Covid-19 detection from chest x-ray images: comparison of well-established convolutional neural networks models

M. A. As’ari, Nur Izzaty Ab Manap
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引用次数: 1

Abstract

Coronavirus disease 19 (Covid-19) is a pandemic disease that has already killed hundred thousands of people and infected millions more. At the climax disease Covid-19, this virus will lead to pneumonia and result in a fatality in extreme cases. COVID-19 provides radiological cues that can be easily detected using chest X-rays, which distinguishes it from other types of pneumonic disease. Recently, there are several studies using the CNN model only focused on developing binary classifier that classify between Covid-19 and normal chest X-ray. However, no previous studies have ever made a comparison between the performances of some of the established pre-trained CNN models that involving multi-classes including Covid-19, Pneumonia and Normal chest X-ray. Therefore, this study focused on formulating an automated system to detect Covid-19 from chest X-Ray images by four established and powerful CNN models AlexNet, GoogleNet, ResNet-18 and SqueezeNet and the performance of each of the models were compared. A total of 21,252 chest X-ray images from various sources were pre-processed and trained for the transfer learning-based classification task, which included Covid-19, bacterial pneumonia, viral pneumonia, and normal chest x-ray images. In conclusion, this study revealed that all models successfully classify Covid-19 and other pneumonia at an accuracy of more than 78.5%, and the test results revealed that GoogleNet outperforms other models for achieved accuracy of 91.0%, precision of 85.6%, sensitivity of 85.3%, and F1 score of 85.4%.
从胸部x线图像中检测Covid-19:完善的卷积神经网络模型的比较
冠状病毒病(Covid-19)是一种大流行疾病,已经造成数十万人死亡,数百万人感染。在最高潮疾病Covid-19中,该病毒将导致肺炎,并在极端情况下导致死亡。COVID-19提供了可以通过胸部x光轻松检测到的放射学线索,这将其与其他类型的肺炎疾病区分开来。最近,有几项使用CNN模型的研究只专注于开发对Covid-19和正常胸部x线进行分类的二元分类器。然而,之前的研究从未对包括Covid-19、肺炎和正常胸部x线在内的一些已建立的预训练CNN模型的性能进行过比较。因此,本研究重点构建了一套利用已建立且功能强大的CNN模型AlexNet、GoogleNet、ResNet-18和SqueezeNet从胸部x线图像中自动检测Covid-19的系统,并对各模型的性能进行了比较。对来自不同来源的21252张胸片图像进行预处理和训练,用于基于迁移学习的分类任务,其中包括Covid-19、细菌性肺炎、病毒性肺炎和正常胸片图像。综上所述,本研究显示,所有模型对Covid-19和其他肺炎的分类准确率均在78.5%以上,测试结果显示,GoogleNet的准确率为91.0%,精度为85.6%,灵敏度为85.3%,F1评分为85.4%,优于其他模型。
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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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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