心肌梗死的心脏磁图无创计算建模

V. Bhat, A. H, Gireesan K
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引用次数: 0

摘要

心磁源的计算成像是生物医学领域的一个新兴领域,有望在无创手术的情况下评估许多心脏相关疾病。利用心磁图可以研究由心脏脉冲产生的生物磁场的功能波。本研究的难点在于不仅要对体表的心功能进行成像/定位,而且要在心肌水平上重建心功能活动。为了解决这个问题,人们必须用MCG传感器来模拟胸腔内心脏的一般结构,这被称为“向前问题”。我们提出了一种从矢量心动图信号中提取空间矩阵的新方法。然后用正向矩阵估计心脏的位置、方向和活动。将正演和逆演方法分别应用于单源模型和分布源模型的正常心肌梗死和心肌梗死病例。基于VCG的模型定位精度在0.01 ~ 1mm范围内,采用L2范数和L1范数正则化技术对心脏活动进行估计和比较。研究表明,所提出的空间矩阵具有较好的局域性,L1范数正则化提供了较L2范数更清晰的解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Invasive Computational Modeling of Heart from Vectorcardiography in Myocardial Infarction using Magnetocardiography
Computational imaging of the cardio-magnetic sources is an emerging field in the biomedical society that promises to evaluate many cardiac related diseases without noninvasive procedures. The functional waves generated in terms of bio-magnetic field due to cardiac impulses can be investigated using Magnetocardiogram. The challenging task in the research is to image/localize the cardiac dysfunctions from MCG not only at the body surface but also to reconstruct the activities on the myocardial level. In order to solve this, one has to model a generic structure of the heart enclosed within a thorax with MCG sensors called as Forward problem.We proposed a novel approach in the construction of the spatial matrix derived from the vectorcardiography signals. The forward matrix was then used to estimate the position, orientation and the cardiac activities. The forward and inverse methods were applied to normal and myocardial infarcted cases for single and distributed source models. The localization accuracies of the proposed model based on VCG lied in the range of 0.01mm to 1 mm.The cardiac activities were estimated and compared using L2 norm and L1 norm regularization techniques. According to this study, the proposed spatial matrix used in the inverse problem gave good localization and L1 norm regularization provided sharper solutions than L2 norm.
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