Coronavirus (COVID-19) is a viral disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The spread of COVID-19 seems to have a detrimental effect on the global economy and health. A positive chest X-ray of infected patients is a crucial step in the battle against COVID-19. Early results suggest that abnormalities exist in chest X-rays of patients suggestive of COVID-19. This has led to the introduction of a variety of deep learning systems and studies have shown that the accuracy of COVID-19 patient detection through the use of chest X-rays is strongly optimistic. Deep learning networks like convolutional neural networks (CNNs) need a substantial amount of training data. Because the outbreak is recent, it is difficult to gather a significant number of radiographic images in such a short time. Therefore, in this research, we present a method to generate synthetic chest X-ray (CXR) images by developing an Auxiliary Classifier Generative Adversarial Network (ACGAN) based model called CovidGAN. In addition, we demonstrate that the synthetic images produced from CovidGAN can be utilized to enhance the performance of CNN for COVID-19 detection. Classification using CNN alone yielded 85% accuracy. By adding synthetic images produced by CovidGAN, the accuracy increased to 95%. We hope this method will speed up COVID-19 detection and lead to more robust systems of radiology.
翻译:科罗纳病毒(COVID-19)是严重急性呼吸系统综合症冠状病毒2 (SARS-COV-2)造成的一种病毒性疾病。COVID-19的传播似乎对全球经济和健康产生了有害影响。对受感染病人进行积极的胸透X射线是对抗COVID-19战斗中的一个关键步骤。早期结果显示,在显示COVID-19的病人胸X射线中存在异常现象。这导致引进了各种深层次的学习系统,研究表明,通过使用胸前X光(SARS-COV-2)对COVID-19病人的检测非常乐观。COVI-19的深度学习网络对全球经济和健康似乎具有不利影响。像革命性神经神经网络(CNNs)一样的深度学习网络需要大量的培训数据。由于这是近期的疾病爆发,很难在如此短的时间内收集大量放射图像。因此,我们提出一种方法,通过开发一个名为Covid Genealiz Adarial(ACGAN) 的模型来生成合成XR射线(CVAVI)的精度。此外,我们还将利用CISAN 85的精确性图像从CAVAVAVACTAN 提高到85的精确度方法,通过CVACTLVACTAVA。