基于加权局部线性回归平滑的心电信号实时基线漂移去除

Xiao Tan, Xianxiang Chen, Ren Ren, Xinyu Hu, Bing Zhou, Z. Fang, S. Xia
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引用次数: 5

摘要

消除基线漂移(BW)在心电图(ECG)预处理步骤中至关重要,因为它会严重影响诊断结果,特别是在基于计算机的诊断中。提出了一种基于加权局部回归平滑的BW实时校正方法。对某一窗口内的每个信号数据样本进行加权。每个样本的权重由样本与待预测样本之间的距离决定。然后采用线性最小二乘法和多项式模型进行回归估计。将原心电信号减去BW,得到无BW的心电信号。实验结果表明,该方法能够实时有效地去除心电信号中的BW,并且使心电波形失真最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time baseline wander removal in ECG signal based on weighted local linear regression smoothing
Removing the baseline wander (BW) is vital in electrocardiogram (ECG) preprocessing steps, since it can severely influence the diagnostic results, especially in computer based diagnoses. This paper presents a method based on weighted local regression smoothing to correct BW in real time. Each signal data sample within a certain window is weighted. The weight of each sample is determined by the distance between the sample and the to-be-predicted sample. Then the regression is adopted by performing linear least-squares and a polynomial model to estimate BW. The ECG signal free from BW is obtained by subtracting the BW from the original ECG signal. The experiment results demonstrate that this method can effectively remove BW in ECG signal in real time and with minimum distortion of ECG waveform.
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