Independent components analysis for fetal electrocardiogram extraction: a case for the data efficient Mermaid algorithm

Dorothee E. Marossero, Deniz Erdoğmuş, N. Euliano, J. Príncipe, K. Hild
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引用次数: 41

Abstract

Fetal heart rate (FHR) monitoring is currently the primary methodology for antenatal determination of fetal well-being. Currently, the FHR can be detected with ultrasonography, but the additional information from fetal electrocardiogram (FECG) is only available via an invasive scalp electrode. A cost effective noninvasive monitoring through standard ECG electrodes could be used on nearly every patient in lieu of the ultrasound monitors. In this method, a number of electrodes are positioned on the abdomen of the mother to collect, simultaneously, various combinations of the signals including the heartbeats of the mother and the fetus. For accurate fetal heart-rate estimation, a clean FECG must be extracted from the collected mixtures. It is well known that this can be achieved using blind source separation (BSS) techniques. In this paper, the performance of the Mermaid algorithm, which is based on minimizing Renyi's mutual information, is evaluated on this problem of great practical importance. The effectiveness and data efficiency of Mermaid and its superiority over alternative information theoretic BSS algorithms are illustrated using artificially mixed ECG signals as well as fetal heart rate estimates in real ECG mixtures.
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胎儿心电图提取的独立分量分析:以数据高效的Mermaid算法为例
胎儿心率(FHR)监测是目前胎儿健康产前测定的主要方法。目前,FHR可以通过超声波检测,但胎儿心电图(FECG)的附加信息只能通过侵入性头皮电极获得。通过标准心电图电极进行的一种经济有效的无创监测几乎可以用于每位患者,以代替超声波监测器。在这种方法中,许多电极被放置在母亲的腹部,同时收集各种信号的组合,包括母亲和胎儿的心跳。为了准确估计胎儿心率,必须从收集的混合物中提取干净的FECG。众所周知,这可以使用盲源分离(BSS)技术来实现。本文对基于Renyi互信息最小化的Mermaid算法的性能进行了评价,以解决这一具有重要实际意义的问题。利用人工混合的心电信号和真实心电混合的胎儿心率估计,说明了Mermaid算法的有效性和数据效率,以及它相对于其他信息理论BSS算法的优越性。
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