Multi-class Breast Cancer Classification by a Novel Two-Branch Deep Convolutional Neural Network Architecture

Laith Alzubaidi, Reem Ibrahim Hasan, F. H. Awad, M. Fadhel, O. Al-Shamma, Jinglan Zhang
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引用次数: 8

Abstract

One of the main reasons for death among women is breast cancer. The traditional diagnosis process of breast cancer is time-consuming and expensive. Also, an early cancer diagnosis may reduce the breast cancer death rate. With the help of computer-aided diagnosis system, the efficiency increased and the cost is reduced of the cancer diagnosis. Traditional classification methodologies are based on feature extraction techniques. Currently, deep learning techniques have become the alternative solution for diagnosis and overcame the problems of the handcrafted features methods. Increasing the depth in a deep convolutional neural network makes the network suffer from gradient vanishing problems, which are not caused by overfitting but instead by an increase in depth. Therefore, our proposed network is designed based on the idea of increasing the width of the network. A novel two-branch deep convolutional neural network is proposed for the classification of histopathological breast images. The proposed network is trained on the dataset of ICIAR-2018 to classify images into four classes; invasive carcinoma, in situ carcinoma, benign lesion, and normal tissue image. The proposed network is beneficial for gradient propagation as the error can be back-propagated through multiple paths. It also helps to combine different levels of features at each step of the network since it is a two-branch network. The proposed network is superior to the existing methods by achieving a patch-wise classification accuracy of 83.6% and image-wise classification accuracy of 91.3% on the divided part from the training set. Moreover, we have achieved an image-wise classification accuracy of 89.4% on the unseen test images of ICIAR-2018.
基于新型双分支深度卷积神经网络的乳腺癌多类分类
妇女死亡的主要原因之一是乳腺癌。传统的乳腺癌诊断过程既耗时又昂贵。此外,早期癌症诊断可能会降低乳腺癌的死亡率。在计算机辅助诊断系统的帮助下,提高了肿瘤诊断的效率,降低了成本。传统的分类方法是基于特征提取技术。目前,深度学习技术已经成为诊断的替代解决方案,克服了手工特征方法的问题。在深度卷积神经网络中增加深度会使网络遭受梯度消失问题,这不是由过拟合引起的,而是由深度增加引起的。因此,我们提出的网络是基于增加网络宽度的思想来设计的。提出了一种新的双分支深度卷积神经网络用于乳腺组织病理图像的分类。该网络在ICIAR-2018数据集上进行训练,将图像分为四类;浸润性癌、原位癌、良性病变和正常组织图像。由于误差可以通过多个路径反向传播,因此该网络有利于梯度传播。它还有助于在网络的每个步骤中组合不同级别的特征,因为它是一个双分支网络。本文提出的网络在训练集分割部分上实现了83.6%的补丁分类准确率和91.3%的图像分类准确率,优于现有的方法。此外,我们在ICIAR-2018的未见测试图像上实现了89.4%的图像分类准确率。
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