A Cost-Based Dual ConvNet-Attention Transfer Learning Model for ECG Heartbeat Classification

Johnson Olanrewaju Victor, XinYing Chew, Khai Wah Khaw, Ming Ha Lee
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Abstract

The heart is a very crucial organ of the body. Concerted efforts are constantly put forward to provide adequate monitoring of the heart. A heart disorder is reported to cause a lot of hidden ailments resulting in numerous deaths. Early heart monitoring using an electrocardiogram (ECG) through the advancement of computer-aided diagnostic (CAD) systems is widely used. Meanwhile, the use of human reading of ECG results are faced with many challenges of inaccurate and unreliable interpretations. Over two decades, studies provided artificial intelligence (AI) technique using machine learning (ML) algorithms as a fast and reliable technique for ECG heartbeat classification. Moreover, in recent times, deep learning (DL) techniques have been focused on providing automatic feature extraction and better classification performance. On the other hand, the challenge with the ECG data is its imbalance nature. Therefore, this paper proposes a cost-based dual convolutional attention transfer DL model for ECG classification. The proposed model uses PhysionNet-MIT-BIH and Physikalisch-Technische Bundesanstalt (PTB) Diagnostics datasets. The first part uses the MIT-BIH for ECG categorization, while representations learned from the first classifier are used for PTB analysis through transfer learning (TL). The proposed model is evaluated and compared with well-performing conventional ML models based on their F1-score and accuracy scores. Our experimental finding show that the proposed model outperformed the well-performing ML models as well as competitive with past studies for both the classification and TL part, having obtained 98.45% for both F1-score and accuracy. The proposed model is applicable to real-life trials and experiments for ECG heartbeat and other similar domains.
基于成本的双卷积-注意迁移学习心电心跳分类模型
心脏是人体非常重要的器官。不断提出协调一致的努力,以提供适当的心脏监测。据报道,心脏病会导致许多隐性疾病,导致许多人死亡。利用心电图(ECG)进行早期心脏监测是通过计算机辅助诊断(CAD)系统的进步而得到广泛应用的。同时,利用人读心电结果面临着解读不准确和不可靠的诸多挑战。二十多年来,研究提供了使用机器学习(ML)算法的人工智能(AI)技术作为心电心跳分类的快速可靠技术。此外,近年来,深度学习(DL)技术的重点是提供自动特征提取和更好的分类性能。另一方面,心电数据的不平衡性是其面临的挑战。为此,本文提出了一种基于代价的双卷积注意力转移深度学习模型。提出的模型使用PhysionNet-MIT-BIH和Physikalisch-Technische Bundesanstalt (PTB)诊断数据集。第一部分使用MIT-BIH进行ECG分类,而从第一个分类器中学习到的表示通过迁移学习(TL)用于PTB分析。基于f1分数和准确率分数,对所提出的模型进行评估,并与性能良好的传统ML模型进行比较。我们的实验结果表明,所提出的模型在分类和TL部分都超过了表现良好的ML模型,并且与过去的研究相竞争,f1得分和准确率都达到了98.45%。该模型适用于现实生活中的心电实验和其他类似领域的实验。
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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