Original Article | Published:

Epidemiology and Population Health

Objectively measured sedentary time and physical activity and associations with body weight gain: does body weight determine a decline in moderate and vigorous intensity physical activity?

International Journal of Obesity volume 41, pages 17691774 (2017) | Download Citation

Abstract

Objectives:

High levels of physical activity (PA) may prevent the development of obesity. However, the magnitude and direction of the association between PA of various intensities, sedentary time and weight status remain unclear. Thus, we examined whether objectively measured sedentary time and PA independently predict gain in body weight, change in body weight and to examine the possibility of reverse causation.

Methods:

We examined the prospective associations between sedentary time, PA and body weight (BW). Baseline measurements were conducted in 2008/2009 and follow-up measurements in 2014/2015 in a random sample of the adult Norwegian population (N=1710, 45.1% men). Moderate and vigorous intensity PA (MVPA) and sedentary time were measured by accelerometry and BW and height self-reported. We first modelled the associations between baseline sedentary time and PA with BW at follow-up. We then modelled the reverse associations (BW as the exposure) and sedentary time and PA (as outcomes) in separate models. All models were adjusted for age, sex, baseline value of the outcome, socio-economic status, alcohol consumption, smoking, monitor wear time and follow-up time.

Results:

Body mass index (BMI) increased by 0.2 units (P=0.003) between baseline and follow-up, and 46.5% of participants were either overweight (36.4%) or obese (10.1%) at baseline increasing to 49.6% (11.7% obese) at follow-up. Baseline sedentary time, MVPA and vigorous PA were not associated with BW at follow-up after adjustment for covariates. In contrast, baseline BW was inversely associated with MVPA (β=−0.11; 95% confidence interval (CI); −0.21, −0.009) and VPA (β=−0.035; 95% CI; −0.059, −0.011) in adjusted models. These associations were unchanged when BW was substituted by BMI.

Conclusions:

Baseline BW seems to determine a decrease in MVPA in healthy adult Norwegian men and women, more so than the reverse.

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Acknowledgements

We are grateful to all the participants who devoted their time to participate in the study. We would also like to express our sincere gratitude to all those who contributed to recruitment, data collection and other administrative duties associated with the study. Finally, we are extremely grateful to Inge Dehli Andersen who set up and managed the database. This work was supported by the Norwegian Directorate of Health.

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Affiliations

  1. Department of Sports Medicine, Norwegian School of Sports Sciences, Oslo, Norway

    • U Ekelund
    • , E Kolle
    • , J Steene-Johannessen
    • , K E Dalene
    • , A K O Nilsen
    • , S A Anderssen
    •  & B H Hansen

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Competing interests

The authors declare no conflict of interest.

Corresponding author

Correspondence to U Ekelund.

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DOI

https://doi.org/10.1038/ijo.2017.186

Supplementary Information accompanies this paper on International Journal of Obesity website (http://www.nature.com/ijo)

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