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A Lesion Classification Method Using Deep Learning Based on JNET Classification for Computer-Aided Diagnosis System in Colorectal Magnified NBI Endoscopy

机译:基于JNET分类的基于JNET分类的裂解分类的病变分类方法在结肠直肠下放大NBI内窥镜检查中的计算机辅助诊断系统

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In this study, we develop and evaluate a colorectal endoscopic diagnosis support system using deep learning. We use image dataset about the JNET (The Japan NBI Expert Team) classification based on the findings classification of the colorectal magnified endoscopic images. The JNET classification is classified into four types and taken by clinical doctors at three magnifications. We use low to medium magnification and high magnification rate in this study. In addition, we use a learned CNN called ResNet34 as a classifier. As the classification results for 80 test data, the accuracies of low to medium magnification and high magnification were 95.0% and 97.5%, respectively, and 3 images were classified as the wrong type.
机译:在本研究中,我们使用深度学习开发和评估结肠直肠内镜诊断支持系统。 基于结直肠放大内窥镜图像的发现分类,我们使用关于JNET(日本NBI专家团队)分类的图像数据集。 JNET分类分为四种类型,并在三个放大倍数下由临床医生拍摄。 我们在本研究中使用低至中倍率和高放大率。 此外,我们使用一个名为Reset34作为分类器的学习CNN。 由于80个测试数据的分类结果,低至中倍率和高放大率的精度分别为95.0%和97.5%,3个图像被归类为错误的类型。

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