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基于梯度投影的 L1-范数正则化在心外膜电位重建中的应用。

Application of L1-norm regularization to epicardial potential reconstruction based on gradient projection.

机构信息

Department of Computer Science and Engineering, The Chinese University of Hong Kong, Hong Kong.

出版信息

Phys Med Biol. 2011 Oct 7;56(19):6291-310. doi: 10.1088/0031-9155/56/19/009. Epub 2011 Sep 6.

DOI:10.1088/0031-9155/56/19/009
PMID:21896965
Abstract

The epicardial potential (EP)-targeted inverse problem of electrocardiography (ECG) has been widely investigated as it is demonstrated that EPs reflect underlying myocardial activity. It is a well-known ill-posed problem as small noises in input data may yield a highly unstable solution. Traditionally, L2-norm regularization methods have been proposed to solve this ill-posed problem. But the L2-norm penalty function inherently leads to considerable smoothing of the solution, which reduces the accuracy of distinguishing abnormalities and locating diseased regions. Directly using the L1-norm penalty function, however, may greatly increase computational complexity due to its non-differentiability. We propose an L1-norm regularization method in order to reduce the computational complexity and make rapid convergence possible. Variable splitting is employed to make the L1-norm penalty function differentiable based on the observation that both positive and negative potentials exist on the epicardial surface. Then, the inverse problem of ECG is further formulated as a bound-constrained quadratic problem, which can be efficiently solved by gradient projection in an iterative manner. Extensive experiments conducted on both synthetic data and real data demonstrate that the proposed method can handle both measurement noise and geometry noise and obtain more accurate results than previous L2- and L1-norm regularization methods, especially when the noises are large.

摘要

心外膜电位 (EP)-目标心电图 (ECG) 的逆问题已被广泛研究,因为它证明 EP 反映了潜在的心肌活动。这是一个众所周知的不适定问题,因为输入数据中的小噪声可能会产生高度不稳定的解。传统上,已经提出了 L2-范数正则化方法来解决这个不适定问题。但是,L2-范数惩罚函数本质上会导致解的相当大的平滑,从而降低区分异常和定位病变区域的准确性。然而,由于其不可微性,直接使用 L1-范数惩罚函数可能会大大增加计算复杂度。为了降低计算复杂度并实现快速收敛,我们提出了一种 L1-范数正则化方法。变分分割基于心外膜表面上存在正电位和负电位的观察,使 L1-范数惩罚函数可微。然后,将 ECG 的逆问题进一步表述为有界约束二次问题,可以通过梯度投影迭代有效地求解。在合成数据和真实数据上进行的广泛实验表明,与以前的 L2-和 L1-范数正则化方法相比,所提出的方法可以处理测量噪声和几何噪声,并获得更准确的结果,特别是当噪声较大时。

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