Heart Rate Variability Based Estimation of Maximal Oxygen Uptake in Athletes Using Supervised Regression Models
Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes’ well-being and performance. Their unobtrusive nature and ability to provide reliable heart rate measurements facilitate the estimation of cardiorespiratory fitness of athletes, as quantified by maximum c...
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Published in | Sensors (Basel, Switzerland) Vol. 23; no. 6; p. 3251 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
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01.03.2023
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Online Access | Get full text |
ISSN | 1424-8220 1424-8220 |
DOI | 10.3390/s23063251 |
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Abstract | Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes’ well-being and performance. Their unobtrusive nature and ability to provide reliable heart rate measurements facilitate the estimation of cardiorespiratory fitness of athletes, as quantified by maximum consumption of oxygen uptake. Previous studies have employed data-driven models which use heart rate information to estimate the cardiorespiratory fitness of athletes. This signifies the physiological relevance of heart rate and heart rate variability for the estimation of maximal oxygen uptake. In this work, the heart rate variability features that were extracted from both exercise and recovery segments were fed to three different Machine Learning models to estimate maximal oxygen uptake of 856 athletes performing Graded Exercise Testing. A total of 101 features from exercise and 30 features from recovery segments were given as input to three feature selection methods to avoid overfitting of the models and to obtain relevant features. This resulted in the increase of model’s accuracy by 5.7% for exercise and 4.3% for recovery. Further, post-modelling analysis was performed to remove the deviant points in two cases, initially in both training and testing and then only in training set, using k-Nearest Neighbour. In the former case, the removal of deviant points led to a reduction of 19.3% and 18.0% in overall estimation error for exercise and recovery, respectively. In the latter case, which mimicked the real-world scenario, the average R value of the models was observed to be 0.72 and 0.70 for exercise and recovery, respectively. From the above experimental approach, the utility of heart rate variability to estimate maximal oxygen uptake of large population of athletes was validated. Additionally, the proposed work contributes to the utility of cardiorespiratory fitness assessment of athletes through wearable heart rate monitors. |
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AbstractList | Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes’ well-being and performance. Their unobtrusive nature and ability to provide reliable heart rate measurements facilitate the estimation of cardiorespiratory fitness of athletes, as quantified by maximum consumption of oxygen uptake. Previous studies have employed data-driven models which use heart rate information to estimate the cardiorespiratory fitness of athletes. This signifies the physiological relevance of heart rate and heart rate variability for the estimation of maximal oxygen uptake. In this work, the heart rate variability features that were extracted from both exercise and recovery segments were fed to three different Machine Learning models to estimate maximal oxygen uptake of 856 athletes performing Graded Exercise Testing. A total of 101 features from exercise and 30 features from recovery segments were given as input to three feature selection methods to avoid overfitting of the models and to obtain relevant features. This resulted in the increase of model’s accuracy by 5.7% for exercise and 4.3% for recovery. Further, post-modelling analysis was performed to remove the deviant points in two cases, initially in both training and testing and then only in training set, using k-Nearest Neighbour. In the former case, the removal of deviant points led to a reduction of 19.3% and 18.0% in overall estimation error for exercise and recovery, respectively. In the latter case, which mimicked the real-world scenario, the average R value of the models was observed to be 0.72 and 0.70 for exercise and recovery, respectively. From the above experimental approach, the utility of heart rate variability to estimate maximal oxygen uptake of large population of athletes was validated. Additionally, the proposed work contributes to the utility of cardiorespiratory fitness assessment of athletes through wearable heart rate monitors. Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes' well-being and performance. Their unobtrusive nature and ability to provide reliable heart rate measurements facilitate the estimation of cardiorespiratory fitness of athletes, as quantified by maximum consumption of oxygen uptake. Previous studies have employed data-driven models which use heart rate information to estimate the cardiorespiratory fitness of athletes. This signifies the physiological relevance of heart rate and heart rate variability for the estimation of maximal oxygen uptake. In this work, the heart rate variability features that were extracted from both exercise and recovery segments were fed to three different Machine Learning models to estimate maximal oxygen uptake of 856 athletes performing Graded Exercise Testing. A total of 101 features from exercise and 30 features from recovery segments were given as input to three feature selection methods to avoid overfitting of the models and to obtain relevant features. This resulted in the increase of model's accuracy by 5.7% for exercise and 4.3% for recovery. Further, post-modelling analysis was performed to remove the deviant points in two cases, initially in both training and testing and then only in training set, using k-Nearest Neighbour. In the former case, the removal of deviant points led to a reduction of 19.3% and 18.0% in overall estimation error for exercise and recovery, respectively. In the latter case, which mimicked the real-world scenario, the average R value of the models was observed to be 0.72 and 0.70 for exercise and recovery, respectively. From the above experimental approach, the utility of heart rate variability to estimate maximal oxygen uptake of large population of athletes was validated. Additionally, the proposed work contributes to the utility of cardiorespiratory fitness assessment of athletes through wearable heart rate monitors.Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes' well-being and performance. Their unobtrusive nature and ability to provide reliable heart rate measurements facilitate the estimation of cardiorespiratory fitness of athletes, as quantified by maximum consumption of oxygen uptake. Previous studies have employed data-driven models which use heart rate information to estimate the cardiorespiratory fitness of athletes. This signifies the physiological relevance of heart rate and heart rate variability for the estimation of maximal oxygen uptake. In this work, the heart rate variability features that were extracted from both exercise and recovery segments were fed to three different Machine Learning models to estimate maximal oxygen uptake of 856 athletes performing Graded Exercise Testing. A total of 101 features from exercise and 30 features from recovery segments were given as input to three feature selection methods to avoid overfitting of the models and to obtain relevant features. This resulted in the increase of model's accuracy by 5.7% for exercise and 4.3% for recovery. Further, post-modelling analysis was performed to remove the deviant points in two cases, initially in both training and testing and then only in training set, using k-Nearest Neighbour. In the former case, the removal of deviant points led to a reduction of 19.3% and 18.0% in overall estimation error for exercise and recovery, respectively. In the latter case, which mimicked the real-world scenario, the average R value of the models was observed to be 0.72 and 0.70 for exercise and recovery, respectively. From the above experimental approach, the utility of heart rate variability to estimate maximal oxygen uptake of large population of athletes was validated. Additionally, the proposed work contributes to the utility of cardiorespiratory fitness assessment of athletes through wearable heart rate monitors. |
Audience | Academic |
Author | Vijayarangan, Sricharan Sivaprakasam, Mohanasankar Balakarthikeyan, Vaishali Sreelatha Premkumar, Preejith Jais, Rohan |
AuthorAffiliation | 1 Department of Electrical Engineering, Indian Institute of Technology Madras, Chennai 600036, India; ee22s062@smail.iitm.ac.in (R.J.); sricharanv@htic.iitm.ac.in (S.V.); mohan@ee.iitm.ac.in (M.S.) 2 Healthcare Technology Innovation Centre (HTIC), Chennai 600113, India; preejith@htic.iitm.ac.in |
AuthorAffiliation_xml | – name: 2 Healthcare Technology Innovation Centre (HTIC), Chennai 600113, India; preejith@htic.iitm.ac.in – name: 1 Department of Electrical Engineering, Indian Institute of Technology Madras, Chennai 600036, India; ee22s062@smail.iitm.ac.in (R.J.); sricharanv@htic.iitm.ac.in (S.V.); mohan@ee.iitm.ac.in (M.S.) |
Author_xml | – sequence: 1 givenname: Vaishali surname: Balakarthikeyan fullname: Balakarthikeyan, Vaishali – sequence: 2 givenname: Rohan orcidid: 0000-0002-8647-8544 surname: Jais fullname: Jais, Rohan – sequence: 3 givenname: Sricharan surname: Vijayarangan fullname: Vijayarangan, Sricharan – sequence: 4 givenname: Preejith orcidid: 0000-0002-0634-1194 surname: Sreelatha Premkumar fullname: Sreelatha Premkumar, Preejith – sequence: 5 givenname: Mohanasankar surname: Sivaprakasam fullname: Sivaprakasam, Mohanasankar |
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Cites_doi | 10.1145/342009.335437 10.1088/1742-6596/947/1/012016 10.22489/CinC.2020.066 10.1186/s12889-019-8067-4 10.1109/CICN.2017.8319382 10.7150/ijms.77818 10.1371/journal.pone.0229466 10.1590/1517-869220172304152157 10.1016/j.compbiomed.2016.10.018 10.3390/s22052032 10.3389/fphys.2013.00337 10.3389/fpubh.2017.00258 10.1016/j.apergo.2010.06.017 10.1378/chest.105.5.1365 10.4103/2228-7477.137777 10.1109/JBHI.2020.3009903 10.1249/00005768-199010000-00024 10.1161/01.CIR.101.23.e215 10.4103/2277-9531.134751 10.1186/1475-925X-11-2 10.1016/j.irbm.2018.09.006 10.1097/00005768-199703000-00019 10.1080/10913670701326427 10.18869/acadpub.johe.2.1.2.20 10.1007/s00521-013-1368-0 10.3390/bios12121182 10.1080/1091367X.2010.520244 10.1249/00005768-199012000-00021 10.1155/2022/9664346 10.1080/03772063.2020.1780166 10.3906/elk-1808-138 10.1371/journal.pone.0199509 10.1080/02640414.2012.762984 10.3390/app8112213 10.1016/j.protcy.2013.12.339 10.1002/int.20103 10.1016/j.measurement.2020.108102 10.1109/TBME.2011.2113395 |
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Snippet | Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes’ well-being and performance. Their unobtrusive nature and... Wearable Heart Rate monitors are used in sports to provide physiological insights into athletes' well-being and performance. Their unobtrusive nature and... |
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SubjectTerms | Age Athletes cardiorespiratory fitness Exercise intensity Exercise Test - methods Fitness equipment Heart beat Heart rate Heart Rate - physiology heart rate variability Humans Machine learning Mathematical models Metabolism Methods Oxygen Oxygen Consumption - physiology Physical fitness Physiology Questionnaires Regression analysis Statistical significance wearable heart rate monitors Well being |
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Title | Heart Rate Variability Based Estimation of Maximal Oxygen Uptake in Athletes Using Supervised Regression Models |
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