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A Novel Time-Varying Spectral Filtering Algorithm for Reconstruction of Motion Artifact Corrupted Heart Rate Signals During Intense Physical Activities Using a Wearable Photoplethysmogram Sensor

机译:一种新的时变频谱滤波算法,用于可穿戴式体积描记器,用于在剧烈体育活动中重建运动伪影心率信号

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Accurate estimation of heart rates from photoplethysmogram (PPG) signals during intense physical activity is a very challenging problem. This is because strenuous and high intensity exercise can result in severe motion artifacts in PPG signals, making accurate heart rate (HR) estimation difficult. In this study we investigated a novel technique to accurately reconstruct motion-corrupted PPG signals and HR based on time-varying spectral analysis. The algorithm is called Spectral filter algorithm for Motion Artifacts and heart rate reconstruction (SpaMA). The idea is to calculate the power spectral density of both PPG and accelerometer signals for each time shift of a windowed data segment. By comparing time-varying spectra of PPG and accelerometer data, those frequency peaks resulting from motion artifacts can be distinguished from the PPG spectrum. The SpaMA approach was applied to three different datasets and four types of activities: (1) training datasets from the 2015 IEEE Signal Process. Cup Database recorded from 12 subjects while performing treadmill exercise from 1 km/h to 15 km/h; (2) test datasets from the 2015 IEEE Signal Process. Cup Database recorded from 11 subjects while performing forearm and upper arm exercise. (3) Chon Lab dataset including 10 min recordings from 10 subjects during treadmill exercise. The ECG signals from all three datasets provided the reference HRs which were used to determine the accuracy of our SpaMA algorithm. The performance of the SpaMA approach was calculated by computing the mean absolute error between the estimated HR from the PPG and the reference HR from the ECG. The average estimation errors using our method on the first, second and third datasets are 0.89, 1.93 and 1.38 beats/min respectively, while the overall error on all 33 subjects is 1.86 beats/min and the performance on only treadmill experiment datasets (22 subjects) is 1.11 beats/min. Moreover, it was found that dynamics of heart rate variability can be accurately captured using the algorithm where the mean Pearson’s correlation coefficient between the power spectral densities of the reference and the reconstructed heart rate time series was found to be 0.98. These results show that the SpaMA method has a potential for PPG-based HR monitoring in wearable devices for fitness tracking and health monitoring during intense physical activities.
机译:在剧烈的体育锻炼过程中,根据光电容积描记(PPG)信号准确估算心率是一个非常具有挑战性的问题。这是因为剧烈而高强度的运动会导致PPG信号中出现严重的运动伪影,从而使准确的心率(HR)估算变得困难。在这项研究中,我们研究了一种基于时变频谱分析准确重建运动受损PPG信号和HR的新技术。该算法称为运动伪影和心率重建(SpaMA)的频谱滤波器算法。这个想法是针对加窗数据段的每个时间偏移来计算PPG和加速度计信号的功率谱密度。通过比较PPG和加速度计数据的时变频谱,可以将运动伪影产生的那些频率峰值与PPG频谱区分开。 SpaMA方法已应用于三个不同的数据集和四种类型的活动:(1)训练来自2015 IEEE Signal Process的数据集。在1 km / h到15 km / h的跑步机运动中,从12名受试者中记录了Cup数据库; (2)来自2015 IEEE Signal Process的测试数据集。在进行前臂和上臂运动时,记录了11位受试者的Cup数据库。 (3)Chon Lab数据集,包括跑步机运动期间来自10位受试者的10分钟记录。来自所有三个数据集的ECG信号提供了参考HR,这些参考HR用于确定我们的SpaMA算法的准确性。 SpaMA方法的性能是通过计算PPG估计的HR和ECG的参考HR之间的平均绝对误差来计算的。使用我们的方法在第一,第二和第三数据集上的平均估计误差分别为0.89、1.93和1.38次/分钟,而所有33个受试者的总体误差为1.86次/分钟,并且仅在跑步机实验数据集(22个受试者)上表现良好)是1.11次/分钟。此外,还发现使用该算法可以准确捕获心率变异性的动态变化,其中参考功率谱密度与重构的心率时间序列之间的平均皮尔森相关系数为0.98。这些结果表明,SpaMA方法对于在可穿戴设备中进行基于PPG的HR监测具有潜在的潜力,可用于在剧烈运动中进行健身跟踪和健康监测。

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