Islam Rumana, Tarique Mohammed
Department of ECE, University of Windsor, ON, Canada N9B 3P4.
Department of ECE, University of Science and Technology of Fujairah, UAE.
Int J Biomed Imaging. 2022 Dec 22;2022:5318447. doi: 10.1155/2022/5318447. eCollection 2022.
This paper presents an automated and noninvasive technique to discriminate COVID-19 patients from pneumonia patients using chest X-ray images and artificial intelligence. The reverse transcription-polymerase chain reaction (RT-PCR) test is commonly administered to detect COVID-19. However, the RT-PCR test necessitates person-to-person contact to administer, requires variable time to produce results, and is expensive. Moreover, this test is still unreachable to the significant global population. The chest X-ray images can play an important role here as the X-ray machines are commonly available at any healthcare facility. However, the chest X-ray images of COVID-19 and viral pneumonia patients are very similar and often lead to misdiagnosis subjectively. This investigation has employed two algorithms to solve this problem objectively. One algorithm uses lower-dimension encoded features extracted from the X-ray images and applies them to the machine learning algorithms for final classification. The other algorithm relies on the inbuilt feature extractor network to extract features from the X-ray images and classifies them with a pretrained deep neural network VGG16. The simulation results show that the proposed two algorithms can extricate COVID-19 patients from pneumonia with the best accuracy of 100% and 98.1%, employing VGG16 and the machine learning algorithm, respectively. The performances of these two algorithms have also been collated with those of other existing state-of-the-art methods.
本文提出了一种利用胸部X光图像和人工智能将新冠肺炎患者与肺炎患者区分开来的自动化非侵入性技术。逆转录聚合酶链反应(RT-PCR)检测通常用于检测新冠肺炎。然而,RT-PCR检测需要人与人之间的接触来进行,产生结果需要不同的时间,而且成本很高。此外,全球仍有大量人口无法进行这项检测。胸部X光图像在这里可以发挥重要作用,因为X光机在任何医疗机构都很常见。然而,新冠肺炎患者和病毒性肺炎患者的胸部X光图像非常相似,主观上常常导致误诊。本研究采用了两种算法来客观地解决这个问题。一种算法使用从X光图像中提取的低维编码特征,并将其应用于机器学习算法进行最终分类。另一种算法依靠内置的特征提取网络从X光图像中提取特征,并用预训练的深度神经网络VGG16对其进行分类。仿真结果表明,所提出的两种算法分别使用VGG16和机器学习算法,能够以100%和98.1%的最佳准确率从肺炎患者中区分出新冠肺炎患者。这两种算法的性能也与其他现有的先进方法进行了对比。