Effects of ECG Signal Processing on the Inverse Problem of Electrocardiography.

Laura R Bear, Y Serinagaoglu Dogrusoz, J Svehlikova, J Coll-Font, W Good, E van Dam, R Macleod, E Abell, R Walton, R Coronel, Michel Haissaguerre, R Dubois
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引用次数: 21

Abstract

The inverse problem of electrocardiography is ill-posed. Errors in the model such as signal noise can impact the accuracy of reconstructed cardiac electrical activity. It is currently not known how sensitive the inverse problem is to signal processing techniques. To evaluate this, experimental data from a Langendorff-perfused pig heart (n=1) suspended in a human-shaped torso-tank was used. Different signal processing methods were applied to torso potentials recorded from 128 electrodes embedded in the tank surface. Processing methods were divided into three categories i) high-frequency noise removal ii) baseline drift removal and iii) signal averaging, culminating in n=72 different signal sets. For each signal set, the inverse problem was solved and reconstructed signals were compared to those directly recorded by the sock around the heart. ECG signal processing methods had a dramatic effect on reconstruction accuracy. In particular, removal of baseline drift significantly impacts the magnitude of reconstructed electrograms, while the presence of high-frequency noise impacts the activation time derived from these signals (p<0.05).

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心电信号处理对心电图反问题的影响。
心电图反问题是病态的。模型中的信号噪声等误差会影响重构心电活动的准确性。目前还不知道逆问题对信号处理技术有多敏感。为了评估这一点,实验数据来自langendorff灌注的猪心脏(n=1),悬浮在人体形状的躯干罐中。采用不同的信号处理方法对埋设在水箱表面的128个电极记录的躯干电位进行处理。处理方法分为三类:1)高频噪声去除;2)基线漂移去除;3)信号平均,最终得到n=72个不同的信号集。对于每个信号集,求解逆问题,并将重建的信号与心脏周围的袜子直接记录的信号进行比较。心电信号处理方法对重构精度影响很大。特别是,去除基线漂移会显著影响重构电图的大小,而高频噪声的存在会影响这些信号的激活时间(p
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