A CNN Transfer Learning -Electrocardiogram (ECG) Signal Approach to Predict COVID-19

John Irungu, T. Oladunni, Max Denis, Esther Ososanya, Ruth Muriithi
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引用次数: 2

Abstract

Deep learning is increasingly gaining traction in cutting-edge medical sciences such as image classification, and genomics due to the high computational performance and accuracy in evaluating medical data. In this study, we investigate the cardiac properties of ECG Images and predict COVID-19 in a binary classification of patients who tested positive for COVID-19 and Normal Persons who tested negative. We analyzed the electrocardiogram (ECG) images by preprocessing the ECG data and building an ECG- Deep Learning- COVID-19 (ECG-DL-COVID) classifier to predict disease. The deep learning models in our experiments constituted CNN, Multi-Layer Perceptron (MLP), and Transfer Learning. Performance evaluation was done to compare the effectiveness of the proposed methodologies with other COVID-19 deep learning-related works. In the three experiments, we achieved an 87% prediction accuracy for MLP, a 90% prediction for CNN and a 93.8% prediction for Transfer Learning. Experimental results and performance evaluation show that the proposed models outperformed previous deep-learning models in the prediction of COVID-19 by a considerable margin.
一种CNN迁移学习-心电图信号预测新冠肺炎的方法
由于在评估医疗数据方面的高计算性能和准确性,深度学习在图像分类和基因组学等尖端医学科学中越来越受到关注。在这项研究中,我们研究了心电图图像的心脏特性,并对COVID-19检测呈阳性的患者和检测呈阴性的正常人进行了二分类预测。我们通过对心电图数据进行预处理,并建立ECG-深度学习- covid (ECG- dl - covid)分类器来预测疾病。我们实验中的深度学习模型包括CNN、多层感知器(multilayer Perceptron, MLP)和迁移学习。进行绩效评估,将所提出的方法与其他COVID-19深度学习相关工作的有效性进行比较。在三个实验中,我们对MLP的预测准确率为87%,对CNN的预测准确率为90%,对迁移学习的预测准确率为93.8%。实验结果和性能评估表明,所提模型在预测COVID-19方面明显优于以往的深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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