论文标题

通过判别性成本敏感学习,从胸部X射线筛选Covid-19的强大筛选

Robust Screening of COVID-19 from Chest X-ray via Discriminative Cost-Sensitive Learning

论文作者

Li, Tianyang, Han, Zhongyi, Wei, Benzheng, Zheng, Yuanjie, Hong, Yanfei, Cong, Jinyu

论文摘要

本文解决了基于胸部X射线的2019年冠状病毒疾病自动筛查的新问题,这迫切需要快速停止大流行。但是,由于两个瓶颈:1)Covid-19的成像特征与胸部X射线的成像特征与胸部X射线的成像特征相似,但在胸部X射线上具有一些相似之处,而胸部X射线上的其他相似之处,而2)COVID-19的误诊率很高,并且误诊的成本很高,因此COVID-19的成像功能与其他相似之处相似,因此,从胸部X射线进行了强劲而准确的筛选仍然是全球认可的挑战:1)COVID-19的成像功能相似。尽管一些开创性的作品取得了长足的进步,但它们低估了两个关键的瓶颈。在本文中,我们报告了我们的解决方案,即判别成本敏感学习(DCSL),如果临床需要从胸部X射线上对Covid-19进行辅助筛查,这应该是选择。 DCSL结合了细粒度分类和成本敏感学习的两种优势。首先,DCSL产生了有条件的中心损失,可以学习深层的歧视性表示。其次,DCSL建立了得分级别的成本敏感学习,可以使将COVID-19示例错误分类为其他类别的成本自适应地扩大。 DCSL非常灵活,可以应用于任何深层神经网络。我们收集了一个由2,239个胸部X射线示例组成的大规模多级数据集:239个示例,来自确认的Covid-19病例,1,000例确认的细菌或病毒性肺炎病例的例子和1,000例健康人的例子。三级分类的广泛实验表明,我们的算法明显胜过最先进的算法。它的准确度为97.01%,精度为97%,灵敏度为97.09%,F1得分为96.98%。这些结果赋予我们的算法,作为Covid-19的快速大规模筛选的有效工具。

This paper addresses the new problem of automated screening of coronavirus disease 2019 (COVID-19) based on chest X-rays, which is urgently demanded toward fast stopping the pandemic. However, robust and accurate screening of COVID-19 from chest X-rays is still a globally recognized challenge because of two bottlenecks: 1) imaging features of COVID-19 share some similarities with other pneumonia on chest X-rays, and 2) the misdiagnosis rate of COVID-19 is very high, and the misdiagnosis cost is expensive. While a few pioneering works have made much progress, they underestimate both crucial bottlenecks. In this paper, we report our solution, discriminative cost-sensitive learning (DCSL), which should be the choice if the clinical needs the assisted screening of COVID-19 from chest X-rays. DCSL combines both advantages from fine-grained classification and cost-sensitive learning. Firstly, DCSL develops a conditional center loss that learns deep discriminative representation. Secondly, DCSL establishes score-level cost-sensitive learning that can adaptively enlarge the cost of misclassifying COVID-19 examples into other classes. DCSL is so flexible that it can apply in any deep neural network. We collected a large-scale multi-class dataset comprised of 2,239 chest X-ray examples: 239 examples from confirmed COVID-19 cases, 1,000 examples with confirmed bacterial or viral pneumonia cases, and 1,000 examples of healthy people. Extensive experiments on the three-class classification show that our algorithm remarkably outperforms state-of-the-art algorithms. It achieves an accuracy of 97.01%, a precision of 97%, a sensitivity of 97.09%, and an F1-score of 96.98%. These results endow our algorithm as an efficient tool for the fast large-scale screening of COVID-19.

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