Automated detection of shockable ECG signals: A review

(2021) Automated detection of shockable ECG signals: A review. INFORMATION SCIENCES. pp. 580-604. ISSN 0020-0255 1872-6291 J9 - INFORM SCIENCES

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Abstract

Sudden cardiac death from lethal arrhythmia is a preventable cause of death. Ventricular fibrillation and tachycardia are shockable electrocardiographic (ECG)rhythms that can respond to emergency electrical shock therapy and revert to normal sinus rhythm if diagnosed early upon cardiac arrest with the restoration of adequate cardiac pump function. However, manual inspection of ECG signals is a difficult task in the acute setting. Thus, computer-aided arrhythmia classification (CAAC) systems have been developed to detect shockable ECG rhythm. Traditional machine learning and deep learning methods are now progressively employed to enhance the diagnostic accuracy of CAAC systems. This paper reviews the state-of-the-art machine and deep learning based CAAC expert systems for shockable ECG signal recognition, discussing their strengths, advantages, and drawbacks. Moreover, unique bispectrum and recurrence plots are proposed to represent shockable and non-shockable ECG signals. Deep learning methods are usually more robust and accurate than standard machine learning methods but require big data of good quality for training. We recommend collecting large accessible ECG datasets with a meaningful proportion of abnormal cases for research and development of superior CAAC systems. (c) 2021 Elsevier Inc. All rights reserved.

Item Type: Article
Keywords: Electrocardiogram (ECG) Arrhythmia Computer-aided arrhythmia classification (CAAC) Signal processing Machine learning Deep learning Ensemble learning Feature extraction Feature selection Optimization CONVOLUTION NEURAL-NETWORK THREATENING VENTRICULAR-ARRHYTHMIAS DEEP LEARNING APPROACH REAL-TIME DETECTION ATRIAL-FIBRILLATION RECURRENCE PLOTS CLASSIFICATION DIAGNOSIS ALGORITHM MODEL
Page Range: pp. 580-604
Journal or Publication Title: INFORMATION SCIENCES
Journal Index: ISI
Volume: 571
Identification Number: https://doi.org/10.1016/j.ins.2021.05.035
ISSN: 0020-0255 1872-6291 J9 - INFORM SCIENCES
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/17692

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