Hernandez-Cruz Netzahualcoyotl, Cato David, Favela Jesus
Ulster University, Belfast, UK.
Independent Researcher, London, England, UK.
SN Comput Sci. 2021;2(5):410. doi: 10.1007/s42979-021-00795-2. Epub 2021 Aug 13.
Coronavirus disease 2019 (COVID-19) has accounted for millions of causalities. While it affects not only individuals but also our collective healthcare and economic systems, testing is insufficient and costly hampering efforts to deal with the pandemic. Chest X-rays are routine radiographic imaging tests that are used for the diagnosis of respiratory conditions such as pneumonia and COVID-19. Convolutional neural networks have shown promise to be effective at classifying X-rays for assisting diagnosis of conditions; however, achieving robust performance demanded in most modern medical applications typically requires a large number of samples. While there exist datasets containing thousands of X-ray images of patients with healthy and pneumonia diagnoses, because COVID-19 is such a recent phenomenon, there are relatively few confirmed COVID-19 positive chest X-rays openly available to the research community. In this paper, we demonstrate the effectiveness of cycle-generative adversarial network, commonly used for neural style transfer, as a way to augment COVID-19 negative X-ray images to look like COVID-19 positive images for increasing the number of COVID-19 positive training samples. The statistical results show an increase in the mean macro 1-score over 21% on a one-tailed score = 2.68 and value = 0.01 to accept our alternative hypothesis for an . We conclude that this approach, when used in conjunction with standard transfer learning techniques, is effective at improving the performance of COVID-19 classifiers for a variety of common convolutional neural networks.
2019冠状病毒病(COVID-19)已导致数百万人死亡。它不仅影响个人,还影响我们的集体医疗保健和经济系统,检测不足且成本高昂,阻碍了应对疫情的努力。胸部X光检查是用于诊断肺炎和COVID-19等呼吸道疾病的常规放射成像检查。卷积神经网络已显示出在对X光进行分类以辅助疾病诊断方面的有效性;然而,在大多数现代医学应用中实现所需的稳健性能通常需要大量样本。虽然存在包含数千张健康和肺炎诊断患者X光图像的数据集,但由于COVID-19是一种新出现的现象,可供研究界公开使用的确诊COVID-19阳性胸部X光相对较少。在本文中,我们展示了通常用于神经风格迁移的循环生成对抗网络的有效性,以此作为一种增强COVID-19阴性X光图像使其看起来像COVID-19阳性图像的方法,以增加COVID-19阳性训练样本的数量。统计结果显示,单尾检验中平均宏F1分数提高了21%以上,检验统计量得分=2.68,p值=0.01,接受我们关于t检验的备择假设。我们得出结论,这种方法与标准迁移学习技术结合使用时,对于各种常见的卷积神经网络,能有效提高COVID-19分类器的性能。