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首页> 外文期刊>Frontiers in Pediatrics >Multi-Channel Fetal ECG Denoising With Deep Convolutional Neural Networks
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Multi-Channel Fetal ECG Denoising With Deep Convolutional Neural Networks

机译:具有深度卷积神经网络的多通道胎儿ECG去噪

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Non-invasive fetal electrocardiography represents a valuable alternative continuous fetal monitoring method that has recently received considerable attention in assessing fetal health. However, the non-invasive fetal electrocardiogram (ECG) is typically severely contaminated by a considerable amount of various noise sources, rendering fetal ECG denoising a very challenging task. This work employs a deep learning approach for removing the residual noise from multi-channel fetal ECG after the maternal ECG has been suppressed. We propose a deep convolutional encoder-decoder network with symmetric skip-layer connections, learning end-to-end mappings from noise-corrupted fetal ECG signals to clean ones. Experiments on simulated data show an average signal-to-noise ratio (SNR) improvement of 9.5 dB for fetal ECG signals with input SNR ranging between ?20 and 20 dB. The method is additionally evaluated on a large set of real signals, demonstrating that it can provide significant quality improvement of the noisy fetal ECG signals. We further show that employment of multi-channel signal information by the network provides superior and more reliable performance as opposed to its single-channel network counterpart. The presented method is able to preserve beat-to-beat morphological variations and does not require any prior information on the power spectra of the noise or the pulse location.
机译:无侵袭性胎儿心心电图代表了一种有价值的替代胎儿监测方法,最近在评估胎儿健康方面得到了相当大的关注。然而,非侵入性胎儿心电图(ECG)通常受到相当大量的各种噪声源的严重污染,使胎儿ECG呈现出非常具有挑战性的任务。这项工作采用深度学习方法,以在抑制母体ECG之后从多通道胎儿ECG中去除残留噪声。我们提出了一个深度卷积编码器解码器网络,具有对称跳过层连接,从噪声损坏的胎儿ECG信号学习结束到结束映射到清洁。模拟数据的实验显示了胎儿ECG信号的平均信噪比(SNR)改进,输入SNR之间的胎儿ECG信号在Δ20和20dB之间。该方法另外在大量的真实信号上进行评估,证明它可以提供嘈杂的胎儿ECG信号的显着质量改善。我们进一步表明,网络上的多通道信号信息的就业提供了卓越且更可靠的性能,而不是其单通道网络对应物。该方法能够保持搏动的形态变化,并且不需要任何关于噪声的功率谱或脉冲位置的先前信息。

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