使用经验模式分解(EMD)算法对心脏信号或心电图去噪系统进行性能测试

Ferawidya Primadevi, Yahya Mardiana
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摘要

心电图(EKG)是由心肌的电活动产生的信号,并显示在EKG设备的监视器上。利用心电图记录,可以确定诊断人类心脏状态的主要特征。通过及早发现心脏问题,可以降低心脏病患者的死亡率。在心电图读数中,它经常受到肌肉收缩和电极运动引起的几种中断的影响。早期对心电信号去噪技术进行了大量的研究。本文研究了基于经验模态分解(EMD)算法的去噪技术对心电图性能的测试。在这项工作中,使用了许多指标来评估心电信号去噪技术:均方误差(MSE),平均绝对误差(MAE)和信噪比(SNR)。在这项研究中,心电数据受到肌肉伪影(MA)、加性高斯白噪声(AWGN)、电极运动(EM)和基线漂移(BW)等噪声的污染。对受噪声污染的心电信号进行去噪处理。计算信号去噪后的MSE, MAE和SNR值。本研究包括一个场景,测试三种阈值技术与四种不同类型的噪声。硬阈值法对于各种类型的噪声都具有优越的性能。MSE由AWGN产生,分别为0.15、0.28和9.9 dB。MA噪声产生的MSE为0.4 dB, MAE为0.033 dB, SNR为41.0 dB。电磁噪声的MSE为0.010,MAE为0.04,信噪比为30.8 dB。BW噪声产生的MSE为0.008;MAE和信噪比分别为0.0356和28.5。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uji Kinerja Sistem Denoising Sinyal Jantung atau EKG dengan Menggunakan Algoritma Empirical Mode Decomposition (EMD)
Electrocardiograms (EKGs) are signals created by the electrical activity of the heart muscle and displayed on the EKG device's monitor. Using the EKG recording, the primary characteristics for diagnosing the status of the human heart can be determined. The death rate of heart patients can be reduced through early identification of cardiac problems. In ECG readings, it is frequently affected by several disruptions caused by muscle contractions and electrode movement. Numerous investigations on ECG signal denoising techniques have been undertaken earlier. This article examines the testing of the performance of EKGs using the denoising technique based on the Empirical Mode Decomposition (EMD) algorithm. In this work, many metrics were utilized to evaluate the ECG signal denoising technique: mean square error (MSE), mean absolute error (MAE), and signal-to-noise ratio (SNR). In this investigation, the ECG data was contaminated with noise from muscle artifacts (MA), additive Gaussian white noise (AWGN), electrode movement (EM), and baseline wander (BW). The noise-contaminated ECG signal is subsequently subjected to the denoising process. Calculate the MSE, MAE, and SNR values of the signal after it has been denoised. This study includes a scenario for testing three thresholding techniques with four distinct types of noise. The performance of the hard thresholding method is superior for all types of noise. MSE is produced by AWGN, which is 0.15, 0.28, and 9.9 dB. MA noise generates MSE, MAE, and SNR values of 0.4, 0.033, and 41.0 dB, respectively. The EM noise has an MSE of 0.010, an MAE of 0.04, and an SNR of 30.8 dB. The MSE produced by BW noise is 0.008; the MAE and SNR values were 0.0356 and 28.5, respectively.
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