Department of Computer Science, University of Engineering and Technology, Lahore 54890, Pakistan.
Quality Operations Laboratory, Institute of Microbiology, University of Veterinary and Animal Sciences, Lahore, Pakistan.
Comput Intell Neurosci. 2021 Jan 5;2021:8890226. doi: 10.1155/2021/8890226. eCollection 2021.
The novel coronavirus, SARS-CoV-2, can be deadly to people, causing COVID-19. The ease of its propagation, coupled with its high capacity for illness and death in infected individuals, makes it a hazard to the community. Chest X-rays are one of the most common but most difficult to interpret radiographic examination for early diagnosis of coronavirus-related infections. They carry a considerable amount of anatomical and physiological information, but it is sometimes difficult even for the expert radiologist to derive the related information they contain. Automatic classification using deep learning models can help in better assessing these infections swiftly. Deep CNN models, namely, MobileNet, ResNet50, and InceptionV3, were applied with different variations, including training the model from the start, fine-tuning along with adjusting learned weights of all layers, and fine-tuning with learned weights along with augmentation. Fine-tuning with augmentation produced the best results in pretrained models. Out of these, two best-performing models (MobileNet and InceptionV3) selected for ensemble learning produced accuracy and FScore of 95.18% and 90.34%, and 95.75% and 91.47%, respectively. The proposed hybrid ensemble model generated with the merger of these deep models produced a classification accuracy and FScore of 96.49% and 92.97%. For test dataset, which was separately kept, the model generated accuracy and FScore of 94.19% and 88.64%. Automatic classification using deep ensemble learning can help radiologists in the correct identification of coronavirus-related infections in chest X-rays. Consequently, this swift and computer-aided diagnosis can help in saving precious human lives and minimizing the social and economic impact on society.
新型冠状病毒(SARS-CoV-2)可对人类致命,引发 COVID-19。其传播容易程度,加上其在感染个体中导致疾病和死亡的高能力,使其成为社区的危害。胸部 X 光检查是最常见但最难解释的放射学检查之一,用于早期诊断冠状病毒相关感染。它们携带大量的解剖学和生理学信息,但即使是专家放射科医生有时也很难从中得出相关信息。使用深度学习模型的自动分类可以帮助更快地评估这些感染。已经应用了几种深 CNN 模型,即 MobileNet、ResNet50 和 InceptionV3,并进行了不同的变体,包括从开始训练模型、与调整所有层的学习权重一起微调以及与增强一起微调。在预训练模型中,通过增强进行微调的效果最好。在这些模型中,选择两个性能最佳的模型(MobileNet 和 InceptionV3)进行集成学习,产生了 95.18%和 90.34%的准确性和 F 分数,以及 95.75%和 91.47%的准确性和 F 分数。通过合并这些深模型生成的混合集成模型产生了 96.49%和 92.97%的分类准确性和 F 分数。对于单独保留的测试数据集,该模型产生了 94.19%和 88.64%的准确性和 F 分数。使用深集成学习的自动分类可以帮助放射科医生正确识别胸部 X 光片中的冠状病毒相关感染。因此,这种快速和计算机辅助诊断有助于挽救宝贵的生命,并最大限度地减少对社会的社会和经济影响。