2023
DOI: 10.3390/s23020597
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Heart Rate Estimation from Incomplete Electrocardiography Signals

Abstract: As one of the most remarkable indicators of physiological health, heart rate (HR) has become an unfailing investigation for researchers. Unlike many existing methods, this article proposes an approach to implement short-time HR estimation from electrocardiography in time series missing patterns. Benefiting from the rapid development of deep learning, we adopted a bidirectional long short-term memory model (Bi-LSTM) and temporal convolution network (TCN) to recover complete heartbeat signals from those with dur… Show more

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Cited by 4 publications
(8 citation statements)
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“…During the research, the heart rate was monitored to verify whether the exercise load did not cause the person to go beyond the submaximal area. To determine the human heart rate, the ECG signal [V] was analysed to detect the characteristic needles describing the work of the heart 48 50 . Knowing the time interval at which the next heartbeat occurred, it was possible to determine the pulse.…”
Section: Theory and Calculationsmentioning
confidence: 99%
“…During the research, the heart rate was monitored to verify whether the exercise load did not cause the person to go beyond the submaximal area. To determine the human heart rate, the ECG signal [V] was analysed to detect the characteristic needles describing the work of the heart 48 50 . Knowing the time interval at which the next heartbeat occurred, it was possible to determine the pulse.…”
Section: Theory and Calculationsmentioning
confidence: 99%
“…Continuous vital signs monitoring can prevent life-threatening scenarios by providing early warnings before a decline of the patient's status [104]. In this sub-category of papers on value estimation we include papers dealing with the estimation of vital signs, such as HR (n = 21) [17], [22], [25], [28], [29], [52], [55]- [57], [62], [64], [74], [76], [82], [87], [91], [93], [96]- [98], BR [58], [66], [88], [89], [99], [102] (n = 6), both HR and BR [31], [34], [40], [53], [54], [92], [103] (n = 7), BP [65], [67], [75], [83], [85], [100], [101] (n = 7), oxygen saturation (SpO2) [84] (n = 1), and spyrometric indices [61] (n = 1) in a given windows of observation.…”
Section: A First Cluster Tasksmentioning
confidence: 99%
“…For the hybrid architecture the deep learning model used was an encoder-decoder type in combination with extracted features from K-nearest neighbour. The general [17], [22], [25], [28], [29], [31], [34], [40], [52]- [58], [61], [62], [64]- [67], [74]- [76], [82]- [89], [91]- [93], [96]- [103] Signal reconstruction (n = 18)…”
Section: A First Cluster Tasksmentioning
confidence: 99%
“…However, the performance of this type of approach is sensitive to the data quality. Bidirectional long-short-term-memory (Bi-LSTM) neural network and temporal convolutional network (TCN) [20] were adopted to model the HR temporal patterns and estimate the missing data, given a large amount of historical HR for model training. However, these models are only designed to estimate missing values in a short period, such as one cardiac cycle.…”
Section: Introductionmentioning
confidence: 99%