论文标题

使用胸部X射线图像对COVID-19的多任务驱动的可解释诊断

Multi-Task Driven Explainable Diagnosis of COVID-19 using Chest X-ray Images

论文作者

Malhotra, Aakarsh, Mittal, Surbhi, Majumdar, Puspita, Chhabra, Saheb, Thakral, Kartik, Vatsa, Mayank, Singh, Richa, Chaudhury, Santanu, Pudrod, Ashwin, Agrawal, Anjali

论文摘要

随着2019年共同案件的越来越多,所有国家都在增加测试数字。尽管RT-PCR套件在几个国家 /地区有足够的数量,但其他人面临挑战,测试工具包的可用性有限,并且在偏远地区的加工中心。这激发了研究人员找到可靠,易于访问和更快的替代测试方法。胸部X射线是获得筛查方式的一种方式之一。向这个方向迈出了两个主要贡献。首先,我们介绍了COVID-19多任务网络,该网络是用于COVID-19筛选的自动化端到端网络。所提出的网络不仅可以预测CXR是否具有COVID-19的特征,还可以对感兴趣区域进行语义分割,以使模型可解释。其次,在医疗专业人员的帮助下,我们手动注释了9000张额叶X光片的肺部区域,从Chestxray-14,Chexpert和Consolidated Covid-19数据集中取出。此外,还注释了200张与COVID-19患者有关的胸部X光片以进行语义分割。该数据库将发布给研究界。

With increasing number of COVID-19 cases globally, all the countries are ramping up the testing numbers. While the RT-PCR kits are available in sufficient quantity in several countries, others are facing challenges with limited availability of testing kits and processing centers in remote areas. This has motivated researchers to find alternate methods of testing which are reliable, easily accessible and faster. Chest X-Ray is one of the modalities that is gaining acceptance as a screening modality. Towards this direction, the paper has two primary contributions. Firstly, we present the COVID-19 Multi-Task Network which is an automated end-to-end network for COVID-19 screening. The proposed network not only predicts whether the CXR has COVID-19 features present or not, it also performs semantic segmentation of the regions of interest to make the model explainable. Secondly, with the help of medical professionals, we manually annotate the lung regions of 9000 frontal chest radiographs taken from ChestXray-14, CheXpert and a consolidated COVID-19 dataset. Further, 200 chest radiographs pertaining to COVID-19 patients are also annotated for semantic segmentation. This database will be released to the research community.

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