
Physical activity, sedentary behaviour and health-related quality of life in 929 women with primary Raynaud’s phenomenon
April 24, 2025A new study entitled “Automated Algorithm for Accurate Waking Sitting and Physical Activity Estimates Without Diaries Using Thigh-Worn Fibion Accelerometers in 10- to 12-Year-Old Children” was recently published in Journal for the Measurement of Physical Behaviour. A citation and summary are included below.
ABSTRACT
Thigh-worn accelerometry provides accurate waking sitting and physical activity estimates in children, provided that sleep periods are accurately excluded—a task traditionally dependent on participant-reported diaries. Automated algorithms present a promising alternative, provided they deliver estimates comparable to diary-based methods. This study evaluated Fibion Analytics, an automated algorithm designed to identify and exclude sleep/nonwear periods in thigh-worn Fibion data. Using 7-day, 24-hr accelerometry data from 368 children (age 11.6 ± 0.79 years, 39.7% boys), the aims were to (1) optimize parameter combinations (n = 3,024) for the smallest absolute mean bias and highest equivalency in sitting and moderate to vigorous physical activity (MVPA) against diary-reported waking hours (usual practice) in a 60% training sample (n = 215) and (2) validate the parameters in a 40% test sample (n = 145). In the test sample, the algorithm using the optimized parameters showed a median sensitivity of 0.94, specificity of 0.97, and kappa of .89 in detecting the waking time. Almost perfect comparative agreement (κ > .8) was achieved for 78.3% of participants and substantial comparative agreement (κ > .6) for 95%. For sitting, the mean bias was −7.2 min/day (limits of agreement: −112.8 to 98.3 min/day) and the mean absolute error was 41.1 ± 35.3 min/day. For MVPA, the mean bias was −1.9 min/day (limits of agreement: −13.1 to 9.2 min/day) and the mean absolute error was 3.4 ± 4.9 min/day. The algorithm provided equivalent estimates for sitting within ±15 min/day equivalency bounds and for MVPA within ±5 min/day equivalency bounds. Fibion Analytics provides accurate and equivalent waking sitting and MVPA estimates compared with the usual practice in 10- to 12-year-old children, though variability in sitting warrants caution for individual-level assessments.
CITATION
Pesola, A. J., & Havu, M. (2025). Automated Algorithm for Accurate Waking Sitting and Physical Activity Estimates Without Diaries Using Thigh-Worn Fibion Accelerometers in 10- to 12-Year-Old Children. Journal for the Measurement of Physical Behaviour, 8(1). Retrieved May 1, 2025, from https://doi.org/10.1123/jmpb.2024-0022
Photo by Chris G on pexels