Comparative strategies for using cluster analysis to assess dietary patterns

Auteur(s) :
Miller CK., Mitchell DC., Smiciklas-Wright H., Gutschall MD., Lawrence FR., Bailey RL.
Date :
Août, 2006
Source(s) :
JOURNAL OF THE AMERICAN DIETETIC ASSOCIATION. #106:8 p1194-1200
Adresse :
Addresses: Bailey RL (reprint author), Penn State Univ, Dept Nutr Sci, 5 Henderson Bldg, University Pk, PA 16801 USA Penn State Univ, Dept Nutr Sci, University Pk, PA 16801 USA Penn State Diabet Res Ctr, University Pk, PA USA E-mail Addresses: [email protected] Publisher: AMER DIETETIC ASSOC, 216 W JACKSON BLVD #800, CHICAGO, IL 60606-6995 USA, http://www.eatright.org

Sommaire de l'article

Objectives To characterize dietary patterns using two different cluster analysis strategies.
Design In this cross-sectional study, diet information was assessed by five 24-hour recalls collected over 10 months. All foods were classified into 24 food subgroups. Demographic, health, and anthropometric data were collected via home visit.

Subjects One hundred seventy-nine community-dwelling adults, aged 66 to 87 years, in rural Pennsylvania.

Statistical analysis Cluster analysis was performed.

Results The methods differed in the food subgroups that clustered together. Both methods produced clusters that had significant differences in overall diet quality as assessed by Healthy Eating Index (HEI) scores. The clusters with higher HEI scores contained significantly higher amounts of most micronutrients. Both methods consistently clustered subgroups with high energy contribution (eg, fats and oils and dairy desserts) with a lower HEI score. Clusters resulting from the percent energy method were less likely to differentiate fruit and vegetable subgroups. The higher diet quality dietary pattern derived from the number of servings method resulted in more favorable weight status.

Conclusions Cluster analysis of food subgroups using two different methods on the same data yielded similarities and dissimilarities in dietary patterns. Dietary patterns characterized by the number of servings method of analysis provided stronger association with weight status and was more sensitive to fruit and vegetable intake with regard to a more healthful dietary pattern within this sample. Public health recommendations should evaluate the methodology used to derive dietary patterns.

Source : Pubmed
Retour