Simultaneous Multi-Heartbeat ECGI Solution with a Time-Varying Forward Model: a Joint Inverse Formulation.

Jake A Bergquist, Jaume Coll-Font, Brian Zenger, Lindsay C Rupp, Wilson W Good, Dana H Brooks, Rob S MacLeod
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Abstract

Electrocardiographic imaging (ECGI) is an effective tool for noninvasive diagnosis of a range of cardiac dysfunctions. ECGI leverages a model of how cardiac bioelectric sources appear on the torso surface (the forward problem) and uses recorded body surface potential signals to reconstruct the bioelectric source (the inverse problem). Solutions to the inverse problem are sensitive to noise and variations in the body surface potential (BSP) recordings such as those caused by changes or errors in cardiac position. Techniques such as signal averaging seek to improve ECGI solutions by incorporating BSP signals from multiple heartbeats into an averaged BSP with a higher SNR to use when estimating the cardiac bioelectric source. However, signal averaging is limited when it comes to addressing sources of BSP variability such as beat to beat differences in the forward solution. We present a novel joint inverse formulation to solve for the cardiac source given multiple BSP recordings and known changes in the forward solution, here changes in the heart position. We report improved ECGI accuracy over signal averaging and averaged individual inverse solutions using this joint inverse formulation across multiple activation sequence types and regularization techniques with measured canine data and simulated heart motion. Our joint inverse formulation builds upon established techniques and consequently can easily be applied with many existing regularization techniques, source models, and forward problem formulations.

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采用时变前向模型的同步多心跳心电图成像解决方案:联合逆推算法
心电图成像(ECGI)是对一系列心脏功能障碍进行无创诊断的有效工具。心电图成像利用心脏生物电源如何出现在躯干表面的模型(正向问题),并使用记录的体表电位信号来重建生物电源(逆向问题)。逆向问题的解决方案对体表电位(BSP)记录中的噪音和变化(如心脏位置变化或误差引起的噪音和变化)非常敏感。信号平均等技术通过将多个心脏搏动的 BSP 信号合并到具有较高信噪比的 BSP 平均值中,用于估算心脏生物电源,从而改进心电图成像解决方案。然而,信号平均法在处理 BSP 变异源(如正向解决方案中的逐次搏动差异)时受到限制。我们提出了一种新颖的联合反演公式,在多个 BSP 记录和前向解中已知变化(即心脏位置变化)的情况下求解心脏信号源。与信号平均和平均单个逆解法相比,我们报告的心电图成像准确度有所提高,这种联合逆解法适用于多种激活序列类型和正则化技术,并能测量犬类数据和模拟心脏运动。我们的联合逆公式建立在已有技术的基础上,因此可轻松应用于许多现有的正则化技术、信号源模型和前向问题公式。
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