Electrocardiogram Heartbeat Classification using Convolutional Neural Network-k Nearest Neighbor
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Published:2024-02-29
Issue:1
Volume:12
Page:61-67
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ISSN:2307-549X
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Container-title:ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY
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language:
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Short-container-title:ARO
Author:
Abdul Zrar Kh.ORCID, Al‑Talabani Abdulbasit K.ORCID, Rahman Chnoor M.ORCID, Asaad Safar M.ORCID
Abstract
Electrocardiogram (ECG) analysis is widely used by cardiologists and medical practitioners for monitoring cardiac health. A high-performance automatic ECG classification system is challenging because there is difficulty in detecting and categorizing different waveforms in the signal, especially in manual analysis of ECG signals, which means, a better classification system is needed in terms of performance and accuracy. Hence, in this paper, the authors propose an accurate ECG classification and monitoring system called convolutional neural network-k nearest neighbor (CNN-kNN). The proposed method utilizes 1D-CNN and kNN. Unlike the existing techniques, the examined technique does not need training during classifying the ECG signals. The CNN-kNN is evaluated against the PhysioNet’s MIT-BIH and PTB diagnostics datasets. The CNN is fed using the ECG beat raw signal directly. In addition, the learned features are extracted from the 1D-CNN model and its dimensions are reduced using two fully connected layers and then fed to the k-NN classifier. The CNN-kNN model achieved average accuracies of 98% and 97.4% on arrhythmia and myocardial infarction classifications, respectively. These results are evidence of the great ability of the proposed model compared to the mentioned models in this article.
Publisher
Koya University
Reference38 articles.
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