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A low-pass differentiation filter based on the 2nd-order B-spline wavelet for calculating augmentation index

机译:基于二阶B样条小波的低通微分滤波器,用于计算扩增指数

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摘要

The key point to calculate augmentation index (AIx) related to cardiovascular diseases is the precise identification of the shoulder point. The commonly used method for extracting the shoulder point is to calculate the fourth derivative of the pulse waveform by numerical differentiation. However, this method has a poor anti-noise capability and is computationally intensive. The aims of this study were to develop a new method based on the 2nd-order B-spline wavelet for calculating AIx, and to compare it with numerical differentiation and Savitzky-Golay digital differentiator (SGDD). All the three methods were applied to pulse waveforms derived from 60 healthy subjects. There was a significantly high correlation between the proposed method and numerical differentiation (r = 0.998 for carotid pulses, and r = 0.997 for radial pulses), as well as between the proposed method and the SGDD (r = 0.995 for carotid pulses, and r = 0.993 for radial pulses). In addition, the anti-noise capability of the proposed method was evaluated by adding simulated noise (>10 Hz) on pulse waveforms. The results showed that the proposed method was advantageous in noise tolerance than the other two methods. These findings indicate that the proposed method can quickly and accurately calculate AIx with a good anti-noise capability.
机译:计算与心血管疾病相关的增强指数(AIx)的关键是肩点的精确识别。提取肩点的常用方法是通过数值微分计算脉搏波形的四阶导数。但是,该方法具有较差的抗噪声能力,并且计算量大。这项研究的目的是开发一种基于二阶B样条小波计算AIx的新方法,并将其与数值微分和Savitzky-Golay数字微分器(SGDD)进行比较。将这三种方法都应用于从60名健康受试者获得的脉搏波形。所提出的方法与数值微分之间有极高的相关性(颈动脉脉冲r = 0.998,径向脉冲r = 0.997),以及该方法与SGDD之间(颈动脉脉冲r = 0.995) =径向脉冲= 0.993)。此外,通过在脉冲波形上添加模拟噪声(> 10 Hz)来评估​​所提出方法的抗噪声能力。结果表明,该方法在噪声容忍度方面优于其他两种方法。这些发现表明,所提出的方法可以快速,准确地计算出具有良好的抗噪能力的Alx。

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