Software R&D Center, Samsung Electronics Co., Ltd., Seoul, South Korea.
Department of Medical and Mechatronics Engineering, Soonchunhyang University, Asan, Chungnam, South Korea.
J Med Syst. 2017 Oct 24;41(12):189. doi: 10.1007/s10916-017-0842-0.
Photoplethysmographic signals are useful for heart rate variability analysis in practical ambulatory applications. While reducing the sampling rate of signals is an important consideration for modern wearable devices that enable 24/7 continuous monitoring, there have not been many studies that have investigated how to compensate the low timing resolution of low-sampling-rate signals for accurate heart rate variability analysis. In this study, we utilized the parabola approximation method and measured it against the conventional cubic spline interpolation method for the time, frequency, and nonlinear domain variables of heart rate variability. For each parameter, the intra-class correlation, standard error of measurement, Bland-Altman 95% limits of agreement and root mean squared relative error were presented. Also, elapsed time taken to compute each interpolation algorithm was investigated. The results indicated that parabola approximation is a simple, fast, and accurate algorithm-based method for compensating the low timing resolution of pulse beat intervals. In addition, the method showed comparable performance with the conventional cubic spline interpolation method. Even though the absolute value of the heart rate variability variables calculated using a signal sampled at 20 Hz were not exactly matched with those calculated using a reference signal sampled at 250 Hz, the parabola approximation method remains a good interpolation method for assessing trends in HRV measurements for low-power wearable applications.
光电容积脉搏波信号在实际的可移动应用中,对于心率变异性分析非常有用。在现代可穿戴设备中,降低信号的采样率对于实现 24/7 连续监测非常重要,但对于如何补偿低采样率信号的低时间分辨率以进行准确的心率变异性分析,研究还不多。在这项研究中,我们利用抛物线逼近法,并针对心率变异性的时间、频率和非线性域变量,将其与传统的三次样条插值法进行了比较。对于每个参数,都给出了组内相关系数、测量标准误差、Bland-Altman 95%一致性界限和均方根相对误差。此外,还研究了计算每个插值算法所花费的时间。结果表明,抛物线逼近法是一种简单、快速、准确的基于算法的方法,可以补偿脉搏间隔的低时间分辨率。此外,该方法与传统的三次样条插值法具有可比的性能。即使使用 20 Hz 采样信号计算得到的心率变异性变量的绝对值与使用 250 Hz 参考信号计算得到的变量不完全匹配,但抛物线逼近法仍然是评估低功耗可穿戴应用中 HRV 测量趋势的一种很好的插值方法。