Ghosh Swarup Kr, Ghosh Anupam
Department of Computer Science and Engineering, Sister Nivedita University - Techno India Group, Kolkata, India.
Department of Computer Science and Engineering, Netaji Subhash Engineering College, Kolkata, India.
Biomed Signal Process Control. 2022 Feb;72:103286. doi: 10.1016/j.bspc.2021.103286. Epub 2021 Nov 1.
Recently, people around the world are being vulnerable to the pandemic effect of the novel Corona Virus. It is very difficult to detect the virus infected chest X-ray (CXR) image during early stages due to constant gene mutation of the virus. It is also strenuous to differentiate between the usual pneumonia from the COVID-19 positive case as both show similar symptoms. This paper proposes a modified residual network based enhancement (ENResNet) scheme for the visual clarification of COVID-19 pneumonia impairment from CXR images and classification of COVID-19 under deep learning framework. Firstly, the residual image has been generated using residual convolutional neural network through batch normalization corresponding to each image. Secondly, a module has been constructed through normalized map using patches and residual images as input. The output consisting of residual images and patches of each module are fed into the next module and this goes on for consecutive eight modules. A feature map is generated from each module and the final enhanced CXR is produced via up-sampling process. Further, we have designed a simple CNN model for automatic detection of COVID-19 from CXR images in the light of 'multi-term loss' function and 'softmax' classifier in optimal way. The proposed model exhibits better result in the diagnosis of binary classification (COVID vs. Normal) and multi-class classification (COVID vs. Pneumonia vs. Normal) in this study. The suggested ENResNet achieves a classification accuracy and for binary classification and multi-class detection respectively in comparison with state-of-the-art methods.
最近,世界各地的人们都容易受到新型冠状病毒大流行的影响。由于该病毒不断发生基因突变,在早期阶段很难检测出感染病毒的胸部X光(CXR)图像。此外,区分普通肺炎和COVID-19阳性病例也很困难,因为两者表现出相似的症状。本文提出了一种基于改进残差网络的增强(ENResNet)方案,用于在深度学习框架下从CXR图像中直观地阐明COVID-19肺炎损伤情况并对COVID-19进行分类。首先,通过残差卷积神经网络对每张图像进行批量归一化处理来生成残差图像。其次,使用补丁和残差图像作为输入,通过归一化映射构建一个模块。每个模块的由残差图像和补丁组成的输出被输入到下一个模块,如此连续进行八个模块。从每个模块生成一个特征图,并通过上采样过程生成最终增强的CXR图像。此外,我们根据“多术语损失”函数和“softmax”分类器,以最优方式设计了一个简单的卷积神经网络模型,用于从CXR图像中自动检测COVID-19。在本研究中,所提出的模型在二元分类(COVID与正常)和多类分类(COVID与肺炎与正常)诊断中表现出更好的结果。与现有方法相比,所建议的ENResNet在二元分类和多类检测中分别达到了 和 的分类准确率。