Literature DB >> 31012945

Correction of bias in self-reported sitting time among office workers - a study based on compositional data analysis.

Pieter Coenen1, SvendErik Mathiassen, Allard J van der Beek, David M Hallman.   

Abstract

Objective Emerging evidence suggests that excessive sitting has negative health effects. However, this evidence largely relies on research using self-reported sitting time, which is known to be biased. To correct this bias, we aimed at developing a calibration model estimating "true" sitting from self-reported sitting. Methods Occupational sitting time was estimated by self-reports (the International Physical Activity Questionnaire) and objective measurements (thigh-worn accelerometer) among 99 Swedish office workers at a governmental agency, at baseline and 3 and 12 months afterwards. Following compositional data analysis procedures, both sitting estimates were transformed into isometric log-ratios (ILR). This effectively addresses that times spent in various activities are inherently dependent and can be presented as values of only 0-100%. Linear regression was used to develop a simple calibration model estimating objectively measured "true" sitting ILR (dependent variable) from self-reported sitting ILR (independent variable). Additional self-reported variables were then added to construct a full calibration model. Performance of the models was assessed by root-mean-square (RMS) differences between estimated and objectively measured values. Models developed on baseline data were validated using the follow-up datasets. Results Uncalibrated self-reported sitting ILR showed an RMS error of 0.767. Simple and full calibration models (incorporating body mass index, office type, and gender) reduced this error to 0.422 (55%) and 0.398 (52%), respectively. In the validations, model performance decreased to 57%/62% (simple models) and 57%/62% (full models) for the two follow-up data sets, respectively. Conclusions Calibration adjusting for errors in self-reported sitting led to substantially more correct estimates of "true" sitting than uncalibrated self-reports. Validation indicated that model performance would change somewhat in new datasets and that full models perform no better than simple models, but calibration remained effective.

Mesh:

Year:  2019        PMID: 31012945     DOI: 10.5271/sjweh.3827

Source DB:  PubMed          Journal:  Scand J Work Environ Health        ISSN: 0355-3140            Impact factor:   5.024


  5 in total

1.  The Relation between Domain-Specific Physical Behaviour and Cardiorespiratory Fitness: A Cross-Sectional Compositional Data Analysis on the Physical Activity Health Paradox Using Accelerometer-Assessed Data.

Authors:  Margo Ketels; Charlotte Lund Rasmussen; Mette Korshøj; Nidhi Gupta; Dirk De Bacquer; Andreas Holtermann; Els Clays
Journal:  Int J Environ Res Public Health       Date:  2020-10-29       Impact factor: 3.390

2.  Time-Based Data in Occupational Studies: The Whys, the Hows, and Some Remaining Challenges in Compositional Data Analysis (CoDA).

Authors:  Nidhi Gupta; Charlotte Lund Rasmussen; Andreas Holtermann; Svend Erik Mathiassen
Journal:  Ann Work Expo Health       Date:  2020-10-08       Impact factor: 2.179

3.  Work-Time Compositions of Physical Behaviors and Trajectories of Sick Leave Due to Musculoskeletal Pain.

Authors:  David M Hallman; Nidhi Gupta; Leticia Bergamin Januario; Andreas Holtermann
Journal:  Int J Environ Res Public Health       Date:  2021-02-05       Impact factor: 3.390

4.  Objective and subjective measurement of sedentary behavior in human adults: A toolkit.

Authors:  Justin Aunger; Janelle Wagnild
Journal:  Am J Hum Biol       Date:  2020-12-05       Impact factor: 2.947

5.  High physical work demands have worse consequences for older workers: prospective study of long-term sickness absence among 69 117 employees.

Authors:  Lars Louis Andersen; Jacob Pedersen; Emil Sundstrup; Sannie Vester Thorsen; Reiner Rugulies
Journal:  Occup Environ Med       Date:  2021-05-10       Impact factor: 4.402

  5 in total

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