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Cluster Analysis Reveals Important Determinants of Cardiometabolic Risk Patterns in Filipino Women – Cebu Longitudinal Health and Nutrition Survey

Cluster Analysis Reveals Important Determinants of Cardiometabolic Risk Patterns in Filipino Women

Citation

Zubair, Niha; Kuzawa, Christopher W.; McDade, Thomas W.; & Adair, Linda S. (2012). Cluster Analysis Reveals Important Determinants of Cardiometabolic Risk Patterns in Filipino Women. Asia Pacific Journal of Clinical Nutrition, 21(2), 271-281. PMCID: PMC3469259

Abstract

With modernization, the Philippines has experienced increasing rates of obesity and related cardiometabolic diseases. Studying how risk factors cluster in individuals may offer insight into cardiometabolic disease etiology. We used cluster analysis to group women who share the following cardiometabolic biomarkers: fasting triglycerides, HDL-C and LDL-C, C-reactive protein, systolic and diastolic blood pressure, homeostasis model assessment of insulin resistance, and fasting glucose. Participants included 1,768 women (36-69 years) in the Cebu Longitudinal Health and Nutrition Survey. We identified five distinct clusters characterized by: 1) low levels of all risk factors (except HDL-C and LDL-C) or "healthy"; 2) low HDL-C in the absence of other risk factors; 3) elevated blood pressure; 4) insulin resistance; and 5) high C-reactive protein. We identified predictors of cluster membership using multinomial logistic regression. Clusters differed by age, menopausal status, socioeconomic status, saturated fat intake, and combinations of overweight (BMI >23) and high waist circumference (>80 cm). In comparison to the healthy cluster, overweight women without high waist circumference were more likely to be in the high CRP cluster (OR=2.26, 95% CI=1.24-4.11), while women with high waist circumference and not overweight were more likely to be in the elevated blood pressure (OR=2.56, 95% CI=1.20-5.46) or insulin resistant clusters (OR=4.05, 95% CI=1.39-11.8). In addition, a diet lower in saturated fat uniquely increased the likelihood of membership to the low HDL-C cluster. Cluster analysis identified biologically meaningful groups, predicted by modifiable risk factors; this may have implications for the prevention of cardiometabolic diseases.

Reference Type

Journal Article

Year Published

2012

Journal Title

Asia Pacific Journal of Clinical Nutrition

Author(s)

Zubair, Niha
Kuzawa, Christopher W.
McDade, Thomas W.
Adair, Linda S.

PMCID

PMC3469259