首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Genetic algorithm-based regularization parameter estimation for the inverse electrocardiography problem using multiple constraints.
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Genetic algorithm-based regularization parameter estimation for the inverse electrocardiography problem using multiple constraints.

机译:使用多个约束的基于遗传算法的反心电图问题正则化参数估计。

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摘要

In inverse electrocardiography, the goal is to estimate cardiac electrical sources from potential measurements on the body surface. It is by nature an ill-posed problem, and regularization must be employed to obtain reliable solutions. This paper employs the multiple constraint solution approach proposed in Brooks et al. (IEEE Trans Biomed Eng 46(1):3-18, 1999) and extends its practical applicability to include more than two constraints by finding appropriate values for the multiple regularization parameters. Here, we propose the use of real-valued genetic algorithms for the estimation of multiple regularization parameters. Theoretically, it is possible to include as many constraints as necessary and find the corresponding regularization parameters using this approach. We have shown the feasibility of our method using two and three constraints. The results indicate that GA could be a good approach for the estimation of multiple regularization parameters.
机译:在逆心电描记法中,目标是从体表上的电位测量值估计心脏电源。从本质上讲,这是一个不适定的问题,必须采用正则化才能获得可靠的解决方案。本文采用了Brooks等人提出的多重约束解决方案。 (IEEE Trans Biomed Eng 46(1):3-18,1999),并通过为多个正则化参数找到合适的值来扩展其实际适用性以包括两个以上的约束。在这里,我们建议使用实值遗传算法来估计多个正则化参数。从理论上讲,可以根据需要包含尽可能多的约束条件,并使用此方法找到相应的正则化参数。我们已经证明了使用两个和三个约束的方法的可行性。结果表明,遗传算法可能是估计多个正则化参数的好方法。

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