论文标题

COVID-19的三重视图卷积神经网络胸部X射线诊断

Triple-view Convolutional Neural Networks for COVID-19 Diagnosis with Chest X-ray

论文作者

Zhang, Jianjia

论文摘要

2019年冠状病毒病(Covid-19)正在影响全球越来越多的人,给医疗保健系统带来了巨大的压力。与-19的早期和准确诊断对于筛查感染患者并打破人与人的传播至关重要。胸部X射线(CXR)使用深度学习对Covid-19的计算机辅助诊断成为对此目的的有前途的解决方案。但是,COVID-19的多样化和各种放射学特征使其具有挑战性,尤其是在考虑每次CXR扫描时通常仅生成一个单个图像。数据稀缺是另一个问题,因为目前很难收集大规模医疗CXR数据集。因此,如何从可用的有限样本中提取更多信息和相关的功能至关重要。为了解决这些问题,与从单个视图处理每个CXR图像的传统方法不同,本文提出了三卷卷积神经网络,用于COVID-19用CXR图像诊断。具体而言,提出的网络从每个CXR图像的三个视图,即左肺视图,右肺视图和整体视图中提取单个特征,然后在三个流中进行集成以进行联合诊断。所提出的网络结构尊重人肺的解剖结构,并且与Covid-19的临床诊断非常一致。此外,视图的标签不需要专家的领域知识,这是许多现有方法所需的。实验结果表明,所提出的方法实现了最先进的表现,尤其是在更具挑战性的三个班级分类任务中,并承认广泛的一般性和高灵活性。

The Coronavirus Disease 2019 (COVID-19) is affecting increasingly large number of people worldwide, posing significant stress to the health care systems. Early and accurate diagnosis of COVID-19 is critical in screening of infected patients and breaking the person-to-person transmission. Chest X-ray (CXR) based computer-aided diagnosis of COVID-19 using deep learning becomes a promising solution to this end. However, the diverse and various radiographic features of COVID-19 make it challenging, especially when considering each CXR scan typically only generates one single image. Data scarcity is another issue since collecting large-scale medical CXR data set could be difficult at present. Therefore, how to extract more informative and relevant features from the limited samples available becomes essential. To address these issues, unlike traditional methods processing each CXR image from a single view, this paper proposes triple-view convolutional neural networks for COVID-19 diagnosis with CXR images. Specifically, the proposed networks extract individual features from three views of each CXR image, i.e., the left lung view, the right lung view and the overall view, in three streams and then integrate them for joint diagnosis. The proposed network structure respects the anatomical structure of human lungs and is well aligned with clinical diagnosis of COVID-19 in practice. In addition, the labeling of the views does not require experts' domain knowledge, which is needed by many existing methods. The experimental results show that the proposed method achieves state-of-the-art performance, especially in the more challenging three class classification task, and admits wide generality and high flexibility.

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