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使用优化深度学习技术的新冠肺炎肺炎检测

COVID-19 Pneumonia Detection Using Optimized Deep Learning Techniques.

作者信息

Bashar Abul, Latif Ghazanfar, Ben Brahim Ghassen, Mohammad Nazeeruddin, Alghazo Jaafar

机构信息

Department of Computer Engineering, Prince Mohammad Bin Fahd University, Khobar 31952, Saudi Arabia.

Université du Québec à Chicoutimi, 555 Boulevard de l'Université, Chicoutimi, QC G7H2B1, Canada.

出版信息

Diagnostics (Basel). 2021 Oct 23;11(11):1972. doi: 10.3390/diagnostics11111972.

Abstract

It became apparent that mankind has to learn to live with and adapt to COVID-19, especially because the developed vaccines thus far do not prevent the infection but rather just reduce the severity of the symptoms. The manual classification and diagnosis of COVID-19 pneumonia requires specialized personnel and is time consuming and very costly. On the other hand, automatic diagnosis would allow for real-time diagnosis without human intervention resulting in reduced costs. Therefore, the objective of this research is to propose a novel optimized Deep Learning (DL) approach for the automatic classification and diagnosis of COVID-19 pneumonia using X-ray images. For this purpose, a publicly available dataset of chest X-rays on Kaggle was used in this study. The dataset was developed over three stages in a quest to have a unified COVID-19 entities dataset available for researchers. The dataset consists of 21,165 anterior-to-posterior and posterior-to-anterior chest X-ray images classified as: Normal (48%), COVID-19 (17%), Lung Opacity (28%) and Viral Pneumonia (6%). Data Augmentation was also applied to increase the dataset size to enhance the reliability of results by preventing overfitting. An optimized DL approach is implemented in which chest X-ray images go through a three-stage process. Image Enhancement is performed in the first stage, followed by Data Augmentation stage and in the final stage the results are fed to the Transfer Learning algorithms (AlexNet, GoogleNet, VGG16, VGG19, and DenseNet) where the images are classified and diagnosed. Extensive experiments were performed under various scenarios, which led to achieving the highest classification accuracy of 95.63% through the application of VGG16 transfer learning algorithm on the augmented enhanced dataset with freeze weights. This accuracy was found to be better as compared to the results reported by other methods in the recent literature. Thus, the proposed approach proved superior in performance as compared with that of other similar approaches in the extant literature, and it made a valuable contribution to the body of knowledge. Although the results achieved so far are promising, further work is planned to correlate the results of the proposed approach with clinical observations to further enhance the efficiency and accuracy of COVID-19 diagnosis.

摘要

显而易见,人类必须学会与新冠病毒共存并适应它,特别是因为迄今为止研发的疫苗并不能预防感染,而只是减轻症状的严重程度。新冠病毒肺炎的人工分类和诊断需要专业人员,既耗时又成本高昂。另一方面,自动诊断可以在无需人工干预的情况下进行实时诊断,从而降低成本。因此,本研究的目的是提出一种新颖的优化深度学习(DL)方法,用于使用X射线图像对新冠病毒肺炎进行自动分类和诊断。为此,本研究使用了Kaggle上一个公开可用的胸部X射线数据集。该数据集经过三个阶段开发,旨在为研究人员提供一个统一的新冠病毒相关实体数据集。该数据集由21165张前后位和后前位胸部X射线图像组成,分类如下:正常(48%)、新冠病毒(17%)、肺部混浊(28%)和病毒性肺炎(6%)。还应用了数据增强技术来增加数据集的大小,通过防止过拟合来提高结果的可靠性。实现了一种优化的深度学习方法,其中胸部X射线图像要经过三个阶段的处理。第一阶段进行图像增强,接着是数据增强阶段,在最后阶段,结果被输入到迁移学习算法(AlexNet、GoogleNet、VGG16、VGG19和DenseNet)中,对图像进行分类和诊断。在各种场景下进行了广泛的实验,通过在具有冻结权重的增强数据集上应用VGG16迁移学习算法,实现了95.63%的最高分类准确率。与近期文献中其他方法报告的结果相比,这一准确率更高。因此,与现有文献中的其他类似方法相比,所提出的方法在性能上被证明更优越,并且对知识体系做出了有价值的贡献。尽管目前取得的结果很有前景,但计划进一步开展工作,将所提出方法的结果与临床观察结果相关联,以进一步提高新冠病毒诊断的效率和准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3131/8625739/c58d5803e50d/diagnostics-11-01972-g001.jpg

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