Faculty of Applied Health Sciences, University of Waterloo , Waterloo, Ontario , Canada.
Conselho Nacional de Desenvolvimento Científico e Tecnológico, Brasília, Distrito Federal , Brazil.
J Appl Physiol (1985). 2018 Feb 1;124(2):473-481. doi: 10.1152/japplphysiol.00299.2017. Epub 2017 Jun 8.
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 (V̇o) by wearable sensors in realistic settings might permit development of a practical tool for the study of the longitudinal aerobic system dynamics (i.e., V̇o kinetics). This study evaluated aerobic system dynamics based on predicted V̇o 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 (ACC), heart rate monitor, and respiratory bands during μADL were extracted and processed by a validated random forest regression model to predict V̇o. The aerobic system analysis was based on the frequency-domain analysis of ACC and predicted V̇o data obtained during μADL. Optimal samples for frequency domain analysis (constrained to ≤0.01 Hz) were selected when ACC was higher than 0.05 g at a given frequency (i.e., participants were active). The temporal characteristics of predicted V̇o data during μADL correlated with the temporal characteristics of measured V̇o 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.
身体活动水平通过算法与能量需求相关联,但没有关于涉及能量供应的多个生理系统完整性的信息。在现实环境中,通过可穿戴传感器对摄氧量 (V̇o) 进行纵向分析,可能会开发出一种实用的工具来研究纵向有氧系统动力学(即 V̇o 动力学)。本研究基于从可穿戴传感器在非监督日常活动 (μADL) 期间获得的预测 V̇o 数据评估有氧系统动力学。13 名健康男性进行了实验室控制的适度运动方案,并在 4 天内每天监测 ≈6 小时(μADL 数据)。从 μADL 期间的髋部加速度计 (ACC)、心率监测器和呼吸带中提取并处理衍生变量,并通过经过验证的随机森林回归模型进行处理以预测 V̇o。有氧系统分析基于 ACC 和从 μADL 期间获得的预测 V̇o 数据的频域分析。当给定频率下的 ACC 高于 0.05 g 时,选择最优样本进行频域分析(限制在 ≤0.01 Hz)(即参与者处于活跃状态)。当 ACC 高于 0.05 g 时,选择最优样本进行频域分析(限制在 ≤0.01 Hz)(即参与者处于活跃状态)。当 ACC 高于 0.05 g 时,选择最优样本进行频域分析(限制在 ≤0.01 Hz)(即参与者处于活跃状态)。μADL 期间预测 V̇o 数据的时间特征与实验室控制方案期间测量 V̇o 数据的时间特征相关 ([Formula: see text] = 0.82, P < 0.001, n = 13)。总之,可穿戴传感器可用于在非监督日常活动中研究有氧系统动力学。尽管推测,但这些算法有可能通过检测有氧反应动力学的变化,被纳入可穿戴系统中,以便在现实环境中早期检测健康状况的变化。本研究首次使用可穿戴传感器在非监督日常活动中结合新型机器学习算法,研究有氧系统动力学,有可能为功能健康状态模型做出贡献,并指导未来普通人群的个性化医疗保健。