Comparison of Tissue Classification Performance by Deep Learning and Conventional Methods on Colorectal Histopathological Images

Z. Karhan, F. Akal
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Abstract

The automatic evaluation is essential for the diagnosis and treatment of the disease of pathological images. Computer-aided systems are becoming more common day by day in this area. In this study, multi-class (8 different classes) tissue types were studied in colon cancer histopathological images. Data mining algorithms are used in the diagnosis phase in the health field. As a conventional method, first of all, the properties of the images are extracted and then the texture classification process is performed with data mining algorithms. The Gray Level Co-occurrence Matrix (GLCM), Discrete Cosine Transform (DCT), Local Binary Pattern (LBP) are used in textural feature extraction. Along with these attributes, machine learning algorithms, such as k-nearest neighbors (KNN), support vector machines (SVM), random forests (RF), logistic regression (LR) were used for classification. As another method, to remove the attributes and perform classification at the same time, tissue classification was performed using deep learning (convolutional neural network) on histopathological images. Tissue classification was automated using transfer learning based on ResNet-18 architecture, one of the convolutional neural network architectures. According to the determined feature and classification algorithm, the performance rates are also given comparatively. Our experiments showed that RF classifier with LBP and GLCM features provided 82% accuracy, while the deep learning method based on ResNet-18 architecture achieved 88.5% accuracy.
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基于深度学习和传统方法的结直肠组织病理图像分类性能比较
病理图像的自动评价对于疾病的诊断和治疗至关重要。计算机辅助系统在这一领域日益普及。本研究对结肠癌组织病理图像中的多类(8个不同的类)组织类型进行了研究。数据挖掘算法用于健康领域的诊断阶段。传统方法首先提取图像的属性,然后利用数据挖掘算法进行纹理分类。采用灰度共生矩阵(GLCM)、离散余弦变换(DCT)、局部二值模式(LBP)等方法提取纹理特征。随着这些属性,机器学习算法,如k近邻(KNN),支持向量机(SVM),随机森林(RF),逻辑回归(LR)被用于分类。另一种方法是利用深度学习(卷积神经网络)对组织病理图像进行组织分类,在去除属性的同时进行分类。组织分类使用基于卷积神经网络架构之一ResNet-18架构的迁移学习实现自动化。根据所确定的特征和分类算法,给出了比较的性能。我们的实验表明,结合LBP和GLCM特征的RF分类器准确率为82%,而基于ResNet-18架构的深度学习方法准确率为88.5%。
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