Almalki Yassir Edrees, Qayyum Abdul, Irfan Muhammad, Haider Noman, Glowacz Adam, Alshehri Fahad Mohammed, Alduraibi Sharifa K, Alshamrani Khalaf, Alkhalik Basha Mohammad Abd, Alduraibi Alaa, Saeed M K, Rahman Saifur
Department of Medicine, Division of Radiology, Medical College, Najran University, Najran 61441, Saudi Arabia.
ImViA Laboratory, University of Bourgogne Franche-Comté, 21000 Dijon, France.
Healthcare (Basel). 2021 Apr 29;9(5):522. doi: 10.3390/healthcare9050522.
The Coronavirus disease 2019 (COVID-19) is an infectious disease spreading rapidly and uncontrollably throughout the world. The critical challenge is the rapid detection of Coronavirus infected people. The available techniques being utilized are body-temperature measurement, along with anterior nasal swab analysis. However, taking nasal swabs and lab testing are complex, intrusive, and require many resources. Furthermore, the lack of test kits to meet the exceeding cases is also a major limitation. The current challenge is to develop some technology to non-intrusively detect the suspected Coronavirus patients through Artificial Intelligence (AI) techniques such as deep learning (DL). Another challenge to conduct the research on this area is the difficulty of obtaining the dataset due to a limited number of patients giving their consent to participate in the research study. Looking at the efficacy of AI in healthcare systems, it is a great challenge for the researchers to develop an AI algorithm that can help health professionals and government officials automatically identify and isolate people with Coronavirus symptoms. Hence, this paper proposes a novel method CoVIRNet (COVID Inception-ResNet model), which utilizes the chest X-rays to diagnose the COVID-19 patients automatically. The proposed algorithm has different inception residual blocks that cater to information by using different depths feature maps at different scales, with the various layers. The features are concatenated at each proposed classification block, using the average-pooling layer, and concatenated features are passed to the fully connected layer. The efficient proposed deep-learning blocks used different regularization techniques to minimize the overfitting due to the small COVID-19 dataset. The multiscale features are extracted at different levels of the proposed deep-learning model and then embedded into various machine-learning models to validate the combination of deep-learning and machine-learning models. The proposed CoVIR-Net model achieved 95.7% accuracy, and the CoVIR-Net feature extractor with random-forest classifier produced 97.29% accuracy, which is the highest, as compared to existing state-of-the-art deep-learning methods. The proposed model would be an automatic solution for the assessment and classification of COVID-19. We predict that the proposed method will demonstrate an outstanding performance as compared to the state-of-the-art techniques being used currently.
2019年冠状病毒病(COVID-19)是一种在全球迅速且无法控制地传播的传染病。关键挑战在于快速检测出感染冠状病毒的人。目前使用的技术包括体温测量以及前鼻拭子分析。然而,采集鼻拭子和实验室检测复杂、具有侵入性且需要大量资源。此外,缺乏足够的检测试剂盒来应对不断增加的病例也是一个主要限制。当前的挑战是开发一些技术,通过深度学习(DL)等人工智能(AI)技术来非侵入性地检测疑似冠状病毒患者。在这一领域开展研究的另一个挑战是,由于同意参与研究的患者数量有限,难以获取数据集。鉴于AI在医疗系统中的功效,研究人员面临着巨大挑战,即开发一种能帮助医疗专业人员和政府官员自动识别并隔离有冠状病毒症状者的AI算法。因此,本文提出了一种新颖的方法CoVIRNet(COVID Inception-ResNet模型),该方法利用胸部X光片自动诊断COVID-19患者。所提出的算法具有不同的初始残差块,通过在不同尺度上使用不同深度的特征图以及不同的层来处理信息。在每个提出的分类块处,使用平均池化层将特征连接起来,然后将连接后的特征传递到全连接层。所提出的高效深度学习块使用了不同的正则化技术,以最小化因COVID-19数据集较小而导致的过拟合。在所提出的深度学习模型的不同层次上提取多尺度特征,然后将其嵌入到各种机器学习模型中,以验证深度学习和机器学习模型的组合。所提出的CoVIR-Net模型准确率达到95.7%,而带有随机森林分类器的CoVIR-Net特征提取器准确率达到97.29%,与现有的最先进深度学习方法相比,这是最高的。所提出的模型将成为COVID-19评估和分类的自动解决方案。我们预测,与目前使用的最先进技术相比,所提出的方法将表现出卓越的性能。