Iravanian Shahriar, Tung Leslie
The Johns Hopkins University School of Medicine, Baltimore, MD 21205, USA.
IEEE Trans Biomed Eng. 2002 Nov;49(11):1310-7. doi: 10.1109/TBME.2002.804589.
In this paper, a new algorithm is presented for the filtering (de-noising) of cardiac bioelectrical signals. The primary target of this algorithm is the class of cardiac action potentials recorded using voltage-sensitive dyes, although the method is also applied to electrocardiographic signals. High periodicity is one of the main features of cardiac biosignals. The proposed algorithm exploits this feature in filtering signals with a minimum amount of distortion. The basic idea is to use signal averaging in time to find the stationary portion of the signal. The residue is found by subtracting the signal average from the corresponding points of the input. After passing through a low-pass filter, the filtered residue (FR) is added back to the signal average to reconstruct the output. The practical implementation of the filter residue algorithm is discussed. Stretching and shrinking operations are the basis for the conversion of quasi-periodic signals into periodic signals, which can then be subjected to the FR algorithm. Various examples are presented, and error estimation is performed to guide the selection of optimal parameters for the algorithm. The ability of the algorithm to reconstruct the variation among beats is demonstrated, and its limitations are discussed.
本文提出了一种用于心脏生物电信号滤波(去噪)的新算法。该算法的主要目标是使用电压敏感染料记录的心脏动作电位类别,不过该方法也适用于心电图信号。高周期性是心脏生物信号的主要特征之一。所提出的算法在以最小失真量滤波信号时利用了这一特征。基本思想是在时间上使用信号平均来找到信号的平稳部分。通过从输入的相应点减去信号平均值来找到残差。经过低通滤波器后,将滤波后的残差(FR)加到信号平均值上以重建输出。讨论了滤波器残差算法的实际实现。拉伸和收缩操作是将准周期信号转换为周期信号的基础,然后可以对其应用FR算法。给出了各种示例,并进行了误差估计以指导算法最佳参数的选择。展示了该算法重建心跳间变化的能力,并讨论了其局限性。