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Erschienen in: BMC Public Health 1/2015

Open Access 01.12.2015 | Research article

Combined effect of body mass index and body size perception on metabolic syndrome in South Korea: results of the fifth Korea National Health and Nutrition Examination Surveys (2010-2012)

verfasst von: Sook Hee Yoon, Kyu-Tae Han, Sun Jung Kim, Tae Yong Sohn, Byungyool Jeon, Woorim Kim, Eun-Cheol Park

Erschienen in: BMC Public Health | Ausgabe 1/2015

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Abstract

Background

Body mass index (BMI) has been used as an indirect predictor for the risk of metabolic syndrome. However, there are challenges in evaluating the risk of metabolic syndrome using BMI in certain parts of the world. Therefore, it is worth exploring additional factors that could supplement BMI to predict the risk of metabolic syndrome. In this study, we assessed the combined effect of BMI and perception for predicting metabolic syndrome.

Methods

We used the fifth Korea National Health and Nutrition Examination Surveys (KNHANES V, 2010–12, N = 16,537) in this study. Multivariable logistic regression analysis was performed to examine the association while controlling for potential confounding variables. We also performed an analysis for the combined effect of BMI and perception of body size, and subgroup analysis by age group or moderate physical activity.

Results

Data from 16,537 participants were analyzed in this study (males: 6,978, females: 9,559). Among them, metabolic syndrome was diagnosed in 1,252 (17.9 %) males and 2,445 (25.6 %) females, respectively. The combination of BMI and body size perception had a positive relation with the presence of metabolic syndrome. People who perceived themselves to be overweight for their body size had a higher risk for metabolic syndrome even if they have the same BMI.

Conclusion

Our findings suggest that the combination of body size perception and BMI is useful in predicting the risk of metabolic syndrome. The use of complementary predictors could reduce the risk for inaccurate prediction of metabolic syndrome.
Hinweise
Sook Hee Yoon and Kyu-Tae Han contributed equally to this work.

Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

SHY and KTH led the design and conception of the study, performed the data analysis, and wrote the manuscript. SJK, TYS, BJ, and ECP participated in the study design and provided intellectual input for the development of the manuscript. WRK provided re-editing for our manuscript to improve quality of scientific writing. ECP helped draft this manuscript. All authors read and approved the final manuscript.
Abkürzungen
OECD
Organization for Economic Co-operation and Development
HDL
High-density lipoprotein
BMI
Body mass index
KNHANES
Korea National Health and Nutrition Examination Surveys
KCDC
Korea Centers for Disease Control and Prevention
IDF
International Diabetes Federation
OR
Odds ratio
SD
Standard deviation

Background

South Korea has achieved rapid socioeconomic development since the late 20th century. This fast-paced growth has led to changes in South Koreans’ daily lives, affecting lifestyle and food consumption, and contributing to improved overall health status as South Korea becomes an aging society [1, 2]. However, there has been a concomitant increase in new health problems in South Korea, such as higher rates of chronic disease. According to Statistics Korea, cardiovascular diseases were the fifth leading cause of death in South Korea (50.2 deaths per 100,000 people in 2013) [3].
In the 2013 Organization for Economic Co-operation and Development (OECD) Health at Glance report, South Korea compares poorly with other OECD countries [4]. This problem is expected to be exacerbated by an aging population. To solve those problems, many health care professionals have studied chronic diseases and identified metabolic syndrome as a major cause [5, 6]. Metabolic syndrome has rapidly increased in South Korea over the past few decades (1998 year: 24.9 %, 2007 year: 31.3 %) [7]. Problems related with metabolic syndrome are expected to continue to increase. Thus, preventing metabolic syndrome is important for managing chronic diseases.
Metabolic syndrome is generally diagnosed by five indicators: waist circumference, triglyceride level, high-density lipoprotein (HDL) cholesterol level, blood pressure, and fasting glucose level. If three indicators (including waist circumference) are met, an individual is diagnosed with metabolic syndrome [8]. Many previous studies identified obesity as the major risk factor of metabolic syndrome. Thus, body mass index (BMI) has been widely used as an indirect predictor for evaluating the risk of metabolic syndrome [9, 10]. However, the use of BMI to predict metabolic syndrome is not necessarily applicable in every country; this simple metric does not consider important factors such as racial/ethnic differences and lifestyle factors. Even in people with the same BMI, the risk of metabolic syndrome may differ, depending on whether they smoke or consume alcohol [1113]. Therefore, it is worth exploring additional predictors that could supplement BMI to assess the risk of metabolic syndrome; here, we focus on body size perception.
Although many previous studies have assessed the relationship between body size perception and obesity, few have also investigated the incidence of metabolic syndrome in South Korea [14, 15]. Perception of body size is a factor that affects peoples’ lifestyle, including food consumption. Moreover, the risk of metabolic syndrome can be changed by altering one’s lifestyle. In this study, we analyzed the relationship between the incidence of metabolic syndrome and BMI or body size perception, as well as the combined effect of BMI and the body size perception on metabolic syndrome.

Methods

Study population

This study used data from the fifth Korea National Health and Nutrition Examination Surveys (KNHANES V, 2010–12). KNHANES are cross-sectional surveys that have been conducted annually since 1998 by the Korea Centers for Disease Control and Prevention (KCDC) to assess the health and nutritional status of the Korean population. A stratified multistage cluster-sampling design was used to obtain a nationally representative sample. This survey is composed of three parts: Health Interview Survey, Health Examination, and Nutrition Survey. We used data from the Health Interview Survey, Health Examination, and Nutrition Survey. The overall response rates were 81.9 % in 2010, 80.4 % in 2011, and 80.0 % in 2012. A total of 25,967 individuals (8,958 in 2010, 8,491 in 2011, and 8,518 in 2012) completed the survey. Any respondents who did not provide BMI, perceptions of body size, five indicators for the diagnosis of metabolic syndrome, or were under the age of 19 were excluded from the study. We ultimately included 14,773 eligible participants in this study. The KNHANES was openly available in https://​knhanes.​cdc.​go.​kr/​knhanes/​eng/​index.​do after submitting e-mail address and registering short-form information. These data was approved by the KCDC Institutional Review Board, and all participants provided written informed consent (2010-02CON-21-C, 2011-02CON-06-C, 2012-01-EXP-01-2C).

Variables

The outcome variable in this study was the incidence of metabolic syndrome, which was defined by the International Diabetes Federation (IDF) criteria. It was diagnosed if two of the five indicators (including waist circumference) met the IDF criteria for waist circumference, triglyceride level, HDL cholesterol level, blood pressure, and fasting glucose level.
IDF criteria (metabolic syndrome diagnosed if two or more indicators were present)
1.
Waist circumference (male: ≥90 cm and female: ≥80 cm for Asian subjects)
 
2.
Triglycerides level (≥150 mg/dl)
 
3.
HDL cholesterol level (male: <40 mg/dl, female: <50 mg/dl)
 
4.
Blood pressure (systolic: ≥130 mmHg, diastolic: ≥85 mmHg, or treatment of diagnosed hypertension)
 
5.
Fasting glucose level (≥100 mg/dl or type 2 diabetes)
 
The independent variables of main interest in relation to metabolic syndrome were BMI and body size perception. BMI was calculated as body weight (kg) divided into the squared height (m2). BMI was classified into three groups as follows: ≤22.9, 23.0–24.9, or ≥25. Perception of body size was defined as the answer to the question: “How do you perceive your body size?” The response to this question was classified into: underweight, normal, or overweight.
Other independent variables considered in analysis as potential confounding variables were age, sex, income, educational level, economic activity, marital status, sleep duration, smoking status, alcohol consumption, stress awareness, moderate physical activity, menopause (only female), total energy intake and survey year. Income status was classified as “low”, “mid-low”, “mid-high”, or “high”. Economic activity was defined as “yes” or “no”. Stress awareness was classified as “high”, “moderate”, or “low”. Moderate physical activity was defined as whether respondents performed moderate physical activity for 30 min per session more than 5 times per week. Total energy intake was calculated based on respondent`s self-reported for their usual food consumption.

Statistical analysis

We first examined the distribution of each categorical variable by frequency and percentages and performed χ2 tests to identify correlation with combination of BMI and body size perception by sex. Next, we performed analysis of variance (ANOVA) for continuous variables as total energy intake to identify correlation with combination of BMI and body size perception and to compare average and standard deviation of variables. In addition, these analyses were also performed to examine differences in each variable according to incidence of metabolic syndrome by sex. Multivariable logistic regression analysis was used to examine the association between BMI or body size perception and metabolic syndrome while controlling for potential confounding variables such as age, sex, income, educational level, economic activity, marital status, sleep duration, smoking status, alcohol consumption, stress awareness, moderate physical activity, menopause (only female), total energy intake, and survey year. We also included menopause status for female respondents. An additional analysis was carried out for the combined effect of BMI and body size perception, as was subgroup analysis by either age group (< vs. ≥65 years) or physical activity. Sampling weights assigned to each participant were applied in the analyses to generalize the sampled data. C-statistics were calculated to examine the predictive values for the logistics model. These values range between 0 (no predictive value) and 1, (perfect predictive value). All statistical analyses were performed using SAS statistical software (Cary, NC) version 9.2.

Results

Data from 14,773 participants were analyzed in this study (males: 5,897, females: 8,876). Tables 1 and 2 shows the association between combination of BMI and body size perception and other covariates by sex. Among them, people who rightly perceived their body size were as follows: males = BMI, ≤22.9, 52.6 %; 23.0–24.9, 64.7 %; ≥25, 78.1 %, and females = BMI, ≤22.9, 26.2 %; 23.0–24.9, 38.0 %; ≥25, 82.5 %. There were statistically significant correlations with combination of BMI and body size perception in both sex (P < .0001). By the results of association between combination of BMI and body size perception and covariates, most of covariates had statistically significant correlations with variables of interest, except to moderate physical activity and survey year in males; moderate physical activity and menopause in females.
Table 1
Association between combination of BMI and perception of body size and covariates in male
 
Males (n = 5,897)
BMI
≤22.9 (n = 2,340)
23.0–24.9 (n = 1,520)
≥25 (n = 2,037)
P-value
Perception of body size
Underweight
(52.6 %)
Normal (44.0 %)
Overweight (3.3 %)
Underweight (5.3 %)
Normal (64.7 %)
Overweight (30.0 %)
Underweight (1.1 %)
Normal (20.9 %)
Overweight (78.1 %)
Variables
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
Age (years)
                   
 19 ~ 29
119
26.6
91
20.4
14
3.1
1
0.2
51
11.4
36
8.1
0
0.0
9
2.0
126
28.2
<.0001
 30 ~ 39
186
19.9
144
15.4
13
1.4
5
0.5
130
13.9
83
8.9
1
0.1
37
4.0
336
35.9
 
 40 ~ 49
178
17.3
136
13.2
15
1.5
10
1.0
169
16.4
79
7.7
1
0.1
72
7.0
368
35.8
 
 50 ~ 59
211
18.1
171
14.7
8
0.7
13
1.1
239
20.5
123
10.5
2
0.2
92
7.9
307
26.3
 
 60 ~ 69
247
20.4
215
17.8
13
1.1
23
1.9
216
17.9
87
7.2
10
0.8
110
9.1
289
23.9
 
 ≥70
291
26.2
273
24.6
15
1.4
28
2.5
179
16.1
48
4.3
8
0.7
105
9.5
164
14.8
 
Income
 Low
306
27.0
235
20.7
22
1.9
31
2.7
181
15.9
57
5.0
6
0.5
106
9.3
191
16.8
<.0001
 Mid-low
364
23.5
273
17.6
20
1.3
14
0.9
262
16.9
90
5.8
7
0.5
117
7.6
400
25.9
 
 Mid-high
295
18.3
283
17.6
18
1.1
21
1.3
276
17.2
135
8.4
6
0.4
98
6.1
477
29.6
 
 High
267
16.6
239
14.9
18
1.1
14
0.9
265
16.5
174
10.8
3
0.2
104
6.5
522
32.5
 
Educational level
 Below elementary school
297
24.9
262
22.0
20
1.7
34
2.9
205
17.2
59
5.0
8
0.7
125
10.5
181
15.2
<.0001
 Middle school graduated
158
20.8
116
15.2
5
0.7
16
2.1
141
18.5
55
7.2
4
0.5
78
10.2
188
24.7
 
 High school graduated
426
21.2
352
17.6
23
1.1
14
0.7
331
16.5
162
8.1
6
0.3
128
6.4
563
28.1
 
 Above University graduated
351
18.1
300
15.5
30
1.5
16
0.8
307
15.8
180
9.3
4
0.2
94
4.8
658
33.9
 
Economic activity
 Yes
870
20.0
709
16.3
49
1.1
45
1.0
716
16.5
356
8.2
13
0.3
314
7.2
1,273
29.3
<.0001
 No
362
23.3
321
20.7
29
1.9
35
2.3
268
17.3
100
6.4
9
0.6
111
7.2
317
20.4
 
Marital status
 Married
1,012
20.2
840
16.8
62
1.2
70
1.4
861
17.2
391
7.8
21
0.4
383
7.7
1,361
27.2
<.0001
 Separated/Bereavement/Divorced
64
20.9
64
20.9
3
1.0
8
2.6
57
18.6
18
5.9
1
0.3
27
8.8
64
20.9
 
 Single
156
26.4
126
21.4
13
2.2
2
0.3
66
11.2
47
8.0
0
0.0
15
2.5
165
28.0
 
Sleep duration
 Less than 6 h
497
20.5
408
16.8
35
1.4
36
1.5
401
16.5
206
8.5
14
0.6
167
6.9
660
27.2
0.0025
 7–8 h
644
21.0
520
17.0
36
1.2
39
1.3
517
16.9
222
7.2
6
0.2
230
7.5
852
27.8
 
 More than 9 h
91
22.4
102
25.1
7
1.7
5
1.2
66
16.2
28
6.9
2
0.5
28
6.9
78
19.2
 
Smoking status
 Non-smoker/Ex-smoker
704
19.2
648
17.6
49
1.3
56
1.5
635
17.3
273
7.4
17
0.5
300
8.2
992
27.0
<.0001
 Smoker
528
23.8
382
17.2
29
1.3
24
1.1
349
15.7
183
8.2
5
0.2
125
5.6
598
26.9
 
Alcohol consumption
 Never
246
23.1
219
20.5
21
2.0
26
2.4
181
17.0
59
5.5
9
0.8
92
8.6
213
20.0
<.0001
 Less than 1 time per month
259
23.4
197
17.8
10
0.9
13
1.2
197
17.8
81
7.3
4
0.4
63
5.7
284
25.6
 
 Less than 3 times per week
530
18.5
460
16.1
39
1.4
32
1.1
456
15.9
254
8.9
8
0.3
187
6.5
895
31.3
 
 More than 4 times per week
197
22.9
154
17.9
8
0.9
9
1.0
150
17.4
62
7.2
1
0.1
83
9.6
198
23.0
 
Stress awareness
 High
298
23.4
179
14.1
20
1.6
20
1.6
185
14.5
118
9.3
0
0.0
70
5.5
384
30.1
<.0001
 Moderate
724
20.8
608
17.4
45
1.3
41
1.2
580
16.6
272
7.8
15
0.4
250
7.2
950
27.3
 
 Low
210
18.5
243
21.4
13
1.1
19
1.7
219
19.2
66
5.8
7
0.6
105
9.2
256
22.5
 
Moderate physical activity
 No
1,115
20.8
924
17.3
75
1.4
70
1.3
889
16.6
413
7.7
21
0.4
383
7.2
1,460
27.3
0.4056
 Yes
117
21.4
106
19.4
3
0.5
10
1.8
95
17.4
43
7.9
1
0.2
42
7.7
130
23.8
 
Survey year
 2010
396
21.1
313
16.6
32
1.7
28
1.5
311
16.5
145
7.7
4
0.2
148
7.9
504
26.8
0.5417
 2011
456
21.4
374
17.6
25
1.2
25
1.2
341
16.0
166
7.8
8
0.4
136
6.4
595
28.0
 
 2012
380
20.1
343
18.1
21
1.1
27
1.4
332
17.6
145
7.7
10
0.5
141
7.5
491
26.0
 
Total energy intake
2,312.9
±906.0
2,252.5
±903.6
2,269.2
±1,033.1
2,073.1
±894.1
2,362.6
±895.1
2,321.0
±924.7
1,980.4
±713.5
2,360.0
±1,113.0
2,461.1
±963.6
<.0001
Total
1,232
20.9
1,030
17.5
78
1.3
80
1.4
984
16.7
456
7.7
22
0.4
425
7.2
1,590
27.0
 
BMI body mass index
Table 2
Association between combination of BMI and perception of body size and covariates in female
 
Females (n = 8,876)
BMI
≤22.9 (n = 4,219)
23.0–24.9 (n = 1,956)
≥25 (n = 2,701)
P-value
Perception of body size
Underweight (26.2 %)
Normal (57.6 %)
Overweight (16.3 %)
Underweight (5.7 %)
Normal (38.0 %)
Overweight (56.3 %)
Underweight (2.6 %)
Normal (14.9 %)
Overweight (82.5 %)
Variables
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
Age (years)
                   
 19 ~ 29
135
18.1
293
39.3
116
15.5
0
0.0
15
2.0
67
9.0
0
0.0
1
0.1
119
16.0
<.0001
 30 ~ 39
183
10.7
659
38.5
265
15.5
0
0.0
46
2.7
231
13.5
0
0.0
12
0.7
314
18.4
 
 40 ~ 49
140
8.7
515
31.9
149
9.2
2
0.1
75
4.6
286
17.7
0
0.0
18
1.1
430
26.6
 
 50 ~ 59
163
9.1
446
24.9
104
5.8
6
0.3
153
8.5
294
16.4
6
0.3
52
2.9
569
31.7
 
 60 ~ 69
181
11.8
270
17.6
31
2.0
26
1.7
227
14.8
156
10.2
20
1.3
126
8.2
494
32.3
 
 ≥70
302
20.4
246
16.6
21
1.4
78
5.3
227
15.3
67
4.5
44
3.0
194
13.1
302
20.4
 
Income
 Low
329
17.2
364
19.0
57
3.0
70
3.7
240
12.5
128
6.7
43
2.2
195
10.2
487
25.5
<.0001
 Mid-low
252
11.0
587
25.7
164
7.2
19
0.8
202
8.8
297
13.0
12
0.5
115
5.0
640
28.0
 
 Mid-high
232
9.9
746
31.8
236
10.1
11
0.5
148
6.3
287
12.2
9
0.4
58
2.5
618
26.4
 
 High
291
12.5
732
31.4
229
9.8
12
0.5
153
6.6
389
16.7
6
0.3
35
1.5
483
20.7
 
Educational level
 Below elementary school
455
15.4
492
16.7
65
2.2
103
3.5
417
14.1
229
7.8
63
2.1
314
10.6
811
27.5
<.0001
 Middle school graduated
94
9.9
205
21.6
38
4.0
5
0.5
109
11.5
131
13.8
5
0.5
44
4.6
316
33.4
 
 High school graduated
254
9.3
833
30.4
300
11.0
4
0.1
151
5.5
420
15.3
1
0.0
33
1.2
741
27.1
 
 Above University graduated
301
13.4
899
40.1
283
12.6
0
0.0
66
2.9
321
14.3
1
0.0
12
0.5
360
16.0
 
Economic activity
 Yes
493
12.0
1,166
28.3
318
7.7
41
1.0
320
7.8
562
13.6
16
0.4
154
3.7
1,048
25.4
<.0001
 No
611
12.8
1,263
26.5
368
7.7
71
1.5
423
8.9
539
11.3
54
1.1
249
5.2
1,180
24.8
 
Marital status
 Married
708
10.8
1,832
28.1
540
8.3
50
0.8
534
8.2
894
13.7
34
0.5
232
3.6
1,704
26.1
<.0001
 Separated/Bereavement/Divorced
266
16.1
319
19.3
44
2.7
62
3.7
198
12.0
136
8.2
36
2.2
170
10.3
425
25.7
 
 Single
130
18.8
278
40.2
102
14.7
0
0.0
11
1.6
71
10.3
0
0.0
1
0.1
99
14.3
 
Sleep duration
 Less than 6 h
469
12.5
933
24.9
220
5.9
59
1.6
358
9.6
451
12.0
39
1.0
220
5.9
999
26.7
<.0001
 7–8 h
530
12.0
1,311
29.6
398
9.0
37
0.8
328
7.4
592
13.4
23
0.5
149
3.4
1,061
24.0
 
 More than 9 h
105
15.0
185
26.5
68
9.7
16
2.3
57
8.2
58
8.3
8
1.1
34
4.9
168
24.0
 
Smoking status
 Non-smoker/Ex-smoker
1,043
12.3
2,312
27.3
642
7.6
109
1.3
726
8.6
1,051
12.4
69
0.8
394
4.7
2,126
25.1
0.0019
 Smoker
61
15.1
117
29.0
44
10.9
3
0.7
17
4.2
50
12.4
1
0.2
9
2.2
102
25.2
 
Alcohol consumption
 Never
526
15.1
843
24.2
164
4.7
67
1.9
346
9.9
365
10.5
50
1.4
235
6.8
885
25.4
<.0001
 Less than 1 time per month
367
11.3
923
28.3
287
8.8
27
0.8
252
7.7
448
13.7
15
0.5
107
3.3
833
25.6
 
 Less than 3 times per week
188
9.5
622
31.5
223
11.3
15
0.8
126
6.4
270
13.7
4
0.2
54
2.7
472
23.9
 
 More than 4 times per week
23
14.2
41
25.3
12
7.4
3
1.9
19
11.7
18
11.1
1
0.6
7
4.3
38
23.5
 
Stress awareness
 High
360
14.6
637
25.8
225
9.1
40
1.6
164
6.6
287
11.6
26
1.1
84
3.4
648
26.2
<.0001
 Moderate
558
11.0
1,474
29.1
398
7.9
41
0.8
425
8.4
682
13.5
24
0.5
197
3.9
1,263
25.0
 
 Low
186
13.8
318
23.7
63
4.7
31
2.3
154
11.5
132
9.8
20
1.5
122
9.1
317
23.6
 
Moderate physical activity
 No
1,027
12.6
2,253
27.6
635
7.8
102
1.3
679
8.3
1,012
12.4
61
0.7
369
4.5
2,013
24.7
0.0755
 Yes
77
10.6
176
24.3
51
7.0
10
1.4
64
8.8
89
12.3
9
1.2
34
4.7
215
29.7
 
Survey year
 2010
330
11.8
752
26.8
222
7.9
38
1.4
227
8.1
382
13.6
21
0.7
125
4.5
708
25.2
<.0001
 2011
416
13.3
863
27.5
238
7.6
39
1.2
257
8.2
360
11.5
24
0.8
148
4.7
792
25.2
 
 2012
358
12.2
814
27.7
226
7.7
35
1.2
259
8.8
359
12.2
25
0.9
130
4.4
728
24.8
 
Menopause
 Not yet
464
11.1
1,499
35.8
534
12.8
3
0.1
152
3.6
599
14.3
0
0.0
34
0.8
898
21.5
0.7918
 Yes
640
13.6
930
19.8
152
3.2
109
2.3
591
12.6
502
10.7
70
1.5
369
7.9
1,330
28.3
 
Total energy intake
1,683.0
±649.9
1,747.8
±656.5
1,724.0
±699.4
1,447.7
±608.8
1,629.2
±576.5
1,683.4
±654.6
1,412.0
±423.2
1,610.2
±643.0
1,694.6
±650.1
<.0001
Total
1,104
12.4
2,429
27.4
686
7.7
112
1.3
743
8.4
1,101
12.4
70
0.8
403
4.5
2,228
25.1
 
BMI body mass index
Table 3 shows the univariate associations between each variable and metabolic syndrome. Among them, metabolic syndrome was noted in 1,062 (18.0 %) males and 2,304 (26.0 %) females. In both males and females, higher BMI were more frequent in those with metabolic syndrome (males: ≤22.9, 1.5 %; 23.0–24.9, 11.1 %; ≥25, 42.1 % and females: ≤22.9, 5.3 %; 23.0–24.9, 28.5 %; ≥25, 56.4 %). By body size perception, people who responded overweight were more frequently determined to have metabolic syndrome regardless of sex (males: underweight, 2.0 %; normal, 9.9 %; overweight, 37.3 % and females: underweight, 12.7 %; normal, 18.7 %; overweight, 36.7 %). In addition, males who overestimated their body size than BMI were more frequent in those with metabolic syndrome, but females who underestimated their body size were more frequent in those with metabolic syndrome.
Table 3
Demographic characteristics by metabolic syndrome (frequency, %)
  
Metabolic syndrome (n = 14,773)
Variables
 
Males (n = 5,897)
Females (n = 8,876)
 
Yes
No
P-value
Yes
No
P-value
 
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
N/Mean
%/SD
BMI
           
 ≤22.9
 
36
1.5
2,304
98.5
<.0001
222
5.3
3,997
94.7
<.0001
 23.0–24.9
 
168
11.1
1,352
88.9
 
558
28.5
1,398
71.5
 
 ≥25
 
858
42.1
1,179
57.9
 
1,524
56.4
1,177
43.6
 
Perception of body size
 Underweight
 
27
2.0
1,307
98.0
<.0001
163
12.7
1,123
87.3
<.0001
 Normal
 
242
9.9
2,197
90.1
 
667
18.7
2,908
81.3
 
 Overweight
 
793
37.3
1,331
62.7
 
1,474
36.7
2,541
63.3
 
BMI
Perception of body size
          
 ≤22.9
 Underweight
11
0.9
1,221
99.1
<.0001
63
5.7
1,041
94.3
<.0001
 Normal
20
1.9
1,010
98.1
 
131
5.4
2,298
94.6
 
 Overweight
5
6.4
73
93.6
 
28
4.1
658
95.9
 
 23.0–24.9
 Underweight
10
12.5
70
87.5
 
53
47.3
59
52.7
 
 Normal
90
9.1
894
90.9
 
267
35.9
476
64.1
 
 Overweight
68
14.9
388
85.1
 
238
21.6
863
78.4
 
 ≥25
 Underweight
6
27.3
16
72.7
 
47
67.1
23
32.9
 
 Normal
132
31.1
293
68.9
 
269
66.7
134
33.3
 
 Overweight
720
45.3
870
54.7
 
1,208
54.2
1,020
45.8
 
Age (years)
           
 19 ~ 29
 
23
5.1
424
94.9
<.0001
26
3.5
720
96.5
<.0001
 30 ~ 39
 
126
13.5
809
86.5
 
113
6.6
1,597
93.4
 
 40 ~ 49
 
186
18.1
842
81.9
 
256
15.9
1,359
84.1
 
 50 ~ 59
 
229
19.6
937
80.4
 
486
27.1
1,307
72.9
 
 60 ~ 69
 
275
22.7
935
77.3
 
689
45.0
842
55.0
 
 ≥70
 
223
20.1
888
79.9
 
734
49.6
747
50.4
 
Income
 Low
 
211
18.6
924
81.4
0.7869
812
42.4
1,101
57.6
<.0001
 Mid-low
 
275
17.8
1,272
82.2
 
640
28.0
1,648
72.0
 
 Mid-high
 
279
17.3
1,330
82.7
 
471
20.1
1,874
79.9
 
 High
 
297
18.5
1,309
81.5
 
381
16.4
1,949
83.6
 
Educational level
 Below elementary school
 
212
17.8
979
82.2
<.0001
1,363
46.2
1,586
53.8
<.0001
 Middle school graduated
 
186
24.4
575
75.6
 
308
32.5
639
67.5
 
 High school graduated
 
337
16.8
1,668
83.2
 
457
16.7
2,280
83.3
 
 Above University graduated
 
327
16.9
1,613
83.1
 
176
7.8
2,067
92.2
 
Economic activity
 Yes
 
761
17.5
3,584
82.5
0.0980
905
22.0
3,213
78.0
<.0001
 No
 
301
19.4
1,251
80.6
 
1,399
29.4
3,359
70.6
 
Marital status
           
 Married
 
959
19.2
4,042
80.8
<.0001
1,544
23.7
4,984
76.3
<.0001
 Separated/Bereavement/Divorced
 
61
19.9
245
80.1
 
724
43.7
932
56.3
 
 Single
 
42
7.1
548
92.9
 
36
5.2
656
94.8
 
Sleep duration
 Less than 6 h
 
439
18.1
1,985
81.9
0.9858
1,133
30.2
2,615
69.8
<.0001
 7–8 h
 
550
17.9
2,516
82.1
 
973
22.0
3,456
78.0
 
 More than 9 h
 
73
17.9
334
82.1
 
198
28.3
501
71.7
 
Smoking status
 Non-smoker/Ex-smoker
 
683
18.6
2,991
81.4
0.1356
2,215
26.1
6,257
73.9
0.0653
 Smoker
 
379
17.0
1,844
83.0
 
89
22.0
315
78.0
 
Alcohol consumption
           
 Never
 
185
17.4
881
82.6
<.0001
1,177
33.8
2,304
66.2
<.0001
 Less than 1 time per month
 
154
13.9
954
86.1
 
721
22.1
2,538
77.9
 
 Less than 3 times per week
 
520
18.2
2,341
81.8
 
365
18.5
1,609
81.5
 
 More than 4 times per week
 
203
23.5
659
76.5
 
41
25.3
121
74.7
 
Stress awareness
 High
 
221
17.3
1,053
82.7
0.0139
622
25.2
1,849
74.8
<.0001
 Moderate
 
602
17.3
2,883
82.7
 
1,210
23.9
3,852
76.1
 
 Low
 
239
21.0
899
79.0
 
472
35.1
871
64.9
 
Moderate physical activity
 No
 
982
18.4
4,368
81.6
0.0306
2,102
25.8
6,049
74.2
0.2222
 Yes
 
80
14.6
467
85.4
 
202
27.9
523
72.1
 
Survey year
 2010
 
360
19.1
1,521
80.9
0.0240
737
26.3
2,068
73.7
0.1602
 2011
 
399
18.8
1,727
81.2
 
778
24.8
2,359
75.2
 
 2012
 
303
16.0
1,587
84.0
 
789
26.9
2,145
73.1
 
Menopause
 Not yet
 
-
-
-
-
-
417
10.0
3,766
90.0
<.0001
 Yes
 
-
-
-
-
 
1,887
40.2
2,806
59.8
 
Total energy intake
 
2,365.6
±970.4
2,346.0
±935.0
0.5391
1,619.0
±640.1
1,720.2
±651.7
<.0001
Total
 
1,062
18.0
4,835
82.0
 
2,304
26.0
6,572
74.0
 
BMI body mass index
The older age group had a higher rate of female metabolic syndrome. Notably, the distribution for metabolic syndrome had an inverse relationship with income in females (low, 42.4 %; mid-low, 28.0 %; mid-high, 20.1 %; high, 16.4 %). Similarly, subjects who were separated, widowed, or divorced were more likely to meet the criteria for metabolic syndrome compared to those with other marital statuses (males: married, 19.2 %; separated/widowed/divorced, 19.9 %; single, 7.1 % and females: married, 23.7 %; separated/widowed/divorced, 43.7 %; single, 5.2 %; Table 3).
Table 4 shows the results of logistic regression analysis for the association between BMI and metabolic syndrome adjusted for covariates by sex. In both males and females, BMI had a positive relationship with metabolic syndrome (males: ≤22.9 = ref, 23.0–24.9 odds ratio [OR]: 9.17, standard deviation [SD]: 5.81–14.50; ≥25 OR: 71.08, SD: 46.32–109.08; females: ≤22.9 = ref, 23.0–24.9 = OR: 6.79, SD: 5.57–8.28, ≥25 = OR: 27.75, SD: 22.71–33.91). Age also had a positive relationship with metabolic syndrome, whereas educational level only had an inverse relationship with metabolic syndrome in females. Both sexes who did not report economic activity had a higher risk for metabolic syndrome (males: yes = ref, no = OR: 1.50, SD = 1.10–2.05; females: no = OR: 1.27, SD = 1.08–1.48), as did smokers of males. Females who had experienced menopause had a higher risk for metabolic syndrome (not yet = ref, yes = OR: 1.46, SD = 1.09–1.94; Table 4).
Table 4
Results of multivariable logistic regression analysis for the relationship between BMI and metabolic syndrome
 
Metabolic syndrome
Variables
Males
Females
OR
SD
OR
SD
BMI
      
 ≤22.9
1.00
-
-
1.00
-
-
 23.0–24.9
9.17
5.81
14.50
6.79
5.57
8.28
 ≥25
71.08
46.32
109.08
27.75
22.71
33.91
Age (years)
      
 19 ~ 29
1.00
-
-
1.00
-
-
 30 ~ 39
2.21
1.17
4.17
2.16
1.18
3.96
 40 ~ 49
3.05
1.67
5.58
4.31
2.38
7.79
 50 ~ 59
4.20
2.19
8.04
5.02
2.58
9.77
 60 ~ 69
5.45
2.69
11.02
8.47
4.27
16.81
 ≥70
7.01
3.41
14.44
12.11
6.28
23.35
Income
 Low
1.00
-
-
1.00
-
-
 Mid-low
1.18
0.84
1.66
1.07
0.87
1.33
 Mid-high
1.12
0.80
1.58
0.98
0.77
1.23
 High
1.29
0.90
1.84
0.87
0.67
1.14
Educational level
 Below elementary school
1.00
-
-
1.00
-
-
 Middle school graduated
1.25
0.90
1.74
0.71
0.56
0.91
 High school graduated
0.98
0.72
1.33
0.59
0.46
0.76
 Above University graduated
1.03
0.73
1.43
0.51
0.37
0.72
Economic activity
 Yes
1.00
-
-
1.00
-
-
 No
1.50
1.10
2.05
1.27
1.08
1.48
Marital status
 Married
1.00
-
-
1.00
-
-
 Separated/Bereavement/Divorced
0.81
0.52
1.26
1.10
0.92
1.31
 Single
0.85
0.53
1.38
1.26
0.69
2.28
Sleep duration
 Less than 6 h
0.91
0.75
1.10
0.85
0.72
1.00
 7–8 h
1.00
-
-
1.00
-
-
 More than 9 h
0.85
0.55
1.32
1.14
0.87
1.51
Smoking status
 Non-smoker/Ex-smoker
1.00
-
-
1.00
-
-
 Smoker
1.31
1.04
1.64
1.37
0.92
2.06
Alcohol consumption
 Never
1.00
-
-
1.00
-
-
 Less than 1 time per month
1.03
0.73
1.46
0.96
0.80
1.16
 Less than 3 times per week
1.16
0.85
1.59
1.00
0.80
1.24
 More than 4 times per week
1.92
1.36
2.72
0.84
0.49
1.43
Stress awareness
 High
0.99
0.70
1.38
0.90
0.70
1.17
 Moderate
0.90
0.69
1.18
0.85
0.68
1.07
 Low
1.00
-
-
1.00
-
-
Moderate physical activity
 No
1.00
-
-
1.00
-
-
 Yes
1.29
0.89
1.87
1.09
0.84
1.41
Survey year
 2010
1.00
-
-
1.00
-
-
 2011
1.14
0.90
1.45
0.89
0.74
1.08
 2012
0.82
0.63
1.07
1.14
0.95
1.37
Menopause
 Not yet
-
-
-
1.00
-
-
 Yes
-
-
-
1.45
1.09
1.92
Total energy intake
1.00
0.99
1.01
1.01
0.99
1.02
C-statistics
0.855*
  
0.876*
  
BMI body mass index, OR odds ratio, SD, standard deviation
*P-value for likelihood ratio test <0.05
Table 5 shows the logistic regression analysis results for the association between combined effect of BMI/body size perception and metabolic syndrome adjusted for covariates by sex. The combination of BMI and body size perception had a positive relationship with metabolic syndrome. People who perceived themselves as overweight for their body size had a higher risk for metabolic syndrome, even if they had the same BMI as a person who did not consider themselves overweight. The results of other controlling variables had similar values and trends as the results listed in Table 4 (Table 5).
Table 5
Results of multivariable logistic regression analysis for the relationship between BMI/body size perception and metabolic syndrome
  
Metabolic syndrome
 
Variables
Males
Females
 
OR
SD
OR
SD
BMI
Perception of body size
      
 ≤22.9
 Underweight
0.41
0.19
0.92
0.53
0.35
0.79
 Normal
1.00
-
-
1.00
-
-
 Overweight
5.38
1.42
20.36
0.98
0.59
1.65
 23.0–24.9
 Underweight
3.23
1.32
7.91
5.79
3.18
10.54
 Normal
5.45
2.95
10.04
5.25
3.91
7.05
 Overweight
14.85
7.75
28.45
5.89
4.41
7.85
 ≥25
 Underweight
15.29
4.35
53.75
9.32
4.82
18.00
 Normal
25.63
13.87
47.35
18.89
12.92
27.63
 Overweight
78.80
44.44
139.72
24.50
19.20
31.26
Age (years)
 19 ~ 29
1.00
-
-
1.00
-
-
 30 ~ 39
2.36
1.24
4.51
2.17
1.18
3.97
 40 ~ 49
3.45
1.88
6.30
4.31
2.38
7.80
 50 ~ 59
4.97
2.60
9.50
5.03
2.58
9.81
 60 ~ 69
6.70
3.34
13.45
8.79
4.41
17.52
 ≥70
9.60
4.69
19.63
13.27
6.81
25.83
Income
 Low
1.00
-
-
1.00
-
-
 Mid-low
1.16
0.82
1.64
1.06
0.85
1.32
 Mid-high
1.09
0.77
1.54
0.95
0.76
1.21
 High
1.23
0.86
1.77
0.86
0.65
1.12
Educational level
 Below elementary school
1.00
-
-
1.00
-
-
 Middle school graduated
1.15
0.82
1.63
0.69
0.54
0.88
 High school graduated
0.86
0.62
1.18
0.57
0.44
0.73
 Above University graduated
0.84
0.60
1.19
0.49
0.35
0.69
Economic activity
 Yes
1.00
-
-
1.00
-
-
 No
1.46
1.07
2.00
1.26
1.08
1.48
Marital status
 Married
1.00
-
-
1.00
-
-
 Separated/Bereavement/Divorced
0.80
0.51
1.26
1.10
0.92
1.32
 Single
0.85
0.52
1.38
1.25
0.69
2.27
Sleep duration
 Less than 6 h
0.88
0.72
1.08
0.85
0.72
1.00
 7–8 h
1.00
-
-
1.00
-
-
 More than 9 h
0.83
0.52
1.30
1.16
0.87
1.53
Smoking status
 Non-smoker/Ex-smoker
1.00
-
-
1.00
-
-
 Smoker
1.31
1.05
1.65
1.37
0.91
2.06
Alcohol consumption
 Never
1.00
-
-
1.00
-
-
 Less than 1 time per month
1.01
0.71
1.43
0.95
0.79
1.14
 Less than 3 times per week
1.12
0.81
1.54
0.98
0.79
1.22
 More than 4 times per week
1.91
1.33
2.73
0.83
0.48
1.41
Stress awareness
 High
0.93
0.66
1.31
0.90
0.70
1.17
 Moderate
0.87
0.66
1.15
0.85
0.68
1.06
 Low
1.00
-
-
1.00
-
-
Moderate physical activity
 Yes
1.00
-
-
1.00
-
-
 No
1.25
0.87
1.80
1.09
0.84
1.42
Survey year
 2010
1.00
-
-
1.00
-
-
 2011
1.12
0.87
1.43
0.90
0.74
1.09
 2012
0.84
0.64
1.10
1.15
0.95
1.38
Menopause
 Not yet
-
-
-
1.00
-
-
 Yes
-
-
-
1.46
1.09
1.94
Total energy intake
1.00
0.99
1.01
1.01
0.99
1.02
C-statistics
0.865*
  
0.877*
  
BMI body mass index, OR odds ratio, SD standard deviation
*P-value for likelihood ratio test <0.05
We also performed subgroup analysis for the combined effect of BMI/body size perception by age group (< vs. ≥65 years) or moderate physical activity to identify possible differences in each group. In the subgroup analysis by age group, it revealed similar relationships of the combined effect of BMI and body size perception in these two groups as were observed in the overall analysis. However, there were some notable findings in non-elderly females. In the overweight group based on BMI, the risk for metabolic syndrome was inversely associated with body size perception (Table 6). In the results of subgroup analysis by moderate physical activity, overweight or obese people based on BMI who underestimated their body size had a higher trend regarding the risk of metabolic syndrome in the moderate physical activity of over 5 times per week group than the other group (data not shown). In the overall multivariable logistic regression, C-statistics were higher in the combination model of BMI and body size perception than when using only BMI models.
Table 6
Results of subgroup analysis for the relationship between combined effect of BMI/body size perception and metabolic syndrome by age group
  
Metabolic syndrome
Type of predictor for metabolic syndrome
Males
Females
Less than 64 years
More than 65 years
Less than 64 years
More than 65 years
OR
SD
OR
SD
OR
SD
OR
SD
BMI
Perception of body size
            
 ≤22.9
 -
1.00
-
-
1.00
-
-
1.00
-
-
1.00
-
-
 23.0–24.9
 -
9.13
4.87
17.12
10.74
6.00
19.21
9.13
6.46
12.88
5.32
4.04
7.02
 ≥25
 -
74.63
42.15
132.16
55.07
30.98
97.88
39.26
28.46
54.15
15.78
11.77
21.15
 ≤22.9
 Underweight
0.39
0.12
1.28
0.41
0.13
1.32
0.47
0.19
1.13
0.40
0.25
0.64
 Normal
1.00
-
-
1.00
-
-
1.00
-
-
1.00
-
-
 Overweight
5.29
1.04
26.88
2.46
0.43
14.13
1.15
0.60
2.20
1.25
0.47
3.38
 23.0-24.9
 Underweight
0.97
0.17
5.73
6.10
1.97
18.95
21.35
5.80
78.56
2.75
1.58
4.80
 Normal
4.81
1.95
11.89
6.97
3.36
14.46
7.02
4.37
11.27
3.54
2.36
5.31
 Overweight
15.32
6.06
38.74
12.20
4.77
31.22
7.96
5.13
12.37
4.44
2.59
7.60
 ≥25
 Underweight
23.41
3.74
146.52
7.82
1.38
44.43
10.18
2.27
45.72
6.52
3.14
13.53
 Normal
26.09
10.87
62.63
25.64
11.60
56.68
24.44
13.40
44.56
13.81
8.50
22.44
 Overweight
75.93
33.14
173.96
59.06
28.24
123.50
36.60
24.83
53.95
10.13
6.97
14.73
C-statistics
Only BMI Model
0.846*
  
0.856*
  
0.877*
  
0.784*
  
 
Combination Model
0.858*
  
0.864*
  
0.882*
  
0.791*
  
*P-value for likelihood ratio test <0.05

Discussion

Due to the rapidly aging population, it is expected that the prevalence of metabolic syndrome will continue to increase in South Korea [16]. It is therefore necessary to design effective strategies to prevent and manage this chronic condition. In recent years, BMI has become a widely used indicator of obesity and indirect predictor for metabolic syndrome. However, it had some limitations that were not overall considered to risk factors for metabolic syndrome [17, 18]. Thus, it is necessary to find complementary predictive factors; we focused on body size perception as a novel predictor for evaluating metabolic syndrome risk. Our results suggest that metabolic syndrome risk was positively related with BMI and were similar to previous studies that examined metabolic syndrome risk factors.
In addition, we observed a combined effect of body size perception and BMI on the risk of metabolic syndrome. Notably, the risk was clearer than that observed using BMI only, and was even observed in subjects with the same BMI but different body perceptions.
In predicting risk for chronic diseases as metabolic syndrome, using only BMI could make some misidentifications because it was calculated by just considering height and weight. If people had same BMI, the risk for metabolic syndrome could be different by major factors consisted of body constitution such as muscle mass and higher body fat [19]. Therefore, using combination of BMI and body size perception would be more helpful in predicting for risk. Based on our results, perception of body size as overweight had higher risk for metabolic syndrome. This is because that perception of body size as overweight could more reflect to risk for metabolic syndrome considering actual body image in same BMI. Perception of body size can help role of complementation of predicting for metabolic syndrome [20]. Therefore, it is suggested that people who perceive their body size as overweight are likely to be at risk of metabolic syndrome. In another point of view, people could respond as overweight for their body size due to their unhealthy behaviors such as unhealthy diet and insufficient physical activity for preventing chronic diseases even if people with same BMI and similar body constitution [21]. Therefore, perception of body size could be indirect indicators for reflecting life styles as well as actual body image.
The same phenomenon was observed when we performed a subgroup analysis by age group that excluded females who were overweight based on BMI and <65 years. This relationship was more positive in males, while the different results in females <65 years may be caused by younger females who did not exhibit health behaviors such as wrong diet and insufficient exercise due to their misperception for their body size despite being overweight or obesity based on BMI. However, in the case of elderly females, they had an effort to manage their health status due to their health concern by advanced age [22]. Based on the results of the subgroup analysis in the moderate physical activity group, people overweight or obese based on BMI tend to exhibit unhealthy behaviors by underestimating their body size and risks of gaining metabolic syndrome as they show moderate physical activity. They may be overconfident, believing in an improvement of their health status by sufficient physical activity, and could take more risky behaviors such as excessive eating. Therefore, providing correct information about preventing metabolic syndrome would be needed.
Although more detailed studies are needed, our findings suggest that inappropriate perception of their health status could be caused to unhealthy behaviors at risky population. This has been described previously; people who are borderline for chronic disease risk do not usually feel that their lives are at risk [23]. Conversely, high-risk populations were much more amenable to health behaviors to modify their risk. It is important to note that males tend to evaluate their own body status more favorably than females. Perception differences can induce people to make lifestyle changes (e.g., food or alcohol consumption, exercise, smoking status, etc.) [15, 24, 25].
In accordance with this, we found that South Korean subjects with the same BMI exhibited different behaviors based on their body size perception; therefore, predicting metabolic syndrome risk solely based on BMI did not take different behaviors into account [26, 27].
Thus, our findings suggest that the combination of body size perception and BMI could be more useful in predicting the risk of metabolic syndrome than BMI alone. The use of complementary predictors could improve prediction and prognostication.
This study has several strengths compared to previous investigations. First, we used nationally representative data, so our study results are representative and generalizable to South Korea citizens. Such data are especially helpful in establishing evidence-based health policies. To our knowledge, this is the first attempt to study the relationship between the combined effect of BMI/body size perception and metabolic syndrome in South Korea, despite numerous issues regarding the management of these health issues in the country. Therefore, our findings should be helpful in identifying ways to address these critical issues.
Our study also has some limitations. First, due to the cross-sectional nature of the KNHANES, it is not possible to identify causal relationships. Other issues must be considered to more accurately measure the relationship between the combined effect of BMI/body size perception and metabolic syndrome. Next, our findings included high OR values, not general OR values. Further studies are needed to confirm our findings, which show a combined effect for metabolic syndrome in relatively small study populations (after stratification). Nevertheless, the overall trends of our findings have serious implications for the management of metabolic syndrome. Third, body size perception was measured by the subjects’ answers to the question: “How do you perceive your body size?” The response could have been incorrectly perceived by researchers and is not a truly scientific measurement. Finally, our analysis did not include important details such as respondent food consumption. Thus, multiple variables that are not a major factor of metabolic syndrome were not considered in our findings.
Despite these limitations, our findings suggest that the combined effect of BMI and body size perception can be used to predict the presence of metabolic syndrome. Based on these findings, it is important for health policy makers to identify solutions for controlling metabolic syndrome. However, further studies of those issues are needed to establish an effective strategy.

Conclusion

The combined effects of body size perception and BMI affect the risk for metabolic syndrome in individuals with the same BMI. Our findings suggest that both variables should be used in predicting the risk of disease to reduce risk of inaccurate predictions.
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Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

SHY and KTH led the design and conception of the study, performed the data analysis, and wrote the manuscript. SJK, TYS, BJ, and ECP participated in the study design and provided intellectual input for the development of the manuscript. WRK provided re-editing for our manuscript to improve quality of scientific writing. ECP helped draft this manuscript. All authors read and approved the final manuscript.
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Metadaten
Titel
Combined effect of body mass index and body size perception on metabolic syndrome in South Korea: results of the fifth Korea National Health and Nutrition Examination Surveys (2010-2012)
verfasst von
Sook Hee Yoon
Kyu-Tae Han
Sun Jung Kim
Tae Yong Sohn
Byungyool Jeon
Woorim Kim
Eun-Cheol Park
Publikationsdatum
01.12.2015
Verlag
BioMed Central
Erschienen in
BMC Public Health / Ausgabe 1/2015
Elektronische ISSN: 1471-2458
DOI
https://doi.org/10.1186/s12889-015-1839-6

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