论文标题
基于CT/CXR图像并构建COVID-19
Screening COVID-19 Based on CT/CXR Images & Building a Publicly Available CT-scan Dataset of COVID-19
论文作者
论文摘要
Covid-19的迅速爆发威胁着世界各地的人类生活。由于诊断基础设施不足,因此开发准确,高效,廉价且快速的诊断工具非常重要。由于胸部X光摄影(例如胸部X射线(CXR)和CT计算机断层扫描(CT))是筛选Covid-19的可能方法,因此开发自动图像分类工具对检测COVID-19患者非常有帮助。迄今为止,研究人员提出了几种不同的筛选方法。但是,他们都无法实现可靠且高度敏感的性能。当前方法的主要缺点是缺乏足够的训练数据,低概括性能和高阳性检测率。为了应对此类局限性,这项研究首先建立了大型公开可用的CT扫描数据集,其中包括超过1000个个体的13K CT图像,其中从感染了Covid-19的500名患者拍摄了8K图像。其次,我们建议使用我们提出的CT数据集进行筛选Covid-19的深度学习模型,并报告基线结果。最后,我们使用转移学习方法扩展了从CXR图像筛选COVID-19的提出的CT模型。实验结果表明,所提出的CT和CXR方法的AUC得分分别为0.886和0.984。
The rapid outbreak of COVID-19 threatens humans life all around the world. Due to insufficient diagnostic infrastructures, developing an accurate, efficient, inexpensive, and quick diagnostic tool is of great importance. As chest radiography, such as chest X-ray (CXR) and CT computed tomography (CT), is a possible way for screening COVID-19, developing an automatic image classification tool is immensely helpful for detecting the patients with COVID-19. To date, researchers have proposed several different screening methods; however, none of them could achieve a reliable and highly sensitive performance yet. The main drawbacks of current methods are the lack of having enough training data, low generalization performance, and a high rate of false-positive detection. To tackle such limitations, this study firstly builds a large-size publicly available CT-scan dataset, consisting of more than 13k CT-images of more than 1000 individuals, in which 8k images are taken from 500 patients infected with COVID-19. Secondly, we propose a deep learning model for screening COVID-19 using our proposed CT dataset and report the baseline results. Finally, we extend the proposed CT model for screening COVID-19 from CXR images using a transfer learning approach. The experimental results show that the proposed CT and CXR methods achieve the AUC scores of 0.886 and 0.984 respectively.