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BMC Endocrine Disorders logoLink to BMC Endocrine Disorders
. 2018 May 21;18:29. doi: 10.1186/s12902-018-0256-0

Association between thyroid hormones and the components of metabolic syndrome

Jieun Jang 1,2,#, Youngsook Kim 3,#, Jaeyong Shin 2,4, Sang Ah Lee 1,2, Young Choi 1,2, Eun-Cheol Park 2,4,
PMCID: PMC5963056  PMID: 29783969

Abstract

Background

Thyroid hormones are known to have direct and indirect effects on metabolism. Individuals with metabolic syndrome, a disease that is growing in incidence at a rapid rate, are at higher risk for cardiovascular disease, diabetes, and cancer. The aim of this study was to identify whether significant correlations exist between thyroid hormone levels and components of the metabolic syndrome in the general population of Korea.

Methods

The data were collected from the sixth Korea National Health and Nutrition Examination Surveys from 2013 to 2015. A total of 1423 participants were tested for thyroid function. The analysis of variance and multiple linear regression were performed to analyze the relationship between thyroid hormone level and components of the metabolic syndrome.

Results

A positive association between free thyroxine and fasting glucose level was observed in patients with high free thyroxine levels (≥1.70 ng/dL, β = 15.992, p = < 0.0001), when compared with patients with normal-middle free thyroxine levels. Moreover, a negative association was observed between free thyroxine and triglyceride levels in patients with normal-high free thyroxine levels (β = − 21.145, p = 0.0054) and those with high free thyroxine levels (β = − 49.713, p = 0.0404).

Conclusion

Free thyroxine shows a partially positive association with fasting glucose and a partially negative association with triglycerides in the Korean population. In patients with abnormal thyroid function, follow up tests for glucose levels and lipid profiling during treatment for thyroid dysfunction would be beneficial in terms of overlooking metabolic syndrome and to prevent related diseases.

Electronic supplementary material

The online version of this article (10.1186/s12902-018-0256-0) contains supplementary material, which is available to authorized users.

Keywords: Thyroid hormone, Metabolic syndrome, Free thyroxine, FT4

Background

Metabolic syndrome, a well-known cluster of cardiovascular risk factors, is a major public health concern worldwide [1, 2]. Metabolic syndrome increases the risk for cardiovascular disease, diabetes, and even certain types of cancer [3]. According to the National Cholesterol Education Program’s Adult Treatment Panel III definition, metabolic syndrome is the presence of abnormal values for at least three of the following criteria: waist circumference, serum triglycerides, high-density lipoprotein (HDL) cholesterol, blood pressure, and fasting glucose [3]. The prevalence of metabolic syndrome is increasing rapidly [4]. According to data from the National Health and Nutrition Examination Survey (NHANES) 2011–2012, about 34.7% of US adults were estimated to have metabolic syndrome [4]. Similar increasing trends have been observed in Europe and other countries [2, 5]. According to the National Cholesterol Education Program’s Adult Treatment Panel III criteria, and per the World Health Organization Asia-Pacific guidelines, the prevalence of metabolic syndrome was approximately 28.2% in the general population of Korea in 2012 [6]. The mortality rate due to cardiovascular disease has increased from 35.6 to 52.4 out of 100,000 persons over 2003–2014. Thus, more focus and effort is needed to reduce the prevalence of metabolic syndrome, while considering the rapidly increasing frequency of mortality due to related diseases [7].

Thyroid hormones have an important role in metabolism [8]. Abnormal levels of thyroid hormones alter metabolism, and some of these changes share common pathophysiologic processes with metabolic syndrome. Therefore, thyroid dysfunction can affect metabolic syndrome. Lambadiari et al. reported that thyroid hormones are significant determinants of glucose homeostasis [9], and affect fasting glucose levels by antagonizing insulin action [9]. For instance, hyperthyroidism leads to impaired insulin secretion, which suppresses hepatic glucose production and promotes glucose uptake in the muscle [9]. Similarly, Dimitriadis et al. showed that the increased glucose levels in hyperthyroidism could be explained by an increase in endogenous glucose production via of gluconeogenesis [10]. Studies have also demonstrated an association between thyroid hormones and glucose levels. Klein et al. reviewed several studies regarding the mechanism of action of thyroid hormones on the cardiovascular system [11]. They concluded that thyroid hormones have direct and indirect impacts on the cardiovascular system. Patients with thyroid disease, especially hyperthyroidism, often demonstrated signs and symptoms of cardiovascular changes [11]. Several other studies have shown that overt hypothyroidism induces an increase in blood pressure and plasma cholesterol levels [12]. However, most of the studies that assessed the relationships between abnormal thyroid hormone levels and metabolic syndrome have been conducted in Caucasian populations [2, 13]. Therefore, the aim of this study was to assess the relationships between thyroid hormone levels and metabolic syndrome components in a nationally representative sample of South Korean adults.

Methods

Study population

This study was conducted using data from the sixth Korea National Health and Nutrition Examination Surveys (KNHANES VI, 2013–2015), a nationwide cross-sectional survey conducted by the Korean Centers for Disease Control and Prevention (Seoul, Korea) to assess the health and nutritional status of the South Korean population. The institutional review board of the Korea Centers for Disease Control and Prevention (KCDC) approved the study (IRB: 2013-07CON-03-4C, 2013-12EXP-03-5C, 2015–01-02-6C). A nationally representative sample was obtained using a stratified multistage cluster sampling design. The survey consists of a health interview, nutrition survey, and health examination. Tests for thyroid disease and metabolic syndrome components (waist circumference, triglycerides, HDL cholesterol, blood pressure, and fasting glucose) were part of the health examination. The initial sample included 22,948 participants. The thyroid functions tests were carried out by subsampling 2400 subjects aged ≥10 years with respect to thyroid-stimulating hormone (TSH), free thyroxine (FT4), thyroid peroxidase antibody (TPOab), and urinary iodine in the sixth Korea National Health and Nutrition Examination Surveys (KNHANES VI, 2013–2015). Participants with missing thyroid function data were excluded (n = 20,591). Patients who received treatment that could interfere with the test results for thyroid hormone levels and various components of metabolic syndrome, such as radioactive iodine treatment, antithyroid drugs, thyroid hormones, other medication for thyroid disease, dyslipidemia medications, blood pressure regulators, insulin, or glucose regulators were also excluded (n = 429). The data for a total of 1423 participants without any missing variables were finally included in the analysis.

Dependent variables and variables of interest

The dependent variables were the components of metabolic syndrome. Waist circumference was measured at the narrowest spot between the lowest rib and the highest lateral border of the right iliac crest. Systolic blood pressure was measured after the participants relaxed for 5 min while sitting. Triplicate measurements of systolic blood pressure were obtained. The mean of the second and third measured value was used in the analysis. Triglycerides, HDL cholesterol, and fasting glucose levels were measured using the same Hitachi Automatic Analyzer 7600–210 (Hitachi, Tokyo, Japan).

The variable of interest in this study was thyroid hormone levels. Serum FT4, serum TSH, and TPOab levels were measured using an electro-chemiluminescence immunoassay (Cobas: Roche Diagnostics, Penzberg, Germany). Samples were sent to the central certified laboratory and analyzed. The laboratory reference ranges for FT4, TSH, and TPOab were 0.80–1.70 ng/dL, 0.50–5.0 uIU/mL, and < 34 IU/mL [1416]. FT4 levels were divided into five categories: (1) low; under normal (< 0.80 ng/dL); (2) normal-low (< 1.17 ng/dL); (3) normal-middle (< 1.31 ng/dL); (4) normal-high (< 1.70 ng/dL); and (5) high; upper normal (≥1.70 ng/dL). TSH levels were divided as follows: low; under normal (< 0.50 uIU/mL); normal-low (< 1.80 uIU/mL), normal-middle (< 2.87 uIU/mL), normal-high (< 5.00 uIU/mL) and high; upper normal (≥5.00 uIU/mL). TPOab levels were categorized as normal (< 34 IU/mL), high with low FT4 (34 IU/mL ≤ TPOab; FT4 < 1.24 ng/dL), high with high FT4 (34 IU/mL ≤ TPOab; 1.24 ng/dL ≤ FT4). In addition, we categorized TPOab levels into normal (< 34 IU/mL), high with low TSH (34 IU/mL ≤ TPOab; TSH < 2.25 uIU/mL), high with high TSH (34 IU/mL ≤ TPOab; 2.25 uIU/mL ≤ FT4). Considering that the TPOab titer is related to both hypothyroidism and hyperthyroidism, patients with high levels were divided into two groups using two median FT4 levels and two TSH levels.

Covariates

We adjusted for the covariates of sociodemographic factors, socioeconomic factors, health-behavior factors, and health-condition factors. Sociodemographic factors included age (19–44 years, 45–64 years, > 64 years) and gender (male and female). Socioeconomic factors included educational level (elementary school or less, middle school, high school, and college or over), marital status (married and cohabit, married but no cohabit or bereaved or divorced, and unmarried), household income level (divided into quartiles), region (urban or rural), and occupation (white collar, pink collar, blue collar, and unemployed or else). Urban areas included capitals and metropolitan cities and rural areas comprised the remaining areas. Alcohol consumption (ever or never), smoking (ever or never), and walking activity (active or inactive) were the health-behavior factors. Health-condition factors involved stress level (high, middle, low).

Statistical analysis

Statistical analysis was performed using the SAS software, version 9.4 (SAS Institute, Cary, NC, USA). All analysis incorporated weights. The mean values and standard deviations of the components of metabolic syndrome were compared using the analysis of variance. Multiple linear regression was performed to analyze the relationship between thyroid hormone level and the components of metabolic syndrome. Subgroup analysis was performed according to age and gender. A p-value < 0.05 was considered to indicate a statistically significant result.

Results

Demographic characteristics

Table 1 presents the general characteristics of the study populations. There were 683 males (48.0%) and 740 females (52.0%) included in this study. Of the 1423 participants, 870 (61.1%) were aged between 19 and 44 years, 471 participants (33.1%) were aged between 45 and 64 years, and 82 participants (5.8%) were aged over 64 years. The mean waist circumference was 31.9 ± 4.0 in. and the mean triglycerides level was 133.0 ± 120.5 mg/dL. The mean HDL cholesterol level was 52.0 ± 12.8 mg/dL, mean blood pressure 114.2 ± 15.1 mmHg, and the mean fasting glucose level 95.0 ± 16.6 mg/dL. When analyzed according to FT4 levels, waist circumference, triglycerides, and fasting glucose results were statistically significantly different (p < 0.05). Patients with high FT4 levels demonstrated considerably higher fasting glucose levels (High: 109.4 ± 45.2 mg/dL; Normal-middle: 93.8 ± 12.2 mg/dL).

Table 1.

General characteristics of the study population

Waist circumference (inches) Triglycerides (mg/dL) HDL cholesterol (mg/dL) Blood pressure (mmHg) Fasting glucose (mg/dL)
N % Mean ± SD p-value Mean ± SD p-value Mean ± SD p-value Mean ± SD p-value Mean ± SD p-value
Total 1423 100.0 31.9 4.0 133.0 120.5 52.0 12.8 114.2 15.1 95.0 16.6
Free thyroxine hormone (ng/dL) 0.0388 0.0020 0.1873 0.9267 <.0001
 Low (< 0.80) 15 1.1 32.8 2.4 162.7 74.4 51.8 13.4 116.3 12.5 97.1 14.4
 Normal (low tertile) (< 1.17) 424 29.8 32.1 4.1 141.3 131.9 51.8 13.1 114.6 16.0 95.9 16.8
 Normal (mid tertile) (< 1.31) 488 34.3 31.8 3.9 133.9 118.3 52.1 12.2 113.9 15.6 93.8 12.2
 Normal (high tertile) (< 1.70) 472 33.2 31.9 4.2 125.2 114.9 52.2 13.2 113.9 13.9 94.5 17.5
 High (1.70≤) 24 1.7 31.8 4.1 102.1 53.0 48.2 7.2 116.6 11.8 109.4 45.2
Thyroid stimulating hormone (uIU/mL) 0.2965 0.9867 0.1489 0.6965 0.1958
 Low (< 0.50) 30 2.1 30.8 2.9 108.4 66.1 55.9 14.5 116.3 14.2 94.9 10.9
 Normal (low tertile) (< 1.80) 476 33.5 32.1 4.1 136.6 144.8 51.3 13.1 114.3 14.9 96.2 19.4
 Normal (mid tertile) (< 2.87) 468 32.9 32.1 4.0 131.7 111.9 52.1 12.5 113.6 14.8 94.6 13.4
 Normal (high tertile) (< 5.00) 334 23.5 31.6 4.1 132.0 104.4 52.5 12.7 114.7 16.0 94.8 18.4
 High (5.00≤) 115 8.1 31.7 4.0 132.9 96.0 51.6 12.3 114.0 14.7 92.1 10.8
Thyroid peroxidase antibody (IU/mL) 0.5217 0.5189 0.4016 0.0369 0.9543
 Normal (< 34) 1324 93.0 31.9 4.1 132.2 120.2 52.0 12.8 114.0 15.1 95.1 17.0
 High (under low FT4) (34≤) 56 3.9 31.7 4.0 155.3 149.2 50.6 12.5 114.4 13.1 92.6 10.1
 High (under high FT4) (34≤) 43 3.0 31.5 3.1 127.9 79.6 51.5 13.7 119.4 16.6 94.0 10.6
Thyroid peroxidase antibody (IU/mL) 0.9967 0.3755 0.5473 0.0827 0.5928
 Normal (< 34) 1324 93.0 31.9 4.1 132.2 120.2 52.0 12.8 114.0 15.1 95.1 17.0
 High (under low TSH) (34≤) 39 2.7 31.5 4.2 124.8 69.9 50.5 12.5 114.8 14.3 93.7 12.0
 High (under high TSH) (34≤) 60 4.2 31.6 3.3 155.5 148.5 51.3 13.4 117.7 15.2 93.0 9.1
Age 0.4481 0.0347 0.0217 <.0001 0.0746
 19–44 870 61.1 31.5 4.3 125.1 119.9 53.5 12.7 109.9 12.2 92.9 16.7
 45–64 471 33.1 32.6 3.4 149.0 126.9 50.0 13.0 119.9 16.6 98.1 15.4
 64< 82 5.8 32.9 3.4 125.4 69.6 47.5 9.8 126.1 16.8 98.3 19.3
Gender <.0001 <.0001 <.0001 <.0001 <.0001
 Male 683 48.0 33.7 3.8 166.2 151.9 47.7 11.1 118.4 14.2 98.0 20.1
 Female 740 52.0 30.3 3.6 102.4 68.3 55.9 13.0 110.3 14.9 92.2 12.0
Education level 0.7844 0.5789 0.0002 0.0034 0.9794
 Elementary school or less 119 8.4 32.8 3.1 150.5 114.0 46.3 11.0 124.4 15.0 97.6 12.0
 Middle school 108 7.6 32.6 4.2 148.5 105.8 50.6 11.6 120.8 15.9 97.4 15.2
 High school 574 40.3 31.9 4.0 132.5 126.4 53.0 13.2 114.5 15.4 94.9 16.3
 College or over 622 43.7 31.6 4.2 127.4 118.2 52.3 12.7 110.8 13.3 94.1 17.8
Marital status <.0001 0.5017 0.0569 0.2066 <.0001
 Married-cohabit 813 57.1 32.3 3.7 136.4 110.3 51.3 12.4 116.0 16.3 96.7 17.9
 Married-no co habit or bereaved or divorced 130 9.1 32.5 3.8 147.0 121.8 50.0 13.5 118.0 15.5 98.8 18.4
 Unmarried 480 33.7 31.1 4.5 123.5 135.2 53.8 12.9 110.1 11.5 91.0 12.8
Household income level 0.0328 0.6671 0.1671 0.0484 0.4857
 Quartile 1 (lowest) 346 24.3 32.5 4.3 137.7 125.9 51.3 13.0 116.5 16.3 95.2 15.3
 Quartile 2 336 23.6 31.8 3.8 124.2 100.7 52.5 13.2 113.5 14.2 94.8 18.1
 Quartile 3 386 27.1 31.9 3.8 137.2 115.6 51.0 12.4 113.9 14.5 94.3 11.8
 Quartile 4 (highest) 355 24.9 31.5 4.1 132.2 136.4 53.1 12.6 112.7 15.1 95.6 20.5
Region 0.0163 0.0112 0.3290 0.6709 0.7321
 Urban area 1043 73.3 31.7 3.9 127.4 113.4 52.3 12.6 113.6 15.1 94.6 16.4
 Rural area 380 26.7 32.5 4.3 148.5 137.1 51.1 13.2 115.9 14.9 96.0 17.2
Occupation 0.1036 0.7295 <.0001 0.5925 0.1260
 White color 445 31.3 31.9 4.1 132.0 117.5 51.7 13.2 111.4 13.5 94.9 19.3
 Pink color 209 14.7 32.0 3.9 126.2 95.8 52.9 12.5 114.1 14.1 94.6 13.6
 Blue color 315 22.1 33.0 3.6 157.2 147.9 51.4 13.3 120.1 15.9 98.6 17.6
 Unemployed or else 454 31.9 31.2 4.2 120.3 109.8 52.2 12.1 112.9 15.4 92.7 13.8
Alcohol consumption 0.0108 0.3359 0.2579 0.8845 0.4812
 Ever 85 6.0 32.1 3.7 123.2 95.3 51.5 13.9 116.0 17.3 95.5 11.2
 Never 1338 94.0 31.9 4.1 133.6 121.9 52.0 12.7 114.1 14.9 94.9 16.9
Smoking 0.0062 0.0025 0.5679 0.6979 0.3499
 Ever 603 42.4 33.5 4.1 167.2 146.6 48.8 12.8 117.5 15.0 97.2 16.3
 Never 820 57.6 30.8 3.6 107.9 88.9 54.2 12.3 111.7 14.7 93.3 16.7
Walking activity 0.8915 0.3812 0.4642 0.0845 0.1128
 Active 581 40.8 31.8 3.9 127.3 121.2 52.5 12.7 112.7 14.3 93.5 13.8
 Inactive 842 59.2 32.0 4.1 137.0 119.8 51.6 12.8 115.2 15.5 96.0 18.3
Stress level 0.1867 0.0485 0.0567 0.1300 0.5092
 High 451 31.7 31.9 4.4 141.3 145.7 51.9 12.6 112.6 14.0 95.0 18.7
 Middle 800 56.2 31.8 3.9 128.1 101.0 52.0 12.9 114.0 15.1 94.7 14.9
 Low 172 12.1 32.6 3.7 134.0 129.7 52.1 12.9 119.1 16.9 96.2 18.5

Multiple analysis

Table 2 shows the estimates for the components of metabolic syndrome. “β” presents standardized regression coefficient and “S.E” presents standardized error of a correlation coefficient. After controlling for covariates, the results showed a positive association between FT4 and fasting glucose level in patients with high FT4 levels when compared to those with normal-middle FT4 levels (β = 15.992; p = < 0.0001). We also identified a significant negative association between FT4 levels and triglycerides in patients with normal-high (β = − 21.145, p = 0.0054) and those with high FT4 levels (β = − 49.713, p = 0.0404). In addition, a positive association was observed between TPOab and triglycerides levels in patients with high TPOab levels in the presence of low median FT4 levels (β = 36.075, p = 0.0247). Also, positive association was identified between TPOab and triglycerides levels in patients with high TPOab levels in the presence of high median TSH levels (β = 32.181, p = 0.0368).

Table 2.

The estimates for the components of metabolic syndromesa

Variable Waist circumference (inches) Triglycerides (mg/dL) HDL cholesterol (mg/dL) Blood pressure (mmHg) Fasting glucose (mg/dL)
βa S.E p-value βa S.E p-value βa S.E p-value βa S.E p-value βa S.E p-value
Free thyroxine hormone (ng/dL)
 Low (< 0.80) 1.383 0.938 0.1407 38.690 30.172 0.2000 −0.267 3.109 0.9317 0.758 3.532 0.8301 2.727 4.217 0.5180
 Normal (low tertile) (< 1.17) 0.327 0.240 0.1731 9.957 7.705 0.1964 −0.279 0.801 0.7272 −0.712 0.905 0.4313 1.698 1.077 0.1152
 Normal (mid tertile) (< 1.31) Ref. Ref. Ref. Ref. Ref.
 Normal (high tertile) (< 1.70) − 0.426 0.236 0.0714 −21.145 7.591 0.0054 1.439 0.788 0.0681 −0.359 0.890 0.6869 0.268 1.061 0.8003
 High (1.70≤) −0.735 0.753 0.3292 −49.713 24.227 0.0404 −1.718 2.603 0.5095 2.068 2.836 0.4661 15.992 3.386 <.0001
Thyroid stimulating hormone (uIU/mL)
 Low (< 0.50) −1.253 0.673 0.0629 −20.614 21.742 0.3432 4.393 2.227 0.0487 2.656 2.569 0.3014 0.178 3.040 0.9533
 Normal (low tertile) (< 1.80) −0.318 0.234 0.1742 0.479 7.559 0.9495 −0.558 0.783 0.4759 0.630 0.880 0.4743 1.680 1.057 0.1122
 Normal (mid tertile) (< 2.87) Ref. Ref. Ref. Ref. Ref.
 Normal (high tertile) (< 5.00) − 0.378 0.257 0.1414 3.591 8.297 0.6652 0.035 0.859 0.9671 1.283 0.966 0.1843 0.713 1.160 0.5392
 High (5.00≤) −0.093 0.374 0.8044 9.045 12.095 0.4547 −0.890 1.246 0.4748 0.660 1.406 0.6389 −1.511 1.691 0.3717
Thyroid peroxidase antibody (IU/mL)b
 Normal (< 34) Ref. Ref. Ref. Ref. Ref.
 High (under low FT4) (34≤) 0.396 0.498 0.4268 36.075 16.046 0.0247 −2.475 1.674 0.1396 −0.814 1.866 0.6626 −2.152 2.249 0.3387
 High (under high FT4) (34≤) −0.620 0.556 0.2655 −6.054 17.922 0.7356 0.118 1.862 0.9493 4.319 2.084 0.0384 −1.604 2.512 0.5232
Thyroid peroxidase antibody (IU/mL)c
 Normal (< 34) Ref. Ref. Ref. Ref. Ref.
 High (under low TSH) (34≤) −0.307 0.587 0.6014 −5.248 18.895 0.7812 −1.617 1.966 0.4110 −0.493 2.198 0.8225 −1.511 2.648 0.5682
 High (under high TSH) (34≤) 0.111 0.478 0.8162 32.181 15.396 0.0368 −1.130 1.608 0.4825 2.723 1.791 0.1288 −2.169 2.157 0.3149

aModels is adjusted by age, gender, education level, marital status, household income level, region, occupation, alcohol consumption, smoking, walking activity and stress level

bConsidering that thyroid peroxidase antibody related to both hypothyroidism and hyperthyroidism, high groups were divided into two groups by two median of free thyroxine

cConsidering that thyroid peroxidase antibody related to both hypothyroidism and hyperthyroidism, high groups were divided into two groups by two median of thyroid stimulating hormone

Sensitivity analysis

Table 3 shows the subgroup analysis of the association between the components of metabolic syndrome and FT4 hormone levels according to age and gender. When stratified by age, a significant negative association between FT4 and triglycerides was observed among patients aged 19–44 years (low: β = 124.396, p = 0.0165; normal-high: β = − 25.519, p = 0.0050). This association was stronger in the 19–44-year-old age group than in the other older age groups.

Table 3.

Subgroup analysis of components of metabolic syndromes with free thyroxine hormone levels stratified by age and gender

Variables Free thyroxine hormone levels
Low Normal (low tertile) Normal (mid tertile) Normal (high tertile) High
βa S.E p-value βa S.E p-value βa βa S.E p-value βa S.E p-value
Waist circumference
Age
 19~ 44 3.248 1.715 0.0586 0.400 0.345 0.2471 Ref. −0.537 0.300 0.0738 −1.062 0.892 0.2343
 45~ 64 0.745 1.113 0.5037 0.470 0.352 0.1818 Ref. 0.078 0.410 0.8495 0.394 1.668 0.8134
 64< −1.085 3.667 0.7684 −0.026 0.927 0.9777 Ref. −1.638 1.226 0.1868 −3.990 3.705 0.2859
Gender
 Male 1.998 2.172 0.3580 0.804 0.405 0.0477 Ref. −0.270 0.336 0.4206 −0.684 0.957 0.4749
 Female 1.481 0.982 0.1322 0.070 0.284 0.8061 Ref. −0.556 0.328 0.0909 −2.002 1.277 0.1173
Triglycerides
Age
 19~ 44 124.396 51.798 0.0165 10.341 10.430 0.3217 Ref. −25.519 9.066 0.0050 −49.843 26.938 0.0646
 45~ 64 22.880 41.955 0.5858 14.699 13.253 0.2680 Ref. −11.085 15.441 0.4732 −78.026 62.873 0.2153
 64< −29.035 77.925 0.7108 −6.737 19.693 0.7335 Ref. 20.424 26.056 0.4363 −21.240 78.744 0.7883
Gender
 Male −8.759 88.150 0.9209 19.926 16.443 0.2260 Ref. −29.603 13.619 0.0301 −56.536 38.816 0.1457
 Female 59.246 19.538 0.0025 6.175 5.645 0.2744 Ref. −8.730 6.527 0.1815 −39.210 25.395 0.1230
HDL cholesterol
Age
 19~ 44 −3.987 5.399 0.4605 0.135 1.096 0.9021 Ref. 2.554 0.952 0.0075 −0.867 2.954 0.7692
 45~ 64 0.799 4.276 0.8518 −1.313 1.360 0.3348 Ref. −1.687 1.581 0.2868 −5.880 6.408 0.3594
 64< 6.579 10.435 0.5309 −1.360 2.688 0.6149 Ref. 3.663 3.507 0.3007 10.076 10.581 0.3450
Gender
 Male −4.968 6.373 0.4360 −0.661 1.201 0.5824 Ref. 1.028 0.994 0.3017 0.343 2.981 0.9085
 Female 1.003 3.743 0.7888 0.050 1.089 0.9634 Ref. 1.908 1.256 0.1292 −3.308 4.865 0.4968
Blood pressure
Age
 19~ 44 9.081 5.089 0.0747 −0.032 1.029 0.9751 Ref. 0.639 0.893 0.4741 1.560 2.646 0.5556
 45~ 64 −4.007 5.626 0.4767 −2.552 1.779 0.1522 Ref. −3.081 2.075 0.1382 −1.728 8.439 0.8378
 64< −12.387 20.182 0.5417 5.314 5.101 0.3017 Ref. −2.610 6.749 0.7003 22.083 20.395 0.2833
Gender
 Male −12.655 7.995 0.1139 2.073 1.497 0.1666 Ref. −0.438 1.239 0.7239 2.575 3.522 0.4649
 Female 4.899 3.870 0.2060 −2.082 1.122 0.0638 Ref. − 0.001 1.294 0.9996 3.303 5.030 0.5116
Fasting glucose
Age
 19~ 44 −3.880 7.421 0.6012 1.190 1.494 0.4261 Ref. 1.333 1.299 0.3050 17.139 3.859 <.0001
 45~ 64 5.895 5.216 0.2591 1.833 1.648 0.2665 Ref. −2.049 1.920 0.2865 14.249 7.817 0.0690
 64< 13.834 18.440 0.4561 −0.592 4.660 0.8994 Ref. 1.248 6.166 0.8403 3.026 18.633 0.8715
Gender
 Male 0.545 11.505 0.9623 3.968 2.146 0.0649 Ref. −0.335 1.778 0.8506 21.236 5.066 <.0001
 Female 3.278 3.480 0.3466 0.346 1.006 0.7307 Ref. 1.431 1.163 0.2187 5.173 4.524 0.2532

aModel is adjusted by age, gender, education level, marital status, household income level, region, occupation, alcohol consumption, smoking, walking activity and stress level

Additional file 1: Table S1 presents the subgroup analysis of the association between the components of metabolic syndrome and TSH levels stratified by age and gender. Additional file 1: Table S2 shows the subgroup analysis of the association between the components of metabolic syndrome and TPOab levels with categorizing FT4 levels stratified by age and gender. In addition, Additional file 1: Table S3 shows the subgroup analysis of the association between the components of metabolic syndrome and TPOab levels with categorizing TSH levels stratified by age and gender. TSH was not significantly associated with other components of metabolic syndrome, except HDL cholesterol. Additional file 1: Table S2 shows that a positive association between TPOab and triglycerides levels is more frequently observed in male with high TPOab titers but with low FT4 levels (β = 136.104, p = 0.0062).

Discussion

The purpose of this study was to identify whether any associations exist between thyroid hormone levels and metabolic syndrome components. Thyroid dysfunction is well known to affect glucose and lipid metabolism; abnormal glucose level and abnormal lipid profile are important factors of metabolic syndrome [17]. In our study, we found that glucose and lipid metabolism were associated with thyroid dysfunction. A significant positive association was observed between fasting glucose and FT4 in patients with high FT4 levels. In terms of lipid metabolism, a negative association between triglycerides and FT4 was observed among people with normal-high or high FT4 levels. In addition, there was a significant positive association between TPOab and triglycerides levels in patients with high thyroid peroxidase levels and with low median FT4 levels.

Thyroid hormones regulate carbohydrate metabolism [18]. They influence the mRNA and protein expression of the glucose transporter 4, AMP-activated protein kinase, and acetyl CoA carboxylase in skeletal muscle [19]. Hyperthyroidism usually occurs when high FT4 levels leads to its increased production and absorption from glycogen, lactic acid, glycerol, and amino acids [20]. Hyperthyroidism can also increase insulin degradation. Which deteriorates blood glucose control [19, 20]. Based on these mechanisms, other studies also showed that glucose levels are high in patients with hyperthyroidism [21]. Foss et al. demonstrated that patients with hyperthyroidism had higher blood glucose levels than the euthyroid participants, indicating increased endogenous glucose production [22]. Moreover, Roubsanthisuk et al. reported that the higher glucose intolerance showed common in hyperthyroidism compare to the normal participants [23]. This could be a major cause of the increased risk for diabetes [23]. Health professionals should conduct follow-up tests of the glucose level of patients with high thyroid hormone levels. Additionally, thyroid hormone levels should be checked regularly in patients with high glucose levels.

A significant negative association between FT4 levels and triglycerides was observed in patients with high-normal or high FT4 levels. To explain this, we presumed that thyroid hormones play a key role in the regulation of enzyme activity during lipoprotein transport [12]. The influence of thyroid function on lipid metabolism involves a pathophysiological process [24]. The negative association observed between triglycerides and thyroid hormones can be explained by the increased removal rate of triglycerides from plasma due to an increase in the activity of hepatic triglyceride lipase [25, 26]. The effects of thyroid hormone on lipid metabolism are well known [26]. Because the lipid profile tends to normalize improperly under high thyroid hormone levels, the lipid profile needs to be followed up after adjusting for thyroid hormone levels [25].

There was a significant positive association between TPOab and triglycerides levels in patients with high thyroid peroxidase levels but with low median FT4 levels. In addition, a positive association was identified between TPOab and triglycerides levels in patients with high thyroid peroxidase levels in the presence of high median TSH levels. The presence of TPOab in the blood indicates a high risk for thyroid disease due to autoimmune disorders [27, 28]. In fact, abnormal TPOab levels were observed in 90% of patients with hypothyroidism and Graves’ disease [27, 28]. Therefore, the positive association between TPOab and triglycerides levels in patients with high thyroid peroxidase levels but low median FT4 levels may be related to hypothyroidism.

Based on the results of the subgroup analysis, a significant negative association was observed between FT4 and triglyceride levels in patients aged 19–44 years; this association was stronger in the 19–44-year-old age group than in the other older age groups. This finding emphasizes the possibility of accumulation of risk through one’s life course. Accumulation of various risks increases owing to illness, health-damaging behaviors, and adverse environmental conditions [29]. Older people may have more risk factors owing to their risk accumulation, and are more likely to have unmeasured risk factors that we could not adjust for [30]. To address this issue, future studies developed to understand the association between thyroid hormones and metabolic syndrome should incorporate a panel design.

This study had some limitations. First, the study was based on a cross-sectional survey. Causality could not be confirmed clearly and only the association could be confirmed. Second, one of the major thyroid hormones, triiodothyronine, was not used in the thyroid function tests. Despite the above limitations, this study also has a few strengths. First, consistent blood tests showed accurate blood TSH levels. Second, most of the previous studies were conducted in Caucasians; therefore, this issue is worth pursuing among Koreans. Finally, this study used the most recent (KNHANES 2013–2015) nationally, multistage, stratified collected data and could therefore be considered to be representative of the Korean population.

Conclusion

FT4 showed a partially positive association with fasting glucose, and a partially negative association with triglycerides in the general Korean population. Glucose level and lipid profile are metabolic syndrome components; metabolic syndrome is strongly correlated with diseases such as diabetes and cardiovascular disease that are associated with high mortality and morbidity rates. In patients with abnormal thyroid function, follow up tests for metabolic syndrome components during thyroid dysfunction could prevent overlooking metabolic syndrome and prevent related diseases.

Additional file

Additional file 1: (88.5KB, docx)

Table S1. Subgroup analysis of components of metabolic syndromes with thyroid stimulating hormone levels stratified by age and gender. Table S2. Subgroup analysis of components of metabolic syndromes with thyroid peroxidase antibody levels stratified by age and gender. Table S3. Subgroup analysis of components of metabolic syndromes with thyroid peroxidase antibody levels stratified by age and gender. (DOCX 88 kb)

Acknowledgements

We appreciate Department of Health and Human Services Centers for Disease Control and Prevention that provided meaningful data.

Availability of data and materials

The datasets generated and/or analysed during the current study are available in the KNHNES website (http://www.cdc.go.kr/CDC/contents/CdcKrContentView.jsp?cid=60940&menuIds=HOME001-MNU1130-MNU1639-MNU1748-MNU1752). The KNHANES was opened in https://knhanes.cdc.go.kr/knhanes/index.do after submitting written oath and data utilization plan.

Abbreviations

CI

Confidence interval

FT4

Free thyroxine

KNHANES

Korea National Health and Nutrition Examination Surveys

OR

Odds ratio

TPOab

Thyroid peroxidase antibody

TSH

Thyroid-stimulating hormone

Authors’ contributions

E.-C.P. (corresponding author) reviewed the manuscript. J.J. (cofirst author) and Y. K. (cofirst author) wrote the draft of the manuscript and analyzed the data. J. S., S. A. L. and Y. C. provided assistance for the planning, execution, execution, and analysis of the study. All authors read and approved final manuscript. The authors appreciate the administrative support provided by the Yonsei University Institute of Health Services Research. This research study was not funded by any foundation.

Ethics approval and consent to participate

The Institutional Review Board (IRB) of the Korea Centers for Disease Control and Prevention (KCDC) provided formal ethics approval for the KNHANES data sets (IRB approval number 2013-07CON-03-4C for 2013, 2013-12EXP-03-5C for 2014, 2015–01-02-6C for 2015).

Competing interests

The authors declare that they have no competing interests.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Footnotes

Electronic supplementary material

The online version of this article (10.1186/s12902-018-0256-0) contains supplementary material, which is available to authorized users.

Jieun Jang and Youngsook Kim contributed equally to this work.

Jieun Jang and Youngsook Kim are co-first authors.

Contributor Information

Jieun Jang, Email: jieun99@yuhs.ac.

Youngsook Kim, Email: yk52@iupui.edu.

Jaeyong Shin, Email: DRSHIN@yuhs.ac.

Sang Ah Lee, Email: ivory0817@yuhs.ac.

Young Choi, Email: CHOIYOUNG223@yuhs.ac.

Eun-Cheol Park, Phone: 82-2-2228-1862, Email: ECPARK@yuhs.ac.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Additional file 1: (88.5KB, docx)

Table S1. Subgroup analysis of components of metabolic syndromes with thyroid stimulating hormone levels stratified by age and gender. Table S2. Subgroup analysis of components of metabolic syndromes with thyroid peroxidase antibody levels stratified by age and gender. Table S3. Subgroup analysis of components of metabolic syndromes with thyroid peroxidase antibody levels stratified by age and gender. (DOCX 88 kb)

Data Availability Statement

The datasets generated and/or analysed during the current study are available in the KNHNES website (http://www.cdc.go.kr/CDC/contents/CdcKrContentView.jsp?cid=60940&menuIds=HOME001-MNU1130-MNU1639-MNU1748-MNU1752). The KNHANES was opened in https://knhanes.cdc.go.kr/knhanes/index.do after submitting written oath and data utilization plan.


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