Complexity Comparison of Empirical Mode Decomposition and Wavelet Decomposition Methods in the Detection of Ventricular Late Potential

Daphin Lilda S, Jayaparvathy R
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Abstract

Ventricular Late Potentials (VLPs) mark the electrical instability of myocardial tissues of the heart. It has been observed in medical researches that there is a direct link between sudden cardiac death due to arrhythmia and the presence of VLPs. Early detection of CVDs can be made possible by the detection of VLPs. The wavelet-based decomposition is the most widely used method in literature however due to the multiple stages involved in the wavelet-based decomposition the computational complexity of the system is high. This paper proposes VLP detection method using the Empirical Mode Decomposition (EMD) which is simple and more efficient. The ECG signal is initially filtered and the consecutive individual beats in the ECG are averaged to obtain the Signal Averaged ECG (SAECG). The EMD is applied to the obtained SAECG which decomposes the signal into corresponding Intrinsic Mode Functions (IMFs) from which the presence of VLPs can be detected. The proposed method captures even the lowest intensity deviation present in a signal. In addition to this the Wavelet decomposition is found to be two times more complex compared to the EMD based method with respect to the number of samples given.
经验模态分解与小波分解方法检测心室晚电位的复杂度比较
心室晚期电位(vlp)标志着心脏心肌组织的电不稳定性。医学研究发现,心律失常引起的心源性猝死与vlp的存在有直接联系。通过检测vlp,可以早期发现cvd。基于小波的分解是文献中应用最广泛的方法,但由于小波分解涉及多个阶段,系统的计算复杂度较高。本文提出了基于经验模态分解(EMD)的VLP检测方法,该方法简单、高效。首先对心电信号进行滤波,对心电中连续的单个心跳进行平均,得到信号平均心电(SAECG)。将EMD应用于获得的SAECG,该SAECG将信号分解为相应的本征模态函数(imf),从中可以检测到VLPs的存在。所提出的方法甚至可以捕获信号中存在的最低强度偏差。除此之外,与基于EMD的方法相比,小波分解在给定的样本数量方面要复杂两倍。
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