欠采样RR区间时间序列心率变异性测量的准确性研究

Giorgio Quer, A. Alasaad, R. Rao
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引用次数: 0

摘要

心率变异性(HRV)是人类心脏脉冲频率的变化。测量这个参数可以揭示自主神经系统和心脏循环系统之间实时相互作用的重要信息。由于廉价且不显眼的无线传感器和智能手机的计算能力,即使在临床环境之外,它也可以为个人的压力状态或健康状况提供有用的见解。这些传感器由电池供电,因此它们当前的采样频率可能不足以测量HRV参数。在本文中,我们将重点关注RR间隔时间序列(瞬时心率)检测的准确性,并研究不同信号和HRV参数获得给定精度水平所需的采样频率。我们提供了机会选择采样率的指导方针,以达到所需的精度,我们提出了一系列的技术,以提高这种精度与固定的采样频率。我们在无线传感器的相对误差减少和能源节约方面展示了所提出技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Accuracy of Heart Rate Variability Measures from Undersampled RR Interval Time Series
The heart rate variability (HRV) is the variation in the pulsing frequency of the human heart. Measuring this parameter can reveal important information on the real-time interaction between the autonomic nervous system and the cardiocirculatory system. It can provide useful insight on an individual's state of stress or well being even outside a clinical setting, thanks to inexpensive and unobtrusive wireless sensors and the computing capability of our smartphones. These sensors are battery operated, so their current sampling frequency may be inadequate to measure HRV parameters. In this article, we focus on the accuracy of the detection of the RR interval time series (the instantaneous heart rate), and we investigate the sampling frequency needed to obtain a given level of accuracy for different signals and HRV parameters. We provide the guidelines for an opportunistic choice of the sampling rate to achieve a desired accuracy, and we propose a series of techniques to improve this accuracy with a fixed sampling frequency. We show the effectiveness of the proposed techniques in terms of relative error reduction and energy savings for the wireless sensors.
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