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FCOD: Fast COVID-19 Detector based on deep learning techniques

机译:FCOD:基于深度学习技术的快速Covid-19探测器

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The sudden COVID-19 pandemic has caused a serious global concern due to infections and mortality rates. It is a hazardous disease that has recently become the biggest crisis in the modern era. Due to the limitation of test kits and the need for screening and rapid diagnosis of patients, it is essential to perform a self-operating detection model as a fast recognition system to detect COVID-19 infection and prevent the spread among the people. In this paper, we propose a novel technique called Fast COVID-19 Detector (FCOD) to have a fast detection of COVID-19 using X-ray images. The FCOD is a deep learning model based on the Inception architecture that uses 17 depthwise separable convolution layers to detect COVID-19. Depthwise separable convolution layers decrease the computation costs, time, and they can have a reducing role in the number of parameters compared to the standard convolution layers. To evaluate FCOD, we used covid-chestxray-dataset, which contains 940 publicly available typical chest X-ray images. Our results show that FCOD can provide accuracy, F1-score, and AUC of 96%, 96%, and 0.95%, respectively in classifying COVID-19 during 0.014?s for each case. The proposed model can be employed as a supportive decision-making system to assist radiologists in clinics and hospitals to screen patients immediately.
机译:突然的Covid-19大流行导致由于感染和死亡率而导致严重的全球关注。它是一种危险的疾病,最近成为现代时代最大的危机。由于测试套件的限制和筛选和快速诊断患者,必须执行自操作检测模型作为快速识别系统,以检测Covid-19感染并防止人民之间的蔓延。在本文中,我们提出了一种新颖的技术,称为快速Covid-19检测器(FCOD),以使用X射线图像快速检测Covid-19。 FCOD是基于初始架构的深度学习模型,该架构使用17深度可分离的卷积层来检测Covid-19。深度可分离的卷积层降低计算成本,时间,并且与标准卷积层相比,它们可以在参数的数量中具有降低的作用。为了评估FCOD,我们使用了Covid-ChestxRay-DataSet,其中包含940个公共可用的典型胸部X射线图像。我们的研究结果表明,在每种情况下,FCOD可以分别在分类Covid-19期间提供96%,96%和0.95%的准确性,F1分,96%和0.95%。该拟议的模型可以作为支持性决策系统,以帮助诊所和医院的放射科医师立即筛选患者。

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