4.6 Article

Enhancing instantaneous oxygen uptake estimation by non-linear model using cardio-pulmonary physiological and motion signals

Journal

FRONTIERS IN PHYSIOLOGY
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fphys.2022.897412

Keywords

oxygen uptake; machine learning; wearable sensor; XGBoost; heart rate; respiration

Categories

Funding

  1. NSF of the China
  2. Beijing Municipal Science and Technology
  3. Special Grant for Healthcare
  4. Big Data Research and Development Project of Chinese PLA General Hospital
  5. [62171471]
  6. [61701028]
  7. [Z181100001918023]
  8. [16BJZ23]
  9. [2018MBD-09]

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This study proposed an instantaneous VO2 estimation model based on cardio-pulmonary physiological signals, and validated it using data obtained from a wearable device. The results showed that the proposed model accurately estimated VO2 values and outperformed other estimation methods in terms of accuracy.
Oxygen uptake (VO2) is an important parameter in sports medicine, health assessment and clinical treatment. At present, more and more wearable devices are used in daily life, clinical treatment and health care. The parameters obtained by wearables have great research potential and application prospect. In this paper, an instantaneous VO2 estimation model based on XGBoost was proposed and verified by using data obtained from a medical-grade wearable device (Beijing SensEcho) at different posture and activity levels. Furthermore, physiological characteristics extracted from single-lead electrocardiogram, thoracic and abdominal respiration signal and tri-axial acceleration signal were studied to optimize the model. There were 29 healthy volunteers recruited for the study to collect data while stationary (lying, sitting, standing), walking, Bruce treadmill test and recuperating with SensEcho and the gas analyzer (Metalyzer 3B). The results show that the VO2 values estimated by the proposed model are in good agreement with the true values measured by the gas analyzer (R-2 = 0.94 +/- 0.03, n = 72,235), and the mean absolute error (MAE) is 1.83 +/- 0.59 ml/kg/min. Compared with the estimation method using a separate heart rate as input, our method reduced MAE by 54.70%. At the same time, other factors affecting the performance of the model were studied, including the influence of different input signals, gender and movement intensity, which provided more enlightenment for the estimation of VO2. The results show that the proposed model based on cardio-pulmonary physiological signals as inputs can effectively improve the accuracy of instantaneous VO2 estimation in various scenarios of activities and was robust between different motion modes and state. The VO2 estimation method proposed in this paper has the potential to be used in daily life covering the scenario of stationary, walking and maximal exercise.

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