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Machine-Learning Classification of Pulse Waveform Quality

Pulse measurements made using wearable devices can aid the monitoring of human physiological condition. Accurate estimation of waveforms is often difficult for nonexperts; motion artifacts may occur during tonometry measurements when the skin–sensor contact pressure is insufficient. An alternative a...

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Autores principales: Ouyoung, Te, Weng, Wan-Ling, Hu, Ting-Yu, Lee, Chia-Chien, Wu, Li-Wei, Hsiu, Hsin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9698948/
https://www.ncbi.nlm.nih.gov/pubmed/36433203
http://dx.doi.org/10.3390/s22228607
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author Ouyoung, Te
Weng, Wan-Ling
Hu, Ting-Yu
Lee, Chia-Chien
Wu, Li-Wei
Hsiu, Hsin
author_facet Ouyoung, Te
Weng, Wan-Ling
Hu, Ting-Yu
Lee, Chia-Chien
Wu, Li-Wei
Hsiu, Hsin
author_sort Ouyoung, Te
collection PubMed
description Pulse measurements made using wearable devices can aid the monitoring of human physiological condition. Accurate estimation of waveforms is often difficult for nonexperts; motion artifacts may occur during tonometry measurements when the skin–sensor contact pressure is insufficient. An alternative approach is to extract only high-quality pulses for use in index calculations. The present study aimed to determine the effectiveness of using machine-learning analysis in discriminating between high-quality and low-quality pulse waveforms induced by applying different contact pressures. Radial blood pressure waveform (BPW) signals were measured noninvasively in healthy young subjects using a strain-gauge transducer. One-minute-long trains of pulse data were measured when applying the appropriate contact pressure (67.80 ± 1.55 mmHg) and a higher contact pressure (151.80 ± 3.19 mmHg). Eight machine-learning algorithms were employed to evaluate the following 40 harmonic pulse indices: amplitude proportions and their coefficients of variation and phase angles and their standard deviations. Significant differences were noted in BPW indices between applying appropriate and higher skin–surface contact pressures. The present appropriate contact pressure could not only provide a suitable holding force for the wearable device but also helped to maintain the physiological stability of the underlying tissues. Machine-learning analysis provides an effective method for distinguishing between the high-quality and low-quality pulses with excellent discrimination performance (leave-one-subject-out test: random-forest AUC = 0.96). This approach will aid the development of an automatic screening method for waveform quality and thereby improve the noninvasive acquisition reliability. Other possible interfering factors in practical applications can also be systematically studied using a similar procedure.
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spelling pubmed-96989482022-11-26 Machine-Learning Classification of Pulse Waveform Quality Ouyoung, Te Weng, Wan-Ling Hu, Ting-Yu Lee, Chia-Chien Wu, Li-Wei Hsiu, Hsin Sensors (Basel) Article Pulse measurements made using wearable devices can aid the monitoring of human physiological condition. Accurate estimation of waveforms is often difficult for nonexperts; motion artifacts may occur during tonometry measurements when the skin–sensor contact pressure is insufficient. An alternative approach is to extract only high-quality pulses for use in index calculations. The present study aimed to determine the effectiveness of using machine-learning analysis in discriminating between high-quality and low-quality pulse waveforms induced by applying different contact pressures. Radial blood pressure waveform (BPW) signals were measured noninvasively in healthy young subjects using a strain-gauge transducer. One-minute-long trains of pulse data were measured when applying the appropriate contact pressure (67.80 ± 1.55 mmHg) and a higher contact pressure (151.80 ± 3.19 mmHg). Eight machine-learning algorithms were employed to evaluate the following 40 harmonic pulse indices: amplitude proportions and their coefficients of variation and phase angles and their standard deviations. Significant differences were noted in BPW indices between applying appropriate and higher skin–surface contact pressures. The present appropriate contact pressure could not only provide a suitable holding force for the wearable device but also helped to maintain the physiological stability of the underlying tissues. Machine-learning analysis provides an effective method for distinguishing between the high-quality and low-quality pulses with excellent discrimination performance (leave-one-subject-out test: random-forest AUC = 0.96). This approach will aid the development of an automatic screening method for waveform quality and thereby improve the noninvasive acquisition reliability. Other possible interfering factors in practical applications can also be systematically studied using a similar procedure. MDPI 2022-11-08 /pmc/articles/PMC9698948/ /pubmed/36433203 http://dx.doi.org/10.3390/s22228607 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ouyoung, Te
Weng, Wan-Ling
Hu, Ting-Yu
Lee, Chia-Chien
Wu, Li-Wei
Hsiu, Hsin
Machine-Learning Classification of Pulse Waveform Quality
title Machine-Learning Classification of Pulse Waveform Quality
title_full Machine-Learning Classification of Pulse Waveform Quality
title_fullStr Machine-Learning Classification of Pulse Waveform Quality
title_full_unstemmed Machine-Learning Classification of Pulse Waveform Quality
title_short Machine-Learning Classification of Pulse Waveform Quality
title_sort machine-learning classification of pulse waveform quality
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9698948/
https://www.ncbi.nlm.nih.gov/pubmed/36433203
http://dx.doi.org/10.3390/s22228607
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