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Towards efficient heart rate variability estimation in artifact-induced Photoplethysmography signals

机译:在伪影诱发的体积描记术信号中实现有效的心率变异性估计

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Heart Rate Variability (HRV) has become a marker for various health and disease conditions. Photoplethysmography (PPG) sensors integrated in wearable/portable devices such as smart watches and phones are widely used to measure heart activities. HRV requires accurate estimation of time interval between consecutive peaks in the PPG signal. Artifacts often degrade the quality of the PPG signal, which could lead to wrong HRV estimation. In this paper, we present an adaptive real-time approach that employs Linear Prediction analysis (LPC) and Wavelet transformation techniques for estimating HRV from PPG signal recorded by wearable devices. Our algorithm outperforms two other related algorithms, especially for low PPG signal to noise ratio. By comparing the proposed algorithm to the ground truth recorded simultaneously from ECG, an average temporal resolution of 8.7 ms was achieved with a sensitivity of 82.9% and a positive predictive value of 82.7%.
机译:心率变异性(HRV)已成为各种健康和疾病状况的标志。集成在可穿戴/便携式设备(例如智能手表和电话)中的光电容积描记(PPG)传感器被广泛用于测量心脏活动。 HRV需要准确估计PPG信号中连续峰值之间的时间间隔。伪影通常会降低PPG信号的质量,从而可能导致错误的HRV估计。在本文中,我们提出了一种自适应实时方法,该方法采用线性预测分析(LPC)和小波变换技术从可穿戴设备记录的PPG信号中估算HRV。我们的算法优于其他两个相关算法,尤其是对于低PPG信噪比而言。通过将提出的算法与同时从ECG记录的地面真实情况进行比较,平均时间分辨率为8.7 ms,灵敏度为82.9%,阳性预测值为82.7%。

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