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An Adaptive FECG Extraction and Analysis Method Using ICA, ICEEMDAN and Wavelet Shrinkage

机译:基于ICA,ICEEMDAN和小波收缩的自适应FECG提取与分析方法

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The extraction of Fetal ECG (FECG) is still a difficult task in non-invasive approach since the frequency components of dominant maternal ECG and fetal ECG signals are generally overlapped. Besides, the baseline wander and high-frequency noise make the clear FECG difficult to be extracted. In this paper, we proposed a new combination of independent component analysis (ICA), improved complete ensemble empirical mode decomposition (ICEEMDAN), and wavelet shrinkage (WS) de-noising (ICA-ICEEMDAN-WS) to extract FECG while reducing the noise. ICA algorithm as the first step of our proposed method separated the mixed abdominal ECG signal to obtain the noisy FECG. Then for further denoisng and obtain higher SNR, noisy FECG was decomposed by the newly proposed ICEEMDAN that is more accurate for non-linear and non-stationary bio-signal processing. The informative extracted components were then determined based on the statistical significance test. WS de-noising removed the remained noisy subcomponents and finally the baseline wander was reduced by partial reconstruction. The performance of ICA-ICEEMDAN-WS method was evaluated using simulated and real data sets. Our results showed that our proposed method outperformed ICA-EEMD-WS, the recently proposed algorithm based on ensemble empirical mode decomposition
机译:胎儿心电图(FECG)的提取在非侵入性方法中仍然是一项艰巨的任务,因为主要的孕妇心电图和胎儿心电图信号的频率成分通常是重叠的。此外,基线漂移和高频噪声使清晰的FECG难以提取。在本文中,我们提出了一种新的组合:独立成分分析(ICA),改进的完整整体经验模式分解(ICEEMDAN)和小波收缩(WS)去噪(ICA-ICEEMDAN-WS)以提取FECG,同时降低噪声。作为我们提出的方法的第一步,ICA算法将混合的腹部ECG信号分离以获得嘈杂的FECG。然后,为了进一步去噪并获得更高的SNR,新提出的ICEEMDAN分解了嘈杂的FECG,该噪声对于非线性和非平稳生物信号处理更为准确。然后根据统计显着性检验确定提取的信息成分。 WS去噪去除了残留的嘈杂子组件,最后通过部分重建减少了基线漂移。使用模拟和真实数据集评估了ICA-ICEEMDAN-WS方法的性能。结果表明,我们提出的方法优于ICA-EEMD-WS,这是最近提出的基于整体经验模式分解的算法

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