Prashant Kunwar, Choudhary Prakash, Agrawal Tarun, Kaushik Evam
Department of Computer Science & Engineering, NIT Hamirpur, Hamirpur, Himachal Pradesh, India.
Computer Science & Engineering, Central University of Rajasthan, Rajasthan, India.
Intell Syst Appl. 2022 Nov;16:200154. doi: 10.1016/j.iswa.2022.200154. Epub 2022 Nov 21.
COVID-19 is an infectious disease that has cost millions of lives all over the world. A faster and safer diagnosis of COVID-19 is highly desirable in order to stop its spread. An electrocardiogram (ECG) signal-based diagnosis has shown its potential in the diagnosis of cardiac, stroke, and COVID-19. In this study, an ensemble of three deep learning models are used for COVID-19 detection in ECG images for multi-class classification. The results obtained with the weighted average ensemble technique have been improved by using the grid search technique. For multi-class classification, an optimized weighted average ensemble (OWAE) model classifies the ECG images with an accuracy of 95.29%, an F1-score of 95.4%, a precision of 95.5%, and a recall of 95.3%. In case of binary classification, VGG-19, EfficientNet-B4, and DenseNet-121 performed comparatively well with 100% accuracy. These results show that deep learning can be used in the diagnosis of COVID-19 disease using ECG images.
新冠病毒病是一种在全球已造成数百万人死亡的传染病。为阻止其传播,非常需要更快、更安全地诊断新冠病毒病。基于心电图(ECG)信号的诊断已在心脏疾病、中风和新冠病毒病的诊断中显示出其潜力。在本研究中,使用三个深度学习模型的集成来对心电图图像中的新冠病毒病进行多类别分类检测。通过使用网格搜索技术,改进了采用加权平均集成技术获得的结果。对于多类别分类,优化加权平均集成(OWAE)模型对心电图图像进行分类的准确率为95.29%,F1分数为95.4%,精确率为95.5%,召回率为95.3%。在二分类情况下,VGG - 19、EfficientNet - B4和DenseNet - 121的表现相对较好,准确率达100%。这些结果表明,深度学习可用于利用心电图图像诊断新冠病毒病。