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Published in: Diabetologia 9/2014

Open Access 01-09-2014 | Article

Eighteen year weight trajectories and metabolic markers of diabetes in modernising China

Authors: Penny Gordon-Larsen, Elizabeth Koehler, Annie Green Howard, Lauren Paynter, Amanda L. Thompson, Linda S. Adair, Elizabeth J. Mayer-Davis, Bing Zhang, Barry M. Popkin, Amy H. Herring

Published in: Diabetologia | Issue 9/2014

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Abstract

Aims/Hypothesis

Although obesity is a major risk factor for diabetes, little is known about weight gain trajectories across adulthood, and whether they are differentially associated with metabolic markers of diabetes.

Methods

We used fasting blood samples and longitudinal weight data for 5,436 adults (5,734 observations, aged 18–66 years) from the China Health and Nutrition Survey (1991–2009). Using latent class trajectory analysis, we identified different weight gain trajectories in six age and sex strata, and used multivariable general linear mixed effects models to assess elevated metabolic markers of diabetes (fasting glucose, HbA1c, HOMA-IR, insulin) across weight trajectory classes. Models were fitted within age and sex strata, and controlled for baseline weight (or baseline weight by weight trajectory interaction terms), height, and smoking habit, with random intercepts to control for community-level correlations.

Results

Compared with weight gain, classes with weight maintenance, weight loss, or a switch from weight gain to loss had lower values for metabolic markers of diabetes. These associations were stronger among younger women (aged 18–29 and 30–39 years) and men (18–29 years) than in older (40–66 years) men and women. An exception was HOMA-IR, which showed class differences across all ages (at least p < 0.004).

Conclusion

Trajectory analysis identified heterogeneity in adult weight gain associated with diabetes-related metabolic markers, independent of baseline weight. Our findings suggest that variation in metabolic markers of diabetes across patterns of weight gain is masked by a homogeneous classification of weight gain.
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Metadata
Title
Eighteen year weight trajectories and metabolic markers of diabetes in modernising China
Authors
Penny Gordon-Larsen
Elizabeth Koehler
Annie Green Howard
Lauren Paynter
Amanda L. Thompson
Linda S. Adair
Elizabeth J. Mayer-Davis
Bing Zhang
Barry M. Popkin
Amy H. Herring
Publication date
01-09-2014
Publisher
Springer Berlin Heidelberg
Published in
Diabetologia / Issue 9/2014
Print ISSN: 0012-186X
Electronic ISSN: 1432-0428
DOI
https://doi.org/10.1007/s00125-014-3284-y

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