一种新的用于乳腺癌亚型诊断的深度特征提取方法:迁移学习方法

Bilyaminu Muhammad, F. Özkaynak, A. Varol, T. Tuncer
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引用次数: 2

摘要

从组织学图像中提取特征是计算机辅助乳腺癌检测的一个具有挑战性的部分。在这项研究中,我们提出了一种基于BreaKhis数据集的迁移学习方法对乳腺癌诊断亚型进行深度特征提取的新技术。该方法包括五个阶段:特征提取、拼接、转换、选择和分类。在第一阶段,使用19个预训练的卷积神经网络作为特征提取器从输入图像中提取特征。在特征提取阶段使用支持向量机来计算所使用的预训练网络生成的每个特征的误分类率。特征提取结果表明,这两种网络在数据集上达到了最高的准确率,并且优于其他网络。选择并连接考虑的两个网络,结合预训练的网络ResNet50和DenseNet201,创建DRNet模型。在变换阶段,利用多层离散小波变换将提取的特征分解为5个子手级特征。采用迭代邻域分量分析方法选择分类阶段所需的最小特征个数。最后使用三次支持向量机作为分类器。在40倍、100倍、200倍和400倍放大倍数下,平均分类准确率分别为98.61%、98.04%、97.68%和97.71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Deep Feature Extraction Engineering for Subtypes of Breast Cancer Diagnosis: A Transfer Learning Approach
Feature extraction from histological images is a challenging part of computer-aided detection of breast cancer. For this research, we present a novel technique for deep feature extraction for breast cancer diagnosis subtypes based on a transfer learning approach using the BreaKhis dataset. This approach consists of five phases: feature extraction, concatenation, transformation, selection, and classification. In the first phase, nineteen pre-trained convolutional neural networks were used as feature extractors to extract features from the input images. A Support Vector Machine was used at the feature extraction phase to calculate the misclassification rate of each feature generated by the pre-trained networks used. The feature extraction results showed that the two networks achieved the highest accuracy on the dataset and outperformed the other networks. The two networks considered were selected and connected to create the DRNet model, combining the pre-trained networks ResNet50 and DenseNet201. The extracted features were decomposed into five sub-hand low-level features using a multilevel discrete wavelet transform in the transformation phase. An iterative neighborhood component analyzer was used to select the minimum number of features needed in the classification phase. A cubic support vector machine was used as a classifier in the final phase. Average classification accuracy of 98.61%, 98.04%, 97.68%, and 97.71% for the 40×, 100×, 200×, and 400× magnification levels, respectively, was achieved.
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