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Anthropometric indices and their relationship with cardiometabolic risk factors in a sample of Turkish adults

Published online by Cambridge University Press:  01 April 2009

Ahmet Selcuk Can*
Affiliation:
Department of Medicine, Istanbul Science University, Faculty of Medicine, Büyükdere Caddesi No. 120, Esentepe, Şişli, 34394 Istanbul, Turkey
Thomas P Bersot
Affiliation:
Gladstone Institute of Cardiovascular Disease and the University of California, San Francisco, CA, USA
Mithat Gönen
Affiliation:
Department of Epidemiology and Biostatistics, Memorial Sloan-Kettering Cancer Center, New York, NY, USA
*
*Corresponding author: Email [email protected]
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Abstract

Objective

To identify the best anthropometric index that predicts cardiometabolic risk factors.

Design and setting

Cross-sectional study in Turkey, in 2003.

Subjects

Turkish men and women aged 18 years and over (n 1692) were examined. Body weight, height, waist and hip circumferences, blood pressure, total cholesterol, HDL cholesterol, TAG, glucose and insulin were measured. Metabolic syndrome score was calculated as the sum of modified National Cholesterol Education Program Adult Treatment Panel III criteria, excluding waist circumference. Insulin resistance was estimated by homeostasis model assessment (HOMA-IR).

Results

BMI, waist:hip ratio (WHpR), waist:height ratio (WHtR), waist circumference (WC) and hip circumference (HC) were significantly correlated with each other. Partial correlation coefficients between systolic blood pressure, HDL cholesterol, TAG levels or HOMA-IR and BMI, WC or WHtR were similar and higher than correlation coefficients of WHpR and HC. The association of anthropometric indices with metabolic syndrome score and Framingham risk score was highest for WHtR. Areas under the receiver-operating characteristic curves showed that WHtR was the best anthropometric index that discriminated between the presence and absence of hypertension, diabetes and metabolic syndrome, whereas WHpR was better for dyslipidaemia.

Conclusions

WHtR was the best anthropometric index for predicting most cardiometabolic risk factors. WC and BMI ranked second for their predictive capability of cardiometabolic risk, followed by WHpR and HC.

Type
Research Paper
Copyright
copyright © The Authors 2008

Anthropometric indices (anthropometrics) are a simple, safe and cost-free way to quantify the degree of obesity. Because of the lack of cheap and accurate methods for assessing body composition directly, anthropometrics are often used as surrogates for assessing obesity and body fat distribution. BMI is the most widely used anthropometric index and gives information on fat mass and lean mass(1). Measurement of waist circumference (WC) is recommended by the US National Cholesterol Education Program (NCEP) for the assessment of central obesity(2), whereas the WHO recommends waist:hip ratio (WHpR) for the same purpose(1). All of the mentioned anthropometric indices have been found to be associated with all-cause mortality, diabetes mellitus, cardiovascular morbidity and mortality in prospective studies(Reference Simpson, MacInnis, Peeters, Hopper, Giles and English3Reference Folsom, Kushi, Anderson, Mink, Olson, Hong, Sellers, Lazovich and Prineas10). Some authors have proposed waist:height ratio (WHtR) as the best anthropometric index to predict CVD risk and metabolic syndrome(Reference Hsieh and Muto11Reference Hsieh and Muto14). Hip circumference (HC) has been found to be inversely associated with diabetes, CVD morbidity and mortality in a prospective study(Reference Lissner, Bjorkelund, Heitmann, Seidell and Bengtsson15). The results of prospective and cross-sectional studies that have attempted to find the best anthropometric index are not uniform(Reference Simpson, MacInnis, Peeters, Hopper, Giles and English3Reference Wang, Rowley, Piers and O’Dea22). Studies from the Eastern Mediterranean area also do not agree on the best anthropometric index to predict cardiometabolic risk(Reference Esmaillzadeh, Mirmiran and Azizi23Reference Onat, Sansoy and Uysal29). Work in Turkey has suggested that WHpR might better indicate CVD risk than BMI and WC(Reference Akpinar, Bashan, Bozdemir and Saatci28, Reference Onat, Sansoy and Uysal29). Onat et al.(Reference Onat, Sansoy and Uysal29) showed that both WC and WHpR were strongly associated with BMI, age, diastolic blood pressure and plasma TAG, and WHpR was significantly associated with prevalent CHD only in Turkish women. Fasting glucose, insulin, HDL cholesterol (HDL-C) and LDL cholesterol (LDL-C) levels were not ascertained and the association of anthropometric indices with metabolic syndrome was not reported in that study(Reference Onat, Sansoy and Uysal29), probably because the NCEP definition of metabolic syndrome was not available at that time. We believe that the relationship between all anthropometric indices and cardiometabolic risk factors must be analysed in further detail in Turkish adults. Compared with North American or European populations, Turks have low levels of total cholesterol (TC) and HDL-C and the relative role of metabolic syndrome and atherogenic dyslipidaemia is more pronounced(Reference Onat, Ceyhan, Basar, Erer, Toprak and Sansoy30, Reference Mahley, Palaoglu and Atak31). The leading independent predictors of CVD morbidity and mortality are related to the metabolic syndrome, which is responsible for approximately half of the cases of CHD in Turks, making them an ideal population in which to study cardiometabolic risk(Reference Onat, Ceyhan, Basar, Erer, Toprak and Sansoy30). Therefore, we aimed to investigate whether BMI, WC, WHpR, WHtR or HC is the best anthropometric index to predict cardiometabolic risk factors in Turkish adults.

Methods

Study population

The present study is based on the year 2003 follow-up of the Turkish Heart Study, a cross-sectional epidemiological survey of CVD risk factors in Turkish adults performed periodically since 1995(Reference Mahley, Palaoglu and Atak31Reference Can and Bersot33). One thousand seven hundred subjects aged 18 years and over were recruited from neighbourhood groups and with local advertisements. The survey was not nationally representative. Four subjects with missing anthropometric measurements, two below 18 years of age and two pregnant women were excluded from the study, leaving 1692 participants for data analysis. The study procedures were approved by the Institutional Review Board and permission to conduct the study was granted by the Ministry of Health, Republic of Turkey. All subjects signed written informed consent. The study was conducted in accordance with the Helsinki Declaration(34).

Data collection

Information about lifestyle habits, education, physical activity, monthly family income and past medical history was obtained through face-to-face physician interview. BMI was calculated as weight in kilograms divided by the square of height in metres. Height was measured to within 0·5 cm with a measuring stick, weight to within 0·1 kg with a digital scale, waist and hip circumferences to the nearest 0·5 cm with a non-elastic measuring tape. WC was measured at the midpoint between the last rib and the superior iliac crest during mild expiration. HC was measured at the level of the greater trochanter. All measurements were taken with shoes removed and with participants wearing light clothing. Blood pressure was measured on the right arm with an automated sphygmomanometer (automatic blood pressure monitor with IntelliSense®; Omron, Bannockburn, IL, USA) after the subject had rested for 15 min in the sitting position. The mean of two recordings, 5 min apart, was used.

Laboratory methods

A blood sample was obtained after a 10 h fast. Plasma glucose was measured with the glucose oxidase method. A multichannel analyser (Hitachi, Tokyo, Japan) was used for colorimetric enzymatic determinations of cholesterol (CHOD-PAP), TAG (GPO-PAP) and glucose. For participants with TAG levels <500 mg/dl, LDL-C was calculated by the Friedewald formula(Reference Friedewald, Levy and Fredrickson35). A homogeneous assay for measuring HDL-C levels was used. Kits from Boehringer-Mannheim (Mannheim, Germany) were used for lipid and glucose analyses. Fasting insulin levels were measured with electrochemiluminescence immunoassay (Roche Elecsys 2010; Roche Diagnostics, Indianapolis, IN, USA). Insulin resistance was estimated with the homeostasis model assessment insulin resistance index (HOMA-IR), calculated from the equation(Reference Matthews, Hosker, Rudenski, Naylor, Treacher and Turner36):

Biochemical analyses were performed at the American Hospital Clinical Laboratory in Istanbul, a reference laboratory certified by the Centers for Disease Control and Prevention (Atlanta, GA, USA)(Reference Mahley, Palaoglu and Atak31, Reference Mahley, Can, Ozbayrakci, Bersot, Tanir, Palaoglu and Pepin32).

Definitions of cardiovascular risk factors

Components of the metabolic syndrome were defined according to the modified NCEP Adult Treatment Panel III criteria(2, Reference Grundy, Cleeman and Daniels37). The metabolic syndrome score (MSS) was calculated as the sum of the following positive components, excluding WC: (i) systolic blood pressure (SBP) ≥130 mmHg or diastolic blood pressure (DBP) ≥85 mmHg; (ii) serum TAG ≥ 150 mg/dl (1.7 mmol/l); (iii) HDL-C <50 mg/dl (1.29 mmol/l) for women and <40 mg/dl (1.0 mmol/l) for men; and (iv) fasting plasma glucose ≥100 mg/dl (5.6 mmol/l). Subjects on drug therapy for hypertension, hyperglycaemia or hypertriacylglycerolaemia and low HDL-C levels were also assigned to positive components(Reference Grundy, Cleeman and Daniels37). As WC is one of the independent variables in correlation analyses, its exclusion was considered appropriate in calculating the MSS. Subjects could have MSS ranging from 0 to 4. MSS was an ordinal variable. Absolute 10-year risk of CHD was calculated from Framingham risk tables(2). The association of each anthropometric index with Framingham risk score was calculated after excluding subjects with a history of CHD (n 111) and diabetes (n 103), subjects on lipid-lowering medications (n 40) and subjects younger than 30 years (n 190) and older than 74 years (n 20), leaving 1228 subjects for this particular correlation analysis. The Framingham risk score has been shown to be inaccurate in the afore-mentioned conditions(Reference Berry, Lloyd-Jones, Garside and Greenland38, Reference Koller, Steyerberg, Wolbers, Stijnen, Bucher, Hunink and Witteman39). Subjects could have a Framingham risk score from 1 to 30. Framingham risk score was an ordinal variable(2).

Hypertension was defined as concurrent use of antihypertensive agents or SBP ≥140 mmHg or DBP ≥90mmHg(Reference Chobanian, Bakris and Black40). Hypercholesterolaemia was defined as serum TC ≥240 mg/dl, low HDL-C as <40 mg/dl, high LDL-C as ≥160 mg/dl and hypertriacylglycerolaemia as serum TAG ≥ 200 mg/dl. The presence of any of the above lipid abnormalities defined dyslipidaemia, consistent with the NCEP Adult Treatment Panel III guidelines(2). Diabetes mellitus was diagnosed either from concurrent use of antidiabetic medications or if fasting plasma glucose was ≥126 mg/dl(41). Subjects who had two or more metabolic syndrome components, excluding WC, were classified as ‘MSS ≥ 2’, a categorical variable that was evaluated as an outcome. A prospective study revealed that persons meeting any two criteria were significantly at higher risk than were those meeting no criteria(Reference Malik, Wong, Franklin, Kamath, L’Italien, Pio and Williams42).

Statistical analyses

Data are summarized by means and standard deviations for normally distributed continuous variables. Continuous variables with positively skewed distributions are presented as geometric means and 95 % confidence intervals, and their logarithmic transformations were employed in correlation analyses. Categorical variables are presented as percentages and 95 % confidence limits and compared with a χ 2 test. All statistical analyses were performed for both men and women combined, and separately. Age and sex control were employed when performing correlation analyses for the whole sample(Reference Altman43). Only age control was employed when calculating correlation coefficients for men or women. All anthropometric measurements were continuous variables. Partial correlation coefficients were estimated among BMI, WC, WHpR, WHtR and HC, after controlling for age and sex for the whole sample and age only for each gender. Spearman’s rank correlation coefficient was used in correlation analyses between continuous and ordinal variables. Spearman’s rank correlation coefficient was calculated between each anthropometric index (continuous variables) and the two composite cardiometabolic risk indicators, MSS and Framingham risk score (ordinal variables). Partial correlation coefficients were calculated between each anthropometric index and SBP, TC, HDL-C, LDL-C, log TAG, glucose and log HOMA-IR, after controlling for age and sex for the whole sample and age only for each gender. Correlation coefficients from 0 to 0·25 (or 0 to −0·25) were regarded as indicating little or no relationship; those from 0·25 to 0·50 (or −0·25 to −0·50) a fair degree of relationship; those from 0·50 to 0·75 (or −0·50 to −0·75) a moderate to good relationship; and those greater than 0·75 (or −0·75) a very good to excellent relationship(Reference Dawson-Saunders and Trapp44). Statistical significance was accepted if P < 0·01 for correlation analyses and if P < 0·05 for other analyses.

The receiver-operating characteristic (ROC) calculates the ability of a continuous variable (i.e. WC) to discriminate between the presence and absence of a categorical variable (i.e. metabolic syndrome). As the NCEP definition of the metabolic syndrome already includes elevated WC as a component, we thought it appropriate to exclude WC and derive a new variable called ‘metabolic syndrome score’ (MSS) by summing other components. MSS (an ordinal variable) was converted to a categorical variable in ROC analysis. If MSS was ≥2, the state variable was positive; if MSS was <2, the state variable was negative. The reader should pay attention to this particular aspect: MSS was an ordinal variable in correlation analyses but MSS ≥ 2 was a categorical variable in ROC analyses. ROC curves were constructed to measure the degree of discrimination of the anthropometric indices for hypertension, dyslipidaemia, diabetes and MSS ≥ 2, using non-parametric methods. The areas under the ROC curves (AUC) were calculated for each anthropometric index. An AUC of 1·0 indicates perfect discrimination between the absence and presence of the condition tested, whereas an AUC of 0·5 indicates no discriminative capability. First, the AUC of each anthropometric index was compared with an AUC value of 0·5, the area under the line of no discrimination. Then differences between the AUC of each anthropometric index for each cardiovascular risk factor were compared using the method of DeLong et al.(Reference DeLong, DeLong and Clarke-Pearson45).

Computations were done using the Statistical Package for the Social Sciences statistical software program version 15.0 (SPSS Inc., Chicago, IL, USA) for correlation analyses and the Statistical Analysis Systems statistical software package version 9.1 (SAS Institute Inc., Cary, NC, USA) for ROC analyses.

Results

There were 1692 participants, 571 men (34 %) and 1121 women (66 %), in the present study; their general characteristics are given in Table 1. Approximately two-thirds of the subjects (n 1104, 65 %) were from Istanbul, an urban area, and the remainder (n 588, 35 %) were from rural areas of Kayseri. Seven per cent (n 111) of the subjects had a history of self-reported CVD. Sixty-three subjects (4 %) were taking lipid-lowering medications, 271 (16 %) were taking antihypertensive agents and 64 (4 %) were taking oral antidiabetics. The frequency of CVD risk factors is presented in Table 1. The distribution of lipid abnormalities was as follows: 8 % (n 137) had hypercholesterolaemia, 40 % (n 672) low HDL-C, 9 % (n 144) high LDL-C and 16 % (n 262) elevated TAG. As a subject could have more than one lipid abnormality, the sum of lipid abnormalities exceeded the number of subjects with dyslipidaemia. Seven per cent (n 75) of women reported participation in physical exercise for >4 h/week, 10 % (n 114) reported 1–4 h/week, 6 % (n 71) reported <1 h/week and 77 % (n 861) reported no exercise. Among men, 11 % (n 61) reported physical exercise for >4 h/week, 15 % (n 87) reported 1–4 h/week, 10 % (n 57) <1 h/week and 64 % (n 366) reported no exercise. The physical activity level of men was significantly greater than that of women (χ 2 = 30·76, dof = 3, P < 0·01).

Table 1 Clinical characteristics of the study sample: Turkish men and women aged 18 years and over, 2003

WC, waist circumference, HC, hip circumference, WHpR, waist:hip ratio; WHtR, waist:height ratio; Metabolic syndrome, subjects with three or more of National Cholesterol Education Program (NCEP)-defined metabolic syndrome components; MSS ≥ 2, subjects with two or more NCEP-defined metabolic syndrome components excluding WC; SBP, systolic blood pressure; DBP, diastolic blood pressure; HOMA-IR, homeostasis model assessment of insulin resistance; TC, total cholesterol, HDL-C, HDL cholesterol, LDL-C, LDL cholesterol.

Data are presented as arithmetic mean and standard deviation, or †percentage and 95 % confidence limit, or ‡geometric mean and 95 % confidence interval.

Age- and sex-controlled correlations among BMI, WC, WHpR, WHtR and HC are shown in Table 2. Except for the association between HC and WHpR, all anthropometric indices were significantly correlated with each other. The correlation between BMI and WC, WHtC or HC and the correlation between WC and WHtR were very good to excellent. The other correlations were lesser in magnitude.

Table 2 Correlation coefficients between anthropometric indices in Turkish adults: men and women aged 18 years and over, 2003

WC, waist circumference; WHpR, waist:hip ratio; WHtR, waist:height ratio; HC, hip circumference.

*Significant correlation: P<0·01.

n 1692, correlation analyses controlled for age and sex.

n 571, correlation analyses controlled for age.

§n 1121, correlation analyses controlled for age.

Spearman’s rank correlation coefficient between MSS and BMI, WC, WHpR, WHtR and HC was 0·40, 0·44, 0·33, 0·46 and 0·28, respectively (P < 0·001 for all), for the whole sample. In men, the corresponding Spearman rank correlation coefficients were 0·36, 0·36, 0·35, 0·38 and 0·22, respectively (P < 0·001 for all); in women, they were 0·45, 0·49, 0·38, 0·51 and 0·34, respectively (P < 0·001 for all). In the subset of subjects between the ages of 30 and 74 years who did not have CVD, diabetes mellitus and were not taking lipid-lowering agents (n 1228), Spearman’s rank correlation coefficient between Framingham risk score (10-year absolute risk of CVD) and anthropometric index was 0·16 for BMI, 0·17 for WC, 0·14 for WHpR, 0·29 for WHtR (P < 0·001 for all) and 0·10 for HC (P = 0·001). In the same subset of men (n 420), Spearman’s rank correlation coefficient between Framingham risk score and anthropometric index was 0·05 for BMI (P = 0·36), 0·06 for WC (P = 0·26), 0·15 for WHpR (P = 0·003), 0·15 for WHtR (P = 0.002) and −0·07 for HC (P = 0·14). In the same subset of women (n 808), the corresponding Spearman rank correlation coefficients were 0·18, 0·27, 0·28, 0·33 and 0·14, respectively (P < 0·001 for all).

Partial correlation coefficients between each anthropometric index and major CVD risk factors or HOMA-IR were assessed after controlling for age and sex (Table 3). In the whole sample, the correlation between HC and TC or LDL-C was statistically significant but represented little or no relationship in magnitude. The correlation coefficients with other anthropometric measurements were not statistically significant for TC and LDL-C. The correlation coefficient between HC and glucose was also not significant. All other correlations were statistically significant, but the relationships were fair or lower. For the whole sample, the correlation coefficients of BMI, WC and WHtR were higher than the correlation coefficients of WHpR and HC for most of the CVD risk factors. In men, no anthropometric index was clearly superior. In women, both WC and WHtR had the highest correlations for the studied cardiometabolic risk factors.

Table 3 Correlation coefficients between anthropometric indices and cardiovascular risk factors in Turkish adults: men and women aged 18 years and over, 2003

WC, waist circumference; WHpR, waist:hip ratio; WHtR, waist:height ratio; HC, hip circumference; SBP, systolic blood pressure; TC, total cholesterol; HDL-C, HDL cholesterol; LDL-C, LDL cholesterol; HOMA-IR, homeostasis model assessment of insulin resistance.

*Significant correlation: P < 0·01.

n 1692, correlation analyses controlled for age and sex.

n 571, correlation analyses controlled for age.

§n 1121, correlation analyses controlled for age.

As correlation analyses did not provide a clear answer to the question of ‘the best anthropometric index for cardiometabolic risk’, we analysed the data with ROC curves. Analysis of ROC curves showed that WHtR was the best anthropometric index for discrimination of hypertension, diabetes and metabolic syndrome. For discrimination of dyslipidaemia, WHpR seemed better for the whole sample (Table 4). It should be noted that the area under a ROC curve is a measure of the anthropometric index’s ability to discriminate between the presence and absence of the condition tested. BMI, WC, WHpR, WHtR and HC were all significant discriminators of cardiometabolic risk factors, as their AUC values were significantly greater than 0·5 (P < 0·01 for all indices, except some AUC for diabetes and dyslipidaemia in men). The AUC of HC was inferior to others in discriminating the presence or absence of hypertension, diabetes and metabolic syndrome. There were no differences in AUC of BMI and WC for hypertension, diabetes and metabolic syndrome. In men, AUC of WHtR was the largest for hypertension and MSS ≥ 2 and AUC of WHpR was the largest for diabetes (Table 4). In women, AUC of WHtR was the largest for hypertension and MSS ≥ 2 (P < 0·05) and AUC of WHtR, WHpR and WC were larger than others for dyslipidemia and diabetes (P < 0·05), as seen in Table 4.

Table 4 Area under the receiver-operating characteristic curves (AUC) for anthropometric indices

WC, waist circumference; WHpR, waist:hip ratio; WHtR, waist:height ratio; HC, hip circumference; MSS ≥ 2, subjects with two or more National Cholesterol Education Program-defined metabolic syndrome components, excluding WC.

a,b,c,d,e,f,g,h,i,j Within a row, P < 0·05 for the following comparisons of AUC: aBMI v. WC, bBMI v. WHpR, cBMI v. WHtR, dBMI v. HC, eWC v. WHpR, fWC v. WHtR, gWC v. HC, hWHpR v. WHtR, iWHpR v. HC, jWHtR v. HC.

n 1692.

n 571.

§n 1121.

||P > 0·05 compared with 0·50, the value that indicates the area under the line of no discrimination; therefore comparison with other anthropometric indices was not performed.

Discussion

WHtR seemed a better anthropometric index that could predict most cardiometabolic risk factors in the present study. Although there was little difference among BMI, WC and WHtR in relation to CVD risk factors in correlation analyses, evaluation of AUC in ROC curve analyses indicated WHtR as a better predictor of hypertension, diabetes and metabolic syndrome. The differences among anthropometric indices were small and, in most instances, the confidence interval of one index substantially crossed the confidence interval of the other indices. Studies using computed tomography and MRI have revealed that central obesity indicators, especially visceral abdominal adipose tissue mass, are major contributors to cardiometabolic risk(Reference Lemieux, Prud’homme, Bouchard, Tremblay and Despres46Reference Smith, Lovejoy, Greenway, Ryan, deJonge, de la Bretonne, Volafova and Bray48). Although studies that relate anthropometric indices with body composition and fat distribution reveal consistent results, the same is not true for comparative studies relating anthropometrics with cardiometabolic risk factors. Comparative prospective studies vary in their conclusions as to whether BMI, WC or WHpR is superior in predicting all-cause mortality, CVD mortality and morbidity(Reference Simpson, MacInnis, Peeters, Hopper, Giles and English3Reference Folsom, Kushi, Anderson, Mink, Olson, Hong, Sellers, Lazovich and Prineas10). Prospective studies with WHtR and HC are scarce(Reference Lissner, Bjorkelund, Heitmann, Seidell and Bengtsson15, Reference Snijder, Dekker, Visser, Bouter, Stehouwer, Kostense, Yudkin, Heine, Nijpels and Seidell49).

Our results show that the effort to pinpoint to the best anthropometric index is hampered by the definition of the outcome. We found that the best anthropometric index varies whether one tries to predict hypertension, dyslipidaemia, diabetes or metabolic syndrome. The best anthropometric measure also varies according to race, ethnicity, gender and age group(Reference Simpson, MacInnis, Peeters, Hopper, Giles and English3Reference Wang, Rowley, Piers and O’Dea22). For example, in the Tehran Glucose and Lipid Study, analysis of cross-sectional data showed that WHpR was the best screening measure for CVD risk factors in men, whereas WC was the best in women(Reference Esmaillzadeh, Mirmiran and Azizi23, Reference Esmaillzadeh, Mirmiran and Azizi24). In the prospective phase of the Tehran Glucose and Lipid Study, both BMI and WHpR were better predictors of incident diabetes in subjects younger than 60 years of age, whereas WC was better in subjects older than 60 years(Reference Hadaegh, Zabetian, Harati and Azizi26).

As overweight and obese patients with established CHD have lower risk of overall mortality and CVD mortality than normal-weight patients(Reference Uretsky, Messerli, Bangalore, Champion, Cooper-Dehoff, Zhou and Pepine50, Reference Romero-Corral, Montori, Somers, Korinek, Thomas, Allison, Mookadam and Lopez-Jimenez51), it has been suggested that BMI can be left aside as a clinical and epidemiological measure of CVD risk for both primary and secondary prevention(Reference Franzosi52). The present study shows no difference in BMI, a surrogate measure of general obesity, and WC, a surrogate of central obesity, in relation to cardiovascular risk factors. The correlations between MSS or Framingham risk score and anthropometrics were fair for all indices and were similar in degree for BMI, WC and WHtR in our study. WHpR seemed a better index for discrimination of dyslipidaemia for the whole sample. The subjects with dyslipidaemia in the present study were different from other populations, as the proportion of subjects with low HDL-C without elevated TAG was high. Low HDL-C is thought to have a genetic basis in the Turkish population and studies are underway to attempt to resolve the issue(Reference Yu, Wyszynski and Waterworth53).

Incorporating either HC or height into WC may provide more information on cardiometabolic risk than WC alone. Studies from Europe and North America have shown that HC is inversely associated with diabetes and dyslipidaemia(Reference Snijder, Dekker, Visser, Bouter, Stehouwer, Kostense, Yudkin, Heine, Nijpels and Seidell49, Reference Seidell, Perusse, Despres and Bouchard54). HC has been shown to be positively associated with lower body fat and gluteal muscle mass and negatively associated with visceral abdominal adipose tissue, after controlling for age and WC(Reference Kuk, Janiszewski and Ross55), and is proposed as a screening measure that confers protection from CVD(Reference Lissner, Bjorkelund, Heitmann, Seidell and Bengtsson15). WC and HC may give information on both intra-abdominal and peripheral fat mass, factors that have opposite effects on cardiometabolic risk. In our sample of Turkish adults who had a high frequency of metabolic syndrome, both HC and WHpR were significantly correlated with various cardiometabolic risk factors, but in a smaller degree than other anthropometric indices. Our study shows that the use of height rather than hip adjustment for WC better indicates the clustering of cardiometabolic risk factors. The universal use of WC may cause overestimation of cardiometabolic risk in tall persons and underestimation of risk in short persons(Reference Hsieh and Muto14). It has been shown that height has an inverse association with CVD(Reference Schooling, Thomas, Leung, Ho, Janus and Lam56, Reference McCarron, Okasha, McEwen and Smith57). As seen in Table 1, Turkish men and women are shorter than their counterparts elsewhere in Europe. In contrast to other studies from Turkey(Reference Akpinar, Bashan, Bozdemir and Saatci28, Reference Onat, Sansoy and Uysal29), we believe it will be appropriate to use WHtR rather than WHpR to assess cardiometabolic risk in Turkish adults. Future prospective studies should investigate the best cut-off points for WHtR.

Limitations of the study

Associations of anthropometric measurements with diabetes, hypertension, dyslipidaemia and CVD are documented by several studies and the predictive ability of different indices varies among populations(Reference Folsom, Kushi, Anderson, Mink, Olson, Hong, Sellers, Lazovich and Prineas10Reference Lofgren, Herron, Zern, West, Patalay, Shachter, Koo and Fernandez19). It is of interest from a public health perspective to identify the best predictor for a specific population, and this goal can only be accomplished by long-term prospective studies. A major limitation of the present study is its cross-sectional design. Another limitation is that a non-representative sample of the Turkish population was evaluated and this could introduce a selection bias. Compared with persons sampled in the Turkish Ministry of Interior Affairs, Office of Population and Citizenship 2003 household survey(58), we sampled approximately 20 % fewer subjects in the age group of 20–29 years and 10 % more subjects in the age groups of both 40–49 and 50–59 years. The health-care system in Turkey is not free. As laboratory tests, a thorough physical examination and post-study dietary and medical advice were offered free to participants, subjects with the studied conditions could have self-selected themselves to participate. These limitations should be considered when generalizing our results to the wider Turkish population. On the other hand, a representative study(Reference Ozsahin, Gokcel, Sezgin, Akbaba, Guvener, Ozisik and Karademir59) from Turkey reported the mean BMI of Turkish women as 30·0 kg/m2 and of men as 28·5 kg/m2, similar to our results (Table 1). Another representative study reported the prevalence of obesity as 35 % overall, 21 % in men and 41 % in women(Reference Sanisoglu, Oktenli, Hasimi, Yokusoglu and Ugurlu60). Four per cent of our sample was on glucose-lowering medications. Some subjects may have been on PPAR-γ agonists, a new class of antidiabetics which may alter body fat distribution. However we suspect that the number of such subjects is small, because PPAR-γ agonists are expensive and were introduced on the Turkish market only one year before our study.

In conclusion, we found that WHtR was the best anthropometric index for predicting most cardiometabolic risk factors. BMI and WC ranked second for their predictive capability of cardiometabolic risk, followed by WHpR. HC was the worst predictor. All anthropometric measures of obesity were significantly associated with cardiovascular and metabolic risk factors.

Acknowledgements

Conflict of interest:The authors declare that they have no conflict of interest.

Funding support:All authors are funded by their institutions. The cost of the laboratory work was supported by the Gladstone Institute of Cardiovascular Disease.

Authors’ contributions:A.S.C. contributed to data acquisition and evaluation, and wrote the manuscript. T.P.B. contributed to data acquisition and evaluation. M.G. contributed to statistical analysis.

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Figure 0

Table 1 Clinical characteristics of the study sample: Turkish men and women aged 18 years and over, 2003

Figure 1

Table 2 Correlation coefficients between anthropometric indices in Turkish adults: men and women aged 18 years and over, 2003

Figure 2

Table 3 Correlation coefficients between anthropometric indices and cardiovascular risk factors in Turkish adults: men and women aged 18 years and over, 2003

Figure 3

Table 4 Area under the receiver-operating characteristic curves (AUC) for anthropometric indices