基于深度学习从胸部X光图像中检测新型冠状病毒肺炎
Deep learning based detection of COVID-19 from chest X-ray images.
作者信息
Guefrechi Sarra, Jabra Marwa Ben, Ammar Adel, Koubaa Anis, Hamam Habib
机构信息
Faculty of Engineering, University of Moncton, Moncton, NB Canada.
Charisma University, British Overseas Territories, Englewood, UK.
出版信息
Multimed Tools Appl. 2021;80(21-23):31803-31820. doi: 10.1007/s11042-021-11192-5. Epub 2021 Jul 19.
The whole world is facing a health crisis, that is unique in its kind, due to the COVID-19 pandemic. As the coronavirus continues spreading, researchers are concerned by providing or help provide solutions to save lives and to stop the pandemic outbreak. Among others, artificial intelligence (AI) has been adapted to address the challenges caused by pandemic. In this article, we design a deep learning system to extract features and detect COVID-19 from chest X-ray images. Three powerful networks, namely ResNet50, InceptionV3, and VGG16, have been fine-tuned on an enhanced dataset, which was constructed by collecting COVID-19 and normal chest X-ray images from different public databases. We applied data augmentation techniques to artificially generate a large number of chest X-ray images: Random Rotation with an angle between - 10 and 10 degrees, random noise, and horizontal flips. Experimental results are encouraging: the proposed models reached an accuracy of 97.20 % for Resnet50, 98.10 % for InceptionV3, and 98.30 % for VGG16 in classifying chest X-ray images as Normal or COVID-19. The results show that transfer learning is proven to be effective, showing strong performance and easy-to-deploy COVID-19 detection methods. This enables automatizing the process of analyzing X-ray images with high accuracy and it can also be used in cases where the materials and RT-PCR tests are limited.
由于新冠疫情,整个世界正面临一场前所未有的健康危机。随着新冠病毒持续传播,研究人员致力于提供或协助提供拯救生命、阻止疫情爆发的解决方案。其中,人工智能(AI)已被用于应对疫情带来的挑战。在本文中,我们设计了一个深度学习系统,用于从胸部X光图像中提取特征并检测新冠病毒。我们在一个增强数据集上对三个强大的网络,即ResNet50、InceptionV3和VGG16进行了微调,该数据集是通过从不同公共数据库收集新冠病毒感染患者和正常胸部X光图像构建而成。我们应用数据增强技术人工生成大量胸部X光图像:进行-10度到10度之间的随机旋转、添加随机噪声以及水平翻转。实验结果令人鼓舞:在将胸部X光图像分类为正常或新冠病毒感染时,所提出的模型中ResNet50的准确率达到97.20%,InceptionV3为98.10%,VGG16为98.30%。结果表明迁移学习被证明是有效的,展示了性能强大且易于部署的新冠病毒检测方法。这使得能够高精度地自动分析X光图像的过程自动化,并且它还可用于物资和逆转录聚合酶链反应(RT-PCR)检测有限的情况。