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Application of kernel principal component analysis and support vector regression for reconstruction of cardiac transmembrane potentials.

机译:核主成分分析和支持向量回归在重建心脏跨膜电位中的应用。

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摘要

Non-invasively reconstructing the transmembrane potentials (TMPs) from body surface potentials (BSPs) constitutes one form of the inverse ECG problem that can be treated as a regression problem with multi-inputs and multi-outputs, and which can be solved using the support vector regression (SVR) method. In developing an effective SVR model, feature extraction is an important task for pre-processing the original input data. This paper proposes the application of principal component analysis (PCA) and kernel principal component analysis (KPCA) to the SVR method for feature extraction. Also, the genetic algorithm and simplex optimization method is invoked to determine the hyper-parameters of the SVR. Based on the realistic heart-torso model, the equivalent double-layer source method is applied to generate the data set for training and testing the SVR model. The experimental results show that the SVR method with feature extraction (PCA-SVR and KPCA-SVR) can perform better than that without the extract feature extraction (single SVR) in terms of the reconstruction of the TMPs on epi- and endocardial surfaces. Moreover, compared with the PCA-SVR, the KPCA-SVR features good approximation and generalization ability when reconstructing the TMPs.
机译:从体表电位(BSP)进行无创重建跨膜电位(TMP)构成心电图逆向问题的一种形式,可以将其视为具有多输入和多输出的回归问题,并且可以使用支持方法解决向量回归(SVR)方法。在开发有效的SVR模型时,特征提取是预处理原始输入数据的重要任务。本文提出将主成分分析(PCA)和内核主成分分析(KPCA)应用于SVR特征提取方法。此外,遗传算法和单纯形优化方法被调用以确定SVR的超参数。基于现实的心脏躯干模型,应用等效双层源方法生成用于训练和测试SVR模型的数据集。实验结果表明,在心外膜和心内膜表面的TMP重建方面,具有特征提取的SVR方法(PCA-SVR和KPCA-SVR)比没有特征提取的SVR方法(单SVR)效果更好。此外,与PCA-SVR相比,KPCA-SVR在重构TMP时具有良好的近似和泛化能力。

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