Diagnosis of COVID-19 Pneumonia via a Novel Deep Learning Architecture

被引:0
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作者
Xin Zhang
Siyuan Lu
Shui-Hua Wang
Xiang Yu
Su-Jing Wang
Lun Yao
Yi Pan
Yu-Dong Zhang
机构
[1] The Fourth People’s Hospital of Huai’an,Department of Medical Imaging
[2] University of Leicester,School of Informatics
[3] Loughborough University,School of Architecture Building and Civil Engineering
[4] University of Leicester,School of Mathematics and Actuarial Science
[5] Chinese Academy of Sciences,Key Laboratory of Behavior Sciences, Institute of Psychology
[6] University of the Chinese Academy of Sciences,Department of Psychology
[7] The Fourth People’s Hospital of Huai’an,Department of Infection Diseases
[8] Georgia State University,Department of Computer Science
[9] King Abdulaziz University,Department of Information Systems, Faculty of Computing and Information Technology
关键词
pneumonia; COVID-19; convolutional neural network; AlexNet; deep learning;
D O I
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中图分类号
学科分类号
摘要
COVID-19 is a contagious infection that has severe effects on the global economy and our daily life. Accurate diagnosis of COVID-19 is of importance for consultants, patients, and radiologists. In this study, we use the deep learning network AlexNet as the backbone, and enhance it with the following two aspects: 1) adding batch normalization to help accelerate the training, reducing the internal covariance shift; 2) replacing the fully connected layer in AlexNet with three classifiers: SNN, ELM, and RVFL. Therefore, we have three novel models from the deep COVID network (DC-Net) framework, which are named DC-Net-S, DC-Net-E, and DC-Net-R, respectively. After comparison, we find the proposed DC-Net-R achieves an average accuracy of 90.91% on a private dataset (available upon email request) comprising of 296 images while the specificity reaches 96.13%, and has the best performance among all three proposed classifiers. In addition, we show that our DC-Net-R also performs much better than other existing algorithms in the literature.
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页码:330 / 343
页数:13
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