How weight change is modelled in population studies can affect research findings: empirical results from a large-scale cohort study
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Paige, Ellie
Korda, Rosemary
Banks, Emily
Rodgers, Bryan
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BMJ Publishing Group
Abstract
Objectives: To investigate how results of the
association between education and weight change vary
when weight change is defined and modelled in
different ways.
Design: Longitudinal cohort study.
Participants: 60 404 men and women participating in
the Social, Environmental and Economic Factors
(SEEF) subcomponent of the 45 and Up Study—a
population-based cohort study of people aged 45 years
or older, residing in New South Wales, Australia.
Outcome measures: The main exposure was selfreported
education, categorised into four groups. The
outcome was annual weight change, based on change in
self-reported weight between the 45 and Up Study
baseline questionnaire and SEEF questionnaire
(completed an average of 3.3 years later). Weight change
was modelled in four different ways: absolute change
(kg) modelled as (1) a continuous variable and (2) a
categorical variable (loss, maintenance and gain), and
relative (%) change modelled as (3) a continuous
variable and (4) a categorical variable. Different cutpoints
for defining weight-change categories were also
tested.
Results: When weight change was measured
categorically, people with higher levels of education
(compared with no school certificate) were less likely to
lose or to gain weight. When weight change was
measured as the average of a continuous measure, a null
relationship between education and annual weight
change was observed. No material differences in the
education and weight-change relationship were found
when comparing weight change defined as an absolute
(kg) versus a relative (%) measure. Results of the logistic
regression were sensitive to different cut-points for
defining weight-change categories.
Conclusions: Using average weight change can obscure
important directional relationship information and, where
possible, categorical outcome measurements should be
included in analyses.
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BMJ Open 4.6 (2014):e004860
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