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Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles
OBJECTIVE: Obstructive sleep apnea is a global health concern, and several tools have been developed to screen its severity. However, most tools focus on respiratory events instead of sleep arousal, which can also affect sleep efficiency. This study employed easy-to-measure parameters—namely heart r...
Autores principales: | , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
SAGE Publications
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10576931/ https://www.ncbi.nlm.nih.gov/pubmed/37846406 http://dx.doi.org/10.1177/20552076231205744 |
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author | Kuo, Chih-Fan Tsai, Cheng-Yu Cheng, Wun-Hao Hs, Wen-Hua Majumdar, Arnab Stettler, Marc Lee, Kang-Yun Kuan, Yi-Chun Feng, Po-Hao Tseng, Chien-Hua Chen, Kuan-Yuan Kang, Jiunn-Horng Lee, Hsin-Chien Wu, Cheng-Jung Liu, Wen-Te |
author_facet | Kuo, Chih-Fan Tsai, Cheng-Yu Cheng, Wun-Hao Hs, Wen-Hua Majumdar, Arnab Stettler, Marc Lee, Kang-Yun Kuan, Yi-Chun Feng, Po-Hao Tseng, Chien-Hua Chen, Kuan-Yuan Kang, Jiunn-Horng Lee, Hsin-Chien Wu, Cheng-Jung Liu, Wen-Te |
author_sort | Kuo, Chih-Fan |
collection | PubMed |
description | OBJECTIVE: Obstructive sleep apnea is a global health concern, and several tools have been developed to screen its severity. However, most tools focus on respiratory events instead of sleep arousal, which can also affect sleep efficiency. This study employed easy-to-measure parameters—namely heart rate variability, oxygen saturation, and body profiles—to predict arousal occurrence. METHODS: Body profiles and polysomnography recordings were collected from 659 patients. Continuous heart rate variability and oximetry measurements were performed and then labeled based on the presence of sleep arousal. The dataset, comprising five body profiles, mean heart rate, six heart rate variability, and five oximetry variables, was then split into 80% training/validation and 20% testing datasets. Eight machine learning approaches were employed. The model with the highest accuracy, area under the receiver operating characteristic curve, and area under the precision recall curve values in the training/validation dataset was applied to the testing dataset and to determine feature importance. RESULTS: InceptionTime, which exhibited superior performance in predicting sleep arousal in the training dataset, was used to classify the testing dataset and explore feature importance. In the testing dataset, InceptionTime achieved an accuracy of 76.21%, an area under the receiver operating characteristic curve of 84.33%, and an area under the precision recall curve of 86.28%. The standard deviations of time intervals between successive normal heartbeats and the square roots of the means of the squares of successive differences between normal heartbeats were predominant predictors of arousal occurrence. CONCLUSIONS: The established models can be considered for screening sleep arousal occurrence or integrated in wearable devices for home-based sleep examination. |
format | Online Article Text |
id | pubmed-10576931 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | SAGE Publications |
record_format | MEDLINE/PubMed |
spelling | pubmed-105769312023-10-16 Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles Kuo, Chih-Fan Tsai, Cheng-Yu Cheng, Wun-Hao Hs, Wen-Hua Majumdar, Arnab Stettler, Marc Lee, Kang-Yun Kuan, Yi-Chun Feng, Po-Hao Tseng, Chien-Hua Chen, Kuan-Yuan Kang, Jiunn-Horng Lee, Hsin-Chien Wu, Cheng-Jung Liu, Wen-Te Digit Health Original Research OBJECTIVE: Obstructive sleep apnea is a global health concern, and several tools have been developed to screen its severity. However, most tools focus on respiratory events instead of sleep arousal, which can also affect sleep efficiency. This study employed easy-to-measure parameters—namely heart rate variability, oxygen saturation, and body profiles—to predict arousal occurrence. METHODS: Body profiles and polysomnography recordings were collected from 659 patients. Continuous heart rate variability and oximetry measurements were performed and then labeled based on the presence of sleep arousal. The dataset, comprising five body profiles, mean heart rate, six heart rate variability, and five oximetry variables, was then split into 80% training/validation and 20% testing datasets. Eight machine learning approaches were employed. The model with the highest accuracy, area under the receiver operating characteristic curve, and area under the precision recall curve values in the training/validation dataset was applied to the testing dataset and to determine feature importance. RESULTS: InceptionTime, which exhibited superior performance in predicting sleep arousal in the training dataset, was used to classify the testing dataset and explore feature importance. In the testing dataset, InceptionTime achieved an accuracy of 76.21%, an area under the receiver operating characteristic curve of 84.33%, and an area under the precision recall curve of 86.28%. The standard deviations of time intervals between successive normal heartbeats and the square roots of the means of the squares of successive differences between normal heartbeats were predominant predictors of arousal occurrence. CONCLUSIONS: The established models can be considered for screening sleep arousal occurrence or integrated in wearable devices for home-based sleep examination. SAGE Publications 2023-10-13 /pmc/articles/PMC10576931/ /pubmed/37846406 http://dx.doi.org/10.1177/20552076231205744 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by-nc/4.0/This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage). |
spellingShingle | Original Research Kuo, Chih-Fan Tsai, Cheng-Yu Cheng, Wun-Hao Hs, Wen-Hua Majumdar, Arnab Stettler, Marc Lee, Kang-Yun Kuan, Yi-Chun Feng, Po-Hao Tseng, Chien-Hua Chen, Kuan-Yuan Kang, Jiunn-Horng Lee, Hsin-Chien Wu, Cheng-Jung Liu, Wen-Te Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title | Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title_full | Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title_fullStr | Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title_full_unstemmed | Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title_short | Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
title_sort | machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles |
topic | Original Research |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10576931/ https://www.ncbi.nlm.nih.gov/pubmed/37846406 http://dx.doi.org/10.1177/20552076231205744 |
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