QRS residual removal in atrial activity signals extracted from single lead: a new perspective based on signal extrapolation

Huhe Dai, Liyan Yin, Ye Li
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引用次数: 7

Abstract

Atrial activity (AA) signal must first be extracted from atrial fibrillation electrocardiogram (AF ECG) before it is used to characterise AF. However, extracting AA signal is not an easy task, especially from single-lead ECG recording. The AA signals within QRS intervals extracted by the existing single-lead extraction methods are often heavily distorted due to the existence of large QRS residuals. In this study, the authors focus on reducing the QRS residuals in the extracted AA signals, and propose a novel signal extrapolation based method. AA signal is assumed to be band-limited, and a dedicated extrapolation formula is derived. Based on this extrapolation formula, the AA samples within QRS interval are reconstructed by using the ones in the adjacent SQ segments. The experiments with simulated AF ECGs showed that, after using the proposed method, the normalised mean square error of the AA signal extracted by average beat subtraction method decreased by 26–50%, 15–36%, 12–40 and 42–63% for simulated AF ECGs in lead I, II, V 1 and V 6, respectively. Experiments with real AF ECG also proved that the proposed method is able to greatly reduce the ventricular residuals of the extracted AA signal.
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单导联心房活动信号的QRS残差去除:基于信号外推的新视角
心房活动(AA)信号必须首先从心房颤动心电图(AF ECG)中提取,然后才能用于表征AF。然而,提取AA信号并不是一件容易的事情,特别是从单导联心电图记录中提取。由于存在较大的QRS残差,现有的单导联提取方法提取的QRS区间内的AA信号往往存在严重的失真。在本研究中,作者着眼于降低提取的AA信号的QRS残差,提出了一种新的基于信号外推的方法。假设AA信号是带限的,并推导出专用的外推公式。基于此外推公式,利用相邻SQ段内的AA样本重构QRS区间内的AA样本。模拟AF心电图实验表明,采用该方法后,对导联I、II、v1和v6的模拟AF心电图,采用平均拍差法提取的AA信号的归一化均方误差分别降低了26-50%、15-36%、12 - 40%和42-63%。真实心房颤动心电图的实验也证明了该方法能够大大降低提取的心房颤动信号的心室残差。
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