Rieta José Joaquín, Castells Francisco, Sánchez César, Zarzoso Vicente, Millet José
Bioengineering Electronic and Telemedicine Research Group, Electronic Engineering Department, Polytechnic University of Valencia, EPSG, Carretera Nazaret Oliva s/n, 46730, Gandía, Valencia, Spain.
IEEE Trans Biomed Eng. 2004 Jul;51(7):1176-86. doi: 10.1109/TBME.2004.827272.
This contribution addresses the extraction of atrial activity (AA) from real electrocardiogram (ECG) recordings of atrial fibrillation (AF). We show the appropriateness of independent component analysis (ICA) to tackle this biomedical challenge when regarded as a blind source separation (BSS) problem. ICA is a statistical tool able to reconstruct the unobservable independent sources of bioelectric activity which generate, through instantaneous linear mixing, a measurable set of signals. The three key hypothesis that make ICA applicable in the present scenario are discussed and validated: 1) AA and ventricular activity (VA) are generated by sources of independent bioelectric activity; 2) AA and VA present non-Gaussian distributions; and 3) the generation of the surface ECG potentials from the cardioelectric sources can be regarded as a narrow-band linear propagation process. To empirically endorse these claims, an ICA algorithm is applied to recordings from seven patients with persistent AF. We demonstrate that the AA source can be identified using a kurtosis-based reordering of the separated signals followed by spectral analysis of the sub-Gaussian sources. In contrast to traditional methods, the proposed BSS-based approach is able to obtain a unified AA signal by exploiting the atrial information present in every ECG lead, which results in an increased robustness with respect to electrode selection and placement.
本文探讨了从心房颤动(AF)的实际心电图(ECG)记录中提取心房活动(AA)的方法。当将其视为一个盲源分离(BSS)问题时,我们展示了独立成分分析(ICA)在应对这一生物医学挑战方面的适用性。ICA是一种统计工具,能够通过瞬时线性混合重建不可观测的生物电活动独立源,这些独立源产生一组可测量的信号。本文讨论并验证了使ICA适用于当前场景的三个关键假设:1)AA和心室活动(VA)由独立的生物电活动源产生;2)AA和VA呈现非高斯分布;3)从心脏电活动源产生体表ECG电位的过程可视为窄带线性传播过程。为了从经验上支持这些观点,将一种ICA算法应用于7例持续性AF患者的记录。我们证明,通过对分离信号进行基于峰度的重新排序,然后对亚高斯源进行频谱分析,可以识别AA源。与传统方法不同,所提出的基于BSS的方法能够通过利用每个ECG导联中存在的心房信息获得统一的AA信号,这使得在电极选择和放置方面具有更高的稳健性。