Warning: fopen(/home/virtual/enm-kes/journal/upload/ip_log/ip_log_2024-04.txt): failed to open stream: Permission denied in /home/virtual/lib/view_data.php on line 88 Warning: fwrite() expects parameter 1 to be resource, boolean given in /home/virtual/lib/view_data.php on line 89 Association of Waist-Height Ratio with Diabetes Risk: A 4-Year Longitudinal Retrospective Study
Skip Navigation
Skip to contents

Endocrinol Metab : Endocrinology and Metabolism

clarivate
OPEN ACCESS
SEARCH
Search

Articles

Page Path
HOME > Endocrinol Metab > Volume 31(1); 2016 > Article
Original Article
Clinical Study Association of Waist-Height Ratio with Diabetes Risk: A 4-Year Longitudinal Retrospective Study
Yoon Jeong Son, Jihyun Kim, Hye-Jeong Park, Se Eun Park, Cheol-Young Park, Won-Young Lee, Ki-Won Oh, Sung-Woo Park, Eun-Jung Rheeorcid
Endocrinology and Metabolism 2016;31(1):127-133.
DOI: https://doi.org/10.3803/EnM.2016.31.1.127
Published online: March 16, 2016

Department of Endocrinology and Metabolism, Kangbuk Samsung Hospital, Sungkyunkwan University School of Medicine, Seoul, Korea.

Corresponding author: Eun-Jung Rhee. Department of Endocrinology and Metabolism, Kangbuk Samsung Hospital, Sungkyunkwan University School of Medicine, 29 Saemunan-ro, Jongno-gu, Seoul 03181, Korea. Tel: +82-2-2001-2485, Fax: +82-2-2001-1588, hongsiri@hanmail.net
• Received: August 5, 2015   • Revised: August 25, 2015   • Accepted: August 27, 2015

Copyright © 2016 Korean Endocrine Society

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

  • 4,303 Views
  • 36 Download
  • 25 Web of Science
  • 24 Crossref
  • 27 Scopus
  • Background
    Waist-to-height ratio (WHtR) is an easy and inexpensive adiposity index that reflects central obesity. In this study, we examined the association of various baseline adiposity indices, including WHtR, with the development of diabetes over 4 years of follow-up in apparently healthy Korean individuals.
  • Methods
    A total of 2,900 nondiabetic participants (mean age, 44.3 years; 2,078 men) in a health screening program, who repeated the medical check-up in 2005 and 2009, were recruited. Subjects were divided into two groups according to development of diabetes after 4 years. The cut-off values of baseline body mass index (BMI), waist circumference (WC), and WHtR for the development of diabetes over 4 years were calculated. The sensitivity, specificity, and mean area under the receiver operator characteristic curve (AUROC) of each index were assessed. The odds ratio (OR) for diabetes development was analyzed for each of the three baseline adiposity indices.
  • Results
    During the follow-up period, 101 new cases (3.5%) of diabetes were diagnosed. The cut-off WHtR value for diabetes development was 0.51. Moreover, WHtR had the highest AUROC value for diabetes development among the three adiposity indices (0.716, 95% confidence interval [CI], 0.669 to 0.763; 0.702, 95% CI, 0.655 to 0.750 for WC; 0.700, 95% CI, 0.651 to 0.750 for BMI). After adjusting for confounding variables, the ORs of WHtR and WC for diabetes development were 1.95 (95% CI, 1.14 to 3.34) and 1.96 (95% CI, 1.10 to 3.49), respectively. No significant differences were observed between the two groups regarding BMI.
  • Conclusion
    Increased baseline WHtR and WC correlated with the development of diabetes after 4 years. WHtR might be a useful screening measurement to identify individuals at high risk for diabetes.
Diabetes is a major global public health problem that is estimated to affect 387 million people worldwide [1]. Recently, the International Diabetes Federation estimated the number of people worldwide with diabetes at 366 million in 2011; this number is expected to rise to 552 million by 2030. According the Korea National Health and Nutrition Examination Survey studies in 2001 to 2013, the age-standardized prevalence of diabetes among adults 30 years of age and older increased from 8.6% to 11.0% [2]. To reduce the increased prevalence of diabetes and its complications, it is important to find modifiable risk factors for diabetes.
Abdominal obesity has been proposed to be a strong risk factor for diabetes [3]. Various anthropometric measures have been proposed to reflect adiposity, the most frequently used of which is body mass index (BMI). However, BMI does not take body fat distribution into account. Thus, BMI is a limited measurement because fat distribution has been shown to differ according to age, sex, and ethnicity [4]. Waist circumference (WC) and waist-hip ratio (WHR) have been used to discriminate visceral adiposity from simple obesity. However, WC does not account for differences in height, and could thus lead to overestimation or underestimation of risk for tall and short individuals, respectively. Moreover, the WHR might be inaccurate in persons who have lost weight [5].
Waist-to-height ratio (WHtR) is an alternative measurement for visceral fat. A systematic review published in 2010 concluded that WHtR may be advantageous because it avoids the need for age-, sex-, and ethnicity-specific values [5]. Recent studies found that a WHtR cut-off value of ≥0.5 identified people with high adiposity and was strongly associated with cardiovascular disease. Associations between certain adiposity indexes (such as BMI, WC, WHR, and WHtR) and diabetic risk have been investigated in cross-sectional studies [678910]; however, these studies have yielded inconsistent results.
In this study, we retrospectively examined the associations of certain baseline adiposity indices (e.g., BMI, WC, WHtR) with diabetes risk over 4 years in healthy subjects. We also attempted to identify the best adiposity index for predicting the development of type 2 diabetes mellitus in a healthy urban Korean population.
Subjects
This was a retrospective study, and subjects were the participants in Kangbuk Samsung Health Study, a large database from the participants in medical health checkup program at the Health Promotion Center of Kangbuk Samsung Hospital, Sungkyunkwan University School of Medicine, Seoul, Korea. This health checkup program promotes the health of employees through regular check-ups and increase early detection of diseases. Most of the examinees are employees and family members of various industrial companies from all around the country. Large proportion of the subjects undergo examinations annually or biannually.
Initial dataset composed of the data from the 10,868 participants who performed health check-up twice in 4 years of interval, in 2005 and 2009. Baseline anthropometric indices (e.g., BMI, WC, WHtR) and various metabolic parameters were measured. Furthermore, lifestyle factors (e.g., smoking, alcohol drink, exercise) were checked. Among these participants, 7,968 subjects were excluded due to the presence of diabetes and missing data, especially WC and lipid profiles. Final analyses were performed in 2,900 non-diabetic subjects (2,078 men [71.7%] and 822 women [28.3%]) with mean age of 44.3 years. Subjects were divided into two groups according to development of diabetes after 4 years, and examined baseline characteristics in general populations and between groups. We also analyzed the cut-off values of each baseline anthropometric indices which could predict development of diabetes during follow-up, and their sensitivity, specificity, and area under the curves (AUCs). Odds ratio (OR) and 95% confidence intervals (CIs) of three baseline anthropometric indices were estimated after adjustment of confounding variables.
All participants provided written informed consent for the use of their medical check-up data in this study. The design, protocol, and consent procedure of this study were reviewed and approved by the Institutional Review Board of Kangbuk Samsung Hospital (KBS12089) and are all in accordance with the Helsinki Declaration of 1975.
Anthropometric and laboratory measurements
Height and weight were measured twice and then averaged. The WHtR was calculated as the WC (cm) divided by the height (cm) and dichotomized (<0.5 vs. ≥0.5) according to the recommended criteria [11]. The BMI was calculated by dividing the weight (kg) by the square of the height (m). The WC was measured in the standing position, at the middle point between the anterior iliac crest and the lower border of the rib, by a single examiner. WC values were available only for 2,900 subjects due to inconsistencies in the measurement method. Blood pressure was measured twice using a standardized sphygmomanometer after 5 minutes of rest and then averaged. All subjects were examined after an overnight fast. The hexokinase method was used to determine the fasting glucose concentrations (Hitachi Modular D2400, Roche, Tokyo, Japan). Fasting serum insulin concentrations were determined by electrochemiluminescence immunoassay using a Hitachi Modular E170. Homeostatic model of the assessment of insulin resistance (HOMA-IR) was calculated using the following equation: [fasting insulin (IU/mL)×fasting glucose (mmol/L)]/22.5 [12]. An enzymatic calorimetric test was used to measure the serum total cholesterol (TC) and triglyceride (TG) concentrations.
All subjects with underlying diabetes at baseline were excluded from the study. The presence of diabetes mellitus was determined by self-questionnaires completed by the participants and the fasting glucose diagnostic criteria outlined by the American Diabetes Association [13]. Development of diabetes was assessed in every year's examination with the same diagnostic criteria of diabetes mellitus.
Alcohol and smoking habits were determined by self-questionnaires. Alcohol consumption was defined as drinking more than 3 times a week. Fat mass was measured by segmental bioelectric impedance, using eight tactile electrodes according to the manufacturer's instructions (InBody 3.0, Biospace Co. Ltd., Seoul, Korea).
Statistical analysis
All data were analyzed using SPSS version 18.0 (SPSS Inc., Chicago, IL, USA). Baseline characteristics were examined by using chi-square tests. Data that didn't follow normal distribution (such as TG, HOMA-IR) were analyzed after logarithmic transformation. Then we analyzed the cut-off values of each baseline anthropometric indices in newly diagnosed diabetes group, and calculated their sensitivity, specificity, and mean area under the receiver operator characteristics curves (AUROC) values and their 95% CIs by using receiver operating characteristic curves, to find better diagnostic predictor. Multi-variate logistic regression analysis was used to estimate the ORs and 95% CIs of newly developed type 2 diabetes to BMI, WC, and WHtR, after adjusting for potential confounders including age, sex, serum glucose, HOMA-IR, TC, TG, fat mass, hypertension, smoking, alcohol drinking, vigorous exercise. Statistical significance was defined as P<0.05.
General baseline characteristics
The mean participant age was 44.3 years (Table 1). A total of 2,900 participants were included, 2,078 (71.7%) of whom were men. Over a median follow-up time of 48.7 months, 101 subjects (3.5%) developed diabetes. The average baseline glucose, HOMA-IR, TC, and TG levels were 95.7±8.7, 2.09±0.88, 194.5±33.3, and 133.1±84.0 mg/dL, respectively. Regarding baseline anthropometric characteristics, the mean BMI, WC, and WHtR values were 23.8±2.9 kg/m2, 80.9±9.0 cm, and 0.48±0.04, respectively.
Comparison of baseline characteristics between groups
The incidence rates of diabetes according to sex were 89 men (3.06%) and 12 women (0.41%), respectively (Table 2). In the group who developed diabetes, the baseline glucose, HOMA-IR, TC, and TG levels were 108.76±9.57, 2.79±1.21, 209.84±45.42, and 175.12±117.32, respectively. The mean BMI, WC, and WHtR values in this group were 25.8±2.8, 86.8±7.2, and 0.52±0.04 cm, respectively. All variables examined, including adiposity indices and baseline lab results, were higher in men than in women. Sixty-eight subjects (2.3%) had been diagnosed with hypertension at baseline and developed diabetes after follow-up. A total of 71 men (2.4%) were smokers, and 15 men (0.5%) were frequent alcohol drinkers. No women smokers or frequent alcohol drinkers were present in the group. Twenty-four men (0.83%) and six women performed vigorous exercise.
Cut-off value, sensitivity, and specificity of each anthropometric index for predicting the development of diabetes after 4 years
The best WHtR cut-off value was 0.51, which yielded a sensitivity of 60.4% and a specificity of 74.2% (Table 3). The mean AUROC value of WHtR was the highest among the three adiposity indices (AUC, 0.716; 95% CI, 0.669 to 0.763). The best WC and BMI cut-off values were 86.5 and 26.1, respectively. The AUROC values for WC and BMI were 0.702 (95% CI, 0.655 to 0.750) and 0.7 (95% CI, 0.651 to 0.750), respectively. The best cut-off values for men were the same as for the overall group, and the AUC values were ranked the same as for the overall group of subjects. However, for women, the AUC for BMI was the highest (0.725; 95% CI, 0.578 to 0.817), whereas the AUC for WHtR was the lowest (0.679; 95% CI, 0.554 to 0.803).
Odds ratios for the development of diabetes according to each anthropometric index
After adjusting for age, sex, glucose level, HOMA-IR, TC level, TG level, fat mass, hypertension status, smoking status, frequent alcohol drinking, and vigorous exercise, WHtR and WC were significant predictors of the development of diabetes (Table 4). The OR of WHtR was 1.95 (95% CI, 1.14 to 3.34; P=0.015). The OR of WC was 1.96 (95% CI, 1.10 to 3.49; P=0.02). For BMI, the OR was 1.65 (95% CI, 0.90 to 3.05); this ratio was not significant (P=0.11).
In this study, baseline WHtR showed a significant association with the development of diabetes over a median follow-up period of 48.7 months. The OR of WHtR was 1.948 (95% CI, 1.136 to 3.339; P=0.015) after adjusting for age, sex, glucose level, HOMA-IR, TC level, TG level, fat mass, hypertension status, smoking status, frequent alcohol drinking, and vigorous exercise. The OR of WC was 1.955 (95% CI, 1.097 to 3.485; P=0.023). BMI was not significantly different between the two groups after multivariate logistic regression analysis. The WHtR cut-off value was 0.5117, and the AUC for WHtR was the highest among the three anthropometric indices.
Various adiposity indices have been studied to assess the risk of diabetes. However, no definitive measurement tools or index for best predicting diabetes has yet been identified. The most widely recognized adiposity index is BMI, which was first used by the World Health Organization [14]. However, BMI is limited in that even though it is correlated with total body fat, it does not reflect body fat distribution. Many reports have described a positive association between visceral fat distribution and metabolic disease risk. Anecdotal evidence from the 1940s onwards supports the idea that individuals with a central type of fat distribution (android type) exhibit higher health risks compared with individuals with the peripheral type of fat distribution (gynoid type) [1516]. Moreover, BMI cannot distinguish between a person with excess fat and a person with high muscle mass; therefore, they have the same cardiovascular risk based on BMI alone [17]. Due to this limitation, indices such as WC and WHR, which reflect central obesity, have gained popularity for assessing relative visceral fat distribution [518]. In another study performed in Koreans, the Healthy Twin Study, WC, WHtR, and BMI showed better predictability for metabolic risks over direct body fat measures [19]. However, these indices also have limitations. Specifically, WC does not account for differences in height. Several studies have reported that individuals with the same WC but different heights are unlikely to have the same cardiometabolic risks [20]. Moreover, WHR might be inaccurate in individuals who have lost weight, because both waist and hip circumference can decrease proportionately, and thus the ratio sometimes changes very little [518]. Many studies have also found that the boundary value of WC varies between men versus women, adults versus children, and Asian versus non-Asian populations [51821]. In contrast to both WC and WHR, WHtR includes one constant measure (height), therefore it may correct the WC of the individual. This parameter is also cheaper and easier to measure than BMI. Moreover, the WHtR cut-off value has been shown to be consistent across different ages, sexes, and ethnicities [521].
According to recent meta-analyses of several prospective and cross-sectional studies, WHtR and WC are significant predictors of diabetes, cardiovascular disease hypertension, lipid outcomes, and metabolic syndrome. These two indices also have similar ORs and hazard ratios and were found to be stronger predictors than BMI [5161821]. Moreover, meta-analyses aimed at determining whether WHtR, WC, or BMI is the best screening parameter for cardiometabolic disease found that WHtR had the highest AUROC value, whereas BMI had the lowest. Furthermore, the rank order of WHtR remained consistent throughout all of the studies. The WHtR boundary value most often proposed for predicting diabetes, cardiovascular disease, hypertension, lipid outcomes, and metabolic syndrome is 0.5. The cut-off values reported for diabetes are 0.52 to 0.53; this index yielded consistent performance across ages, sexes, and ethnicities. Moreover, this index can be simply expressed as "Keep your waist circumference to less than half your height" [521]. In our study, the same tendency was observed. The OR of WHtR was 1.95 and the OR of WC was 1.96, after adjusting for confounding factors. Thus, both of these indices were statistically significant predictors of the development of diabetes. However, BMI was not significantly different between the groups after adjustment. The WHtR cut-off value was 0.51, and the AUROC of WHtR was the highest among the three adiposity indices.
In our study, we measured anthropometric indices in 2,900 healthy Korean adult individuals, in addition to various parameters that reflect metabolic health status, such as baseline glucose, HOMA-IR, and lipid profiles. We then tracked the development of diabetes after 4 years of follow-up. However, this study did have a few limitations. First, this study has a small sample size of women participants. Second, the number of subjects who developed diabetes after 4 years of follow-up was relatively small. Third, the study population was limited to healthy adults, and thus does not exactly represent the overall Korean population. Fourth, post-challenge glucose levels were not factored into the diagnosis of diabetes. Fifth, baseline hip circumference was not measured; thus, the relationship between WHR and diabetes could not be assessed. Sixth, selection bias could have been present because our study was retrospective in nature.
In conclusion, we found that baseline WHtR and WC are strong predictors of diabetes in a population of healthy Korean subjects. Moreover, WHtR has several advantages as a screening measurement compared with WC. We suggest a WHtR boundary value of 0.5 for defining high risk individuals. In this group, intensive life style modifications should be introduced early to reduce the WC to less than half of the height in order to lower the risk of diabetes. Future studies of large diverse populations are needed to validate the clinical application of this boundary value.

CONFLICTS OF INTEREST: No potential conflict of interest relevant to this article was reported.

  • 1. Whiting DR, Guariguata L, Weil C, Shaw J. IDF diabetes atlas: global estimates of the prevalence of diabetes for 2011 and 2030. Diabetes Res Clin Pract 2011;94:311–321. ArticlePubMed
  • 2. Ha KH, Kim DJ. Trends in the diabetes epidemic in Korea. Endocrinol Metab (Seoul) 2015;30:142–146. ArticlePubMedPMC
  • 3. Hu D, Xie J, Fu P, Zhou J, Yu D, Whelton PK, et al. Central rather than overall obesity is related to diabetes in the Chinese population: the InterASIA study. Obesity (Silver Spring) 2007;15:2809–2816. ArticlePubMed
  • 4. Lam BC, Koh GC, Chen C, Wong MT, Fallows SJ. Comparison of body mass index (BMI), body adiposity index (BAI), waist circumference (WC), waist-to-hip ratio (WHR) and waist-to-height ratio (WHtR) as predictors of cardiovascular disease risk factors in an adult population in Singapore. PLoS One 2015;10:e0122985ArticlePubMedPMC
  • 5. Browning LM, Hsieh SD, Ashwell M. A systematic review of waist-to-height ratio as a screening tool for the prediction of cardiovascular disease and diabetes: 0·5 could be a suitable global boundary value. Nutr Res Rev 2010;23:247–269. ArticlePubMed
  • 6. Hsieh SD, Yoshinaga H, Muto T. Waist-to-height ratio, a simple and practical index for assessing central fat distribution and metabolic risk in Japanese men and women. Int J Obes Relat Metab Disord 2003;27:610–616. ArticlePubMedPDF
  • 7. Ashwell M, Hsieh SD. Six reasons why the waist-to-height ratio is a rapid and effective global indicator for health risks of obesity and how its use could simplify the international public health message on obesity. Int J Food Sci Nutr 2005;56:303–307. ArticlePubMed
  • 8. Rosenthal AD, Jin F, Shu XO, Yang G, Elasy TA, Chow WH, et al. Body fat distribution and risk of diabetes among Chinese women. Int J Obes Relat Metab Disord 2004;28:594–599. ArticlePubMedPDF
  • 9. Tulloch-Reid MK, Williams DE, Looker HC, Hanson RL, Knowler WC. Do measures of body fat distribution provide information on the risk of type 2 diabetes in addition to measures of general obesity? Comparison of anthropometric predictors of type 2 diabetes in Pima Indians. Diabetes Care 2003;26:2556–2561. ArticlePubMed
  • 10. Wei M, Gaskill SP, Haffner SM, Stern MP. Waist circumference as the best predictor of noninsulin dependent diabetes mellitus (NIDDM) compared to body mass index, waist/hip ratio and other anthropometric measurements in Mexican Americans: a 7-year prospective study. Obes Res 1997;5:16–23. ArticlePubMed
  • 11. Lemieux I, Pascot A, Couillard C, Lamarche B, Tchernof A, Almeras N, et al. Hypertriglyceridemic waist: a marker of the atherogenic metabolic triad (hyperinsulinemia; hyperapolipoprotein B; small, dense LDL) in men? Circulation 2000;102:179–184. ArticlePubMed
  • 12. Matthews DR, Hosker JP, Rudenski AS, Naylor BA, Treacher DF, Turner RC. Homeostasis model assessment: insulin resistance and beta-cell function from fasting plasma glucose and insulin concentrations in man. Diabetologia 1985;28:412–419. ArticlePubMedPDF
  • 13. Standards of medical care in diabetes 2015: summary of revisions. Diabetes Care 2015;38(Suppl):S4.ArticlePMCPDF
  • 14. Obesity: preventing and managing the global epidemic. Report of a WHO consultation. World Health Organ Tech Rep Ser 2000;894:1–253.
  • 15. Schneider HJ, Glaesmer H, Klotsche J, Bohler S, Lehnert H, Zeiher AM, et al. Accuracy of anthropometric indicators of obesity to predict cardiovascular risk. J Clin Endocrinol Metab 2007;92:589–594. ArticlePubMedPDF
  • 16. Esmaillzadeh A, Mirmiran P, Azizi F. Waist-to-hip ratio is a better screening measure for cardiovascular risk factors than other anthropometric indicators in Tehranian adult men. Int J Obes Relat Metab Disord 2004;28:1325–1332. ArticlePubMedPDF
  • 17. Yajnik CS, Yudkin JS. The Y-Y paradox. Lancet 2004;363:163ArticlePubMed
  • 18. Xu Z, Qi X, Dahl AK, Xu W. Waist-to-height ratio is the best indicator for undiagnosed type 2 diabetes. Diabet Med 2013;30:e201–e207. ArticlePubMed
  • 19. Lee K, Song YM, Sung J. Which obesity indicators are better predictors of metabolic risk?: healthy twin study. Obesity (Silver Spring) 2008;16:834–840. ArticlePubMed
  • 20. Hsieh SD, Yoshinaga H. Do people with similar waist circumference share similar health risks irrespective of height? Tohoku J Exp Med 1999;188:55–60. ArticlePubMed
  • 21. Ashwell M, Gunn P, Gibson S. Waist-to-height ratio is a better screening tool than waist circumference and BMI for adult cardiometabolic risk factors: systematic review and meta-analysis. Obes Rev 2012;13:275–286. ArticlePubMed
Table 1

Baseline Characteristics of the Participants

enm-31-127-i001.jpg
Characteristic Total Men Women
Number 2,900 (100) 2,078 (71.7) 822 (28.3)
Age, yr 44.3±6.5 44.3±6.2 43.6±6.3
Diabetes development 101 (3.5) 89 (3.06) 12 (0.41)
Glucose, mg/dL 95.7±8.7 96.8±8.8 93.0±7.9
HOMA-IR 2.09±0.88 2.15±0.94 1.97±0.73
TC, mg/dL 194.5±33.3 196.3±33.3 189.8±32.9
TG, mg/dL 133.1±84.0 148.4±90.0 94.4±48.5
Percent body fat, % 16.3±4.6 16.3±4.6 16.5±4.7
BMI, kg/m2 23.8±2.9 24.4±2.6 22.0±2.7
WC, cm 80.9±9.0 84.2±7.3 72.4±7.5
WHtR, cm/cm 0.48±0.04 0.49±0.04 0.45±0.05
Hypertensiona 1,386 (47.8) 1,200 (41.4) 186 (6.4)
Smoking 2,845 (98.1) 1,486 (51.2) 31 (1.17)
Alcohol consumption 307 (10.6) 298 (10.3) 9 (0.3)
Vigorous exercise 647 (22.3) 430 (14.8) 217 (7.5)

Values are expressed as number (%) or mean±SD.

HOMA-IR, homeostatic model of the assessment of insulin resistance; TC, total cholesterol; TG, triglyceride; BMI, body mass index; WC, waist circumference; WHtR, waist-to-height ratio.

aSystolic blood pressure ≥140 mm Hg, diastolic blood pressure ≥80 mm Hg, or on antihypertensive medication.

Table 2

Comparison of Baseline Characteristics according to the Development of Diabetes after 4 Years

enm-31-127-i002.jpg
Characteristic Total Men Women
Developed
diabetes
Not developed
diabetes
P value Developed
diabetes
Not developed
diabetes
P value Developed
diabetes
Not developed
diabetes
P value
Number 101 (3.5) 2,799 (96.5) 89 (3.06) 1,989 (68.59) 12 (0.41) 810 (27.93)
Age, yr 47.1±6.7 44.2±6.5 <0.001 47.1±7.0 44.3±6.1 <0.001 47.0±5.3 43.1±6.1 0.093
Glucose, mg/dL 108.76±9.57 95.23±8.34 <0.001 109.01±9.68 96.22±8.40 <0.001 106.92±8.87 92.79±7.66 <0.001
HOMA-IR 2.79±1.21 2.07±0.86 <0.001 2.84±1.24 2.12±0.91 <0.001 2.37±0.93 1.96±0.72 0.030
TC, mg/dL 209.84±45.42 193.92±32.63 <0.001 209.50±45.20 195.73±32.50 0.005 212.25±48.93 189.48±32.52 0.136
TG, mg/dL 175.12±117.32 131.58±82.22 <0.001 182.6±122.0 146.9±88.0 <0.001 119.9±45.9 94.1±48.4 0.066
Body fat, % 18.86±4.59 16.26±4.58 <0.001 18.58±4.34 16.78±4.57 <0.001 20.98±5.92 16.49±4.60 0.001
BMI, kg/m2 25.8±2.8 23.7±2.8 <0.001 25.9±2.6 24.4±2.6 <0.001 24.6±3.4 22.0±2.7 0.110
WC, cm 86.8±7.2 80.65±9.0 <0.001 88.0±2.6 84.0±7.2 <0.001 77.3±7.1 72.4±7.5 0.180
WHtR, cm/cm 0.52±0.04 0.48±0.05 <0.001 0.52±0.04 0.49±0.04 <0.001 0.48±0.05 0.45±0.05 0.005
Hypertensiona 68 (2.3) 1,318 (45.4) <0.001 65 (2.24) 1,135 (39.14) 0.003 3 (0.10) 183 (6.31) 0.739
Smoking 71 (2.4) 1,446 (49.9) <0.001 71 (2.45) 1,415 (48.79) 0.099 0 31 (1.07) 1.000
Alcohol consumption 15 (0.5) 292 (10) 0.156 15 (0.52) 283 (9.76) 0.489 0 9 (0.31) 1.000
Vigorous exercise 30 (1) 617 (21.3) 0.069 24 (0.83) 406 (14) 0.135 6 (0.21) 211 (7.28) 0.920

Values are expressed as number (%) or mean±SD.

HOMA-IR, homeostatic model of the assessment of insulin resistance; TC, total cholesterol; TG, triglyceride; BMI, body mass index; WC, waist circumference; WHtR, waist-to-height ratio.

aSystolic blood pressure ≥140 mm Hg, diastolic blood pressure ≥80 mm Hg, or on antihypertensive medication.

Table 3

Cut-off Value, Sensitivity, Specificity, and AUC of Each Anthropometric Index for the Prediction of Type 2 Diabetes

enm-31-127-i003.jpg
Men Women Total
Cut-off value Sensitivity, % Specificity, % AUC (95% CI) Cut-off value Sensitivity, % Specificity, % AUC (95% CI) Cut-off value Sensitivity, % Specificity, % AUC (95% CI)
WHtR, cm/cm 0.51 64 64.8 0.697
(0.644–0.749)
0.43 100 38 0.679
(0.554–0.803)
0.51 60.4 74.2 0.716
(0.669–0.763)
BMI, kg/m2 26.1 50.6 75.9 0.66
(0.602–0.718)
23 66.7 69.8 0.725
(0.578–0.817)
26.1 48.5 80.6 0.7
(0.651–0.750)
WC, cm 86.5 67.4 63.1 0.668
(0.615–0.722)
71.8 83.3 51 0.691
(0.571–0.812)
86.5 60.4 72.5 0.702
(0.655–0.750)

AUC, area under the curve; CI, confidence interval; WHtR, waist-to-height ratio; BMI, body mass index; WC, waist circumference.

Table 4

Multilogistic Regression Analysis with the Development of Diabetes as the Dependent Variable

enm-31-127-i004.jpg
Variable Odds ratio 95% CI P value
BMI, kg/m2 1.65 0.90–3.05 0.11
WC, cm 1.96 1.10–3.49 0.02
WHtR, cm/cm 1.95 1.14–3.34 0.02

Adjusted for age, sex, glucose level, homeostatic model of the assessment of insulin resistance, total cholesterol level, triglyceride level, fat mass, hypertension status, smoking history, alcohol consumption, and vigorous exercise.

CI, confidence interval; BMI, body mass index; WC, waist circumference; WHtR, waist-to-height ratio.

Figure & Data

References

    Citations

    Citations to this article as recorded by  
    • Comparison of waist circumference and waist‐to‐height ratio as predictors of clustering of cardiovascular risk factors among middle‐aged people in rural Khanh Hoa, Vietnam
      Rachana Manandhar Shrestha, Thuy Thi Phuong Pham, Shohei Yamamoto, Chau Que Nguyen, Ami Fukunaga, Phan Cong Danh, Masahiko Hachiya, Huy Xuan Le, Hung Thai Do, Tetsuya Mizoue, Yosuke Inoue
      American Journal of Human Biology.2024;[Epub]     CrossRef
    • Novel anthropometric indices for predicting type 2 diabetes mellitus
      Erfan Sadeghi, Alireza Khodadadiyan, Seyed Ali Hosseini, Sayed Mohsen Hosseini, Ashraf Aminorroaya, Massoud Amini, Sara Javadi
      BMC Public Health.2024;[Epub]     CrossRef
    • Body Composition and Cardiovascular Risk: A Study of Polish Military Flying Personnel
      Agata Gaździńska, Stefan Gaździński, Paweł Jagielski, Paweł Kler
      Metabolites.2023; 13(10): 1102.     CrossRef
    • Cues of pregnancy decrease female physical attractiveness for males
      Pavol Prokop, Martina Zvaríková, Milan Zvarík, Peter Fedor
      Current Psychology.2022; 41(2): 697.     CrossRef
    • Waist-to-height ratio has a stronger association with cardiovascular risks than waist circumference, waist-hip ratio and body mass index in type 2 diabetes
      Jiang-Feng Ke, Jun-Wei Wang, Jun-Xi Lu, Zhi-Hui Zhang, Yun Liu, Lian-Xi Li
      Diabetes Research and Clinical Practice.2022; 183: 109151.     CrossRef
    • Diagnostic accuracy of anthropometric indices for discriminating elevated blood pressure in pediatric population: a systematic review and a meta-analysis
      Jun-Min Tao, Wei Wei, Xiao-Yang Ma, Ying-Xiang Huo, Meng-Die Hu, Xiao-Feng Li, Xin Chen
      BMC Pediatrics.2022;[Epub]     CrossRef
    • The utilization of BMI in patients with high WHtR as to cardiovascular risk
      Meliha Melin UYGUR
      Journal of Health Sciences and Medicine.2022; 5(4): 1133.     CrossRef
    • Assessment of obesity indices for prediction of hyperglycemia in adult population of Varanasi (Uttar Pradesh), India
      Neha Rai, Hanjabam Barun Sharma, Renu Kumari, Jyotsna Kailashiya
      Indian Journal of Physiology and Pharmacology.2021; 64: 195.     CrossRef
    • Waist-to-height ratio and metabolic phenotype compared to the Matsuda index for the prediction of insulin resistance
      Katharina Lechner, Benjamin Lechner, Alexander Crispin, Peter E. H. Schwarz, Helene von Bibra
      Scientific Reports.2021;[Epub]     CrossRef
    • Waist-to-Height Ratio (WHtR) in Predicting Coronary Artery Disease Compared to Body Mass Index and Waist Circumference in a Single Center from Saudi Arabia
      Mostafa Q. Alshamiri, Faisal Mohd A Habbab, Saad Saeed AL-Qahtani, Khalil Abdullah Alghalayini, Omar Mohammed Al-Qattan, Fayez El-shaer, Anne Knowlton
      Cardiology Research and Practice.2020; 2020: 1.     CrossRef
    • A simple cut-off for waist-to-height ratio (0·5) can act as an indicator for cardiometabolic risk: recent data from adults in the Health Survey for England
      Sigrid Gibson, Margaret Ashwell
      British Journal of Nutrition.2020; 123(6): 681.     CrossRef
    • Glucose Levels as a Mediator of the Detrimental Effect of Abdominal Obesity on Relative Handgrip Strength in Older Adults
      Miguel Ángel Pérez-Sousa, Jesús del Pozo-Cruz, Carlos A. Cano-Gutiérrez, Atilio J. Ferrebuz, Carolina Sandoval-Cuellar, Mikel Izquierdo, Paula A. Hernández-Quiñonez, Robinson Ramírez-Vélez
      Journal of Clinical Medicine.2020; 9(8): 2323.     CrossRef
    • Abnormal Glucose Metabolism and Associated Risk Factors Among Adults in Mekelle City, Ethiopia


      Gebremedhin Gebreegziabiher, Tefera Belachew, Dessalegn Tamiru
      Diabetes, Metabolic Syndrome and Obesity: Targets and Therapy.2020; Volume 13: 4017.     CrossRef
    • Anthropometric Indexes for Predicting High Blood Pressure in Vietnamese Adults: A Cross-Sectional Study


      Quan Nguyen Minh, Minh Hoang Nguyen Vo
      Integrated Blood Pressure Control.2020; Volume 13: 181.     CrossRef
    • Relation between Baseline Height and New Diabetes Development: A Nationwide Population-Based Study
      Eun-Jung Rhee, Jung-Hwan Cho, Hyemi Kwon, Se-Eun Park, Jin-Hyung Jung, Kyung-Do Han, Yong-Gyu Park, Yang-Hyun Kim, Won-Young Lee
      Diabetes & Metabolism Journal.2019; 43(6): 794.     CrossRef
    • Issues in Measuring and Interpreting Diet and Its Contribution to Obesity
      Rachael M. Taylor, Rebecca L. Haslam, Tracy L. Burrows, Kerith R. Duncanson, Lee M. Ashton, Megan E. Rollo, Vanessa A. Shrewsbury, Tracy L. Schumacher, Clare E. Collins
      Current Obesity Reports.2019; 8(2): 53.     CrossRef
    • Assessment of the validity of multiple obesity indices compared with obesity-related co-morbidities
      Jaeeun Myung, Kyung Yoon Jung, Tae Hyun Kim, Euna Han
      Public Health Nutrition.2019; : 1.     CrossRef
    • Profiles of body mass index and blood pressure among young adults categorised by waist-to-height ratio cut-offs in Shandong, China
      Ying-xiu Zhang, Shu-rong Wang
      Annals of Human Biology.2019; 46(5): 409.     CrossRef
    • Air Pollution Has a Significant Negative Impact on Intentional Efforts to Lose Weight: A Global Scale Analysis
      Morena Ustulin, So Young Park, Sang Ouk Chin, Suk Chon, Jeong-taek Woo, Sang Youl Rhee
      Diabetes & Metabolism Journal.2018; 42(4): 320.     CrossRef
    • Being Metabolically Healthy, the Most Responsible Factor for Vascular Health
      Eun-Jung Rhee
      Diabetes & Metabolism Journal.2018; 42(1): 19.     CrossRef
    • Waist-to-height ratio index for predicting incidences of hypertension: the ARIRANG study
      Jung Ran Choi, Sang Baek Koh, Eunhee Choi
      BMC Public Health.2018;[Epub]     CrossRef
    • Comparison of various anthropometric indices for the identification of a predictor of incident hypertension: the ARIRANG study
      J. R. Choi, S. V. Ahn, J. Y. Kim, S. B. Koh, E. H. Choi, G. Y. Lee, Y. E. Jang
      Journal of Human Hypertension.2018; 32(4): 294.     CrossRef
    • Articles inEndocrinology and Metabolismin 2016
      Won-Young Lee
      Endocrinology and Metabolism.2017; 32(1): 62.     CrossRef
    • THE ASSESMENT OF RELATION BETWEEN WAIST/HEIGHT RATIO AND TYPE 2 DIABETES RISK AMONG NURSING STUDENTS
      Ceren Gezer
      Journal of Food and Health Science.2017; : 141.     CrossRef

    • PubReader PubReader
    • Cite
      CITE
      export Copy
      Close
    • XML DownloadXML Download

    Endocrinol Metab : Endocrinology and Metabolism