| Literature DB >> 24954333 |
Yeon-Ah Sung1, Jee-Young Oh1, Hyejin Lee2.
Abstract
PURPOSE: Obesity is a major public health issue and is associated with many metabolic abnormalities. Consequently, the assessment of obesity is very important. A new measurement, the body adiposity index (BAI), has recently been proposed to provide valid estimates of body fat percentages. The objective of this study was to compare the BAI and body mass index (BMI) as measurements of body adiposity and metabolic risk.Entities:
Keywords: Body adiposity index; body mass index; obesity
Mesh:
Substances:
Year: 2014 PMID: 24954333 PMCID: PMC4075363 DOI: 10.3349/ymj.2014.55.4.1028
Source DB: PubMed Journal: Yonsei Med J ISSN: 0513-5796 Impact factor: 2.759
Clinical and Biochemical Characteristics of the Study Participants
HDL, high density lipoprotein; LDL, low density lipoprotein.
The data are represented as the means±standard deviations.
Correlation of Body Mass Index and Body Adiposity Index with Anthropometric and Biochemical Parameters
BMI, body mass index; BAI, body adiposity index; HDL, high density lipoprotein; LDL, low density lipoprotein.
All p values <0.0001.
Comparison of Correlation Coefficients between BMI and BAI Using Metabolic Indices
BMI, body mass index; BAI, body adiposity index; HDL, high density lipoprotein; LDL, low density lipoprotein.
Z=(Z1-Z2)x√[(N-3)/(2x(1-rx)xh)]. Z1: Fisher Z-transformed r1 (r1: correlation coefficient between BMI and other variable). Z2: Fisher Z-transformed r2 (r2: correlation coefficient between BAI and other variable). Zx: Fisher Z-transformed rx (rx: correlation coefficient between BMI and BAI)=1.169. rx (correlation coefficient between BMI and BAI)=0.824. h: (1-f1r2)/(1-r2). f=(1-rx)/2(1-r2), f1=(f≤1→f)(f>1→1), r2=(r12+r22)/2. N=2950.
Fig. 1Receiver operating characteristic curves for sensitivity and specificity of body mass index and body adiposity index in detecting obesity by body fat percentage. BMI, body mass index; BAI, body adiposity index; ROC, receiver operating characteristic.
Multiple Linear Regression Analysis for Insulin Sensitivity
BMI, body mass index; BAI, body adiposity index; C, cholesterol; CI, confidence interval; HDL, high density lipoprotein; MBP, mean blood pressure; S.E, standard error; TC, total cholesterol; TG, triglycerides; VIF, variance inflation factor.
Logistic Regression Analysis for Predicting Metabolic Syndrome
BMI, body mass index; BAI, body adiposity index; CI, confidence interval; ISI, insulin sensitivity index; S.E, standard error.