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Considering New Regularization Parameter-Choice Techniques for the Tikhonov Method to Improve the Accuracy of Electrocardiographic Imaging

机译:为Tikhonov方法考虑新的正则化参数选择技术以提高心电图成像的准确性

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摘要

The electrocardiographic imaging (ECGI) inverse problem highly relies on adding constraints, a process called regularization, as the problem is ill-posed. When there are no prior information provided about the unknown epicardial potentials, the Tikhonov regularization method seems to be the most commonly used technique. In the Tikhonov approach the weight of the constraints is determined by the regularization parameter. However, the regularization parameter is problem and data dependent, meaning that different numerical models or different clinical data may require different regularization parameters. Then, we need to have as many regularization parameter-choice methods as techniques to validate them. In this work, we addressed this issue by showing that the Discrete Picard Condition (DPC) can guide a good regularization parameter choice for the two-norm Tikhonov method. We also studied the feasibility of two techniques: The U-curve method (not yet used in the cardiac field) and a novel automatic method, called ADPC due its basis on the DPC. Both techniques were tested with simulated and experimental data when using the method of fundamental solutions as a numerical model. Their efficacy was compared with the efficacy of two widely used techniques in the literature, the L-curve and the CRESO methods. These solutions showed the feasibility of the new techniques in the cardiac setting, an improvement of the morphology of the reconstructed epicardial potentials, and in most of the cases of their amplitude.
机译:心电图成像(ECGI)逆问题高度依赖于添加约束,这一过程称为正则化,因为该问题是病态不适的。如果没有提供有关未知心外膜电位的先验信息,则Tikhonov正则化方法似乎是最常用的技术。在Tikhonov方法中,约束的权重由正则化参数确定。但是,正则化参数是问题和数据相关的,这意味着不同的数值模型或不同的临床数据可能需要不同的正则化参数。然后,我们需要与验证它们的技术一样多的正则化参数选择方法。在这项工作中,我们通过证明离散皮卡德条件(DPC)可以为二范数Tikhonov方法提供良好的正则化参数选择来解决此问题。我们还研究了两种技术的可行性:U曲线方法(尚未在心脏领域使用)和一种新颖的自动方法,由于其基于DPC的原因而被称为ADPC。当使用基本解法作为数值模型时,这两种技术都通过模拟和实验数据进行了测试。将它们的功效与两种广泛使用的技术(L曲线和CRESO方法)的功效进行了比较。这些解决方案显示了在心脏环境中使用新技术的可行性,对重构的心外膜电位的形态学的改善以及大多数情况下振幅的改善。

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