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

机译:Covid-19:通过利用深度学习方法自动检测X射线图像

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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.
机译:最近几个月,名为冠状病毒的新病毒已经成为大流行。病毒不仅蔓延,而且还在人类中蔓延,但它也会影响动物。首先是在2019年12月31日湖北省武汉市武汉市武汉市注册了Coronavirus的案例。冠状病毒感染患者呈现出非常类似的症状,如肺炎,它攻击了身体的呼吸道,呼吸困难。使用实时逆转录酶聚合酶链反应(RT-PCR)试剂​​盒诊断该疾病,并且需要时间在实验室中确认病毒的存在。由于套件的可用性不足,可疑患者不能及时对待,这反过来增加了传播疾病的可能性。为了克服这种解决方案,放射科医师观察到诸如X射线和CT扫描的放射线图像中出现的变化。使用深度学习算法,可疑患者? X射线或计算机断层扫描(CT)扫描可以区分健康人和受冠状病毒影响的患者。在本文中,流行的深度学习架构用于开发Coronavirus诊断系统。本文中使用的架构是VGG16,DenSenet121,Xcepion,NASnet和ApplicalNet。本文进行多款分类。考虑的课程是Covid-19阳性患者,正常患者和其他课程。在其他类中,包括肺炎,流感和与胸部区域相关的其他疾病的胸X射线图像。 VGG16,DENSENET121,XEPECION,NASNET和效率获得的准分性分别为79.01%,89.96%,88.03%,85.03%和93.48%。对于这种关键条件,需要对辐射学学习的深度学习的需求是必要的,因为这将快速准确地向放射科医生提供第二种意见。这些深度学习冠状病毒检测系统在专家医师和设备齐全的诊所不容易访问的区域中也是有用的。

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