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Korean J Fam Med > Volume 39(4); 2018 > Article
Kim, Ha, Park, Lee, Ahn, Oh, Choi, Kweon, and Cho: Association of High-Risk Drinking with Metabolic Syndrome and Its Components in Elderly Korean Men: The Korean National Health and Nutrition Examination Survey 2010–2012
See commentary "High-Risk Drinking in the Elderly" in Volume 39 on page 209.

Abstract

Background

Previous studies have examined the association between alcohol consumption and metabolic syndrome (MetS) in adults, but studies in the elderly are lacking. We examined the relationship between high-risk alcohol consumption and MetS in elderly Korean men using the Alcohol Use Disorders Identification Test (AUDIT) questionnaire from the 2010–2012 Korean National Health and Nutrition Examination Survey.

Methods

Among 25,534 subjects, 2,807 were men >60 years of age; after exclusions, we included 2,088 men in the final analysis. We categorized the study participants into three groups according to AUDIT score: low risk (0–7), intermediate risk (8–14), and high risk (≥15 points).

Results

Among the study population, 17.0% of the men were high-risk drinkers, who had the highest mean waist circumference, systolic and diastolic blood pressure (BP), fasting plasma glucose (FPG), and triglyceride (TG) levels. The overall prevalence of MetS was 41.9% in the elderly men, and it was significantly higher in the group with high (48.3%) versus low (31.9%) AUDIT scores. The prevalence of MetS components (elevated BP, high FPG, high TG, and low high-density lipoprotein cholesterol) was associated with a high AUDIT score. The odds ratios (95%confidence interval) of the high-risk group for MetS, elevated BP, and high TG were 1.40 (1.03–1.89), 1.82 (1.28– 2.60), and 1.77 (1.30–2.41) after adjustment for confounding variables.

Conclusion

AUDIT score was correlated with most MetS components in elderly Korean men.

INTRODUCTION

Metabolic syndrome (MetS) is a cluster of metabolic abnormalities including abdominal obesity, elevated blood pressure (BP), dyslipidemia, and high fasting blood glucose [1]. MetS is related to type 2 diabetes mellitus, cardiovascular disease, cerebrovascular disease, and certain cancers [2-5]. It is also associated with increased all-cause mortality as well as cardiovascular mortality [6]. With rapid socioeconomic growth and Westernized lifestyle habits, the prevalence of MetS is on the rise, and this increase threatens public health [7].
Korea is rapidly becoming an aging society [8,9], and it is expected that by 2030, the elderly population will have increased by 24.3% [9]. Because the prevalence of MetS is greater in older people, its risk is higher among the elderly than in the general population [10]. Several previous studies indicated that MetS increases the risk of all-cause mortality in the elderly [11,12]. Thus, preventing and managing MetS in the elderly are important from a public health perspective.
MetS is caused by both genetic and environmental factors (daily calorie intake, physical activity, household income, smoking, and alcohol consumption) [13-15]. Because environmental factors can be controlled, appropriately managing them can contribute to managing MetS.
Hazardous drinking has been reported as an environmental cause of MetS [16,17], and the Alcohol Use Disorders Identification Test (AUDIT) is widely used to screen for hazardous drinking [18]. This questionnaire assesses drinking quantity and patterns, and it can be used to identify high-risk drinkers who have related social or personal health problems. Previous studies have shown an association between alcohol consumption and MetS in adults [19], but there is a lack of research on the relationship between high-risk alcohol consumption and MetS and its components in the elderly. Therefore, here we examined this relationship in elderly men using their AUDIT questionnaire responses from the 2010–2012 (fifth) Korean National Health and Nutrition Examination Survey (KNHANES).

METHODS

1. Study Population

We obtained the data used in this cross-sectional study from the KNHANES conducted in 2010–2012 by the Korea Centers for Disease Control and Prevention. The sampling units were households selected through stratified multistage probability sampling based on geographic region, sex, and age based on the registries. The study participants, civilian non-institutionalized South Koreans >1 year of age, were asked to answer the questionnaire, which was composed of a health interview survey, health behavior survey, health examination survey, and nutrition survey. All participants provided written informed consent and were given the right to refuse to participate according to the National Health Enhancement Act. Because all KNHANES data are publicly available, this study did not require institutional review board approval.
A total of 25,534 participants were surveyed in the 2010–2012 KNHANES; of them, 2,807 were elderly men aged ≥60 years. We excluded men who had not fasted 8 hours prior to having their blood sampled (n=255) and those for whom data were missing (n=464); we ultimately included 2,088 participants in the final analysis.

2. Anthropometric and Laboratory Data

The participants self-reported sociodemographic factors such as age, sex, education, income, and residence on the questionnaires. Trained staff measured body weight and height to the nearest 0.1 kg and 0.1 cm, respectively, using standardized techniques and equipment, and we calculated body mass index by dividing weight by height squared (kg/m2). Trained staff also measured BP in the right arm using a standard sphygmomanometer twice at a 5-minute interval and then averaged the values. Blood samples were obtained after overnight fasting. Fasting plasma glucose (FPG), total cholesterol, triglyceride (TG), and high-density lipoprotein cholesterol (HDL-C) levels were measured in a central, certified laboratory. A questionnaire based on the 24-hour recall method was used to collect data on the food items participants consumed during the previous 24 hours. The daily intake of energy and nutrients was calculated using Can-Pro Nutrient Intake Assessment software (Korean Nutrition Society, Seoul, Korea).

3. Definition of Metabolic Syndrome, Alcohol Use Disorders Identification Test, and Lifestyle Factors

We used the definitions of MetS and its components proposed by the National Cholesterol Education Program Adult Treatment Panel III [20] and the Korean Society for the Study of Obesity [21]. Specifically, we defined it as showing three or more of the following symptoms: (1) abdominal obesity (waist circumference ≥90 cm in men or ≥85 cm in women); (2) elevated blood pressure (systolic/diastolic BP [SBP/DBP] ≥130/85 mm Hg or taking antihypertensive medication); (3) impaired FPG (≥100 mg/dL), diagnosis of diabetes mellitus, and/or taking insulin or a diabetes pill; (4) high plasma TG (≥150 mg/dL); and (5) low HDL-C (<40 mg/dL in men or <50 mg/dL in women).
The AUDIT questionnaire is used to identify high-risk drinkers, while AUDIT scores reflect the answers to 10 questions about recent alcohol use, alcohol dependence symptoms, and alcohol-related symptoms [22]: (1) drinking frequency; (2) usual drinking quantity; (3) frequency of high-risk drinking; (4) frequency of inability to stop drinking; (5) frequency of failure to do normally expected tasks; (6) frequency of needing a drink in the morning after a heavy drinking session; (7) frequency of feeling guilty after drinking; (8) frequency of inability to remember after drinking; (9) injury because of drinking; and (10) any suggestion by family members, friends, or doctors to cut down on drinking.
We categorized the study participants into three groups based on AUDIT score: 0–7, low risk; 8–14, intermediate risk; and ≥15, high risk. These cut-off points were based on previous studies that screened participants for harmful drinking patterns [18,22].
We used other questionnaires to gather data regarding health-related lifestyle factors during the relevant time period. We estimated physical activity using the Korean version of the International Physical Activity Questionnaire short form [23], which categorizes regular exercisers as performing ≥20 minutes of vigorous physical activity ≥3 days a week or ≥30 minutes of moderate physical activity ≥5 days a week. We also defined current smokers as individuals who had smoked cigarettes during the relevant survey period.

4. Statistical Analysis

We applied sampling weights to each participant’s data to ensure that the dataset represented the entire Korean population without biased estimates. We summarized participant characteristics based on their alcohol drinking patterns using weighted one-way analysis of variance for continuous variables and weighted chi-square tests for categorical variables. We also assessed the prevalence of MetS according to drinking patterns using the weighted chi-square test. We calculated the odds ratios (ORs) and 95% confidence intervals (CIs) for MetS using multiple logistic regression analyses after we adjusted for confounding variables according to drinking patterns. We conducted all analyses using IBM SPSS ver. 23.0 (IBM Corp., Armonk, NY, USA) and considered values of P<0.05 significant.

RESULTS

Table 1 shows the characteristics of the study population according to alcohol drinking pattern (AUDIT score); 17% of respondents were high-risk drinkers. The high-risk drinkers had the highest mean waist circumference, SBP, DBP, FPG, and TG.
Figure 1 shows the prevalence of MetS based on AUDIT score. The overall MetS prevalence was 41.9% in the elderly men and was significantly higher among the men with high rather than low AUDIT scores. By group, the prevalence in the low-, intermediate-, and high-risk drinking groups was 31.9%, 43.8%, and 48.3%, respectively.
Table 2 shows the prevalence of MetS components based on alcohol drinking pattern (AUDIT score). The prevalences of elevated BP, high FPG, high TG, and low HDL-C were associated with a high AUDIT score.
Table 3 presents the ORs and 95% CIs based on AUDIT score. We adjusted the multiple logistic regression models for age, daily calorie intake, exercise status, smoking status, monthly household income, residential area, and education level. Compared to men in the low-risk group, those in the high-risk group were at significantly higher risk of MetS and its components except for high FPG and low HDL-C. The ORs (95% CI) of the high-risk group for MetS, elevated BP, and a high TG were 1.40 (1.03–1.89), 1.82 (1.28–2.60), and 1.77 (1.30–2.41) after the adjustment for confounding variables.

DISCUSSION

Here we found that high-risk drinking was associated with a higher risk of MetS in elderly Korean men. Our findings are in agreement with the results of previous studies that showed that AUDIT score was related to MetS in adult populations, and our results indicate that this relationship applies even when confined to elderly individuals; we analyzed data from 2,088 elderly men and found that MetS and most of its components were significantly associated with AUDIT scores.
Korea is rapidly becoming an aging society, and MetS is more prevalent in the elderly [10]; therefore, a study of the relationship between high-risk alcohol and MetS in the elderly population was necessary. In this study, the prevalence of MetS in elderly Korean men was 41.9%, similar to the findings from previous studies and higher than the prevalence among the elderly in Europe and the United States [24,25]. As previously mentioned, MetS is strongly associated with type 2 diabetes mellitus, cardiovascular disease, cerebrovascular disease, certain cancers, and increased mortality; therefore, the management of MetS and its components is important among young and elderly adults. Here we showed that it is important to manage high-risk drinking, an adjustable factor in MetS management, in elderly populations.
MetS is related to lifestyle factors including dietary intake [15], exercise [14], and smoking [14]. It is also associated with socioeconomic status variables such as household income [13,14] and education level [13,14]. Thus, we included these lifestyle factors and socioeconomic status in the multiple logistic regression analyses to control for them.
The effects of high-risk drinking on metabolic abnormalities were addressed in previous studies. Heavy alcohol consumption is associated with abdominal obesity [26], type 2 diabetes [27], hypertension [28], and dyslipidemia [29]. Although there are previous studies on the relationship between alcohol consumption and MetS [16,17], our research contributes to our understanding of alcohol consumption related to MetS in the elderly. Shin et al. [30] reported that unhealthy drinking patterns were significantly associated with MetS in older adults, but although the participants in that study were >50 years old, they were confined to only one urban area in South Korea; for that reason, the study could not explore associations in the general Korean elderly population. Our study showed that this association between high-risk drinking and MetS applies specifically to the elderly, who have a high prevalence of MetS. In addition, because our study was based on KNHANES data, our findings are representative of the entire national population. Our study also has the advantage of predicting the prevalence of MetS in the elderly.
There are some limitations of this study that should be considered when interpreting its results. First, it was a cross-sectional study; as such, we could not draw conclusions about causality between alcohol consumption and MetS prevalence. Second, the study was confined to elderly Korean males; thus, our findings may be difficult to generalize to other ethnic groups and women. Third, we did not analyze data subdivided by age. However, to minimize this limitation, we included age as a confounding variable in the multiple logistic regression analysis. Fourth, we used self-reported information on alcohol consumption; thus, there might have been underestimation of alcohol consumption, including memory inaccuracies. Finally, the data we used did not include beverage types; thus, we could not tell the effects of beverage type on MetS. Nevertheless, to the best of our knowledge, this is the first national population-based study to show a link between alcohol consumption and MetS in the elderly.
In conclusion, AUDIT score related to MetS and most of its components in elderly Korean men. Managing MetS and its components in the elderly is important for national health policies and primary care, and high-risk drinking is an adjustable factor that is important for managing the condition. Further research is warranted to investigate the effect of alcohol on health in old age.

Notes

No potential conflict of interest relevant to this article was reported.

Figure. 1.
Prevalence of metabolic syndrome according to alcohol-drinking pattern (bars mean standard errors).
kjfm-17-0024f1.jpg
Table 1.
Characteristics of study participants based on alcohol drinking pattern (Alcohol Use Disorders Identification Test score)
Characteristic All Low risk (0–7) Intermediate risk (8–14) High risk (≥15) P-value
Unweighted no. of participants 2,088 1,258 474 356
Age (y) 68.24±0.2 69.2±0.2 67.3±0.3 66.5±0.3 <0.001
Body mass index (kg/m2) 23.6±0.1 23.4±0.1 23.9±0.2 23.8±0.2 0.013
Waist circumference (cm) 85.6±0.3 84.8±0.3 86.1±0.5 87.0±0.6 0.001
Systolic blood pressure (mm Hg) 128.7±0.5 127.5±0.6 129.1±1.2 132.1±1.4 0.007
Diastolic blood pressure (mm Hg) 76.8±0.3 75.7±0.4 77.8±0.6 78.7±0.7 <0.001
Fasting plasma glucose (mg/dL) 106.2±0.7 104.3±0.8 106.7±1.4 111.2±1.9 0.003
Total cholesterol (mg/dL) 182.6±0.9 183.2±1.0 181.5±2.0 182.0±2.2 0.696
Triglyceride (mg/dL) 142.8±2.6 130.9±2.8 158.2±6.8 160.4±6.3 <0.001
High-density lipoprotein cholesterol (mg/dL) 46.4±0.3 44.2±0.4 48.2±0.6 50.6±0.8 <0.001
Hypertension (%) 56.6 (1.3) 53.1 (1.7) 60.1 (3.0) 63.3 (3.0) 0.012
Diabetes (%) 21.3 (1.0) 20.1 (1.2) 22.3 (2.1) 23.7 (2.9) 0.423
Calorie intake (kcal/d) 2075±21 2004±26 2106±35 2261±50 <0.001
Regular exercise (%) 20.2 (1.2) 19.1 (1.5) 22.1 (2.3) 21.5 (2.5) 0.442
Current smoker (%) 28.8 (1.2) 24.5 (1.4) 32.9 (2.6) 37.0 (3.0) <0.001
Household income (US $/mo) 2799±175 2494±111 3144±226 3318±645 0.182
Residence in a rural area (%) 30.0 (2.5) 30.5 (2.7) 28.3 (3.3) 30.4 (3.8) 0.774
Education level (%) 0.149
 ≤6 y 41.9 (1.7) 41.9 (1.9) 41.0 (3.0) 42.9 (3.3)
 7–9 y 19.1 (1.3) 18.5 (1.5) 22.3 (2.6) 16.9 (2.4)
 10–12 y 25.6 (1.3) 24.1 (1.5) 26.3 (2.7) 29.1 (2.9)
 >13 y 13.4 (1.1) 15.4 (1.4) 10.3 (1.8) 11.0 (2.5)

Values are presented as mean±standard error or % (standard error). P-values were obtained using weighted one-way analysis of variance for continuous variables and weighted chi-square tests for categorical variables. US $ 1=1,000 Korean won.

Table 2.
Prevalence of metabolic syndrome and its components based on alcohol drinking pattern (Alcohol Use Disorders Identification Test score)
Variable All Low risk (0–7) Intermediate risk (8–14) High risk (≥15) P-value
Metabolic syndrome (%) 41.9 (1.4) 39.1 (1.8) 43.8 (2.8) 48.3 (3.2) 0.026
Abdominal obesity (%) 31.0 (1.3) 28.5 (1.6) 33.5 (2.7) 35.5 (3.3) 0.070
Elevated blood pressure (%) 67.6 (1.2) 64.1 (1.7) 70.2 (2.9) 75.0 (2.6) 0.006
High fasting plasma glucose (%) 50.6 (1.3) 47.8 (1.7) 52.7 (2.8) 56.6 (3.1) 0.030
High triglyceride (%) 38.8 (1.4) 33.6 (1.7) 44.0 (2.9) 48.5 (3.1) <0.001
Low high-density lipoprotein cholesterol (%) 39.7 (1.3) 46.1 (1.8) 34.3 (2.4) 26.8 (2.7) <0.001

Values are presented as % (standard error). P-values were obtained using a weighted chi-square test.

Table 3.
Multivariate-adjusted odds ratios and 95% confidence intervals for metabolic syndrome and its components based on alcohol drinking pattern (Alcohol Use Disorders Identification Test score)
Variable Low risk (0–7) Intermediate risk (8–14) High risk (≥15)
MetS 1 1.23 (0.94–1.61) 1.40 (1.03–1.89)
Abdominal obesity 1 1.37 (1.03–1.83) 1.41 (1.02–2.00)
Elevated BP 1 1.27 (0.91–1.78) 1.82 (1.28–2.60)
High FPG 1 1.12 (0.86–1.45) 1.29 (0.97–1.73)
High TG 1 1.54 (1.17–2.03) 1.77 (1.30–2.41)
Low HDL-C 1 0.64 (0.49–0.83) 0.37 (0.27–0.51)

Values are presented as odds ratio (95% confidence interval). Odds ratios for MetS, abdominal obesity, elevated BP, high FPG, high TG, and low HDL-C were determined using multivariate logistic regression analysis after the adjustment for age, daily calorie intake, exercise status, smoking status, monthly household income, residential area, and education level.

Mets, metabolic syndrome; BP, blood pressure; FPG, fasting plasma glucose; TG, triglyceride; HDL-C, high-density lipoprotein cholesterol.

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