Ayadi Manel, Ksibi Amel, Al-Rasheed Amal, Soufiene Ben Othman
Department of Information Systems, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia.
Prince Laboratory Research, ISITcom (Institut Supérieur d'Informatique et des Techniques de Communication de Hammam Sousse), University of Sousse, Hammam Sousse 4023, Tunisia.
Healthcare (Basel). 2022 Oct 18;10(10):2072. doi: 10.3390/healthcare10102072.
The novel coronavirus 2019 (COVID-19) spread rapidly around the world and its outbreak has become a pandemic. Due to an increase in afflicted cases, the quantity of COVID-19 tests kits available in hospitals has decreased. Therefore, an autonomous detection system is an essential tool for reducing infection risks and spreading of the virus. In the literature, various models based on machine learning (ML) and deep learning (DL) are introduced to detect many pneumonias using chest X-ray images. The cornerstone in this paper is the use of pretrained deep learning CNN architectures to construct an automated system for COVID-19 detection and diagnosis. In this work, we used the deep feature concatenation (DFC) mechanism to combine features extracted from input images using the two modern pre-trained CNN models, AlexNet and Xception. Hence, we propose COVID-AleXception: a neural network that is a concatenation of the AlexNet and Xception models for the overall improvement of the prediction capability of this pandemic. To evaluate the proposed model and build a dataset of large-scale X-ray images, there was a careful selection of multiple X-ray images from several sources. The COVID-AleXception model can achieve a classification accuracy of 98.68%, which shows the superiority of the proposed model over AlexNet and Xception that achieved a classification accuracy of 94.86% and 95.63%, respectively. The performance results of this proposed model demonstrate its pertinence to help radiologists diagnose COVID-19 more quickly.
2019年新型冠状病毒(COVID-19)在全球迅速传播,其爆发已成为一场大流行病。由于感染病例增加,医院可用的COVID-19检测试剂盒数量减少。因此,自主检测系统是降低病毒感染风险和传播的重要工具。在文献中,引入了各种基于机器学习(ML)和深度学习(DL)的模型,以使用胸部X光图像检测多种肺炎。本文的核心是使用预训练的深度学习卷积神经网络(CNN)架构构建一个用于COVID-19检测和诊断的自动化系统。在这项工作中,我们使用深度特征拼接(DFC)机制,将使用两个现代预训练CNN模型AlexNet和Xception从输入图像中提取的特征进行组合。因此,我们提出了COVID-AleXception:一种神经网络,它是AlexNet和Xception模型的拼接,用于全面提高对这种大流行病的预测能力。为了评估所提出的模型并构建一个大规模X光图像数据集,我们从多个来源精心挑选了多张X光图像。COVID-AleXception模型可以达到98.68%的分类准确率,这表明所提出的模型优于AlexNet和Xception,它们的分类准确率分别为94.86%和95.63%。该模型的性能结果证明了其有助于放射科医生更快诊断COVID-19的相关性。