COV-ECGNET: COVID-19 detection using ECG trace images with deep convolutional neural network
Tawsifur Rahman, Alex Akinbi, Muhammad E. H. Chowdhury, Tarik A., Rashid, Abdulkadir \c{S}eng\"ur, Amith Khandakar, Khandaker Reajul Islam,, Aras M. Ismael

TL;DR
This study explores using deep convolutional neural networks to detect COVID-19 from ECG trace images, achieving high accuracy and enabling rapid diagnosis especially in low-resource settings.
Contribution
First to investigate deep CNN models for COVID-19 detection from ECG images, demonstrating high accuracy across multiple classification schemes.
Findings
Densenet201 achieved 99.1% accuracy in two-class classification.
InceptionV3 achieved 97.83% accuracy in five-class classification.
Networks focus on relevant ECG areas as confirmed by ScoreCAM visualization.
Abstract
The reliable and rapid identification of the COVID-19 has become crucial to prevent the rapid spread of the disease, ease lockdown restrictions and reduce pressure on public health infrastructures. Recently, several methods and techniques have been proposed to detect the SARS-CoV-2 virus using different images and data. However, this is the first study that will explore the possibility of using deep convolutional neural network (CNN) models to detect COVID-19 from electrocardiogram (ECG) trace images. In this work, COVID-19 and other cardiovascular diseases (CVDs) were detected using deep-learning techniques. A public dataset of ECG images consists of 1937 images from five distinct categories, such as Normal, COVID-19, myocardial infarction (MI), abnormal heartbeat (AHB), and recovered myocardial infarction (RMI) were used in this study. Six different deep CNN models (ResNet18,…
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