一种基于Hilbert变换的胎儿心音检测方法

D. Taralunga, Alexandra-Maria Tăuțan, G. Ungureanu
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引用次数: 3

摘要

胎儿心率(fHR)和胎儿心率变异性(fHRV)是主要的生物医学参数,用于调查心脏疾病和确定在怀孕期间对胎儿施加的压力发作。因此,医生可以确定缺氧的阶段,并采取精确的措施。胎儿心音图(fPCG)是胎儿心脏在心脏周期中产生的声音的代表,可用于推导胎儿心率。它的优点是通过一种非常简单和经济的方法获得。然而,主要的限制是非常低的信噪比(SNR),因为声学传感器还记录其他事件:母体器官声音(mOS),母体心音(mHS)和其他由不同来源(背景噪声,混响噪声等)产生的声学事件。将胎儿心音从这种混合声中分离出来并不简单,因为某些成分在频域上与胎儿心音有很高的相关性。因此,干扰最大的是窄带非平稳的mHS信号。提出了一种基于小波变换和希尔伯特变换分析的fHS增强方法。利用PhysioBank的仿真fPCG数据库对该方法在fHS提取中的性能进行了评价。结果表明,fHS的正确定位性能良好,总体性能达到90%。
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An Efficient Method for Fetal Heart Sounds Detection Based on Hilbert Transform
Fetal heart rate (fHR) and fetal heart rate variability (fHRV) are the main biomedical parameters that are used to investigate cardiac disorders and to identify episodes of stress which are exercised on the fetus during pregnancy. Thus, stages of hypoxia can be identified and precise actions can be taken by the physicians. The fetal phonocardiogram (fPCG), which is the representation of the sounds produced by the fetal heart during a cardiac cycle, can be used to derive the fetal heart rate. It has the advantage that it is obtained via a very simple and cost-effective method. However, the main limitation is the very low signal to noise ratio (SNR) because the acoustic sensor records also other events: maternal organ sounds (mOS), maternal heart sounds (mHS) and other acoustic events produced by different sources (background noise, reverberation noise etc). The separation of the fetal heart sounds (fHS) from this acoustic mixture is not simple because some components present high correlation in frequency domain with the fHS. Thus, the most disturbing component is the mHS signal which is narrowband and non-stationary. In this paper is proposed a method for fHS enhancement based on Wavelet and Hilbert transform analysis. The performance of the proposed method in fHS extraction is evaluated with the simulated fPCG database from PhysioBank. Results indicate promising performance in correct localization of the fHS reaching an overall performance of 90%.
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