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心电图滤波综述。

A review of electrocardiogram filtering.

作者信息

Luo Shen, Johnston Paul

机构信息

Cardiac Science Corporation, Deerfield, WI 53531, USA.

出版信息

J Electrocardiol. 2010 Nov-Dec;43(6):486-96. doi: 10.1016/j.jelectrocard.2010.07.007. Epub 2010 Sep 18.

DOI:10.1016/j.jelectrocard.2010.07.007
PMID:20851409
Abstract

Analog filtering and digital signal processing algorithms in the preprocessing modules of an electrocardiographic device play a pivotal role in providing high-quality electrocardiogram (ECG) signals for analysis, interpretation, and presentation (display, printout, and storage). In this article, issues relating to inaccuracy of ECG preprocessing filters are investigated in the context of facilitating efficient ECG interpretation and diagnosis. The discussion covers 4 specific ECG preprocessing applications: anti-aliasing and upper-frequency cutoff, baseline wander suppression and lower-frequency cutoff, line frequency rejection, and muscle artifact reduction. Issues discussed include linear phase, aliasing, distortion, ringing, and attenuation of desired ECG signals. Due to the overlapping power spectrum of signal and noise in acquired ECG data, frequency selective filters must seek a delicate balance between noise removal and deformation of the desired signal. Most importantly, the filtering output should not adversely impact subsequent diagnosis and interpretation. Based on these discussions, several suggestions are made to improve and update existing ECG data preprocessing standards and guidelines.

摘要

心电图设备预处理模块中的模拟滤波和数字信号处理算法,在为分析、解读和呈现(显示、打印输出及存储)提供高质量心电图(ECG)信号方面发挥着关键作用。在本文中,我们在促进高效心电图解读和诊断的背景下,研究了与心电图预处理滤波器不准确相关的问题。讨论涵盖4种特定的心电图预处理应用:抗混叠和高频截止、基线漂移抑制和低频截止、电源频率抑制以及肌肉伪迹减少。讨论的问题包括线性相位、混叠、失真、振铃以及所需心电图信号的衰减。由于采集到的心电图数据中信号和噪声的功率谱重叠,频率选择滤波器必须在去除噪声和使所需信号变形之间寻求微妙的平衡。最重要的是,滤波输出不应给后续的诊断和解读带来不利影响。基于这些讨论,我们提出了一些建议,以改进和更新现有的心电图数据预处理标准和指南。

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