腺癌的诊断是可以提供比现有机器学习的方法更快,更准确的结果。在这项研究中,我们提出了一种基于卷积神经网络开发的新型深度学习模型。通过使用名为母乳网的拟议模型增加了分类的成功。母乳网模型的一般结构是一种基于注意模块的剩余架构。在将其作为输入到模型的输入之前,通过增强技术处理每个图像数据。利用增强技术,每个图像由一个接一个地处理并转移到母乳网。数据数量没有增加。使用一些增强技术改变每个图像的特征,例如翻转,偏移,亮度改变和旋转。然后,通过注意模块通过注意模块来执行模型的每个图像的选择和处理图像的重要关键区域。此外,通过使用模型中的脾大力技术来执行更稳定和准确的数据分类。母乳型号的其他部分包括卷积,池,残差和密集块。因此,通过拟议的模型实现了98.80%的分类成功。所提出的模型的成功率优于在同一数据集上执行的AlexNet,VGG-16和VGG-19型号的成功率。此外,本研究中获得的结果产生了比使用当前断开数据集的其他研究产生的结果更好。 (c)2019 Elsevier B.v.保留所有权利。

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