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首页> 外文期刊>EURASIP journal on advances in signal processing >Extraction of Desired Signal Based on AR Model with Its Application to Atrial Activity Estimation in Atrial Fibrillation
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Extraction of Desired Signal Based on AR Model with Its Application to Atrial Activity Estimation in Atrial Fibrillation

机译:基于AR模型的期望信号提取及其在房颤心房活动度估计中的应用

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摘要

The use of electrocardiograms (ECGs) to diagnose and analyse atrial fibrillation (AF) has received much attention recently. When studying AF, it is important to isolate the atrial activity (AA) component of the ECG plot. We present a new autoregressive (AR) model for semiblind source extraction of the AA signal. Previous researchers showed that one could extract a signal with the smallest normalized mean square prediction error (MSPE) as the first output from linear mixtures by minimizing the MSPE. However the extracted signal will be not always the desired one even if the AR model parameters of one source signal are known. We introduce a new cost function, which caters for the specific AR model parameters, to extract the desired source. Through theoretical analysis and simulation we demonstrate that this algorithm can extract any desired signal from mixtures provided that its AR parameters are first obtained. We use this approach to extract the AA signal from 12-lead surface ECG signals for hearts undergoing AF. In our methodology we roughly estimated the AR parameters from the fibrillatory wave segment in the V1 lead, and then used this algorithm to extract the AA signal. We validate our approach using real-world ECG data.
机译:最近,心电图(ECG)用于诊断和分析心房颤动(AF)的使用受到了广泛关注。在研究房颤时,重要的是隔离心电图的心房活动(AA)分量。我们为AA信号的半盲源提取提出了一种新的自回归(AR)模型。先前的研究人员表明,通过最小化MSPE,可以从线性混合物中提取具有最小归一化均方预测误差(MSPE)的信号作为第一输出。但是,即使已知一个源信号的AR模型参数,提取的信号也不总是所需的信号。我们引入了一个新的成本函数,该函数满足特定的AR模型参数,以提取所需的源。通过理论分析和仿真,我们证明了该算法可以从混合物中提取任何期望的信号,前提是首先要获得其AR参数。我们使用这种方法从12导联心电图的心电图信号中提取AA信号,以进行AF。在我们的方法中,我们从V1导线​​中的颤动波段粗略估计了AR参数,然后使用此算法提取了AA信号。我们使用真实的心电图数据验证我们的方法。

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