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A deep learning approach to fetal-ECG signal reconstruction

机译:胎儿心电信号重建的深度学习方法

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Fetal electrocardiogram (FECG) monitoring has become essential due to the current increase in the relative number of cardiac patients worldwide. This paper proposes to use a deep learning approach to compress/recover FECG signals, improving the computation speed in a telemonitoring system. The problem is analogous to the reconstruction of a non-sparse signal in compressive sensing (CS) framework. The architecture incorporates a non-linear mapping using a stacked denoising autoencoder (SDAE). The compression of the raw non-sparse FECG data takes place at the transmitter side using a deep neural network. After pre-training, the whole deep SDAE can be further fine tuned by the mini-batch gradient descent-based back-propagation algorithm. Although the training for SDAE is usually time-consuming, it does not affect the performance due to the one-time off-line training process. The real-time FECG reconstruction is faster due to a few matrix-vector multiplications at the receiver end. The simulations performed by employing standard non-invasive FECG databases shows promising results in terms of the reconstruction quality.
机译:由于目前全世界心脏病患者相对人数的增加,胎儿心电图(FECG)监测已变得至关重要。本文提出使用深度学习方法来压缩/恢复FECG信号,从而提高远程监控系统的计算速度。该问题类似于在压缩感测(CS)框架中重建非稀疏信号。该架构结合了使用堆叠降噪自动编码器(SDAE)的非线性映射。使用深度神经网络在发送方进行原始非稀疏FECG数据的压缩。经过预训练后,可以通过基于小批量梯度下降的反向传播算法进一步微调整个深层SDAE。尽管SDAE的培训通常很耗时,但是由于一次性的离线培训过程,它不会影响性能。由于在接收器端进行了一些矩阵向量乘法运算,因此实时FECG重建速度更快。通过采用标准的非侵入性FECG数据库进行的仿真在重建质量方面显示出令人鼓舞的结果。

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