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Automated detection of the onset and systolic peak in the pulse wave using Hilbert transform

机译:使用希尔伯特变换自动检测脉搏波中的起搏峰和收缩峰

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Pulse transit time (PIT) and pulse wave velocity (PWV) are the markers most widely used to evaluate the vascular effects of aging, hypertension, arterial stiffness and atherosclerosis. To calculate these markers it is necessary to determine the location of the onset and systolic peak of the arterial pulse wave (APW). In this paper, a method employed for electrocardiography (ECG) R peak detection, with a slight modification, is applied for both the onset and systolic peak detections in APW. The method employs Shannon energy envelope (SEE) estimator, Hilbert transform (HT) and moving average (MA) filter. The minimum value and the positive zero-crossing points of the odd-symmetry function of the HT correspond to the locations of the onset and systolic peak respectively. The algorithm was evaluated using expert's annotations, with 10 records of 5 min length and different signal-to-noise ratios (15, 12 and 9 dB) and achieved a good performance and precision. When compared to, expert's annotation, the algorithm detected these fiducial points with average sensitivity, positive predictivity and accuracy of 100% and presented errors less than 10 ms. In APW signals contaminated with noise in both cases the relative error is less than 2% respect to pulse wave periods of 800 ms. The performance of algorithm was compared with both foot approximation and adaptive threshold methods and the results show that the algorithm outperforms theses reported methods with respect to manuals annotation. The results are promising, suggesting that the method provides a simple but accurate onset and systolic peak detection and can be used in the measurement of pulse transit time, pulse wave velocity and pulse rate variability. (C) 2015 Elsevier Ltd. All rights reserved.
机译:脉搏传播时间(PIT)和脉搏波速度(PWV)是最广泛用于评估衰老,高血压,动脉僵硬和动脉粥样硬化的血管效应的标志物。为了计算这些标志物,必须确定动脉脉搏波(APW)的发作和收缩峰的位置。在本文中,对心电图(ECG)R峰检测采用的方法(略有修改)适用于APW中的发作峰和收缩峰检测。该方法采用了香农能量包络(SEE)估计器,希尔伯特变换(HT)和移动平均(MA)滤波器。 HT的奇对称函数的最小值和正零交叉点分别对应于发作峰值和收缩期峰值的位置。使用专家注释对算法进行了评估,该记录具有5分钟长度的10条记录以及不同的信噪比(15、12和9 dB),并具有良好的性能和精度。与专家的注释进行比较时,该算法以平均灵敏度,正预测性和100%的准确度检测到这些基准点,并且误差小于10 ms。在这两种情况下,在被噪声污染的APW信号中,相对于800毫秒的脉搏波周期,相对误差均小于2%。将算法的性能与足部逼近法和自适应阈值法进行了比较,结果表明该算法在人工标注方面优于这些报道的方法。结果令人鼓舞,表明该方法提供了一种简单但准确的发作和收缩峰检测方法,可用于测量脉搏传播时间,脉搏波速度和脉搏率变异性。 (C)2015 Elsevier Ltd.保留所有权利。

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