论文标题
Randgan:用于检测COVID-19的随机生成对抗网络胸部X射线
RANDGAN: Randomized Generative Adversarial Network for Detection of COVID-19 in Chest X-ray
论文作者
论文摘要
Covid-19以巨大的速度分布在全球范围内,使医疗保健系统无能为力,无法以所需的速度诊断和测试患者。研究表明,从胸部X射线中的病毒细菌性肺炎中检测到COVID-19的结果有希望的结果。使用医学图像的COVID-19测试自动化可以加快医疗系统缺乏足够数量的反向转录聚合酶链反应(RT-PCR)测试的患者的测试过程。诸如卷积神经网络(CNN)之类的有监督的深度学习模型需要足够标记的数据才能正确学习检测任务。收集标记的数据是一项繁琐的任务,需要时间和资源,这可能会使医疗保健系统和放射科医生在大流行(例如Covid-19)的早期阶段加剧。在这项研究中,我们提出了一个随机生成的对抗网络(Randgan),该网络检测出已知和标记类别(正常和病毒性肺炎)的未知类别(COVID-19)的图像,而无需从未知类别的图像类别(COVID-19)中获得标签和培训数据。我们使用了来自多个公共数据库的正常,肺炎和库维德-19图像,使用了最大的公开可用的Covid-19胸部X射线数据集Covidx。在这项工作中,我们使用转移学习来细分Covidx数据集中的肺部。接下来,我们展示了为什么感兴趣区域(肺)的分割对于正确学习分类任务至关重要,特别是在包含来自不同资源的图像的数据集中,就像Covidx数据集一样。最后,与常规的生成对抗网络(GAN)相比,使用生成模型(Randgan)检测到Covid-19病例的结果有所改善,以在医学图像中检测到异常检测,从而将ROC曲线下的面积从0.71提高到0.77。
COVID-19 spread across the globe at an immense rate has left healthcare systems incapacitated to diagnose and test patients at the needed rate. Studies have shown promising results for detection of COVID-19 from viral bacterial pneumonia in chest X-rays. Automation of COVID-19 testing using medical images can speed up the testing process of patients where health care systems lack sufficient numbers of the reverse-transcription polymerase chain reaction (RT-PCR) tests. Supervised deep learning models such as convolutional neural networks (CNN) need enough labeled data for all classes to correctly learn the task of detection. Gathering labeled data is a cumbersome task and requires time and resources which could further strain health care systems and radiologists at the early stages of a pandemic such as COVID-19. In this study, we propose a randomized generative adversarial network (RANDGAN) that detects images of an unknown class (COVID-19) from known and labelled classes (Normal and Viral Pneumonia) without the need for labels and training data from the unknown class of images (COVID-19). We used the largest publicly available COVID-19 chest X-ray dataset, COVIDx, which is comprised of Normal, Pneumonia, and COVID-19 images from multiple public databases. In this work, we use transfer learning to segment the lungs in the COVIDx dataset. Next, we show why segmentation of the region of interest (lungs) is vital to correctly learn the task of classification, specifically in datasets that contain images from different resources as it is the case for the COVIDx dataset. Finally, we show improved results in detection of COVID-19 cases using our generative model (RANDGAN) compared to conventional generative adversarial networks (GANs) for anomaly detection in medical images, improving the area under the ROC curve from 0.71 to 0.77.