Classification of Gastric Precancerous Diseases using Hybrid CNN-SVM

Jahidul Islam, Sajjad Bhuiyan, A. Hossain, Amit Shaha Surja, Md. Shahid Iqbal
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引用次数: 2

Abstract

Gastric cancer (stomach cancer) is now the sixth most common diagnosed cancer and the third leading cause of cancer mortality in the world. Gastric Erosion, Gastric Ulcer, and Stomach Polyp are examples of Gastric Precancerous Diseases (GPDs) that can lead to gastric cancer if not recognized early or misdiagnosed. Classifying these GPDs is a difficult task. Undoubtedly, Deep learning networks (DNNs) have shown to be effective in solving the challenge of image categorization. Next to practical difficulty is the limitation of the availability of medical images for DNN training. In this paper, a hybrid model is proposed to classify GPDs. The model is a combination of Convolution Neural Network (CNN) Gastric Precancerous Diseases Feature Extractor Network (GPDFENet) for feature extraction and Support Vector Machine (SVM) for classification. An open dataset “Data-Open-Access4PLoS-One” including erosion, ulcer, and polyp endoscopic images were utilized to train the network. After evaluation, the network is then compared to various pre-trained networks such as AlexNet, ResNet-50, ResNet-101, and Inception V3. The proposed model (GPDFENet+SVM) has achieved an accuracy of 93.22%.
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基于CNN-SVM的胃癌前病变分类
胃癌(胃癌)现在是世界上第六大最常见的诊断癌症和第三大癌症死亡原因。胃侵蚀、胃溃疡和胃息肉是胃癌前病变(gpd)的例子,如果不及早发现或误诊,可能导致胃癌。对这些gdp进行分类是一项艰巨的任务。毫无疑问,深度学习网络(dnn)在解决图像分类挑战方面已被证明是有效的。接下来的实际困难是用于深度神经网络训练的医学图像的可用性的限制。本文提出了一种用于gpd分类的混合模型。该模型结合卷积神经网络(CNN)胃癌前病变特征提取网络(GPDFENet)进行特征提取,支持向量机(SVM)进行分类。利用“Data-Open-Access4PLoS-One”开放数据集,包括糜烂、溃疡和息肉内窥镜图像来训练网络。评估后,将网络与各种预训练的网络(如AlexNet、ResNet-50、ResNet-101和Inception V3)进行比较。该模型(GPDFENet+SVM)的准确率达到了93.22%。
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