论文标题

COVID-19-CT-CXR:生物医学文献中的COVID-19上的可自由访问且标签弱标记的胸部X射线和CT图像收集

COVID-19-CT-CXR: a freely accessible and weakly labeled chest X-ray and CT image collection on COVID-19 from biomedical literature

论文作者

Peng, Yifan, Tang, Yu-Xing, Lee, Sungwon, Zhu, Yingying, Summers, Ronald M., Lu, Zhiyong

论文摘要

对全球健康的最新威胁是Covid-19爆发。尽管存在大量的胸部X射线(CXR)和计算机断层扫描(CT)扫描数据集,但由于患者的隐私,目前很少有COVID-19的图像收集。同时,生物医学文献中相关的19篇文章迅速增长。在这里,我们介绍了Covid-19-CT-CXR,这是COVID-19 CXR和CT图像的公共数据库,这些数据库是从PubMed Central Open Access(PMC-OA)子集中自动从Covid-19相关文章中自动提取的。我们在文章中提取了数字,相关的字幕和相关的图形描述,并将化合物数字分为亚法。我们还设计了一个深度学习模型,以将它们与其他人物类型区分开,并相应地对其进行分类。最终数据库包括1,327 CT和263个CXR图像(截至2020年5月9日),其相关文本。为了证明COVID-19-CT-CXR的实用性,我们进行了四个案例研究。 (1)我们表明,当用作其他培训数据时,Covid-19-CT-CXR能够为COVID-19和非旋转-19 CT的分类做出改善的DL性能。 (2)我们收集了流感的CT图像,并训练了DL基线,以区分CT上COVID-19,流感或正常或其他类型的疾病的诊断。 (3)我们从非旋转19 CXR训练了无监督的一级分类器,并进行了异常检测以检测COVID-19 CXR。 (4)从文本开采的字幕和图形描述中,我们比较了Covid-19与流感的临床症状和临床发现,以证明科学出版物中的疾病差异。我们认为,我们的工作是现有资源的补充,并希望它将有助于对COVID-19的大流行的医学形象分析。数据集,代码和DL模型可在https://github.com/ncbi-nlp/covid-19-ct-cxr上公开获得。

The latest threat to global health is the COVID-19 outbreak. Although there exist large datasets of chest X-rays (CXR) and computed tomography (CT) scans, few COVID-19 image collections are currently available due to patient privacy. At the same time, there is a rapid growth of COVID-19-relevant articles in the biomedical literature. Here, we present COVID-19-CT-CXR, a public database of COVID-19 CXR and CT images, which are automatically extracted from COVID-19-relevant articles from the PubMed Central Open Access (PMC-OA) Subset. We extracted figures, associated captions, and relevant figure descriptions in the article and separated compound figures into subfigures. We also designed a deep-learning model to distinguish them from other figure types and to classify them accordingly. The final database includes 1,327 CT and 263 CXR images (as of May 9, 2020) with their relevant text. To demonstrate the utility of COVID-19-CT-CXR, we conducted four case studies. (1) We show that COVID-19-CT-CXR, when used as additional training data, is able to contribute to improved DL performance for the classification of COVID-19 and non-COVID-19 CT. (2) We collected CT images of influenza and trained a DL baseline to distinguish a diagnosis of COVID-19, influenza, or normal or other types of diseases on CT. (3) We trained an unsupervised one-class classifier from non-COVID-19 CXR and performed anomaly detection to detect COVID-19 CXR. (4) From text-mined captions and figure descriptions, we compared clinical symptoms and clinical findings of COVID-19 vs. those of influenza to demonstrate the disease differences in the scientific publications. We believe that our work is complementary to existing resources and hope that it will contribute to medical image analysis of the COVID-19 pandemic. The dataset, code, and DL models are publicly available at https://github.com/ncbi-nlp/COVID-19-CT-CXR.

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