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Detection of QRS complex in ECG signal based on classification approach

机译:基于分类方法的心电信号QRS波群检测

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Electrocardiogram (ECG) signals are used to analyze the cardiovascular activity in the human body and have a primary role in the diagnosis of several heart diseases. The QRS complex is the most important and distinguishable component in the ECG because of its spiked nature and high amplitude. Automatic detection and delineation of the QRS complex in ECG is of extreme importance for computer aided diagnosis of cardiac disorder. Therefore, the accurate detection of this component is crucial to the performance of subsequent machine learning algorithms for cardiac disease classification. The aim of the present work is to detect the QRS wave from electrocardiogram (ECG) signals. Initially the baseline drift has been removed from the signal followed by the decomposition using continuous wavelet transform. Modulus maxima approach proposed by Mallat has been used to compute the Lipschitz exponent of the components. By using the property of R peak, having highest and prominent amplitude and Lipschitz exponents, we have applied the K means clustering technique to classify QRS complex. In order to evaluate the algorithm, the analysis has been done on MIT-BIH Arrhythmia database.
机译:心电图(ECG)信号用于分析人体的心血管活动,在几种心脏病的诊断中起主要作用。 QRS复合物由于其尖峰的特性和高振幅,是ECG中最重要和最独特的组成部分。心电图中QRS波群的自动检测和描绘对于心脏疾病的计算机辅助诊断至关重要。因此,此组件的准确检测对于后续用于心脏疾病分类的机器学习算法的性能至关重要。本工作的目的是从心电图(ECG)信号中检测QRS波。最初,基线漂移已从信号中消除,然后使用连续小波变换进行分解。 Mallat提出的最大模量方法已用于计算组件的Lipschitz指数。通过利用具有最高和显着振幅的R峰值和Lipschitz指数的性质,我们应用了K均值聚类技术对QRS复杂度进行分类。为了评估该算法,已经在MIT-BIH心律不齐数据库上进行了分析。

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