Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement

The last few years has seen a proliferation of wearable electrocardiogram (ECG) devices in the market with applications in fitness tracking, patient monitoring, athletic performance assessment, stress and fatigue detection, and biometrics, to name a few. The majority of these applications rely on th...

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Main Authors: Diana P. Tobon, Srinivasan Jayaraman, Tiago H. Falk
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Journal of Translational Engineering in Health and Medicine
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8141868/
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spelling doaj-76abac18bf0346f5a8edc63cfdb231512021-03-29T18:39:33ZengIEEEIEEE Journal of Translational Engineering in Health and Medicine2168-23722017-01-01511110.1109/JTEHM.2017.27676038141868Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability MeasurementDiana P. Tobon0https://orcid.org/0000-0003-4659-7693Srinivasan Jayaraman1Tiago H. Falk2https://orcid.org/0000-0002-5739-2514INRS-EMT, Université du Québec, Montreal, QC, CanadaINRS-EMT, Université du Québec, Montreal, QC, CanadaINRS-EMT, Université du Québec, Montreal, QC, CanadaThe last few years has seen a proliferation of wearable electrocardiogram (ECG) devices in the market with applications in fitness tracking, patient monitoring, athletic performance assessment, stress and fatigue detection, and biometrics, to name a few. The majority of these applications rely on the computation of the heart rate (HR) and the so-called heart rate variability (HRV) index via time-, frequency-, or non-linear-domain approaches. Wearable/portable devices, however, are highly susceptible to artifacts, particularly those resultant from movement. These artifacts can hamper HR/HRV measurement, thus pose a serious threat to cardiac monitoring applications. While current solutions rely on ECG enhancement as a pre-processing step prior to HR/HRV calculation, existing artifact removal algorithms still perform poorly under extremely noisy scenarios. To overcome this limitation, we take an alternate approach and propose the use of a spectro-temporal ECG signal representation that we show separates cardiac components from artifacts. More specifically, by quantifying the rate-of-change of ECG spectral components over time, we show that heart rate estimates can be reliably obtained even in extremely noisy signals, thus bypassing the need for ECG enhancement. With such HR measurements in hands, we then propose a new noise-robust HRV index termed MD-HRV (modulation-domain HRV) computed as the standard deviation of the obtained HR values. Experiments with synthetic ECG signals corrupted at various different signal-to-noise levels, as well as recorded noisy signals show the proposed measure outperforming several HRV benchmark parameters computed post wavelet-based enhancement. These findings suggest that the proposed HR measures and derived MD-HRV metric are well-suited for ambulant cardiac monitoring applications, particularly those involving intense movement (e.g., elite athletic training).https://ieeexplore.ieee.org/document/8141868/Electrocardiogramheart rate variabilitymodulation spectrumtelehealthwearables
collection DOAJ
language English
format Article
sources DOAJ
author Diana P. Tobon
Srinivasan Jayaraman
Tiago H. Falk
spellingShingle Diana P. Tobon
Srinivasan Jayaraman
Tiago H. Falk
Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
IEEE Journal of Translational Engineering in Health and Medicine
Electrocardiogram
heart rate variability
modulation spectrum
telehealth
wearables
author_facet Diana P. Tobon
Srinivasan Jayaraman
Tiago H. Falk
author_sort Diana P. Tobon
title Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
title_short Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
title_full Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
title_fullStr Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
title_full_unstemmed Spectro-Temporal Electrocardiogram Analysis for Noise-Robust Heart Rate and Heart Rate Variability Measurement
title_sort spectro-temporal electrocardiogram analysis for noise-robust heart rate and heart rate variability measurement
publisher IEEE
series IEEE Journal of Translational Engineering in Health and Medicine
issn 2168-2372
publishDate 2017-01-01
description The last few years has seen a proliferation of wearable electrocardiogram (ECG) devices in the market with applications in fitness tracking, patient monitoring, athletic performance assessment, stress and fatigue detection, and biometrics, to name a few. The majority of these applications rely on the computation of the heart rate (HR) and the so-called heart rate variability (HRV) index via time-, frequency-, or non-linear-domain approaches. Wearable/portable devices, however, are highly susceptible to artifacts, particularly those resultant from movement. These artifacts can hamper HR/HRV measurement, thus pose a serious threat to cardiac monitoring applications. While current solutions rely on ECG enhancement as a pre-processing step prior to HR/HRV calculation, existing artifact removal algorithms still perform poorly under extremely noisy scenarios. To overcome this limitation, we take an alternate approach and propose the use of a spectro-temporal ECG signal representation that we show separates cardiac components from artifacts. More specifically, by quantifying the rate-of-change of ECG spectral components over time, we show that heart rate estimates can be reliably obtained even in extremely noisy signals, thus bypassing the need for ECG enhancement. With such HR measurements in hands, we then propose a new noise-robust HRV index termed MD-HRV (modulation-domain HRV) computed as the standard deviation of the obtained HR values. Experiments with synthetic ECG signals corrupted at various different signal-to-noise levels, as well as recorded noisy signals show the proposed measure outperforming several HRV benchmark parameters computed post wavelet-based enhancement. These findings suggest that the proposed HR measures and derived MD-HRV metric are well-suited for ambulant cardiac monitoring applications, particularly those involving intense movement (e.g., elite athletic training).
topic Electrocardiogram
heart rate variability
modulation spectrum
telehealth
wearables
url https://ieeexplore.ieee.org/document/8141868/
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