Kærgaard Kevin, Jensen Søren Hjøllund, Puthusserypady Sadasivan
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:3811-4. doi: 10.1109/EMBC.2015.7319224.
Electrocardiogram (ECG) is a widely used non-invasive method to study the rhythmic activity of the heart and thereby to detect the abnormalities. However, these signals are often obscured by artifacts from various sources and minimization of these artifacts are of paramount important. This paper proposes two adaptive techniques, namely the EEMD-BLMS (Ensemble Empirical Mode Decomposition in conjunction with the Block Least Mean Square algorithm) and DWT-NN (Discrete Wavelet Transform followed by Neural Network) methods in minimizing the artifacts from recorded ECG signals, and compares their performance. These methods were first compared on two types of simulated noise corrupted ECG signals: Type-I (desired ECG+noise frequencies outside the ECG frequency band) and Type-II (ECG+noise frequencies both inside and outside the ECG frequency band). Subsequently, they were tested on real ECG recordings. Results clearly show that both the methods works equally well when used on Type-I signals. However, on Type-II signals the DWT-NN performed better. In the case of real ECG data, though both methods performed similar, the DWT-NN method was a slightly better in terms of minimizing the high frequency artifacts.
心电图(ECG)是一种广泛应用的非侵入性方法,用于研究心脏的节律活动,从而检测异常情况。然而,这些信号常常被来自各种来源的伪迹所掩盖,将这些伪迹最小化至关重要。本文提出了两种自适应技术,即EEMD-BLMS(集合经验模态分解结合块最小均方算法)和DWT-NN(离散小波变换后接神经网络)方法,用于最小化记录的心电图信号中的伪迹,并比较它们的性能。这些方法首先在两种类型的模拟噪声污染的心电图信号上进行比较:I型(期望的心电图+心电图频段外的噪声频率)和II型(心电图+心电图频段内外的噪声频率)。随后,它们在真实的心电图记录上进行测试。结果清楚地表明,当用于I型信号时,这两种方法的效果相同。然而,对于II型信号,DWT-NN表现更好。在真实心电图数据的情况下,虽然两种方法的表现相似,但在最小化高频伪迹方面,DWT-NN方法略胜一筹。