COVID-19 quickly became a global pandemic after only four months of its first detection. It is crucial to detect this disease as soon as possible to decrease its spread. The use of chest X-ray (CXR) images became an effective screening strategy, complementary to the reverse transcription-polymerase chain reaction (RT-PCR). Convolutional neural networks (CNNs) are often used for automatic image classification and they can be very useful in CXR diagnostics. In this paper, 21 different CNN architectures are tested and compared in the task of identifying COVID-19 in CXR images. They were applied to the COVIDx8B dataset, which is the largest and more diverse COVID-19 dataset available. Ensembles of CNNs were also employed and they showed better efficacy than individual instances. The best individual CNN instance results were achieved by DenseNet169, with an accuracy of 98.15% and an F1 score of 98.12%. These were further increased to 99.25% and 99.24%, respectively, through an ensemble with five instances of DenseNet169. These results are higher than those obtained in recent works using the same dataset.
翻译:COVID-19在第一次检测仅四个月后就迅速成为全球流行病。 尽快检测出这种疾病以降低其传播速度至关重要。 胸X光(CXR)图像的使用成为有效的筛选战略,是对反转录式聚合酶链反应(RT-PCR)的补充。 进化神经网络(CNNs)经常用于自动图像分类,在CXR诊断中非常有用。在本文中,21个不同的CNN结构在CXR图像中识别COVID-19的任务中经过测试和比较,它们被应用到COVIDx8B数据集中,该数据集是现有最大和更加多样化的COVID-19数据集。 CNN的组合也得到使用,而且比个别实例效果更好。 DenseNet169实现了最佳的个人CNN实例结果,准确率为98.15%和98.12%。这些结果通过包含五个DenseNet169实例的组合,分别增加到99.25%和99.24%。这些结果高于最近利用同一数据完成的工作所取得的结果。