论文标题

COVID-DA:从典型肺炎到Covid-19的深区适应

COVID-DA: Deep Domain Adaptation from Typical Pneumonia to COVID-19

论文作者

Zhang, Yifan, Niu, Shuaicheng, Qiu, Zhen, Wei, Ying, Zhao, Peilin, Yao, Jianhua, Huang, Junzhou, Wu, Qingyao, Tan, Mingkui

论文摘要

2019年新型冠状病毒病(COVID-19)的爆发已经感染了数百万人,并且仍在迅速传播到全球。大多数COVID-19患者患有肺部感染,因此一种重要的诊断方法是筛选胸部射线照相图像,例如X射线或CT图像。但是,这种检查是耗时的和劳动力密集的,导致诊断效率有限。为了解决这个问题,最近基于AI的技术(例如深度学习)被用作提高诊断效率的有效计算机辅助手段。但是,一个实际且至关重要的困难是,由于医生对大流行作斗争的高度注释成本和紧急工作,带注释的COVID-19数据的可用性有限。这使得深入诊断模型的学习非常具有挑战性。为了解决这个问题,以典型的肺炎具有与Covid-19的相似特征,并且许多肺炎数据集都公开可用,我们建议我们进行域知识适应从典型的肺炎到Covid-19。主要挑战有两个:1)域之间数据分布的差异; 2)典型肺炎诊断和19.19的诊断之间的任务差异。为了解决这些问题,我们提出了一种新的深层域适应方法,用于诊断,即covid-da。具体而言,我们通过特征对抗适应来缓解域差异,并通过新颖的分类器分离方案处理任务差异问题。通过这种方式,Covid-Da只能使用少数COVID-19注释有效地诊断Covid-19。广泛的实验验证了Covid-Da的有效性及其在现实世界中的巨大潜力。

The outbreak of novel coronavirus disease 2019 (COVID-19) has already infected millions of people and is still rapidly spreading all over the globe. Most COVID-19 patients suffer from lung infection, so one important diagnostic method is to screen chest radiography images, e.g., X-Ray or CT images. However, such examinations are time-consuming and labor-intensive, leading to limited diagnostic efficiency. To solve this issue, AI-based technologies, such as deep learning, have been used recently as effective computer-aided means to improve diagnostic efficiency. However, one practical and critical difficulty is the limited availability of annotated COVID-19 data, due to the prohibitive annotation costs and urgent work of doctors to fight against the pandemic. This makes the learning of deep diagnosis models very challenging. To address this, motivated by that typical pneumonia has similar characteristics with COVID-19 and many pneumonia datasets are publicly available, we propose to conduct domain knowledge adaptation from typical pneumonia to COVID-19. There are two main challenges: 1) the discrepancy of data distributions between domains; 2) the task difference between the diagnosis of typical pneumonia and COVID-19. To address them, we propose a new deep domain adaptation method for COVID-19 diagnosis, namely COVID-DA. Specifically, we alleviate the domain discrepancy via feature adversarial adaptation and handle the task difference issue via a novel classifier separation scheme. In this way, COVID-DA is able to diagnose COVID-19 effectively with only a small number of COVID-19 annotations. Extensive experiments verify the effectiveness of COVID-DA and its great potential for real-world applications.

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