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An Ensemble Empirical Mode Decomposition Based Method for Fetal Phonocardiogram Enhancement

机译:基于组合经验模式分解的胎儿神经动画仪增强方法

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Nowadays, fetal monitoring standard relies mainly on the analysis of fetal heart rate. However, signals like fetal electrocadiogram (fECG) and fetal phonocardiogram (fPCG) can offer complementary diagnostic information derived from the waveform analysis. The limitations of using, in particular, fPCG are: the signal to noise ratio (SNR) is very low because the recorded signal is a mixture of acoustic components originating not only from the fetus heart but also from the mother (maternal heart sounds (MHS), maternal organ sounds (MOS)) and other sources (power line interference, reverbaration noise, sensor and background noise). Moreover, it is dependent on gestational age, fetal and maternal positions, the data acquisition location. From the noise components the MHS presents a high correlation in the frequency domain with the fetal heart sounds (FHS). Thus, separation of MHS from acoustic recordings is not straightforward. In addition the MHS is a narrowband non-stationary signal. Thus, in this paper is proposed a method for fPCG enhancement from the recorded acoustic mixture based on the Esemeble Empirical Mode Decomposition (EEMD). This approach allows to analyze heart sounds into Intrinsic Mode Functions (IMFs) and it is adaptive and data driven. The performance of the proposed method is evaluated on a database with simulated fPCG signals.
机译:如今,胎儿监测标准主要依赖于胎儿心率的分析。然而,像胎儿电天显影(FECG)和胎儿音盲(FPCG)这样的信号可以提供导出的互补诊断信息。特别是FPCG的局限性是:信噪比(SNR)的信号非常低,因为记录的信号是声学分量的混合,不仅来自胎儿心脏,而且来自母亲(母体心脏声音(MHS) ),母体器官声音(MOS))和其他来源(电力线干扰,远处噪声,传感器和背景噪声)。此外,它取决于妊娠期,胎儿和母体位置,数据采集位置。从噪声分量,MHS在频域中具有高相关,胎儿心脏声音(FHS)。因此,从声学记录中分离MHS并不直接。此外,MHS是一个窄带非静止信号。因此,在本文中,提出了一种基于ESEMEBLE经验模式分解(EEMD)的记录声学混合物的FPCG增强方法。这种方法允许分析心脏声音进入内在模式功能(IMF),并且它是自适应和数据驱动的。在具有模拟FPCG信号的数据库中评估所提出的方法的性能。

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