Biomedical Engineering Institute, Kaunas University of Technology, Kaunas, Lithuania.
IEEE Trans Biomed Eng. 2012 Oct;59(10):2950-7. doi: 10.1109/TBME.2012.2212895. Epub 2012 Aug 23.
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 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 network has different sets of weights that define the input, hidden, and output layers, of which only the output set is adapted for every new sample to be processed. The performance is evaluated on ECG signals, with simulated f-waves added, by determining the root mean square error 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 an error reduction factor of 0.24-0.43, depending on f-wave amplitude. The estimates of dominant AF frequency are considerably more accurate for all f-wave amplitudes than the AF estimates based on ABS. The novel method is particularly well suited for implementation in mobile health systems where monitoring of AF during extended time periods is of interest.
介绍了一种用于记录两个或多个导联的心房颤动 (AF) 时 QRST 消除的新方法。该方法基于回声状态神经网络,该网络估计具有心房活动的导联和没有心房活动的导联之间的时变、非线性传递函数,目的是消除心室活动。该网络具有不同的权重集,定义了输入、隐藏和输出层,其中只有输出集适用于要处理的每个新样本。通过确定真实 f 波信号和估计信号之间的均方根误差以及评估主导 AF 频率,在添加模拟 f 波的 ECG 信号上评估性能。与平均节拍减法 (ABS) 相比,ABS 是最广泛用于 QRST 消除的方法,与基于 ABS 的 AF 估计相比,该方法的性能明显更好,误差降低因子为 0.24-0.43,具体取决于 f 波幅度。对于所有 f 波幅度,主导 AF 频率的估计都比基于 ABS 的 AF 估计准确得多。该新方法特别适合在移动健康系统中实现,因为在延长的时间段内监测 AF 很有意义。