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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Neural-network-based adaptive matched filtering for QRS detection
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Neural-network-based adaptive matched filtering for QRS detection

机译:基于神经网络的自适应匹配滤波用于QRS检测

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摘要

The authors have developed an adaptive matched filtering algorithm based upon an artificial neural network (ANN) for QRS detection. They use an ANN adaptive whitening filter to model the lower frequencies of the electrocardiogram (ECG) which are inherently nonlinear and nonstationary. The residual signal which contains mostly higher frequency QRS complex energy is then passed through a linear matched filter to detect the location of the QRS complex. The authors developed an algorithm to adaptively update the matched filter template from the detected QRS complex in the ECG signal itself so that the template can be customized to an individual subject. This ANN whitening filter is very effective at removing the time-varying, nonlinear noise characteristic of ECG signals. The detection rate for a very noisy patient record in the MIT/BIH arrhythmia database is 99.5% with this approach, which compares favorably to the 97.5% obtained using a linear adaptive whitening filter and the 96.5% achieved with a bandpass filtering method.
机译:作者开发了一种基于人工神经网络(ANN)的QRS检测自适应匹配滤波算法。他们使用ANN自适应白化滤波器来建模心电图(ECG)的较低频率,该频率固有地是非线性且不稳定的。然后,包含大部分频率较高的QRS复数能量的残留信号通过线性匹配滤波器,以检测QRS复数的位置。作者开发了一种算法,可以从ECG信号本身中检测到的QRS复合信号中自适应地更新匹配的过滤器模板,以便可以针对单个对象定制模板。该ANN白化滤波器对于消除ECG信号随时间变化的非线性噪声特性非常有效。用这种方法在MIT / BIH心律失常数据库中非常嘈杂的患者记录的检出率为99.5%,与使用线性自适应增白滤波器获得的97.5%和通过带通滤波方法获得的96.5%相比具有优势。

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