Fetal Electrocardiogram Recognition Using Multilayer Perceptron Neural Network

Boyang Wang, J. Saniie
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Abstract

Fetal Electrocardiography (FECG) signal contains valuable and meaningful information that would help doctors to make decisions during pregnancy and labor. It is also an important indicator of the fetal status. However, extracting FECG from non-invasive sensors is not easy since the FECG signal is weak compared to the Maternal ECG (MECG) signal. In conventional signal processing methods, it requires an adaptive filter with the MECG signal and the mixture of Electrocardiography (ECG) signal to reveal the FECG signal. This procedure requires significant computation power and multiple sensors applied on the pregnant women. As machine learning algorithms become more and more popular, applying neural network to signal processing is widely adapted in all types of applications. This paper presents a method based on neural network to recognize the FECG signal from the abdominal ECG signal acquired by non-invasive sensors. Training and evaluation procedure are achieved in TensorFlow on a heterogeneous platform. This algorithm can precisely identify both MECG and FECG signal from the maternal abdominal ECG signal.
基于多层感知器神经网络的胎儿心电图识别
胎儿心电图(FECG)信号包含有价值和有意义的信息,可以帮助医生在怀孕和分娩期间做出决定。它也是胎儿状态的重要指标。然而,从无创传感器中提取FECG并不容易,因为FECG信号与母体ECG (MECG)信号相比较弱。在传统的信号处理方法中,需要将MECG信号与ECG信号混合使用自适应滤波器来显示feg信号。这个过程需要大量的计算能力和应用在孕妇身上的多个传感器。随着机器学习算法的日益普及,将神经网络应用于信号处理被广泛应用于各种类型的应用中。本文提出了一种基于神经网络的方法,从无创传感器采集的腹部心电信号中识别feg信号。训练和评估过程在异构平台上的TensorFlow中实现。该算法可以准确地从母体腹部心电信号中识别出MECG和FECG信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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