Luo Yurong, Hargraves Rosalyn H, Belle Ashwin, Bai Ou, Qi Xuguang, Ward Kevin R, Pfaffenberger Michael Paul, Najarian Kayvan
Department of Computer Science, School of Engineering, Virginia Commonwealth University, 401 West Main Street, Richmond, VA 23284, USA.
ScientificWorldJournal. 2013 May 20;2013:896056. doi: 10.1155/2013/896056. Print 2013.
Noise can compromise the extraction of some fundamental and important features from biomedical signals and hence prohibit accurate analysis of these signals. Baseline wander in electrocardiogram (ECG) signals is one such example, which can be caused by factors such as respiration, variations in electrode impedance, and excessive body movements. Unless baseline wander is effectively removed, the accuracy of any feature extracted from the ECG, such as timing and duration of the ST-segment, is compromised. This paper approaches this filtering task from a novel standpoint by assuming that the ECG baseline wander comes from an independent and unknown source. The technique utilizes a hierarchical method including a blind source separation (BSS) step, in particular independent component analysis, to eliminate the effect of the baseline wander. We examine the specifics of the components causing the baseline wander and the factors that affect the separation process. Experimental results reveal the superiority of the proposed algorithm in removing the baseline wander.
噪声会影响从生物医学信号中提取一些基本且重要的特征,从而妨碍对这些信号进行准确分析。心电图(ECG)信号中的基线漂移就是这样一个例子,它可能由呼吸、电极阻抗变化和过度的身体运动等因素引起。除非有效去除基线漂移,否则从心电图中提取的任何特征(如ST段的时间和持续时间)的准确性都会受到影响。本文从一个新颖的角度来处理这个滤波任务,即假设心电图基线漂移来自一个独立且未知的源。该技术采用一种分层方法,包括盲源分离(BSS)步骤,特别是独立成分分析,以消除基线漂移的影响。我们研究了导致基线漂移的成分的具体情况以及影响分离过程的因素。实验结果表明了所提算法在去除基线漂移方面的优越性。