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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Noninvasive myocardial activation time imaging: a novel inverse algorithm applied to clinical ECG mapping data
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Noninvasive myocardial activation time imaging: a novel inverse algorithm applied to clinical ECG mapping data

机译:无创心肌激活时间成像:一种新颖的逆算法应用于临床心电图映射数据

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摘要

Linear approaches like the minimum-norm least-square algorithm show insufficient performance when it comes to estimating the activation time map on the surface of the heart from electrocardiographic (ECG) mapping data. Additional regularization has to be considered leading to a nonlinear problem formulation. The Gauss-Newton approach is one of the standard mathematical tools capable of solving this kind of problem. To our experience, this algorithm has specific drawbacks which are caused by the applied regularization procedure. In particular, under clinical conditions the amount of regularization cannot be determined clearly. For this reason, we have developed an iterative algorithm solving this nonlinear problem by a sequence of regularized linear problems. At each step of iteration, an individual L-curve is computed. Subsequent iteration steps are performed with the individual optimal regularization parameter. This novel approach is compared with the standard Gauss-Newton approach. Both methods are applied to simulated ECG mapping data as well as to single beat sinus rhythm data from two patients recorded in the catheter laboratory. The proposed approach shows excellent numerical and computational performance, even under clinical conditions at which the Gauss-Newton approach begins to break down.
机译:当从心电图(ECG)映射数据估计心脏表面的激活时间图时,像最小范数最小二乘算法之类的线性方法显示出不足的性能。必须考虑进行额外的正则化,从而导致出现非线性问题。高斯-牛顿法是能够解决此类问题的标准数学工具之一。根据我们的经验,该算法具有特定的缺陷,这些缺陷是由应用的正则化过程引起的。特别是,在临床条件下,不能明确确定正则化的量。因此,我们开发了一种通过一系列正则化线性问题解决此非线性问题的迭代算法。在迭代的每个步骤中,都会计算一个单独的L曲线。随后的迭代步骤是使用各个最佳正则化参数执行的。将此新颖方法与标准高斯-牛顿方法进行了比较。两种方法都适用于模拟的ECG映射数据以及导管实验室中记录的两名患者的单搏窦性心律数据。即使在高斯-牛顿法开始失效的临床条件下,所提出的方法仍具有出色的数值和计算性能。

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