Reduction of Effects of Noise on the Inverse Problem of Electrocardiography with Bayesian Estimation.

Y Serinagaoglu Dogrusoz, L R Bear, J Svehlikova, J Coll-Font, W Good, R Dubois, E van Dam, R S MacLeod
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引用次数: 4

Abstract

To overcome the ill-posed nature of the inverse problem of electrocardiography (ECG) and stabilize the solutions, regularization is used. Despite several studies on noise, effect of prefiltering of ECG signals on the regularized inverse solutions has not been explored. We used Bayesian estimation for solving the inverse ECG problem with and without applying various prefiltering methods, and evaluated our results using experimental data that came from a Langendorff-perfused pig heart suspended in a human-shaped torso-tank. Epicardial electrograms were recorded during RV pacing using a 108-electrode array, simultaneously with ECGs from 128 electrodes embedded in the tank surface. Leave-one-beat-out protocol was used to obtain the prior probability density function (pdf) of electro-grams and noise statistics. Noise pdf was assumed to be zero mean-Gaussian, with covariance assumptions: a) independent and identically distributed (noi-iid), b) correlated (noi-corr). Reconstructed electrograms and activation times were compared to those directly recorded by the sock for 3 beats selected from the recording. Noi-corr is superior to noi-iid when the training set is a good match to data, but for applications requiring activation time derivation, careful selection of preprocessing methods, in particular to adequately remove high-frequency noise, and an appropriate noise model is needed.

Abstract Image

Abstract Image

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用贝叶斯估计降低噪声对心电图反问题的影响。
为了克服心电图反问题的病态性质并使解稳定,采用正则化方法。尽管对噪声进行了一些研究,但对心电信号预滤波对正则化反解的影响还没有深入研究。我们使用贝叶斯估计来解决有或没有应用各种预滤波方法的ECG逆问题,并使用悬浮在人形躯干槽中的langendorff灌注猪心脏的实验数据来评估我们的结果。使用108个电极阵列记录RV起搏期间的心外膜电图,同时在槽表面嵌入128个电极的心电图。采用留一拍方案,得到电图和噪声统计的先验概率密度函数(pdf)。假设噪声pdf为零平均高斯分布,协方差假设为:a)独立且同分布(noi- id), b)相关(noi-corr)。将重建的电图和激活时间与从记录中选择的3拍直接记录的电图和激活时间进行比较。当训练集与数据匹配良好时,Noi-corr优于noi- id,但对于需要激活时间推导的应用,需要仔细选择预处理方法,特别是要充分去除高频噪声,并需要适当的噪声模型。
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CiteScore
1.10
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