基于CXR和ct扫描图像的新型冠状病毒肺炎自动诊断

IF 1.5 0 ENGINEERING, MULTIDISCIPLINARY
N. Kumar, A. Hashmi, M. Gupta, A. Kundu
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引用次数: 19

摘要

Covid-19是一种传染性极强的疾病,传播速度极快,可通过间接或直接接触传播。科学家们将新冠肺炎病例分为五种不同的类型:严重、危急、无症状、中度和轻度。截至2021年5月,已有超过1.332亿人感染,近290万人因Covid-19而丧生。为了诊断Covid-19,从业者使用RT-PCR测试,这些测试会产生许多假阳性(FP)和假阴性(FN)结果,而且需要很长时间。一个解决方案是同时进行更多的测试,以提高真阳性(TP)比率。然而,ct扫描和x射线图像也可用于早期发现Covid-19相关肺炎。通过使用现代深度学习技术,可以达到95%以上的准确率。我们使用了8个基于CNN (CovNet)的深度学习模型,分别是ResNet 152 v2、InceptionResNet v2、Xception、Inception v3、ResNet 50、NASNetLarge、DenseNet 201和VGG 16,用于x射线和ct扫描诊断肺炎。对比结果表明,所提出的模型能够区分新冠病毒阳性病例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Diagnosis of Covid-19 Related Pneumonia from CXR and CT-Scan Images
Covid-19 is a highly infectious disease that spreads extremely fast and is transmitted through indirect or direct contact. The scientists have categorized the Covid-19 cases into five different types: severe, critical, asymptomatic, moderate, and mild. Up to May 2021 more than 133.2 million peoples have been infected and almost 2.9 million people have lost their lives from Covid-19. To diagnose Covid-19, practitioners use RT-PCR tests that suffer from many False Positive (FP) and False Negative (FN) results while they take a long time. One solution to this is the conduction of a greater number of tests simultaneously to improve the True Positive (TP) ratio. However, CT-scan and X-ray images can also be used for early detection of Covid-19 related pneumonia. By the use of modern deep learning techniques, accuracy of more than 95% can be achieved. We used eight CNN (CovNet)-based deep learning models, namely ResNet 152 v2, InceptionResNet v2, Xception, Inception v3, ResNet 50, NASNetLarge, DenseNet 201, and VGG 16 for both X-rays and CT-scans to diagnose pneumonia. The achieved comparative results show that the proposed models are able to differentiate the Covid-19 positive cases.
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来源期刊
Engineering, Technology & Applied Science Research
Engineering, Technology & Applied Science Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.00
自引率
46.70%
发文量
222
审稿时长
11 weeks
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