Fetal ECG Extraction Using Independent Components and Characteristics Matching

M. Alkhodari, A. Rashed, Meera Alex, Nai-Shyong Yeh
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引用次数: 3

Abstract

In this paper, further investigations into a simpler automated use of Independent Component Analysis (ICA) in the process of Fetal ECG (FECG) extraction are performed. Extracting FECG signals through abdominal electrodes helps clinicians in diagnosing the overall health of the fetus non-invasively. In the ICA technique, FECG signals are separated from Abdominal ECG (AECG) mixtures containing maternal and noise signals. 300,000 Data samples of three AECG recordings are obtained from PhysioNet database at 1 kHz sampling frequency. Data are pre-processed through MATLAB software by centering, whitening, and filtering techniques. Then, a simpler Fast ICA algorithm is developed and used to smoothly distinguish between AECG components through automatic signal characteristics matching. Moreover, further analysis of the extracted FECG signal is performed to determine the fetus heart rate. Results successfully show efficient automatic separation between the FECG, Maternal ECG (MECG), and noise from the AECG recordings. In addition, the developed characteristics matching algorithm automatically identified the fetus signal and smoothed it to be ready for further fetal health observations. The integration of AECG signal characteristics as a prior information into the ICA algorithm promises to assist clinicians in decision making when diagnosing fetal health conditions non-invasively.
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基于独立分量和特征匹配的胎儿心电图提取
在本文中,进一步研究了独立成分分析(ICA)在胎儿心电图(FECG)提取过程中更简单的自动化使用。通过腹部电极提取feg信号有助于临床医生无创地诊断胎儿的整体健康状况。在ICA技术中,FECG信号从含有母体信号和噪声信号的腹部ECG (AECG)混合信号中分离出来。以1 kHz的采样频率从PhysioNet数据库中获得3个AECG记录的30万个数据样本。通过MATLAB软件对数据进行定心、白化、滤波等预处理。然后,开发了一种更简单的快速ICA算法,并通过自动信号特征匹配来平滑区分AECG分量。此外,对提取的FECG信号进行进一步分析以确定胎儿心率。结果成功地显示了feg、母体ECG (MECG)和AECG记录噪声的有效自动分离。此外,所开发的特征匹配算法可以自动识别胎儿信号并对其进行平滑处理,为进一步的胎儿健康观察做好准备。将AECG信号特征作为先验信息整合到ICA算法中,有望帮助临床医生在无创诊断胎儿健康状况时做出决策。
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