Deep Learning-based CAD System for Predicting the COVID-19 X-ray Images

Aqeel R. Talib, H. M. Ali
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引用次数: 0

Abstract

Abstract According to World Health Organization data, Coronavirus (COVID-19) has infected about 660, 378, 145 patients around the world. It is nonetheless difficult for physicians to detect COVID-19 infections out of CT or X-ray radiographs. Thus, several computer-aided diagnosis (CAD) systems based on deep learning and radiographs were developed to detect COVID-19 infections. However, the majority of approaches considered small datasets, which is ineligible to provide diverse COVID-19 radiographs. This work utilizes a massive number of X-ray radiographs, and compared standard CNN, DenseNet-121, and GoogLeNet for isolating COVID-19 infections out from normal and other pneumonia radiographs. The dataset in this work is large enough to evaluate the realistic performance of those models in labeling COVID-19 infections. Considering the time complexity, accuracy, precision, recall, and F1 score, the experimental results shows that the DenseNet-121 is not only the optimal model, but also there is superior for standard CNN compared to the second output of GoogLeNet, which is an unexplained phenomenon.
基于深度学习的新型冠状病毒x射线图像预测CAD系统
根据世界卫生组织的数据,冠状病毒(COVID-19)在全球感染了约660,378,145例患者。尽管如此,医生很难通过CT或x光片来检测COVID-19感染。因此,开发了几种基于深度学习和x光片的计算机辅助诊断(CAD)系统来检测COVID-19感染。然而,大多数方法考虑的是小数据集,这没有资格提供不同的COVID-19 x线片。这项工作使用了大量的x射线片,并比较了标准的CNN, DenseNet-121和GoogLeNet从正常和其他肺炎x射线片中分离出COVID-19感染。这项工作中的数据集足够大,可以评估这些模型在标记COVID-19感染方面的实际性能。从时间复杂度、准确度、精密度、召回率和F1分数等方面考虑,实验结果表明,DenseNet-121不仅是最优模型,而且与GoogLeNet的第二个输出相比,DenseNet-121在标准CNN上也有优势,这是一个无法解释的现象。
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
Karbala International Journal of Modern Science
Karbala International Journal of Modern Science Multidisciplinary-Multidisciplinary
CiteScore
2.50
自引率
0.00%
发文量
54
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