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Deep Convolutional Encoder-Decoder Framework for Fetal ECG Signal Denoising

机译:用于胎儿ECG信号降噪的深度卷积编解码器框架

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Non-invasive fetal electrocardiography has the potential of providing vital information for evaluating the health status of the fetus. However, the low signal-to-noise ratio of the fetal electrocardiogram (ECG) impedes the applicability of the method in clinical practice. Residual noise in the fetal ECG, after the maternal ECG is suppressed, is often non-stationary, complex and has spectral overlap with the fetal ECG. We present a deep fully convolutional encoder-decoder framework, for removing the residual noise from single-channel fetal ECG. The method was tested in a broad simulated fetal ECG dataset with varying amount of noise. The results demonstrate that after the denoising there was an average increase in the correlation coefficient between the corrupted signals and the original ones from 0.6 to 0.8. Moreover, the suggested framework successfully handled different levels of noises in a single model. The network was further tested on real signals showing substantial noise removal performance, thus providing a promising approach for fetal ECG signal denoising. The presented method is able to significantly improve the quality of the extracted fetal ECG signals, having the advantage of preserving beat-to-beat morphological variations.
机译:非侵入性胎儿心电图有潜力提供重要信息,以评估胎儿的健康状况。但是,胎儿心电图(ECG)的低信噪比妨碍了该方法在临床实践中的适用性。产妇心电图被抑制后,胎儿心电图中的残留噪声通常是不稳定的,复杂的,并且与胎儿心电图有频谱重叠。我们提出了一个深层的全卷积编码器-解码器框架,用于消除单通道胎儿ECG的残留噪声。该方法已在具有不同噪声量的广泛模拟胎儿ECG数据集中测试。结果表明,在去噪之后,已损坏信号与原始信号之间的相关系数从0.6到0.8平均增加。此外,建议的框架在单个模型中成功处理了不同级别的噪声。该网络在显示出实质性噪声去除性能的真实信号上进行了进一步测试,从而为胎儿ECG信号降噪提供了一种有前途的方法。所提出的方法能够显着改善提取的胎儿ECG信号的质量,其优点是保留了逐搏的形态变化。

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