SBILab, Department of ECE, IIIT-Delhi, Delhi, India.
Department of Pharmacology, MAMC, Delhi, India.
Comput Biol Med. 2022 Jul;146:105540. doi: 10.1016/j.compbiomed.2022.105540. Epub 2022 Apr 30.
Studies showed that many COVID-19 survivors develop sub-clinical to clinical heart damage, even if subjects did not have underlying heart disease before COVID. Since Electrocardiogram (ECG) is a reliable technique for cardiovascular disease diagnosis, this study analyzes the 12-lead ECG recordings of healthy and post-COVID (COVID-recovered) subjects to ascertain ECG changes after suffering from COVID-19.
We propose a shallow 1-D convolutional neural network (CNN) deep learning architecture, namely ECG-iCOVIDNet, to distinguish ECG data of post-COVID subjects and healthy subjects. Further, we employed ShAP technique to interpret ECG segments that are highlighted by the CNN model for the classification of ECG recordings into healthy and post-COVID subjects.
ECG data of 427 healthy and 105 post-COVID subjects were analyzed. Results show that the proposed ECG-iCOVIDNet model could classify the ECG recordings of healthy and post-COVID subjects better than the state-of-the-art deep learning models. The proposed model yields an F-score of 100%.
So far, we have not come across any other study with an in-depth ECG signal analysis of the COVID-recovered subjects. In this study, it is shown that the shallow ECG-iCOVIDNet CNN model performed good for distinguishing ECG signals of COVID-recovered subjects from those of healthy subjects. In line with the literature, this study confirms changes in the ECG signals of COVID-recovered patients that could be captured by the proposed CNN model. Successful deployment of such systems can help the doctors identify the changes in the ECG of the post-COVID subjects on time that can save many lives.
研究表明,许多 COVID-19 幸存者即使在感染 COVID-19 之前没有潜在的心脏病,也会出现亚临床到临床心脏损伤。由于心电图(ECG)是诊断心血管疾病的可靠技术,因此本研究分析了健康人和 COVID 后(COVID 康复)受试者的 12 导联 ECG 记录,以确定 COVID-19 后心电图的变化。
我们提出了一种浅层 1-D 卷积神经网络(CNN)深度学习架构,即 ECG-iCOVIDNet,用于区分 COVID 后受试者和健康受试者的 ECG 数据。此外,我们采用 ShAP 技术来解释 CNN 模型突出显示的 ECG 段,以便将 ECG 记录分类为健康和 COVID 后受试者。
分析了 427 名健康受试者和 105 名 COVID 后受试者的 ECG 数据。结果表明,与最先进的深度学习模型相比,所提出的 ECG-iCOVIDNet 模型能够更好地对健康和 COVID 后受试者的 ECG 记录进行分类。所提出的模型的 F 分数为 100%。
到目前为止,我们还没有遇到任何其他对 COVID 康复受试者进行深入 ECG 信号分析的研究。在这项研究中,表明浅层 ECG-iCOVIDNet CNN 模型在区分 COVID 康复受试者和健康受试者的 ECG 信号方面表现良好。与文献一致,本研究证实了 COVID 康复患者心电图信号的变化,这些变化可以通过所提出的 CNN 模型捕捉到。成功部署此类系统可以帮助医生及时识别 COVID 后受试者心电图的变化,从而挽救许多生命。