Clustering of health behaviors and their associations with cardiometabolic risk factors among adults at high risk for type 2 diabetes in India: A latent class analysis

Author:

de Mello Gabrielli T.1ORCID,Thirunavukkarasu Sathish23ORCID,Jeemon Panniyammakal4,Thankappan Kavumpurathu R.5,Oldenburg Brian67,Cao Yingting68

Affiliation:

1. Research Center for Physical Activity and Health Federal University of Santa Catarina Florianópolis Santa Catarina Brazil

2. Department of Family and Preventive Medicine, School of Medicine Emory University Atlanta Georgia USA

3. Emory Global Diabetes Research Center, Woodruff Health Sciences Center Emory University Atlanta Georgia USA

4. Achutha Menon Centre for Health Science Studies, Sree Chitra Tirunal Institute for Medical Sciences and Technology Trivandrum India

5. Department of Public Health, Amrita Institute of Medical Sciences Kochi Kerala India

6. Baker Heart and Diabetes Institute Melbourne Victoria Australia

7. School of Psychology and Public Health La Trobe University Melbourne Victoria Australia

8. Department of Sport, Exercise and Nutrition Sciences, School of Allied Health, Human Services and Sport La Trobe University Melbourne Victoria Australia

Abstract

AbstractBackgroundWe aimed to identify clusters of health behaviors and study their associations with cardiometabolic risk factors in adults at high risk for type 2 diabetes in India.MethodsBaseline data from the Kerala Diabetes Prevention Program (n = 1000; age 30–60 years) were used for this study. Information on physical activity (PA), sedentary behavior, fruit and vegetable intake, sleep, and alcohol and tobacco use was collected using questionnaires. Blood pressure, waist circumference, 2‐h plasma glucose, high‐density lipoprotein and low‐density lipoprotein cholesterol, and triglycerides were measured using standardized protocols. Latent class analysis was used to identify clusters of health behaviors, and multilevel mixed‐effects linear regression was employed to examine their associations with cardiometabolic risk factors.ResultsTwo classes were identified, with 87.4% of participants in class 1 and 12.6% in class 2. Participants in both classes had a high probability of not engaging in leisure‐time PA (0.80 for class 1; 0.73 for class 2) and consuming <5 servings of fruit and vegetables per day (0.70 for class 1; 0.63 for class 2). However, participants in class 1 had a lower probability of sitting for >=3 h per day (0.26 vs 0.42), tobacco use (0.10 vs 0.75), and alcohol use (0.08 vs 1.00) compared to those in class 2. Class 1 had a significantly lower mean systolic blood pressure (β = −3.70 mm Hg, 95% confidence interval [CI] −7.05, −0.36), diastolic blood pressure (β = −2.45 mm Hg, 95% CI −4.74, −0.16), and triglycerides (β = −0.81 mg/dL, 95% CI −0.75, −0.89).ConclusionImplementing intervention strategies, tailored to cluster‐specific health behaviors, is required for the effective prevention of cardiometabolic disorders among high‐risk adults for type 2 diabetes.image

Funder

Centers for Disease Control and Prevention

Fogarty International Center

National Health and Medical Research Council

Publisher

Wiley

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