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Identifying Patterns of Eating and Physical Activity in Children: A Latent Class Analysis of Obesity Risk
Author(s) -
Huh Jimi,
Riggs Nathaniel R.,
SpruijtMetz Donna,
Chou ChihPing,
Huang Zhaoqing,
Pentz MaryAnn
Publication year - 2011
Publication title -
obesity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.438
H-Index - 199
eISSN - 1930-739X
pISSN - 1930-7381
DOI - 10.1038/oby.2010.228
Subject(s) - overweight , latent class model , obesity , medicine , percentile , dieting , body mass index , psychological intervention , demography , gerontology , weight loss , psychiatry , mathematics , statistics , sociology
We used latent class analysis (LCA) to identify heterogeneous subgroups with respect to behavioral obesity risk factors in a sample of 4th grade children ( n = 997) residing in Southern California. Multiple dimensions assessing physical activity, eating and sedentary behavior, and weight perceptions were explored. A set of 11 latent class indicators were used in the analysis. The final model yielded a five‐class solution: “High‐sedentary, high‐fat/high‐sugar (HF/HS) snacks, not weight conscious,” “dieting without exercise, weight conscious,” “high‐sedentary, HF/HS snacks, weight conscious,” “active, healthy eating,” and “low healthy, snack food, inactive, not weight conscious.” The results suggested distinct subtypes of children with respect to obesity‐related risk behaviors. Ethnicity, gender, and a socioeconomic status proxy variable significantly predicted the above latent classes. Overweight or obese weight status was determined based on the Centers for Disease Control and Prevention BMI (kg/m 2 )‐for‐age‐and‐sex percentile (overweight, 85th percentile ≤BMI <95th percentile; obese, 95th percentile ≤BMI). The identified latent subgroup membership, in turn, was associated with the children's weight categories. The results suggest that intervention programs could be refined or targeted based on children's characteristics to promote effective pediatric obesity interventions.