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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >The Impact of Torso Signal Processing on Noninvasive Electrocardiographic Imaging Reconstructions
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The Impact of Torso Signal Processing on Noninvasive Electrocardiographic Imaging Reconstructions

机译:躯干信号处理对非侵入式心电图成像重建的影响

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摘要

Goal: To evaluate state-of-the-art signal processing methods for epicardial potential-based noninvasive electrocardiographic imaging reconstructions of single-site pacing data. Methods: Experimental data were obtained from two torso-tank setups in which Langendorff-perfused hearts (n = 4) were suspended and potentials recorded simultaneously from torso and epicardial surfaces. 49 different signal processing methods were applied to torso potentials, grouped as i) high-frequency noise removal (HFR) methods ii) baseline drift removal (BDR) methods and iii) combined HFR+BDR. The inverse problem was solved and reconstructed electrograms and activation maps compared to those directly recorded. Results: HFR showed no difference compared to not filtering in terms of absolute differences in reconstructed electrogram amplitudes nor median correlation in QRS waveforms (p > 0.05). However, correlation and mean absolute error of activation times and pacing site localization were improved with all methods except a notch filter. HFR applied post-reconstruction produced no differences compared to pre-reconstruction. BDR and BDR+HFR significantly improved absolute and relative difference, and correlation in electrograms (p < 0.05). While BDR+HFR combined improved activation time and pacing site detection, BDR alone produced significantly lower correlation and higher localization errors (p < 0.05). Conclusion: BDR improves reconstructed electrogram morphologies and amplitudes due to a reduction in lambda value selected for the inverse problem. The simplest method (resetting the isoelectric point) is sufficient to see these improvements. HFR does not impact electrogram accuracy, but does impact post-processing to extract features such as activation times. Removal of line noise is insufficient to see these changes. HFR should be applied post-reconstruction to ensure over-filtering does not occur.
机译:<斜体xmlns:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>目标:到评估用于单现场起搏数据的外心势的非侵入性心电图成像重建的最先进的信号处理方法。 方法:实验从两个躯干罐设置中获得数据,其中悬浮的Langendorff-灌注的心(n = 4)悬浮,并且从躯干和外形表面同时记录的电位。将49种不同的信号处理方法应用于躯干电位,分组为I)高频噪声去除(HFR)方法II)基线漂移去除(BDR)方法和III)组合HFR + BDR。与直接记录的那些相比,解决了逆问题并重建了电视图和激活图。 <斜体XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>结果: HFR与QRS波形中的重建电图幅度的绝对差异无滤波没有过滤没有差异(P> 0.05)。然而,除了陷波滤波器之外的所有方法,改善了激活时间和起搏站点定位的相关性和平均绝对误差。与预重建相比,HFR应用后重建产生没有差异。 BDR和BDR + HFR显着改善绝对和相对差异,以及电视图中的相关性(P <0.05)。虽然BDR + HFR合并改进的激活时间和起搏站点检测,但是单独的BDR产生显着降低的相关性和更高的定位误差(P <0.05)。 结论: BDR由于选择对逆问题的λ值的降低,改善了重建的电池图形态和振幅。最简单的方法(重置等电点)足以看到这些改进。 HFR不会影响电测精度,但会影响后处理以提取激活时间等功能。删除线噪声不足以看到这些变化。应将HFR应用于重建后,以确保不会发生过滤。

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