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High resolution ambulatory holter ECG events detection-delineation via modified multi-lead wavelet-based features analysis: Detection and quantification of heart rate turbulence

机译:高分辨率动态心电图心电图事件检测-通过改进的基于多导小波的特征分析进行描述:心率湍流的检测和量化

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The presented study describes a false-alarm probability-FAP bounded solution for detecting and quantifying Heart Rate Turbulence (HRT) major parameters including heart rate (HR) acceleration/deceleration, turbulence jump, compensatory pause value and HR recovery rate. To this end, first, high resolution multi-lead holter electrocardiogram (ECG) signal is appropriately pre-processed via Discrete Wavelet Transform (DWT) and then, a fixed sample size sliding window is moved on the pre-processed trend. In each slid, the area under the excerpted segment is multiplied by its curve-length to generate the Area Curve Length (ACL) metric to be used as the ECC events detection-delineation decision statistic (DS). The ECG events detection-delineation algorithm was applied to various existing databases and as a result, the average values of sensitivity and positive predictivity Se = 99.95% and P+ = 99.92% were obtained for the detection of QRS complexes, with the average maximum delineation error of 7.4 msec, 4.2 msec and 8.3 msec for P-wave, QRS complex and T-wave, respectively. Because the heart-rate time series might include fast fluctuations which don't follow a premature ventricular contraction (PVC) causing high-level false alarm probability (false positive detections) of HRT detection, based on the binary two-dimensional Ney-man-Pearson radius test (which is a FAP-bounded classifier), a new method for discrimination of PVCs from other beats using the geometrical-based features is proposed. The statistical performance of the proposed HRT detection-quantification algorithm was obtained as Se = 99.94% and P+ = 99.85% showing marginal improvement for the detection-quantification of this phenomenon. In summary, marginal performance improvement of ECG events detection-delineation process, high performance PVC detection and isolation from noisy holter data and reliable robustness against holter strong noise and artifacts can be mentioned as important merits and capabilities of the proposed HRT detection algorithm.
机译:提出的研究描述了一种错误警报概率FAP有界解决方案,用于检测和量化心率湍流(HRT)主要参数,包括心率(HR)加速/减速,湍流跳跃,补偿性暂停值和HR恢复率。为此,首先,通过离散小波变换(DWT)对高分辨率多导动态心电图心电图(ECG)信号进行适当的预处理,然后根据预处理趋势移动固定样本大小的滑动窗口。在每个幻灯片中,将摘录段下面的面积乘以其曲线长度,以生成“面积曲线长度”(ACL)度量标准,以用作ECC事件检测-描绘决策统计量(DS)。将ECG事件检测描述算法应用于各种现有数据库,结果获得了QRS络合物检测灵敏度和正预测性的平均值Se = 99.95%和P + = 99.92%,平均最大轮廓误差对于P波,QRS波群和T波,分别为7.4毫秒,4.2毫秒和8.3毫秒。由于心率时间序列可能包含快速波动,这些波动不会遵循过早的心室收缩(PVC),因此会基于二进制二维Ney-man-皮尔逊半径测试(这是一个受FAP约束的分类器),提出了一种使用基于几何特征来区分PVC与其他搏动的新方法。所提出的HRT检测定量算法的统计性能为Se = 99.94%,P + = 99.85%,显示出对该现象的检测定量略有改善。总而言之,可以将ECG事件检测-描述过程的边际性能改进,高性能PVC检测以及与嘈杂的动态心电图数据隔离以及针对动态心电图的强噪声和伪像的可靠鲁棒性作为所提出的HRT检测算法的重要优点和功能。

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