A Review of Statistical Analyses on Physical Activity Data Collected from Accelerometers.
Yukun ZhangHaocheng LiSarah Kozey KeadleCharles E MatthewsRaymond J CarrollPublished in: Statistics in biosciences (2019)
Studies for the associations between physical activity and disease risk have been supported by newly developed wearable accelerometer-based devices. These devices record raw activity/movement information in real time on a second-by-second basis and the data can be converted to a variety of summary metrics, such as energy expenditure, sedentary time and moderate-vigorous intensity physical activity. Here we review some of the methods used to analyze the accelerometer data and the R packages that can generate activity related variables from raw data. We also discuss longitudinal data and functional data approaches to perform analyses for various research purposes.