Combining algorithms in automatic detection of R-peaks in ECG signals

José Fernández, M. Harris, Carsten Meyer
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引用次数: 20

Abstract

R-peak detection is the crucial first step in every automatic ECG analysis. Much work has been carried out in this field, using various methods ranging from filtering and threshold methods, through wavelet methods, to neural networks, and others. Performance is generally good, but each method has situations where it fails. In this paper we suggest an approach to automatically combine different algorithms, here the Pan Tompkins and wavelet algorithms, for detection of R-peaks in ECG signals, in order to benefit from the strengths of both algorithms. Experimental results and analysis are provided on the MIT-BIH Arrhythmia Database. We obtained substantial improvements on the test data with respect to the best individual algorithm.
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结合算法自动检测心电信号中的r -峰
r峰检测是心电图自动分析的关键一步。在这一领域已经开展了大量的工作,使用了各种方法,从滤波和阈值方法,到小波方法,再到神经网络等。性能通常很好,但每种方法都有失败的情况。在本文中,我们提出了一种自动结合不同算法的方法,这里是Pan Tompkins算法和小波算法,用于检测心电信号中的r -峰,以便从这两种算法的优势中获益。实验结果和分析提供在MIT-BIH心律失常数据库。相对于最佳个人算法,我们在测试数据上获得了实质性的改进。
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