Artificial neural network for ECG arryhthmia monitoring

Y. Hu, W. Tompkins, Q. Xue
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引用次数: 7

Abstract

The application of a multilayer perceptron artificial neural network model (ANN) to detect the QRS complex in ECG (electrocardiography) signal processing is presented. The objective is to improve the heart beat detection rate in the presence of severe background noise. An adaptively tuned multilayer perceptron structure is used to model the nonlinear, time-varying background noise. The noise is removed by subtracting the predicted noise from the original signal. Preliminary experimental results indicate that the ANN based approach consistently outperforms the conventional bandpass filtering approach and the linear adaptive filtering approach. Such performance enhancement is most critical toward the development of a practical automated online ECG arrhythmia monitoring system.<>
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人工神经网络用于心电心律失常监测
提出了一种多层感知器人工神经网络模型(ANN)在心电图信号处理中的QRS复合体检测中的应用。目的是提高在严重背景噪声存在下的心跳检测率。采用自适应调谐多层感知器结构对非线性时变背景噪声进行建模。通过从原始信号中减去预测噪声来去除噪声。初步实验结果表明,基于人工神经网络的滤波方法优于传统的带通滤波方法和线性自适应滤波方法。这种性能的提高对于开发一种实用的自动在线心电心律失常监测系统至关重要。
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Discrete neural networks and fingerprint identification A fast simulator for neural networks on DSPs or FPGAs Hierarchical perceptron (HiPer) networks for signal/image classifications Adaptive decision-feedback equalizer using forward-only counterpropagation networks for Rayleigh fading channels An efficient model for systems with complex responses (neural network architecture for nonlinear filtering)
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