Ksibi Amel, Zakariah Mohammed, Ayadi Manel, Elmannai Hela, Shukla Prashant Kumar, Awal Halifa, Hamdi Monia
Department of Information Systems, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O.Box 84428, Riyadh 11671, Saudi Arabia.
College of Computer and Information Sciences, King Saud University, P.O.Box 51178, Riyadh 11543, Saudi Arabia.
Comput Intell Neurosci. 2022 Jun 16;2022:9414567. doi: 10.1155/2022/9414567. eCollection 2022.
COVID-19 has remained a threat to world life despite a recent reduction in cases. There is still a possibility that the virus will evolve and become more contagious. If such a situation occurs, the resulting calamity will be worse than in the past if we act irresponsibly. COVID-19 must be widely screened and recognized early to avert a global epidemic. Positive individuals should be quarantined immediately, as this is the only effective way to prevent a global tragedy that has occurred previously. No positive case should go unrecognized. However, current COVID-19 detection procedures require a significant amount of time during human examination based on genetic and imaging techniques. Apart from RT-PCR and antigen-based tests, CXR and CT imaging techniques aid in the rapid and cost-effective identification of COVID. However, discriminating between diseased and normal X-rays is a time-consuming and challenging task requiring an expert's skill. In such a case, the only solution was an automatic diagnosis strategy for identifying COVID-19 instances from chest X-ray images. This article utilized a deep convolutional neural network, ResNet, which has been demonstrated to be the most effective for image classification. The present model is trained using pretrained ResNet on ImageNet weights. The versions of ResNet34, ResNet50, and ResNet101 were implemented and validated against the dataset. With a more extensive network, the accuracy appeared to improve. Nonetheless, our objective was to balance accuracy and training time on a larger dataset. By comparing the prediction outcomes of the three models, we concluded that ResNet34 is a more likely candidate for COVID-19 detection from chest X-rays. The highest accuracy level reached 98.34%, which was higher than the accuracy achieved by other state-of-the-art approaches examined in earlier studies. Subsequent analysis indicated that the incorrect predictions occurred with approximately 100% certainty. This uncovered a severe weakness in CNN, particularly in the medical area, where critical decisions are made. However, this can be addressed further in a future study by developing a modified model to incorporate uncertainty into the predictions, allowing medical personnel to manually review the incorrect predictions.
尽管近期病例有所减少,但新冠病毒(COVID-19)仍然对全球生命构成威胁。病毒仍有可能进化并变得更具传染性。如果这种情况发生,而我们采取不负责任的行动,那么由此引发的灾难将比过去更严重。必须对COVID-19进行广泛筛查并尽早识别,以避免全球大流行。阳性个体应立即隔离,因为这是防止此前发生的全球悲剧的唯一有效方法。任何阳性病例都不应被漏诊。然而,目前的COVID-19检测程序在基于基因和成像技术的人工检查过程中需要大量时间。除了逆转录聚合酶链反应(RT-PCR)和基于抗原的检测外,胸部X线摄影(CXR)和计算机断层扫描(CT)成像技术有助于快速且经济高效地识别COVID。然而,区分病变和正常的X线片是一项耗时且具有挑战性的任务,需要专家的技能。在这种情况下,唯一的解决方案是采用自动诊断策略,从胸部X线图像中识别COVID-19病例。本文利用了深度卷积神经网络ResNet,该网络已被证明在图像分类方面最为有效。当前模型使用在ImageNet权重上预训练的ResNet进行训练。实现了ResNet34、ResNet50和ResNet101版本,并针对数据集进行了验证。随着网络规模的扩大,准确率似乎有所提高。尽管如此,我们的目标是在更大的数据集上平衡准确率和训练时间。通过比较这三种模型的预测结果,我们得出结论,ResNet34更有可能用于从胸部X线片中检测COVID-19。最高准确率达到98.34%,高于早期研究中所考察的其他先进方法所达到的准确率。后续分析表明,错误预测的发生具有约100%的确定性。这揭示了卷积神经网络(CNN)的一个严重弱点,尤其是在做出关键决策的医疗领域。然而,在未来的研究中,可以通过开发一种改进模型,将不确定性纳入预测,以便医务人员手动复查错误预测,从而进一步解决这个问题。