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用于稳健心电图的概率源分离

Probabilistic source separation for robust electrocardiography.

作者信息

Vullings R

机构信息

Faculty of Electrical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:6492-5. doi: 10.1109/EMBC.2012.6347481.

Abstract

Blind source separation (BSS) techniques are widely used to extract signals of interest from a mixture with other signals. These methods, however, typically lack possibilities to incorporate any prior knowledge on the mixing of the source signals. Particularly for electrocardiographic signals, knowledge on the mixing is available based on the origin and propagation properties of these signals. In this paper, a novel source separation method is developed that combines the strengths and accuracy of BSS techniques with the robustness of an underlying physiological model of the electrocardiogram (ECG). The method is developed within a probabilistic framework and yields an iterative convergence of the separation matrix towards a maximum a posteriori estimation, where in each iteration the latest estimate of the separation matrix is corrected towards the physiological model. The method is evaluated by comparing its performance to that of FastICA on both simulated and real multi-channel ECG recordings, demonstrating that the developed method outperforms FastICA in terms of extracting the ECG source signals.

摘要

盲源分离(BSS)技术被广泛用于从与其他信号的混合信号中提取感兴趣的信号。然而,这些方法通常缺乏纳入关于源信号混合的任何先验知识的可能性。特别是对于心电图信号,可以基于这些信号的起源和传播特性获得关于混合的知识。本文提出了一种新颖的源分离方法,该方法将BSS技术的优势和准确性与心电图(ECG)基础生理模型的稳健性相结合。该方法是在概率框架内开发的,并且分离矩阵朝着最大后验估计进行迭代收敛,其中在每次迭代中,分离矩阵的最新估计朝着生理模型进行校正。通过在模拟和真实多通道ECG记录上将其性能与FastICA的性能进行比较来评估该方法,结果表明所开发的方法在提取ECG源信号方面优于FastICA。

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