Literature DB >> 28596271

Extracting aerobic system dynamics during unsupervised activities of daily living using wearable sensor machine learning models.

Thomas Beltrame1,2, Robert Amelard3,4, Alexander Wong3,4, Richard L Hughson1,4.   

Abstract

Physical activity levels are related through algorithms to the energetic demand, with no information regarding the integrity of the multiple physiological systems involved in the energetic supply. Longitudinal analysis of the oxygen uptake (V̇o2) by wearable sensors in realistic settings might permit development of a practical tool for the study of the longitudinal aerobic system dynamics (i.e., V̇o2 kinetics). This study evaluated aerobic system dynamics based on predicted V̇o2 data obtained from wearable sensors during unsupervised activities of daily living (μADL). Thirteen healthy men performed a laboratory-controlled moderate exercise protocol and were monitored for ≈6 h/day for 4 days (μADL data). Variables derived from hip accelerometer (ACCHIP), heart rate monitor, and respiratory bands during μADL were extracted and processed by a validated random forest regression model to predict V̇o2. The aerobic system analysis was based on the frequency-domain analysis of ACCHIP and predicted V̇o2 data obtained during μADL. Optimal samples for frequency domain analysis (constrained to ≤0.01 Hz) were selected when ACCHIP was higher than 0.05 g at a given frequency (i.e., participants were active). The temporal characteristics of predicted V̇o2 data during μADL correlated with the temporal characteristics of measured V̇o2 data during laboratory-controlled protocol ([Formula: see text] = 0.82, P < 0.001, n = 13). In conclusion, aerobic system dynamics can be investigated during unsupervised activities of daily living by wearable sensors. Although speculative, these algorithms have the potential to be incorporated into wearable systems for early detection of changes in health status in realistic environments by detecting changes in aerobic response dynamics. NEW & NOTEWORTHY The early detection of subclinical aerobic system impairments might be indicative of impaired physiological reserves that impact the capacity for physical activity. This study is the first to use wearable sensors in unsupervised activities of daily living in combination with novel machine learning algorithms to investigate the aerobic system dynamics with the potential to contribute to models of functional health status and guide future individualized health care in the normal population.

Entities:  

Keywords:  aerobic fitness; kinetics; machine learning; oxygen uptake; smart devices

Mesh:

Year:  2017        PMID: 28596271      PMCID: PMC5867367          DOI: 10.1152/japplphysiol.00299.2017

Source DB:  PubMed          Journal:  J Appl Physiol (1985)        ISSN: 0161-7567


  34 in total

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Authors:  R J Peterka
Journal:  J Neurophysiol       Date:  2002-09       Impact factor: 2.714

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Authors:  D Essfeld; U Hoffmann; J Stegemann
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Authors:  Steven W Su; Branko G Celler; Andrey V Savkin; Hung T Nguyen; Teddy M Cheng; Ying Guo; Lu Wang
Journal:  Med Biol Eng Comput       Date:  2009-10       Impact factor: 2.602

4.  Investigation of VO2 kinetics in humans with pseudorandom binary sequence work rate change.

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Journal:  J Appl Physiol (1985)       Date:  1990-02

5.  Linear and non-linear contributions to oxygen transport and utilization during moderate random exercise in humans.

Authors:  T Beltrame; R L Hughson
Journal:  Exp Physiol       Date:  2017-04-12       Impact factor: 2.969

Review 6.  New Canadian physical activity guidelines.

Authors:  Mark S Tremblay; Darren E R Warburton; Ian Janssen; Donald H Paterson; Amy E Latimer; Ryan E Rhodes; Michelle E Kho; Audrey Hicks; Allana G Leblanc; Lori Zehr; Kelly Murumets; Mary Duggan
Journal:  Appl Physiol Nutr Metab       Date:  2011-02       Impact factor: 2.665

Review 7.  Oxygen uptake kinetics: historical perspective and future directions.

Authors:  Richard L Hughson
Journal:  Appl Physiol Nutr Metab       Date:  2009-10       Impact factor: 2.665

8.  COPD patients' oxygen uptake and heart rate on-kinetics at cycle-ergometer: correlation with their predictors of severity.

Authors:  Bruna V Pessoa; Thomas Beltrame; Valéria A Pires Di Lorenzo; Aparecida M Catai; Audrey Borghi-Silva; Mauricio Jamami
Journal:  Braz J Phys Ther       Date:  2013 Mar-Apr       Impact factor: 3.377

9.  Prediction of oxygen uptake dynamics by machine learning analysis of wearable sensors during activities of daily living.

Authors:  T Beltrame; R Amelard; A Wong; R L Hughson
Journal:  Sci Rep       Date:  2017-04-05       Impact factor: 4.379

10.  Relationship between oxygen consumption kinetics and BODE Index in COPD patients.

Authors:  Audrey Borghi-Silva; Thomas Beltrame; Michel Silva Reis; Luciana Maria Malosá Sampaio; Aparecida Maria Catai; Ross Arena; Dirceu Costa
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2012-10-17
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Review 1.  Wearable Devices for Ambulatory Cardiac Monitoring: JACC State-of-the-Art Review.

Authors:  Furrukh Sana; Eric M Isselbacher; Jagmeet P Singh; E Kevin Heist; Bhupesh Pathik; Antonis A Armoundas
Journal:  J Am Coll Cardiol       Date:  2020-04-07       Impact factor: 24.094

2.  Estimating an individual's oxygen uptake during cycling exercise with a recurrent neural network trained from easy-to-obtain inputs: A pilot study.

Authors:  Andrea Zignoli; Alessandro Fornasiero; Matteo Ragni; Barbara Pellegrini; Federico Schena; Francesco Biral; Paul B Laursen
Journal:  PLoS One       Date:  2020-03-12       Impact factor: 3.240

3.  Unsupervised Machine Learning-Based Analysis of Clinical Features, Bone Mineral Density Features and Medical Care Costs of Rotator Cuff Tears.

Authors:  Tong-Fu Wang; De-Sheng Chen; Jia-Wang Zhu; Bo Zhu; Zeng-Liang Wang; Jian-Gang Cao; Cai-Hong Feng; Jun-Wei Zhao
Journal:  Risk Manag Healthc Policy       Date:  2021-09-22

Review 4.  Cardiac monitoring for patients with palpitations.

Authors:  Jaume Francisco-Pascual; Javier Cantalapiedra-Romero; Jordi Pérez-Rodon; Begoña Benito; Alba Santos-Ortega; Jenson Maldonado; Ignacio Ferreira-Gonzalez; Nuria Rivas-Gándara
Journal:  World J Cardiol       Date:  2021-11-26

Review 5.  A Novel Score for mHealth Apps to Predict and Prevent Mortality: Further Validation and Adaptation to the US Population Using the US National Health and Nutrition Examination Survey Data Set.

Authors:  Shatha Elnakib; Andres I Vecino-Ortiz; Dustin G Gibson; Smisha Agarwal; Antonio J Trujillo; Yifan Zhu; Alain B Labrique
Journal:  J Med Internet Res       Date:  2022-06-14       Impact factor: 7.076

6.  Mean Normalized Gain: A New Method for the Assessment of the Aerobic System Temporal Dynamics during Randomly Varying Exercise in Humans.

Authors:  Thomas Beltrame; Richard L Hughson
Journal:  Front Physiol       Date:  2017-07-18       Impact factor: 4.566

7.  EDDAMAP: efficient data-dependent approach for monitoring asymptomatic patient.

Authors:  Daniel Adu-Gyamfi; Fengli Zhang; Albert Kofi Kwansah Ansah
Journal:  BMC Med Inform Decis Mak       Date:  2020-09-29       Impact factor: 2.796

Review 8.  Wearable Sensors and Machine Learning for Hypovolemia Problems in Occupational, Military and Sports Medicine: Physiological Basis, Hardware and Algorithms.

Authors:  Jacob P Kimball; Omer T Inan; Victor A Convertino; Sylvain Cardin; Michael N Sawka
Journal:  Sensors (Basel)       Date:  2022-01-07       Impact factor: 3.576

  8 in total

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