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Analysis and classification of ECG beat based on wavelet decomposition and SVM

机译:基于小波分解和SVM的ECG节拍分析与分类

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Objectives: To extract the features of single arrhythmia ECG beat. To develop efficient algorithms for automated detection of arrhythmia based on ECG. Methods/Statistical analysis: The methodology includes pre-processing and segmentation of ECG. Extraction of ECG features are to support the ECG beat classification and analysis of cardiac abnormalities using machine learning techniques. Wavelet decomposition is considered for feature extraction and classification with multiclass support vector machine. Findings: This work evaluates the suitability of the wavelet features of ECG for classifier. The proposed arrhythmia classifier results in an accuracy up to 98% for various classes of arrhythmia considered in this work. Novelty/Applications: This work is an assistive tool for medical practitioners to examine ECG in a limited time with their expertise to make the accurate abnormality diagnosis of the arrhythmia.
机译:目标:提取单心律失常心电图的特征。基于心电图的心律失常自动检测,开发高效算法。方法/统计分析:该方法包括ECG的预处理和分割。 ECG特征的提取是使用机器学习技术支持心电图击败分类和心脏异常的分析。用多键支持向量机考虑小波分解,具有多标准支持矢量机的特征提取和分类。调查结果:这项工作评估了ECG为分类器的小波特征的适用性。所提出的心律失常分类器导致在这项工作中考虑的各种心律失常的准确度高达98%。新颖性/应用:这项工作是医生在有限时间内审查心电图的辅助工具,以其专业知识来实现​​心律失常的准确诊断。

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