论文标题

使用胸部X射线图像的COVID-19的预警方法学

Advance Warning Methodologies for COVID-19 using Chest X-Ray Images

论文作者

Ahishali, Mete, Degerli, Aysen, Yamac, Mehmet, Kiranyaz, Serkan, Chowdhury, Muhammad E. H., Hameed, Khalid, Hamid, Tahir, Mazhar, Rashid, Gabbouj, Moncef

论文摘要

2019年冠状病毒疾病(Covid-19)在2019年12月首次检测后已迅速成为全球健康问题。结果,准确且可靠的预先警告系统可早期诊断Covid-19,现在已成为优先事项。根据专家医生的胸部X射线图像,在早期阶段对Covid-19的检测并不是一项直接的任务,因为仅当该病发展到中度或重度阶段时,感染的痕迹才能看到。在这项研究中,我们的第一个目的是评估最近\ textIt {最新的}机器学习技术,用于从胸部X射线图像中早期检测到COVID-19的能力。在这项研究中考虑了紧凑的分类器和深度学习方法。此外,我们为此目的提出了最近的紧凑型分类器,卷积支持估计器网络(CSEN)方法,因为它非常适合稀缺的数据分类任务。最后,这项研究介绍了一个名为早期-QATA-COV19的新基准数据集,该数据集由1065个早期COVID-19-COVID-19,由医疗医生标记的肺炎样品(非常有限或没有感染迹象)和12 544个样品用于对照(正常)。一组详细的实验表明,CSEN以超过95.5%的特异性达到了顶部(超过97%)的敏感性。此外,Densenet-121网络在其他深层网络中产生领先的性能,具有95%的敏感性和99.74%的特异性。

Coronavirus disease 2019 (COVID-19) has rapidly become a global health concern after its first known detection in December 2019. As a result, accurate and reliable advance warning system for the early diagnosis of COVID-19 has now become a priority. The detection of COVID-19 in early stages is not a straightforward task from chest X-ray images according to expert medical doctors because the traces of the infection are visible only when the disease has progressed to a moderate or severe stage. In this study, our first aim is to evaluate the ability of recent \textit{state-of-the-art} Machine Learning techniques for the early detection of COVID-19 from chest X-ray images. Both compact classifiers and deep learning approaches are considered in this study. Furthermore, we propose a recent compact classifier, Convolutional Support Estimator Network (CSEN) approach for this purpose since it is well-suited for a scarce-data classification task. Finally, this study introduces a new benchmark dataset called Early-QaTa-COV19, which consists of 1065 early-stage COVID-19 pneumonia samples (very limited or no infection signs) labelled by the medical doctors and 12 544 samples for control (normal) class. A detailed set of experiments shows that the CSEN achieves the top (over 97%) sensitivity with over 95.5% specificity. Moreover, DenseNet-121 network produces the leading performance among other deep networks with 95% sensitivity and 99.74% specificity.

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