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首页> 外文期刊>Frontiers in Medicine >The Performance of Deep Neural Networks in Differentiating Chest X-Rays of COVID-19 Patients From Other Bacterial and Viral Pneumonias
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The Performance of Deep Neural Networks in Differentiating Chest X-Rays of COVID-19 Patients From Other Bacterial and Viral Pneumonias

机译:深度神经网络在不同细菌和病毒性肺炎患者的胸部X射线中的性能

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Chest radiography is a critical tool in the early detection, management planning, and follow-up evaluation of COVID-19 pneumonia; however, in smaller clinics around the world, there is a shortage of radiologists to analyze large number of examinations especially performed during a pandemic. Limited availability of high-resolution computed tomography and real-time polymerase chain reaction in developing countries and regions of high patient turnover also emphasizes the importance of chest radiography as both a screening and diagnostic tool. In this paper, we compare the performance of 17 available deep learning algorithms to help identify imaging features of COVID19 pneumonia. We utilize an existing diagnostic technology (chest radiography) and preexisting neural networks (DarkNet-19) to detect imaging features of COVID-19 pneumonia. Our approach eliminates the extra time and resources needed to develop new technology and associated algorithms, thus aiding the front-line healthcare workers in the race against the COVID-19 pandemic. Our results show that DarkNet-19 is the optimal pre-trained neural network for the detection of radiographic features of COVID-19 pneumonia, scoring an overall accuracy of 94.28% over 5,854 X-ray images. We also present a custom visualization of the results that can be used to highlight important visual biomarkers of the disease and disease progression.
机译:胸部射线照相是早期检测,管理计划和Covid-19肺炎的后续评估中的关键工具;然而,在世界各地的较小诊所中,放射科学家缺乏缺乏分析大量在大流行期间进行的大量检查。高分辨率计算断层扫描和实时聚合酶链反应的有限可用性以及高患者周转区域的地区也强调了胸部射线照相的重要性,作为筛选和诊断工具。在本文中,我们比较了17个可用的深度学习算法的性能,以帮助识别Covid19肺炎的成像特征。我们利用现有的诊断技术(胸部射线照相)和预先存在的神经网络(Darknet-19)来检测Covid-19肺炎的成像特征。我们的方法消除了开发新技术和相关算法所需的额外时间和资源,从而帮助对阵Covid-19大流行的比赛中的前线医疗保健工人。我们的结果表明,Darknet-19是用于检测Covid-19肺炎的射线照相特征的最佳预训练的神经网络,总精度为94.28%超过5,854射线图像。我们还提供了定制可视化的结果,这些结果可用于突出疾病和疾病进展的重要视觉生物标志物。

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