ECG-Based Reconstruction of Heart Position and Orientation with Bayesian Optimization.

Computing in cardiology Pub Date : 2017-09-01 Epub Date: 2018-04-05 DOI:10.22489/CinC.2017.054-387
Jaume Coll-Font, Setareh Ariafar, Dana H Brooks
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引用次数: 5

Abstract

Respiratory motion is known to cause beat-to-beat variation of the ECG. This observation suggests that it may be possible to use this variation to track position and orientation of the heart. Electrocardiographic Imaging (ECGI) would benefit from such a reconstruction since one contribution to errors in its solutions is respiratory motion of the heart. ECGI solutions generally rely on prior computation of a "forward" model that relates cardiac electrical activity to ECGs. However, the ill-posed nature of the inverse solution leads to large errors in ECGI even for small amounts of error in the forward model. The current work is a first step towards reducing those errors using a nominal forward model and the ECG itself. We describe a method that can reconstruct cardiac position / orientation using known potentials on both the heart and torso. Our current implementation is based on Bayesian Optimization and efficiently optimizes for the position / orientation of the heart to minimize error between measured and forward-computed torso potentials. We evaluated our approach with synthesized torso potentials under a model of respiratory motion and also using potentials recorded in a tank experiment on a canine epicardium and the tank surfaces. Our results show that our method performs accurately in synthetic experiments and can account for part of the error between forward-computed and measured ECGs in the tank experiments.

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基于心电图的心脏位置和方位的贝叶斯优化重建。
呼吸运动是已知的导致心跳变化的心电图。这一观察结果表明,利用这种变化来追踪心脏的位置和方向是可能的。心电图成像(ECGI)将受益于这样的重建,因为其解决方案中的错误之一是心脏的呼吸运动。ECGI解决方案通常依赖于将心电活动与心电图联系起来的“正向”模型的预先计算。然而,逆解的病态性导致即使正演模型中的误差很小,ECGI也会产生很大的误差。目前的工作是使用标称正演模型和ECG本身减少这些误差的第一步。我们描述了一种方法,可以重建心脏位置/方向使用已知的电位在心脏和躯干。我们目前的实现是基于贝叶斯优化,并有效地优化心脏的位置/方向,以尽量减少测量和预估躯干电位之间的误差。我们用呼吸运动模型下的合成躯干电位来评估我们的方法,也用在犬心外膜和坦克表面的坦克实验中记录的电位来评估我们的方法。结果表明,该方法在综合实验中具有较好的准确性,可以弥补槽内实验中正演计算与实测值之间的部分误差。
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