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An Efficient Approach for Automatic detection of COVID-19 using Transfer Learning from Chest X-Ray Images

机译:使用胸部X射线图像自动检测Covid-19的高效方法

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The coronavirus disease 2019 (covid 19), which was declared a pandemic by the World Health Organization (WHO) in December, causes significant alveolar damage and progressive respiratory failure, resulting in death. The only laboratory technique available, RT–PCR, has an accuracy of about 73 percent. Medical specialists may benefit from early detection using CXR. Using deep convolutional neural network architecture, we propose a Com-puter Aided Diagnosis (CADx) for the diagnosis of coronavirus disease 2019.The chest x-ray dataset is used for testing and training of neural networks. The CXR images are segmented using a U net model, and the segmented image is then used to train a classification model using the Inception v3 model, which distinguishes covid 19 from pneumococcal records and safe records. Training of inception v3 is done with different resolutions of Chest X-rays (CXR) and for further optimization adam optimizer is used. This model produces high computational efficiency with an accuracy of 0.97 per-cent. Based on the promising results obtained the proposed method can be used for effective diagnosis of covid 19 during this pandemic.
机译:2019年冠状病毒疾病(Covid 19)被世界卫生组织(世卫组织)宣布为12月的大流行,导致严重的肺泡损伤和渐进式呼吸衰竭,导致死亡。唯一的实验室技术RT-PCR,精度约为73%。医疗专家可以使用CXR从早期检测中受益。使用深度卷积神经网络架构,我们提出了一种用于诊断2019年冠状病毒疾病的COM-PINX辅助诊断(CADX)。胸部X射线数据集用于测试和培训神经网络。使用U NET模型分段CXR图像,然后使用分段图像使用初始V3模型训练分类模型,该模型将Covid 19与肺炎球菌记录和安全记录区分开来。成立V3的培训是用不同的胸部X射线(CXR)分辨率进行,并且进一步优化使用ADAM优化器。该模型产生高计算效率,精度为0.97%。基于所获得的效果,所提出的方法可用于在这种大流行期间对Covid 19的有效诊断。

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