Experimental Validation of Image-Based Modeling of Torso Surface Potentials During Acute Myocardial Ischemia.

Computing in cardiology Pub Date : 2019-09-01 Epub Date: 2020-02-24 DOI:10.22489/cinc.2019.417
Brian Zenger, Jake A Bergquist, Wilson W Good, Brett M Burton, Jess D Tate, Rob S MacLeod
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Abstract

Introduction: Myocardial ischemia is an early clinical indicator of several underlying cardiac pathologies, including coronary artery disease, Takatsobu cardiomyopathy, and coronary artery dissection. Significant progress has been made in computing body-surface potentials from cardiac sources by solving the forward problem of electrocardiography. However, the lack of in vivo studies to validate such computations from ischemic sources has limited the translational potential of such models.

Methods: To resolve this need, we have developed a large-animal experimental model that includes simultaneous recordings within the myocardium, on the epicardial surface, and on the torso surface during episodes of acute, controlled ischemia. Following each experiment, magnetic resonance images were obtained of the anatomy and electrode locations to create a subject-specific model for each animal. From the electrical recordings of the heart, we identified ischemic sources and used the finite element method to solve a static bidomain equation on a geometric model to compute torso surface potentials.

Results: Across 33 individual heartbeats, the forward computed torso potentials showed only moderate agreement in both pattern and amplitude with the measured values on the torso surface. Qualitative analysis showed a more encouraging pattern of elevations and depressions shared by computed and measured torso potentials. Pearson's correlation coefficient, root mean squared error, and absolute error varied significantly by heartbeat (0.1642 ± 0.223, 0.10 ± 0.03mV, and 0.08 ± 0.03mV, respectively).

Discussion: We speculate several sources of error in our computation including noise within torso surface recordings, registration of electrode and anatomical locations, assuming a homogeneous torso conductivities, and imposing a uniform "transition zone" between ischemic and non-ischemic tissues. Further studies will focus on characterizing these sources of error and understanding how they effect the study results.

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急性心肌缺血时躯干表面电位图像建模的实验验证。
引言:心肌缺血是几种潜在心脏病理的早期临床指标,包括冠状动脉疾病、Takatsobu心肌病和冠状动脉夹层。通过解决心电图的正向问题,在从心脏源计算体表电位方面取得了重大进展。然而,缺乏体内研究来验证缺血性来源的此类计算,限制了此类模型的转化潜力。方法:为了解决这一需求,我们开发了一个大型动物实验模型,该模型包括在急性受控缺血发作期间在心肌、心外膜表面和躯干表面同时记录。在每个实验之后,获得解剖结构和电极位置的磁共振图像,以创建每个动物的受试者特定模型。根据心脏的电记录,我们确定了缺血源,并使用有限元方法在几何模型上求解静态双域方程,以计算躯干表面电位。结果:在33个个体心跳中,正向计算的躯干电位在模式和振幅上与躯干表面的测量值仅显示出适度一致。定性分析显示,计算和测量的躯干电位具有更令人鼓舞的升高和降低模式。Pearson的相关系数、均方根误差和绝对误差随心跳变化显著(分别为0.1642±0.223、0.10±0.03mV和0.08±0.03mV),以及在缺血组织和非缺血组织之间施加均匀的“过渡区”。进一步的研究将侧重于描述这些误差来源,并了解它们如何影响研究结果。
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