用自适应数字滤波器校正心电图信号中的假诊断记录

G. Attia
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引用次数: 0

摘要

心电图仪(Electrocardiogram, ECG)用于提供患者心脏危重状况的诊断信息,但其性能有时会受到一些噪声源的影响,如:50Hz线频、嗡嗡声和高频噪声。这些噪声源会影响心电图的性能,从而导致错误的诊断记录,欺骗使用这台机器的医生。当前论文;提出了采用基于自适应数字滤波器的最小均方误差算法,从干扰噪声源中对心电信号进行细化,以解决误诊记录问题。基于matlab的编程;我研究了两种不同的混合随机噪声干扰心电仪器性能的情况。第一类噪声是将线频50hz与心电信号混合;第二类噪声是心电信号中混杂的嗡嗡声和高频噪声。数字滤波器参数的数值为:抽头数或阶数(M = 16)、步长(μ = 0.005)、采样频率(Fs = 1000Hz)、干扰线频率50Hz、嗡嗡声噪声和高频噪声。利用Matlab仿真的实验结果表明;提出了采用基于数字滤波器的LMS算法的方案;可以解决错误诊断的问题,导致沮丧的病人和欺骗医生。该方案具有以下优点:简单、可靠、实用性强、对信号特性变化的适应性强、成本可承受。
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Correction of False Diagnosis Recording in the Electrocardiograph Signal by Adaptive Digital Filter
Electrocardiogram (ECG) instrument is used to provide diagnostic information about the critical condition of the patient’s heart, but its performance sometimes suffers from some sources of noise such as: 50Hz line frequency, Hum and high frequency (HF) noise. These sources of noise affect the performance of the ECG and hence cause false diagnosis recording that tricks the doctor who uses this machine. The current paper; proposes to tackle the problem of false diagnoses recordings by employing adaptive digital filter based least mean square (LMS) error algorithm in order to refine the ECG signals from the disturbing sources of noise. Based matlab programming; I have studied two different cases of mixing random noise that disturb the performance of the ECG instrument. The first kind of noise is mixing the line frequency 50 Hz with the ECG signal; the second kind of noise is mixing the hum and high frequency noise with the ECG signal. Numerical values for digital filter parameters have been used as: number of taps or order (M = 16), step size (μ = 0.005), sampling frequency (Fs = 1000Hz), interfering line frequency 50Hz, hum noise, and HF noise. The experimental results using Matlab simulation show that; the proposed scheme of employing digital filter based LMS algorithm; can tackle the problem of false diagnoses that causes frustration for the patient and tricks the doctor. The proposed scheme has several advantages such as; simplicity, reliability, practical applicability, adaptability to the change in signal characteristics and cost affordability.
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