Classification of ECG Signal Using Machine Learning Techniques

S. Syama, Gandhi Sweta, P.I.K. Kavyasree, Koti Reddy
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引用次数: 8

Abstract

Electrocardiogram (ECG) signals are the impulses generated by the heart which are used to analyze the proper functioning of heart. Our work deals with the efficient analysis of Electrocardiogram (ECG) signals imported from MIT-BIH database into MATLAB platform, generation of the imported ECG signal, pre-processing the generated signal to remove the noises mainly the baseline wandering and power line interference from which features are extracted. For adequate study of the ECG signal Daubechies and Haar wavelet techniques are compared. Proper decomposition of the signal is achieved using Db4 and Db5 Daubechies wavelets as their scaling functions are analogous to ECG signal. PAN TOMPKINSONS algorithm is considered in our study as it serves best for precise identification of most prominent features namely QRS complexes, RR interval’s as they constitute the major data required for clinical analysis and research. After feature extraction ECG signals are trained using machine learning techniques for detecting the presence of Arrhythmia using different classifiers adopting Weka software.
使用机器学习技术的心电信号分类
心电图(ECG)信号是由心脏产生的脉冲,用来分析心脏的正常功能。我们的工作是将从MIT-BIH数据库导入的心电信号有效地分析到MATLAB平台上,生成输入的心电信号,并对生成的信号进行预处理以去除噪声,主要是基线漂移和电源线干扰,从中提取特征。为了对心电信号进行充分的研究,比较了Daubechies和Haar小波技术。由于Db4和Db5多道小波的尺度函数与心电信号相似,因此对信号进行了适当的分解。在我们的研究中,PAN TOMPKINSONS算法被认为是最适合精确识别最突出的特征,即QRS复合物,RR区间,因为它们构成了临床分析和研究所需的主要数据。特征提取后的心电信号使用机器学习技术进行训练,采用Weka软件使用不同的分类器检测心律失常的存在。
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