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Published in: BMC Endocrine Disorders 1/2018

Open Access 01-12-2018 | Research article

Identification of an obesity index for predicting metabolic syndrome by gender: the rural Chinese cohort study

Authors: Leilei Liu, Yu Liu, Xizhuo Sun, Zhaoxia Yin, Honghui Li, Kunpeng Deng, Xu Chen, Cheng Cheng, Xinping Luo, Ming Zhang, Linlin Li, Lu Zhang, Bingyuan Wang, Yongcheng Ren, Yang Zhao, Dechen Liu, Junmei Zhou, Chengyi Han, Xuejiao Liu, Dongdong Zhang, Feiyan Liu, Chongjian Wang, Dongsheng Hu

Published in: BMC Endocrine Disorders | Issue 1/2018

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Abstract

Background

To compare the accuracy of different obesity indexes, including waist circumference (WC), weight-to-height ratio (WHtR), body mass index (BMI), and lipid accumulation product (LAP), in predicting metabolic syndrome (MetS) and to estimate the optimal cutoffs of these indexes in a rural Chinese adult population.

Methods

This prospective cohort involved 8468 participants who were followed up for 6 years. MetS was defined by the International Diabetes Federation, American Heart Association, and National Heart, Lung, and Blood Institute criteria. The power of the 4 indexes for predicting MetS was estimated by receiver operating characteristic (ROC) curve analysis and optimal cutoffs were determined by the maximum of Youden’s index.

Results

As compared with WHtR, BMI, and LAP, WC had the largest area under the ROC curve (AUC) for predicting MetS after adjusting for age, smoking, drinking, physical activity, and education level. The AUCs (95% CIs) for WC, WHtR, BMI, and LAP for men and women were 0.862 (0.851–0.873) and 0.806 (0.794–0.817), 0.832 (0.820–0.843) and 0.789 (0.777–0.801), 0.824 (0.812–0.835) and 0.790 (0.778–0.802), and 0.798 (0.785–0.810) and 0.771 (0.759–0.784), respectively. The optimal cutoffs of WC for men and women were 83.30 and 76.80 cm. Those of WHtR, BMI, and LAP were approximately 0.51 and 0.50, 23.90 and 23.00 kg/m2, and 19.23 and 20.48 cm.mmol/L, respectively.

Conclusions

WC as a preferred index over WHtR, BMI, and LAP for predicting MetS in rural Chinese adults of both genders; the optimal cutoffs for men and women were 83.30 and 76.80 cm.
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Metadata
Title
Identification of an obesity index for predicting metabolic syndrome by gender: the rural Chinese cohort study
Authors
Leilei Liu
Yu Liu
Xizhuo Sun
Zhaoxia Yin
Honghui Li
Kunpeng Deng
Xu Chen
Cheng Cheng
Xinping Luo
Ming Zhang
Linlin Li
Lu Zhang
Bingyuan Wang
Yongcheng Ren
Yang Zhao
Dechen Liu
Junmei Zhou
Chengyi Han
Xuejiao Liu
Dongdong Zhang
Feiyan Liu
Chongjian Wang
Dongsheng Hu
Publication date
01-12-2018
Publisher
BioMed Central
Published in
BMC Endocrine Disorders / Issue 1/2018
Electronic ISSN: 1472-6823
DOI
https://doi.org/10.1186/s12902-018-0281-z

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