Nneji Grace Ugochi, Cai Jingye, Monday Happy Nkanta, Hossin Md Altab, Nahar Saifun, Mgbejime Goodness Temofe, Deng Jianhua
School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China.
School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China.
Diagnostics (Basel). 2022 Mar 15;12(3):717. doi: 10.3390/diagnostics12030717.
Coronavirus disease has rapidly spread globally since early January of 2020. With millions of deaths, it is essential for an automated system to be utilized to aid in the clinical diagnosis and reduce time consumption for image analysis. This article presents a generative adversarial network (GAN)-based deep learning application for precisely regaining high-resolution (HR) CXR images from low-resolution (LR) CXR correspondents for COVID-19 identification. Respectively, using the building blocks of GAN, we introduce a modified enhanced super-resolution generative adversarial network plus (MESRGAN+) to implement a connected nonlinear mapping collected from noise-contaminated low-resolution input images to produce deblurred and denoised HR images. As opposed to the latest trends of network complexity and computational costs, we incorporate an enhanced VGG19 fine-tuned twin network with the wavelet pooling strategy in order to extract distinct features for COVID-19 identification. We demonstrate our proposed model on a publicly available dataset of 11,920 samples of chest X-ray images, with 2980 cases of COVID-19 CXR, healthy, viral and bacterial cases. Our proposed model performs efficiently both on the binary and four-class classification. The proposed method achieves accuracy of 98.8%, precision of 98.6%, sensitivity of 97.5%, specificity of 98.9%, an F1 score of 97.8% and ROC AUC of 98.8% for the multi-class task, while, for the binary class, the model achieves accuracy of 99.7%, precision of 98.9%, sensitivity of 98.7%, specificity of 99.3%, an F1 score of 98.2% and ROC AUC of 99.7%. Our method obtains state-of-the-art (SOTA) performance, according to the experimental results, which is helpful for COVID-19 screening. This new conceptual framework is proposed to play an influential role in addressing the issues facing COVID-19 examination and other diseases.
自2020年1月初以来,冠状病毒病已在全球迅速传播。造成了数百万例死亡,因此利用自动化系统辅助临床诊断并减少图像分析的时间消耗至关重要。本文提出了一种基于生成对抗网络(GAN)的深度学习应用,用于从低分辨率(LR)胸部X光(CXR)图像精确恢复高分辨率(HR)CXR图像,以识别新型冠状病毒肺炎(COVID-19)。我们分别使用GAN的构建模块,引入了一种改进的增强超分辨率生成对抗网络升级版(MESRGAN+),以实现从受噪声污染的低分辨率输入图像中收集的连接非线性映射,从而生成去模糊和去噪的HR图像。与网络复杂性和计算成本的最新趋势不同,我们将经过微调的增强型VGG19孪生网络与小波池化策略相结合,以便提取用于COVID-19识别的独特特征。我们在一个公开可用的包含11920个胸部X光图像样本的数据集上展示了我们提出的模型,其中包括2980例COVID-19 CXR病例、健康病例、病毒病例和细菌病例。我们提出的模型在二分类和四分类任务中均表现高效。对于多分类任务,该方法的准确率为98.8%,精确率为98.6%,灵敏度为97.5%,特异性为98.9%,F1分数为97.8%,ROC曲线下面积(ROC AUC)为98.8%;而对于二分类任务,该模型的准确率为99.7%,精确率为98.9%,灵敏度为98.7%,特异性为99.3%,F1分数为98.2%,ROC AUC为99.7%。根据实验结果,我们的方法获得了最优(SOTA)性能,这有助于COVID-19筛查。这个新的概念框架被提出来,旨在应对COVID-19检测及其他疾病所面临的问题方面发挥重要作用。