Effects of Interpolation on the Inverse Problem of Electrocardiography

Y. S. Dogrusoz, L. Bear, J. Bergquist, Rémi Dubois, Wilson Good, Robert S. MacLeod, A. Rababah, J. Stoks
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引用次数: 6

Abstract

Electrocardiographic Imaging (ECGI) aims to reconstruct electrograms from the body surface potential measurements. Bad leads are usually excluded from the inverse problem solution. Alternatively, interpolation can be applied. This study explores how sensitive ECGI is to different bad-lead configurations and interpolation methods. Experimental data from a Langendorff-perfused pig heart suspended in a human-shaped torso-tank was used. Six different bad lead cases were designed based on clinical experience. Inverse problem was solved by applying Tikhonov regularization i) using the complete data, ii) bad-leads-removed data, and iii) interpolated data, with 5 different methods. Our results showed that ECGI accuracy of an interpolation method highly depends on the location of the bad leads. If they are in the high-potential-gradient regions of the torso, a highly accurate interpolation method is needed to achieve an ECGI accuracy close to using complete data. If the BSP reconstruction of the interpolation method is poor in these regions, the reconstructed electro-grams also have lower accuracy, suggesting that bad leads should be removed instead of interpolated. The inverse-forward method was found to be the best among all interpolation methods applied in this study in terms of both missing BSP lead reconstruction and ECGI accuracy, even for the bad leads located over the chest.
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插值对心电图反问题的影响
心电图成像(ECGI)旨在通过体表电位测量重建心电图。不良引线通常被排除在反问题解决方案之外。或者,可以应用插值。本研究探讨了ECGI对不同坏导联配置和插补方法的敏感性。实验数据来自朗根多夫灌注的猪心脏,悬浮在人体形状的躯干罐中。根据临床经验设计6种不同的不良导联病例。通过5种不同的方法,分别应用Tikhonov正则化i)使用完整数据,ii)去除坏铅的数据,iii)插值的数据来解决逆问题。研究结果表明,一种插值方法的ECGI精度在很大程度上取决于坏引线的位置。如果它们位于躯干的高电位梯度区域,则需要一种高精度的插值方法来实现接近使用完整数据的ECGI精度。如果插值方法的BSP重建在这些区域较差,则重建的电图精度也较低,提示应去除不良引线而不是插值。在本研究中应用的所有插值方法中,反正法在缺失BSP导联重建和ECGI准确性方面都是最好的,即使对于位于胸部的不良导联也是如此。
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