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首页> 外文期刊>Biomedizinische Technik >Segmented independent component analysis for improved separation of fetal cardiac signals from nonstationary fetal magnetocardiograms
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Segmented independent component analysis for improved separation of fetal cardiac signals from nonstationary fetal magnetocardiograms

机译:分段独立成分分析可改善胎儿心脏信号与非平稳胎儿心动图的分离

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摘要

Fetal magnetocardiograms (fMCGs) have been successfully processed with independent component analysis (ICA) to separate the fetal cardiac signals, but ICA effectiveness can be limited by signal nonstationarities due to fetal movements. We propose an ICA-based method to improve the quality of fetal signals separated from fMCG affected by fetal movements. This technique (SegICA) includes a procedure to detect signal nonstationarities, according to which the fMCG recordings are divided in stationary segments that are then processed with ICA. The first and second statistical moments and the signal polarity reversal were used at different threshold levels to detect signal transients. SegICA effectiveness was assessed in two fMCG datasets (with and without fetal movements) by comparing the signal-to-noise ratio (SNR) of the signals extracted with ICA and with SegICA. Results showed that the SNR of fetal signals affected by fetal movements improved with SegICA, whereas the SNR gain was negligible elsewhere. The best measure to detect signal nonstationarities of physiological origin was signal polarity reversal at threshold level 0.9. The first statistical moment also provided good results at threshold level 0.6. SegICA seems a promising method to separate fetal cardiac signals of improved quality from nonstationary fMCG recordings affected by fetal movements.
机译:胎儿心电图(fMCG)已通过独立成分分析(ICA)成功处理,以分离出胎儿心脏信号,但是ICA的有效性可能因胎儿运动引起的信号不稳定而受到限制。我们提出了一种基于ICA的方法来改善受胎儿运动影响的fMCG分离出的胎儿信号的质量。此技术(SegICA)包括检测信号非平稳性的过程,根据该过程,fMCG记录被分为固定段,然后用ICA处理。在不同的阈值级别使用第一和第二统计力矩以及信号极性反转来检测信号瞬变。通过比较用ICA和SegICA提取的信号的信噪比(SNR),在两个fMCG数据集(有和没有胎儿运动)中评估了SegICA的有效性。结果显示,受胎儿运动影响的胎儿信号的SNR随SegICA改善,而其他地方的SNR增益则可忽略不计。检测生理起源信号非平稳性的最佳方法是将信号极性反转到阈值水平0.9。第一个统计时刻在阈值水平0.6处也提供了良好的结果。 SegICA似乎是一种有前途的方法,可以将质量提高的胎儿心脏信号与受胎儿运动影响的非平稳fMCG记录分开。

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