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Combining Algorithms in Automatic Detection of QRS Complexes in ECG Signals

机译:ECG信号中QRS复合体自动检测的组合算法

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摘要

QRS complex and specifically R-Peak detection is the crucial first step in every automatic electrocardiogram 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 QRS complex detection algorithms, here the Pan–Tompkins and wavelet algorithms, to benefit from the strengths of both methods. In particular, we introduce parameters allowing to balance the contribution of the individual algorithms; these parameters are estimated in a data-driven way. Experimental results and analysis are provided on the Massachusetts Institute of Technology-Beth Israel Hospital (MIT-BIH) Arrhythmia Database. We show that our combination approach outperforms both individual algorithms.
机译:QRS复杂,特别是R-Peak检测是每个自动心电图分析中至关重要的第一步。在该领域已经进行了许多工作,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。性能通常不错,但是每种方法都有失败的情况。在本文中,我们建议一种自动组合不同QRS复杂检测算法(此处为Pan-Tompkins和小波算法)的方法,以从两种方法的优势中受益。特别是,我们引入了可以平衡各个算法贡献的参数。这些参数是通过数据驱动的方式估算的。实验结果和分析结果在麻省理工学院贝斯以色列医院(MIT-BIH)心律失常数据库中提供。我们证明了我们的组合方法优于两种算法。

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