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A Non-Invasive Approach for Fetal Arrhythmia Detection and Classification from ECG Signals

机译:通过ECG信号进行胎儿心律失常检测和分类的非侵入性方法

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This paper aims to present an intelligent system for autonomous diagnosis of fetal arrhythmia based on fetal ECG recordings. The present scheme uses one dimensional (1D) convolution with a wavelet kernel to extract time domain features from subjects possessing normal fetal ECG and fetal arrhythmia ECG. Time- domain features obtained from the convoluted signals are fed to a trained artificial neural network (ANN) with gradient descent learning to identify and classify fetal ECG signals. The experimental evaluation of the proposed scheme has been tested with a six- channel fetal ECG signal, available in the NIFEADB database. An overall accuracy of 96% is obtained by evaluating standard performance metrics. The use of 1D convolution not only reduces the computational burden but also helps to specify the feature space to develop an intelligent system for portable embedded system applications.
机译:本文旨在提出一种基于胎儿心电图记录的自主诊断胎儿心律失常的智能系统。本方案使用具有小波核的一维(1D)卷积从具有正常胎儿ECG和胎儿心律不齐ECG的受试者中提取时域特征。从卷积信号中获得的时域特征被馈送到经过训练的人工神经网络(ANN),该网络具有梯度下降学习功能,可识别和分类胎儿ECG信号。已通过NIFEADB数据库中提供的六通道胎儿ECG信号对提议方案的实验评估进行了测试。通过评估标准性能指标,可以达到96%的总体准确性。一维卷积的使用不仅减轻了计算负担,而且还有助于指定功能空间以开发适用于便携式嵌入式系统应用程序的智能系统。

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