基于卷积神经网络的结肠癌组织病理图像分类

Yus Kelana, S. Rizal, Sofia Saidah
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引用次数: 1

摘要

结肠癌是印尼社会中死亡人数最多的癌症。通过结肠癌的组织病理学图像检测疾病仍然使用人工方法和医生的读数。因此,有必要建立一套结肠癌的检测和分类系统。本研究旨在建立结肠癌分类系统,减少结肠癌分类的时间。本研究将结肠癌划分为腺癌和息肉两类。本研究使用的结肠癌数据是通过Kaggle网站在线获取的数据,该数据由2000张768像素的jpeg格式组织病理学图像组成。该系统采用基于MobileNet架构的卷积神经网络(CNN)方法构建。根据图像大小、优化器、学习率、激活函数和批处理大小对系统性能的影响,分析了影响系统性能的参数,进行了系统设计。用于评估系统性能的参数包括准确率、精密度、召回率和f1-score。基于参数对系统进行测试,得到图像尺寸为224x224像素,Adam优化器,学习率为0.0001,sigmoid激活函数,批量大小为40的最佳模型。最佳模型的最佳结果为100%准确率值、100%精度值、100%召回值和100% f1-score,损失为0.000135。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Histopathological Images of Colon Cancer Using Convolutional Neural Network Method
Colon cancer is cancer with the most deaths in Indonesian society. Detection of disease through histopathological images of colon cancer still uses manual methods with readings by doctors. So it is necessary to do a system to detect and classify colon cancer. This study aims to create a colon cancer classification system to reduce the time in classifying the categories of colon cancer. In this study, a classification system for colon cancer was created into two classes, namely adenocarcinomas and polyps. Colon cancer data used in this study is data obtained online through the Kaggle website which consists of 2000 histopathological images measuring 768 pixels in jpeg format. The system is built using the Convolutional Neural Network (CNN) method with the MobileNet architecture. The design of this system is made by analyzing parameters that affect system performance based on the influence of image size, optimizer, learning rate, activation function, and batch size. Parameters used in evaluating system performance are accuracy, precision, recall, and f1-score. The results of testing the system based on parameters obtained the best model with image size 224x224 pixels, Adam optimizer, learning rate 0.0001, sigmoid activation function, and batch size 40. The best results of the best model are 100% accuracy value, 100% precision value, 100% recall value, and 100% f1-score with a loss of 0.000135.
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