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新冠病毒肺炎:利用深度学习方法从X射线图像中进行自动检测

COVID-19: Automatic detection from X-ray images by utilizing deep learning methods.

作者信息

Nigam Bhawna, Nigam Ayan, Jain Rahul, Dodia Shubham, Arora Nidhi, Annappa B

机构信息

Institute of Engineering and Technology, Devi Ahilya University, Indore, India.

Deepiotics Private Ltd, Indore, India.

出版信息

Expert Syst Appl. 2021 Aug 15;176:114883. doi: 10.1016/j.eswa.2021.114883. Epub 2021 Mar 16.

Abstract

In recent months, a novel virus named Coronavirus has emerged to become a pandemic. The virus is spreading not only humans, but it is also affecting animals. First ever case of Coronavirus was registered in city of Wuhan, Hubei province of China on 31st of December in 2019. Coronavirus infected patients display very similar symptoms like pneumonia, and it attacks the respiratory organs of the body, causing difficulty in breathing. The disease is diagnosed using a Real-Time Reverse Transcriptase Polymerase Chain reaction (RT-PCR) kit and requires time in the laboratory to confirm the presence of the virus. Due to insufficient availability of the kits, the suspected patients cannot be treated in time, which in turn increases the chance of spreading the disease. To overcome this solution, radiologists observed the changes appearing in the radiological images such as X-ray and CT scans. Using deep learning algorithms, the suspected patients' X-ray or Computed Tomography (CT) scan can differentiate between the healthy person and the patient affected by Coronavirus. In this paper, popular deep learning architectures are used to develop a Coronavirus diagnostic systems. The architectures used in this paper are VGG16, DenseNet121, Xception, NASNet, and EfficientNet. Multiclass classification is performed in this paper. The classes considered are COVID-19 positive patients, normal patients, and other class. In other class, chest X-ray images of pneumonia, influenza, and other illnesses related to the chest region are included. The accuracies obtained for VGG16, DenseNet121, Xception, NASNet, and EfficientNet are 79.01%, 89.96%, 88.03%, 85.03% and 93.48% respectively. The need for deep learning with radiologic images is necessary for this critical condition as this will provide a second opinion to the radiologists fast and accurately. These deep learning Coronavirus detection systems can also be useful in the regions where expert physicians and well-equipped clinics are not easily accessible.

摘要

近几个月来,一种名为冠状病毒的新型病毒已演变成一场大流行病。这种病毒不仅在人类中传播,也在影响动物。2019年12月31日,中国湖北省武汉市首次报告了冠状病毒病例。冠状病毒感染患者表现出与肺炎非常相似的症状,它攻击人体的呼吸器官,导致呼吸困难。该疾病通过实时逆转录聚合酶链反应(RT-PCR)试剂盒进行诊断,并且在实验室中需要一定时间来确认病毒的存在。由于试剂盒供应不足,疑似患者无法及时得到治疗,这反过来又增加了疾病传播的几率。为克服这一问题,放射科医生观察了X射线和CT扫描等放射影像中出现的变化。利用深度学习算法,疑似患者的X射线或计算机断层扫描(CT)可以区分健康人和感染冠状病毒的患者。在本文中,使用了流行的深度学习架构来开发冠状病毒诊断系统。本文使用的架构有VGG16、DenseNet121、Xception、NASNet和EfficientNet。本文进行了多类分类。所考虑的类别为新冠肺炎阳性患者、正常患者和其他类别。在其他类别中,包括肺炎、流感和其他与胸部区域相关疾病的胸部X射线图像。VGG16、DenseNet121、Xception、NASNet和EfficientNet分别获得的准确率为79.01%、89.96%、88.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a018/7962920/72971c4cf0f1/gr1_lrg.jpg

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