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Noninvasive Transmural Electrophysiological Imaging Based on Minimization of Total-Variation Functional

机译:基于总变异函数最小化的无创透壁电生理成像

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摘要

While tomographic imaging of cardiac structure and kinetics has improved substantially, electrophysiological mapping of the heart is still restricted to the surface with little or no depth information beneath. The progress in reconstructing 3-D action potential from surface voltage data has been hindered by the intrinsic ill-posedness of the problem and the lack of a unique solution in the absence of prior assumptions. In this work, we propose a novel adaption of the total-variation (TV) prior to exploit the unique spatial property of transmural action potential of being piecewise smooth with a steep boundary (gradient) separating depolarized and repolarized regions. We present a variational TV-prior instead of a common discrete TV-prior for improved robustness to mesh resolution, and solve the TV-minimization by a sequence of weighted, first-order L2-norm minimization. In a large set of phantom experiments, the proposed method is shown to outperform existing quadratic methods in preserving the steep gradient of action potential along the border of infarcts, as well as in capturing the disruption to the normal path of electrical wavefronts. Real-data experiments also further demonstrate the potential of the proposed method in revealing the location and shape of infarcts when quadratic methods fail to do so.
机译:尽管心脏结构和动力学的断层成像显着改善,但心脏的电生理标测仍局限于表面,下面没有或只有很少的深度信息。从表面电压数据重建3-D动作电位的进展已受到问题的固有不适性和在没有先前假设的情况下缺乏唯一解决方案的阻碍。在这项工作中,我们提出了一种新的总变化(TV)适应方法,以利用透壁动作电位的独特空间特性,即通过将去极化和再极化区域分开的陡峭边界(梯度)来平滑地分段平滑。为了提高对网格分辨率的鲁棒性,我们提出了一种变分电视优先级而不是普通的离散电视优先级,并通过一系列加权的一阶L2范数最小化来解决电视最小化问题。在大量的幻象实验中,在保留沿梗塞边界的动作电位的陡峭梯度以及捕获对电波阵面正常路径的干扰方面,所提出的方法表现出优于现有的二次方方法。实际数据实验还进一步证明了该方法在二次方方法无法做到的情况下揭示梗塞的位置和形状的潜力。

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