Abstract
Application of ultra–short Heart Rate Variability (HRV) is desirable in order to increase the applicability of HRV features to wrist-worn wearable devices equipped with heart rate sensors that are nowadays becoming more and more popular in people’s daily life. This study is focused in particular on the the two most used HRV parameters, i.e., the standard deviation of inter-beat intervals (SDNN) and the root Mean Squared error of successive inter-beat intervals differences (rMSSD). The huge problem of extracting these HRV parameters from wrist-worn devices is that their data are affected by the motion artifacts. For this reason, estimating the error caused by this huge quantity of missing values is fundamental to obtain reliable HRV parameters from these devices. To this aim, we simulate missing values induced by motion artifacts (from 0 to 70%) in an ultra-short time window (i.e., from 4 min to 30 s) by the random walk Gilbert burst model in 22 young healthy subjects. In addition, 30 s and 2 min ultra-short time windows are required to estimate rMSSD and SDNN, respectively. Moreover, due to the fact that ultra-short time window does not permit assessing very low frequencies, and the SDNN is highly affected by these frequencies, the bias for estimating SDNN continues to increase as the time window length decreases. On the contrary, a small error is detected in rMSSD up to 30 s due to the fact that it is highly affected by high frequencies which are possible to be evaluated even if the time window length decreases. Finally, the missing values have a small effect on rMSSD and SDNN estimation. As a matter of fact, the HRV parameter errors increase slightly as the percentage of missing values increase.
Highlights
Heart Rate Variability (HRV) is a physiological phenomenon of fluctuation between adjacentInter-Beat Intervals (IBI) [1,2]
They are controlled by Autonomic Nervous Systems (ANS), which affect the activity of the sinoatrial node (SAN) [3,4,5]
As a matter of fact, we have found a moderate/strong relationship (r = 0.73) between total power and standard deviation of inter-beat intervals (SDNN) obtained from 5 min time series
Summary
Heart Rate Variability (HRV) is a physiological phenomenon of fluctuation between adjacentInter-Beat Intervals (IBI) [1,2]. The heart beats (HR) average and HRV are regulated by two main mechanisms. They are controlled by Autonomic Nervous Systems (ANS), which affect the activity of the sinoatrial node (SAN) [3,4,5]. Aging and clinical condition (e.g., cardiovascular disease) affect both ANS and SAN responses inducing an alteration in HR and HRV [2,3]. For this reason, monitoring HR and HRV response permits assessing possible deterioration of cardiovascular responses.
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