Modeling Clinically Validated Physical Activity using Commodity Hardware

Kyle Winfree1, Gregory Dominick2

  • 1Northern Arizona University
  • 2University of Delaware

Details

10:20 - 10:30 | Fri 17 Feb | Salon 5 | FrA1.2

Session: Fri1.1: Sensor Informatics (Activity/Motion)

Abstract

Fitbit devices are one of the most popular wearable activity monitors in the consumer market. They are considerably cheaper than many of their clinical grade counterparts. However, they utilize proprietary algorithms for estimation of physical activity (PA). This study aims to model the measures of PA as reported by the ActiGraph GT3X using Fitbit measures of steps, METs, and intensity level. Such a model relating the Fitbit to what would have been reported by the GT3X could enable researchers to use the Fitbit instead of the ActiGraph in some applications, thus reducing cost or increasing the number of subjects involved in a study. This paper describes a study in which a model of the Freedson VM3 physical activity classification was constructed that uses measures from the Fitbit device. The data from 19 subjects, who concurrently wore both devices for an average of 1.8 weeks, was used to generate the minute level based model. Several modeling methods were tested; a naive Bayes classifier was chosen based on the lowest achieved error rate. That model reduces overall Fitbit to ActiGraph errors from 20% to 16%, a notable improvement. More importantly, it reduces the errors in moderate to vigorous physical activity levels by 40%, eliminating the significant difference between MVPA estimates provided by the Freedson VM3 and Fitbit Intensity scores. This justifies use of the Fitbit device in place of an ActiGraph device in some large scale studies, especially those measuring MVPA.