Association between Muscle Mass, Body Fat Mass, and Abdominal Circumstances with Insulin Resistance among Young Adult Population with Prediabetes Risk

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Authors

  • Faculty of Medicine, Diponegoro University, Semarang, Central Java, Indonesia - 50269 ,ID
  • Faculty of Medicine, Diponegoro University, Semarang, Central Java, Indonesia - 50269 ,ID
  • Faculty of Medicine, Diponegoro University, Semarang, Central Java, Indonesia - 50269 ,ID
  • Faculty of Medicine, Diponegoro University, Semarang, Central Java, Indonesia - 50269 ,ID
  • Faculty of Medicine, Diponegoro University, Semarang, Central Java, Indonesia - 50269 ,IN

DOI:

https://doi.org/10.21048/IJND.2023.60.2.30878

Keywords:

Insulin resistance, body fat mass, skeletal muscle mass, abdominal circumference, HOMA-IR, prediabetes, body composition, BIA
Metabolic Nutrition

Abstract

Prediabetesis is associated with an increase in plasma insulin concentration due to a decrease in insulin sensitivity in insulin target organs. Central obesity is a risk factor for prediabetes. To determine the relationship between muscle mass, body fat mass, and abdominal circumference with insulin resistance. The study was involving 50 young adult subjects aged 15-35 years, 50 subjects who met the inclusion and exclusion criteria. Muscle mass and body fat mass were measured using Bioelectrical Impedance Analysis (BIA). Abdominal circumference was measured using a tapemeter. Hours of sleep were measured using a questionnaire, while physical activity was measured based on the IPAQ-short form. Insulin resistances were measured using HOMA-IR score. Data were analyzed using spearman correlation. The correlation between abdominal circumference using two kinds of measurement and HOMA IR was found in all subjects (r = 0.691 and r 0.659; p = 0.000). After being analyzed separately by gender, it was found that there are positive correlation between body fat mass and HOMA-IR (male r = 0.672 p 0.001 female r = 0.582 p 0.001). There were a negative correlation between skeletal muscle mass and HOMA-IR (male r= -0.653 p 0.002, female r= -0.424, p 0.019), but there was no relationship between physical activity and sleep hours with insulin resistance. There is a relationship between skeletal muscle mass, fat mass, and abdominal circumference on insulin resistance regardless of gender. Further study is needed to determine the cutoff point of HOMA-IR as the predictor of insulin resistance.

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Published

2023-06-01

How to Cite

Adhisti, A. P., Fatimah-Muis, S., Sukmadianti, A., S.S., D., & Christianto, F. (2023). Association between Muscle Mass, Body Fat Mass, and Abdominal Circumstances with Insulin Resistance among Young Adult Population with Prediabetes Risk. The Indian Journal of Nutrition and Dietetics, 60(2), 176–184. https://doi.org/10.21048/IJND.2023.60.2.30878

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Original Articles
Received 2022-08-04
Accepted 2023-06-26
Published 2023-06-01

 

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