Abstract

Accelerometer-based fitness trackers and smartwatches are proliferating with incessant attention towards health tracking. Despite their growing popularity, accurately measuring hallmark measures of physical activities has yet to be accomplished in adults of all ages. In this work, we evaluated the performance of four machine learning models: decision tree, random forest, extreme gradient boosting (XGBoost) and least absolute shrinkage and selection operator (LASSO), to estimate the hallmark measures of physical activities in young (20–50 years), middle-aged (50–70 years], and older adults (70–89 years]. Our models were built to recognize physical activity types, recognize physical activity intensities, estimate energy expenditure (EE) and recognize individual physical activities using wrist-worn tri-axial accelerometer data (33 activities per participant) from a large sample of participants (n = 253, 62% women, aged 20–89 years old). Results showed that the machine learning models were quite accurate at recognizing physical activity type and intensity and estimating energy expenditure. However, models performed less optimally when recognizing individual physical activities. F1-Scores derived from XGBoost’s models were high for sedentary (0.955–0.973), locomotion (0.942–0.964) and lifestyle (0.913–0.949) activity types with no apparent difference across age groups. Low (0.919–0.947), light (0.813–0.828) and moderate (0.846–0.875) physical activity intensities were also recognized accurately. The root mean square error range for EE was approximately 1 equivalent of resting EE [0.835–1.009 METs]. Generally, random forest and XGBoost models outperformed other models. In conclusion, machine learning models to label physical activity types, activity intensity and energy expenditure are accurate and there are minimal differences in their performance across young, middle-aged and older adults.

Highlights

  • The performance of the machine learning models were similar in recognizing sedentary physical activity (PA) type and varied in recognizing locomotion and lifestyle PA types

  • The performance of the machine learning models were close in recognizing low PA intensity and varied in recognizing light and moderate

  • The XGBoost models were slightly better than the random forest models, except for the young age group

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Summary

Introduction

Regular and sufficient amounts of physical activity (PA) are significant in increasing health benefits and mitigating health risks. 1.4 billion) do not meet the World Health Organization (WHO) PA recommendations [1]. Mobility is an essential factor for independence and social life engagement. Those who lose mobility have higher risk of morbidity, disability, and mortality [2,3,4,5]. WHO has published the Global action plan on physical activity 2018–2030 (GAPPA) to enhance PA with a target of 15% reduction in physical inactivity by the year 2030 [6].

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