首页> 外文会议>Computing in Cardiology 2012.;vol. 39. >Reservoir computing for extraction of low amplitude atrial activity in atrial fibrillation
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Reservoir computing for extraction of low amplitude atrial activity in atrial fibrillation

机译:计算心房纤颤低振幅房活动的储层计算

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摘要

A novel method for QRST cancellation during atrial fibrillation (AF) is introduced for use in recordings with two or more leads. The method is based on an echo state neural network (ESN) which estimates the time-varying, nonlinear transfer function between two leads, one lead with atrial activity and another lead without, for the purpose of canceling ventricular activity. The performance is evaluated on ECG signals, with simulated f-waves of low amplitude added, by determining the root mean square error P between the true f-wave signal and the estimated signal, as well as by evaluating the dominant AF frequency. When compared to average beat subtraction (ABS), being the most widely used method for QRST cancellation, the performance is found to be significantly better with equal to mean and standard deviation of PESN 24.8±7.3 and PABS 34.2±17.9 μV (p < 0.001). The novel method is particularly well-suited for implementation in mobile health systems where monitoring of AF during extended time periods is of interest.
机译:介绍了一种在房颤(AF)期间消除QRST的新方法,用于具有两个或多个导联的记录。该方法基于回声状态神经网络(ESN),该神经网络估计两个导线之间的时变非线性传递函数,一个导线具有心房活动性,而另一个导线则不具有心室活动性,目的是消除心室活动。通过确定真实f波信号和估计信号之间的均方根误差P以及评估主要的AF频率,在ECG信号上评估性能,并添加低振幅的模拟f波。与平均跳动减法(ABS)相比,它是QRST消除最广泛使用的方法,与P ESN 24.8±7.3和P的均值和标准差相等,其性能要好得多。 ABS 34.2±17.9μV(p <0.001)。该新颖方法特别适合在移动医疗系统中实施,在该系统中,对长时间监视AF感兴趣。

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