Efficient Classification Approach Based on COVID-19 CT Images Analysis with Deep Features

Mostafa A. Kamel, M. Abdelshafy, Mustafa AbdulRazek, Osama Abouelkhir, A. Fawzy, A. Sahlol
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引用次数: 7

Abstract

Currently, a new coronavirus(COVID-19) has affected millions of people worldwide. For this reason, it’s not sufficient that radiologists can slow down the virus spreading manually. Convolutional Neural Networks (CNNs) can be utilized as a tool to aid radiologists in diagnosing COVID-19 images, which consequently can save efforts and time. In this work, a dataset of CT images of confirmed and negative COVID-19 was used for the screening of COVID-19. Some preprocessing operations were applied to enhance the COVID-19 CT images which aim at including only the Area of Interest (AOI). This was accomplished in three stages. First, a conversion of the CT images to the binary scale was performed by applying a global threshold algorithm. Then, the median filter algorithm was applied to remove random noise. Then, we include only the ROI (the lung) and exclude other parts of the images. Finally, we applied VGGNet 19 to extract features from the preprocessed CT images, which is a popular CNN architecture, trained previously on ImageNet. The proposed pipeline showed high performance by achieving 98.31%, 100%, 98.19% and 98.64% of accuracy, recall, precision and f1-score, respectively. To the best of our knowledge, these results are the best published on this dataset when compared to a set of recently published works. Also, the proposed model overcomes several popular CNNs architectures.
基于深度特征分析的新型冠状病毒CT图像高效分类方法
目前,一种新的冠状病毒(COVID-19)已经影响了全世界数百万人。因此,仅靠放射科医生手动减缓病毒传播是不够的。卷积神经网络(cnn)可以作为辅助放射科医生诊断COVID-19图像的工具,从而节省精力和时间。本研究使用COVID-19确诊和阴性CT图像数据集进行COVID-19筛查。采用一些预处理操作对COVID-19 CT图像进行增强,目的是只包括感兴趣区域(AOI)。这项工作分三个阶段完成。首先,应用全局阈值算法将CT图像转换为二值尺度;然后,采用中值滤波算法去除随机噪声。然后,我们只包括ROI(肺),并排除图像的其他部分。最后,我们应用VGGNet 19从预处理的CT图像中提取特征,这是一种流行的CNN架构,之前在ImageNet上训练。该管道的准确率、查全率、查准率和f1-score分别达到了98.31%、100%、98.19%和98.64%。据我们所知,与一组最近发表的作品相比,这些结果是该数据集上发表的最好的结果。此外,所提出的模型克服了几种流行的cnn架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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