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Hierarchical Automatic COVID-19 Detection via CT Scan Images

机译:分层自动Covid-19通过CT扫描图像检测

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The novel coronavirus disease (COVID-19) had its outbreak in December 2019. It has since spread across the world and caused great loss of life. Nowadays, computer tomography (CT) scans are a common and effective tool to detect COVID-19. However, manually detecting a huge amount of CT scans adds great pressure and causes additional workloads for physicians and radiologists, especially for those in areas where there is a severe COVID-19 pandemic. Driven by the desire of alleviating a medical worker’s burden, here, we propose a hierarchical method in COVID-19 detection via CT scans in order to obtain a much faster detection result and one that is less labor-intensive. In this study, we present an automatic COVID-19 detection method, which consists of a hierarchical model made-up of two stages: a segmentation stage followed by a classification stage. In the segmentation stage, a U-Net is used to segment the lung portion from chest CT slices in order to eliminate the interference of irrelevant tissues such as the heart and bones. In the classification stage, ResNet-18 is applied to classify previously segmented CT slices (from the previous stage) and predict the existence of COVID-19. Experimental results show that our proposed hierarchical detection method obtains satisfying performances in separating COVID-19 CT scans from common pneumonia CT scans at the scan level, indicating that the method has great potential in assisting physicians and radiologists in rapid COVID-19 detection and significantly reducing their workload.
机译:新型冠状病毒疾病(Covid-19)于2019年12月爆发了它。自从世界各地传播并造成了巨大的生活损失。如今,计算机断层扫描(CT)扫描是检测Covid-19的常见且有效的工具。然而,手动检测大量CT扫描增加了很大的压力,并导致医生和放射科医师的额外工作负载,特别是对于那些有严重的Covid-19大流行的领域的工作量。通过减轻医疗工作者的负担的愿望,我们在这里提出了通过CT扫描的Covid-19检测中的分层方法,以获得更快的检测结果和劳动密集型较少的检测结果。在这项研究中,我们提出了一种自动Covid-19检测方法,该方法包括两个阶段的分层模型组成:分割阶段,后跟分类阶段。在分割阶段,U-Net用于将肺部部分从胸部CT切片分割以消除诸如心脏和骨骼的无关组织的干扰。在分类阶段,resET-18应用于分类先前分段的CT片(来自前一级)并预测Covid-19的存在。实验结果表明,我们所提出的等级检测方法在扫描水平下从常见的肺炎CT扫描分离Covid-19 CT扫描的令人满意的性能,表明该方法在快速Covid-19检测中辅助医生和放射科医师具有巨大潜力。他们的工作量。

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