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A novel deep learning based framework for the detection and classification of breast cancer using transfer learning

机译:一种新的深度学习基于乳腺癌使用转移学习的框架

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Breast cancer is among the leading cause of mortality among women in developing as well as under-developing countries. The detection and classification of breast cancer in the early stages of its development may allow patients to have proper treatment. In this article, we proposed a novel deep learning framework for the detection and classification of breast cancer in breast cytology images using the concept of transfer learning. In general, deep learning architectures are modeled to be problem specific and is performed in isolation. Contrary to classical learning paradigms, which develop and yield in isolation, transfer learning is aimed to utilize the gained knowledge during the solution of one problem into another related problem. In the proposed framework, features from images are extracted using pre-trained CNN architectures, namely, GoogLeNet, Visual Geometry Group Network (VGGNet) and Residual Networks (ResNet), which are fed into a fully connected layer for classification of malignant and benign cells using average pooling classification. To evaluate the performance of the proposed framework, experiments are performed on standard benchmark data sets. It has been observed that the proposed framework outclass all the other deep learning architectures in terms of accuracy in detection and classification of breast tumor in cytology images. (C) 2019 Elsevier B.V. All rights reserved.
机译:乳腺癌是妇女发展中国家和发展中国家妇女死亡的主要原因中。其开发早期阶段的乳腺癌的检测和分类可能让患者进行适当的治疗方法。在本文中,我们提出了一种新的深入学习框架,用于使用转移学习概念的乳腺细胞学图像中乳腺癌的检测和分类。通常,深度学习架构被建模为特定问题,并以隔离执行。与古典学习范式相反,其孤立的发展和产量,转移学习旨在在解决一个问题的解决过程中利用所获得的知识。在所提出的框架中,使用预先培训的CNN架构,即Googlenet,视觉几何组网络(VGGNET)和残差网络(RESET)来提取图像的特征,这些网络被送入完全连接的层以进行恶性和良性细胞的分类使用平均池分类。为了评估所提出的框架的性能,在标准基准数据集上执行实验。已经观察到所提出的框架在细胞学图像中乳腺肿瘤的检测和分类方面的准确性方面消除了所有其他深度学习架构。 (c)2019 Elsevier B.v.保留所有权利。

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