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Cardiac arrhythmia classification using tunable Q-wavelet transform based features and support vector machine classifier

机译:基于可调Q-小波变换的功能和支持向量机分类器的心脏心律失常分类

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摘要

Electrocardiogram (ECG) is a non-invasive clinical tool that reveals the rhythm and functionality of the human heart. It is widely used in the diagnosis of heart diseases including arrhythmia. Abnormal heart rhythms are collectively known as arrhythmia which can be recognized and classified into different types. Arrhythmia classification techniques provide automated ECG analysis in cardiac patient monitoring devices. It helps cardiologists to interpret the ECG signal for diagnosis. In this context, this paper reports a novel and efficient ECG beats classification technique for normal and seven arrhythmia types. The proposed technique utilizes tunable Q-wavelet based features of ECG beats which are acquired from different ECG records of the Massachusetts Institute of Technology-Beth Israel Hospital (MIT-BIH) arrhythmia database. For feature extraction, each ECG beat is decomposed up to the sixth level of the tunable Q-wavelet transform. Approximate coefficients at the sixth level are selected as features of each ECG beats. For classification, features of 14,878 ECG beats are utilized for training of the support vector machine classifier while 26,219 ECG beats are used for the testing purpose. The average accuracy, sensitivity, and specificity offered by the proposed classifier for eight different classes of ECG beats are 99.27%, 96.22%, and 99.58% respectively. The proposed classifier outperforms many recent techniques developed in this field. (C) 2020 Elsevier Ltd. All rights reserved.
机译:心电图(ECG)是一种非侵入性临床工具,揭示了人类心脏的节奏和功能。它广泛用于诊断包括心律失常的心脏病。心脏节奏异常称为心律失常,可以被认可和分类为不同的类型。心律失常分类技术提供心脏病患者监测设备中的自动化ECG分析。它有助于心脏病学家解释ECG信号进行诊断。在这种情况下,本文报告了一种新颖和有效的ECG为正常和七种心律失常的分类技术。该提出的技术利用来自Massachusetts Technology(MIT-BIH)心律失常数据库的Massachusetts技术研究所的不同ECG记录中获取的ECG节拍的可调Q-小波的特征。对于特征提取,每个ECG节拍都达到可调谐Q-小波变换的第六级。将第六级的近似系数选择为每个ECG节拍的特征。对于分类,4,878个ECG节拍的功能用于培训支持向量机分类器,而26,219个ECG节拍用于测试目的。八种不同类别的ECG节拍所提供的平均准确性,灵敏度和特异性分别为99.27%,96.22%和99.58%。所提出的分类器优于该字段中开发的许多技术。 (c)2020 elestvier有限公司保留所有权利。

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