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Childhood obesity: evidence for distinct early and late environmental determinants a 12-year longitudinal cohort study (EarlyBird 62)

A Corrigendum to this article was published on 09 February 2016

Abstract

Background/objective:

The prevalence of childhood obesity continues to rise in most countries, but the exposures responsible remain unclear. The shape of the body mass index (BMI) distribution curve defines how a population responds, and can be described by its three parameters—skew (L), median (M) and variance (S). We used LMS analysis to explore differences in the BMI trajectories of contemporary UK children with those of 25 years ago, and to draw inferences on the exposures responsible.

Subjects/methods:

We applied Cole’s LMS method to compare the BMI trajectories of 307 UK children (EarlyBird cohort) measured annually from 5–16 years (2000–2012) with those of the BMI data set used to construct the UK 1990 growth centiles, and used group-based trajectory modelling (GBTM) to establish whether categorical trajectories emerged.

Results:

Gender-specific birth weights were normally distributed and similar between both data sets. The skew and variance established by 5 years in the 1990 children remained stable during the remainder of their childhood, but the pattern was different for children 25 years on. The skew at 5 years among the EarlyBird children was greatly exaggerated, and involved selectively the offspring of obese parents, but returned to 1990 levels by puberty. As the skew diminished, so the variance in BMI rose sharply. The median BMI of the EarlyBird children differed little from that of 1990 before puberty, but diverged from it as the variance rose. GBTM uncovered four groups with distinct trajectories, which were related to parental obesity.

Conclusions:

There appear to be two distinct environmental interactions with body mass among contemporary children, the one operating selectively according to parental BMI during early childhood, the second more generally in puberty.

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Acknowledgements

We thank Karen Brookes, Val Morgan, the EarlyBird children, their parents and our volunteers for their continued support. EarlyBird is currently funded by the Bright Future Trust, BUPA Foundation, Peninsula Foundation, Kirby Laing Trust and the EarlyBird Diabetes Trust.

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Correspondence to T Wilkin.

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The authors declare no conflict of interest.

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Supplementary Information accompanies this paper on International Journal of Obesity website

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Mostazir, M., Jeffery, A., Voss, L. et al. Childhood obesity: evidence for distinct early and late environmental determinants a 12-year longitudinal cohort study (EarlyBird 62). Int J Obes 39, 1057–1062 (2015). https://doi.org/10.1038/ijo.2015.68

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