Ilhan Hamza Osman, Serbes Gorkem, Aydin Nizamettin
Yildiz Technical University, Istanbul, Turkey.
Appl Intell (Dordr). 2022;52(8):8551-8571. doi: 10.1007/s10489-021-02945-8. Epub 2021 Oct 30.
The Coronavirus disease (COVID-19), which is an infectious pulmonary disorder, has affected millions of people and has been declared as a global pandemic by the WHO. Due to highly contagious nature of COVID-19 and its high possibility of causing severe conditions in the patients, the development of rapid and accurate diagnostic tools have gained importance. The real-time reverse transcription-polymerize chain reaction (RT-PCR) is used to detect the presence of Coronavirus RNA by using the mucus and saliva mixture samples taken by the nasopharyngeal swab technique. But, RT-PCR suffers from having low-sensitivity especially in the early stage. Therefore, the usage of chest radiography has been increasing in the early diagnosis of COVID-19 due to its fast imaging speed, significantly low cost and low dosage exposure of radiation. In our study, a computer-aided diagnosis system for X-ray images based on convolutional neural networks (CNNs) and ensemble learning idea, which can be used by radiologists as a supporting tool in COVID-19 detection, has been proposed. Deep feature sets extracted by using seven CNN architectures were concatenated for feature level fusion and fed to multiple classifiers in terms of decision level fusion idea with the aim of discriminating COVID-19, pneumonia and no-finding classes. In the decision level fusion idea, a majority voting scheme was applied to the resultant decisions of classifiers. The obtained accuracy values and confusion matrix based evaluation criteria were presented for three progressively created data-sets. The aspects of the proposed method that are superior to existing COVID-19 detection studies have been discussed and the fusion performance of proposed approach was validated visually by using Class Activation Mapping technique. The experimental results show that the proposed approach has attained high COVID-19 detection performance that was proven by its comparable accuracy and superior precision/recall values with the existing studies.
冠状病毒病(COVID-19)是一种传染性肺部疾病,已感染数百万人,并被世界卫生组织宣布为全球大流行。由于COVID-19具有高度传染性且很可能导致患者出现严重症状,因此快速准确的诊断工具的开发变得至关重要。实时逆转录聚合酶链反应(RT-PCR)用于通过使用鼻咽拭子技术采集的黏液和唾液混合样本检测冠状病毒RNA的存在。但是,RT-PCR的灵敏度较低,尤其是在早期阶段。因此,由于胸部X光成像速度快、成本极低且辐射剂量低,胸部X光检查在COVID-19的早期诊断中的应用越来越多。在我们的研究中,提出了一种基于卷积神经网络(CNN)和集成学习思想的X射线图像计算机辅助诊断系统,放射科医生可将其用作COVID-19检测的辅助工具。通过使用七种CNN架构提取的深度特征集被连接起来进行特征级融合,并根据决策级融合思想输入到多个分类器中,以区分COVID-19、肺炎和无异常类别。在决策级融合思想中,对分类器的最终决策应用多数投票方案。针对三个逐步创建的数据集,给出了获得的准确率值和基于混淆矩阵的评估标准。讨论了所提方法优于现有COVID-19检测研究的方面,并使用类激活映射技术直观地验证了所提方法的融合性能。实验结果表明,所提方法具有较高的COVID-19检测性能,其准确率与现有研究相当,精确率/召回率更高,证明了这一点。