论文标题

使用胸部X射线图像探索图像增强技术对COVID-19检测的影响

Exploring the Effect of Image Enhancement Techniques on COVID-19 Detection using Chest X-rays Images

论文作者

Rahman, Tawsifur, Khandakar, Amith, Qiblawey, Yazan, Tahir, Anas, Kiranyaz, Serkan, Kashem, Saad Bin Abul, Islam, Mohammad Tariqul, Maadeed, Somaya Al, Zughaier, Susu M, Khan, Muhammad Salman, Chowdhury, Muhammad E. H.

论文摘要

在可靠且快速检测冠状病毒疾病(COVID-19)中使用计算机辅助诊断已成为防止大流行期间病毒传播以减轻医疗基础设施负担的繁殖力。胸部X射线(CXR)成像比其他成像技术具有多个优点,因为它便宜,易于访问,快速和便携。本文探讨了各种流行的图像增强技术的影响,并说明了它们每个人对检测性能的影响。我们编制了最大的X射线数据集,称为COVQU-20,由18,479个普通,非旋转肺不透明度和Covid-19 CXR图像组成。据我们所知,这是最大的公共互联物积极数据库。地面玻璃不透明度是在Covid-19-19肺炎患者中报道的常见症状,因此使用了3616 Covid-19、6012个非旋转肺不透明度的混合物,并使用了8851个正常的胸部X射线图像来创建此数据集。五种不同的图像增强技术:直方图均衡,对比度有限的自适应直方图均衡,图像补体,γ校正和平衡对比度增强技术用于提高COVID-19的检测准确性。在这项研究中研究了六个不同的卷积神经网络(CNN)。在从标准和分段的肺CXR图像中检测COVID-19时,伽马校正技术的表现优于其他增强技术。在CXR图像上使用伽马校正的COVID-19检测中的准确性,精度,灵敏度,F1得分和特异性分别为96.29%,96.28%,96.29%,96.28%和96.27%。分段肺图像的准确性,精度,灵敏度,F1得分和特异性分别为95.11%,94.55%,94.56%,94.53%和95.59%。提出的具有很高和可比性的方法将使用胸部X射线图像来提高快速,稳健的Covid-19检测。

The use of computer-aided diagnosis in the reliable and fast detection of coronavirus disease (COVID-19) has become a necessity to prevent the spread of the virus during the pandemic to ease the burden on the medical infrastructure. Chest X-ray (CXR) imaging has several advantages over other imaging techniques as it is cheap, easily accessible, fast and portable. This paper explores the effect of various popular image enhancement techniques and states the effect of each of them on the detection performance. We have compiled the largest X-ray dataset called COVQU-20, consisting of 18,479 normal, non-COVID lung opacity and COVID-19 CXR images. To the best of our knowledge, this is the largest public COVID positive database. Ground glass opacity is the common symptom reported in COVID-19 pneumonia patients and so a mixture of 3616 COVID-19, 6012 non-COVID lung opacity, and 8851 normal chest X-ray images were used to create this dataset. Five different image enhancement techniques: histogram equalization, contrast limited adaptive histogram equalization, image complement, gamma correction, and Balance Contrast Enhancement Technique were used to improve COVID-19 detection accuracy. Six different Convolutional Neural Networks (CNNs) were investigated in this study. Gamma correction technique outperforms other enhancement techniques in detecting COVID-19 from standard and segmented lung CXR images. The accuracy, precision, sensitivity, f1-score, and specificity in the detection of COVID-19 with gamma correction on CXR images were 96.29%, 96.28%, 96.29%, 96.28% and 96.27% respectively. The accuracy, precision, sensitivity, F1-score, and specificity were 95.11 %, 94.55 %, 94.56 %, 94.53 % and 95.59 % respectively for segmented lung images. The proposed approach with very high and comparable performance will boost the fast and robust COVID-19 detection using chest X-ray images.

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