基于迁移学习的胸部x线图像可编程检测COVID-19感染

Vemuri Triveni, R. Priyanka, Koya Dinesh Teja, Y. Sangeetha
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引用次数: 1

摘要

被世界卫生组织指定为大流行的新型冠状病毒(COVID-19)已经感染了100多万人,并导致许多人死亡。COVID-19感染可能发展为肺炎,可通过胸部x光检查进行诊断。本研究提出了一种利用胸部x光自动检测COVID-19感染的新技术。这项研究使用了500张被诊断为冠状病毒的患者的x光片和500张健康个体的x光片来生成一个数据集。由于COVID-19患者公开图片的稀缺性,本研究试图通过知识传播的视角进行研究。此外,本研究将不同的卷积神经网络(CNN)架构整合在Image Net上训练,作为x射线图像的特征提取器。之后,将CNN与k最近邻、贝叶斯、随机森林、多层感知器(MLP)等成熟的机器学习方法相结合。研究结果表明,对于其中一个数据集,最成功的提取器-分类器组合是InceptionV3架构,它具有具有线性核的SVM分类器,其准确率达到99.421%。另一个基准,最好的组合,是与MLP的ResNet50,其准确率为97.461%。因此,建议的技术证明了使用x射线检测COVID-19的有效性。
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Programmable Detection of COVID-19 Infection Using Chest X-Ray Images Through Transfer Learning
The novel Coronavirus (COVID-19), which has been designated a pandemic by the World Health Organization, has infected over 1 million individuals and killed many. COVID-19 infection may progress to pneumonia, which can be diagnosed via a chest X-ray. This research work proposes a novel technique for automatically detecting COVID-19 infection using chest X-rays. This research used 500 X-rays of patients diagnosed with coronavirus and 500 X-rays of healthy individuals to generate a data set. Due to the scarcity of publicly accessible pictures of COVID-19 patients, this research study has been attempted via the lens of knowledge transmission. Also, this research work integrates different convolutional neural network (CNN) architectures trained on Image Net to function as X-ray image feature extractors. After that, integrate CNN with well-established machine learning methods such as k Nearest Neighbor, Bayes, Random Forest, Multilayer Perceptron (MLP). The findings indicate that the most successful extractor-classifier combination for one of the data sets is the InceptionV3 architecture, which has an SVM classifier with a linear kernel that achieves an accuracy of 99.421 percent. Another benchmark, the best combination, is ResNet50 with MLP, which has 97.461%accuracy. As a result, the suggested technique demonstrates the efficacy of detecting COVID-19 using X-rays.
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