Literature DB >> 26449189

Liver enzymes and metabolic syndrome: a large-scale case-control study.

Lu Zhang1,2, Xiangyu Ma1, Zhi Jiang3, Kejun Zhang4, Mengxuan Zhang1, Yafei Li1, Xiaolan Zhao3, Hongyan Xiong1.   

Abstract

Previous studies suggested that elevated liver enzymes could be used as potential novel biomarkers of Metabolic syndrome (MetS) and its clinical outcomes, although the results were inconsistent and the conclusions were underpowered. A case-control study with 6,268 MetS subjects and 6,330 frequency-matched healthy controls was conducted to systematically evaluated levels of four liver enzymes (ALT, AST, GGT and ALP), both in overall populations and in subjects with normal liver enzymes, with MetS risk using both quartiles and continuous unit of liver enzymes. We found significant associations were detected for all above analyses. Compared with quartile 1 (Q1), other quartiles have significant higher MetS risk, with ORs ranging from 1.15 to 18.15. The highest effected was detected for GGT, for which the OR value for the highest versus lowest quartile was 18.15 (95% CI: 15.7-20.9). Mutual adjustment proved the independence of the relations for all four liver enzymes. Sensitivity analyses didn't materially changed the trend. To the best of our knowledge, this study should be the largest, which aimed at evaluating the association between liver enzymes measures and MetS risk. The results can better support that liver enzyme levels could be used as clinical predictors of MetS.

Entities:  

Keywords:  Pathology section; association; biomarker; liver enzymes; metabolic syndrome

Mesh:

Substances:

Year:  2015        PMID: 26449189      PMCID: PMC4694952          DOI: 10.18632/oncotarget.5792

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

Metabolic syndrome (MetS) is a constellation of conditions, increased blood pressure, high blood sugar level, excess body fat around the waist and abnormal cholesterol levels, that occur together, increasing the risk of heart disease, stroke, insulin resistance, diabetes, and nonalcoholic fatty liver disease (NAFLD) [1-4]. According to the Third National Health and Nutrition Examination Survey of United States, the prevalence of MetS has been an estimated 34% of the adult population [5]. The predominant underlying risk factor for the s MetS appear to be abdominal obesity [6-8]. However, not all obese develop the syndrome and even lean individuals can be insulin resistant, which was highly related with MetS [9]. The MetS can be clinically manifested in a variety of ways, which brings some difficulties for the clinical diagnosis of MetS. Recent experimental and clinical studies showed that liver enzymes might be novel candidate biomarkers for MetS and its clinical outcomes [10-13]. To present, plasma level of liver enzymes, including Alanine transaminase (ALT) and Aspartate aminotransferase (AST), commonly used as the indicators of liver damage, and Gamma-Glutamyl Transpeptidase (GGT), a biomarker for oxidative stress associated with glutathione regulation, and alkaline phosphatase (ALP), were widely explored as the indicators of MetS and its components among different populations [14-25]. However, the results were inconsistent, and sample size were limited and underpowered (most of the sample size was smaller than 1000). Given the plausible role for liver enzymes in MetS development and the conflicting results of previous studies, we conducted this study to strength the understanding of relations between liver enzymes and MetS risk, using: (1) a frequency matched case-control study design; (2) a large sample size among Chinese adolescents (6,268 MetS subjects and 6,330 healthy controls); (3) we performed the studies in the overall sample and in participants with normal liver enzyme values.

RESULTS

Totally included in this study were 6,268 MetS subjects and 6,330 healthy controls. As shown in Table 1, MetS subjects are slightly elder than healthy controls, lower educated, more like to be smokers and drinkers. MetS subjects also have lower participating rate of sporting, compared with healthy controls. Table 1 also lists the comparison of five MetS components and four liver enzymes levels between MetS subjects and healthy controls. Obviously, the values in MetS subjects were higher than those in healthy controls.
Table 1

Clinical characteristics of the study population

MetS subjectsHealthy controlsP value a
Participants (N)6,2686,330
Age (Years)44.9 ± 10.442.1 ± 8.7P < 0.001
Gender (%)
Male78.777.40.084
Female21.322.6
Education (%)
College and above75.179.4P < 0.001
Lower than college24.920.6
Smoking status
Never49.854.7P < 0.001
Ever6.45.0
current43.840.3
Drinking
Never21.828.3P < 0.001
Ever10.29.8
current68.061.9
Sporting
Yes56.860.20.001
No43.239.8
Waist circumference90.4 ± 8.177.9 ± 6.1P < 0.001
Triglycerides3.5 ± 2.81.1 ± 0.3P < 0.001
HDL cholesterol1.2 ± 0.31.6 ± 0.3P < 0.001
Blood pressure
systolic pressure138.2 ± 17.5112.1 ± 9.3P < 0.001
diastolic pressure88.5 ± 12.270.9 ± 7.7P < 0.001
Fasting glucose6.4 ± 1.95.1 ± 0.3P < 0.001
ALT31.7 ± 13.422.8 ± 10.7P < 0.001
AST30.3 ± 10.326.7 ± 7.3P < 0.001
GGT52.8 ± 50.525.3 ± 21.0P < 0.001
ALP89.6 ± 24.180.7 ± 22.3P < 0.001

MetS: metabolic syndrome; BMI: body mass index; ALT: Alanine transaminase; AST: Aspartate aminotransferase; GGT: Gamma-Glutamyl Transpeptidase; ALP: alkaline phosphatase.

Continuous variables: mean values ± standard deviation, p-value from t-tests; Categorical variables: percentages, p-values from x2 test.

MetS: metabolic syndrome; BMI: body mass index; ALT: Alanine transaminase; AST: Aspartate aminotransferase; GGT: Gamma-Glutamyl Transpeptidase; ALP: alkaline phosphatase. Continuous variables: mean values ± standard deviation, p-value from t-tests; Categorical variables: percentages, p-values from x2 test. Table 2 shows the results of logistic regression analysis for the presence of MetS in relation with liver enzymes adjusting for age, gender, and education level. We first explored the associations between MetS risk and quartiles of liver enzymes. We set the first quartile as the referent, and all of the four liver enzymes showed statistically significant linear increased risk (P < 0.001). Compared with quartile 1 (Q1), other quartiles have significant higher MetS risk, with ORs ranging from 1.15 to 18.15. The highest effected was detected for GGT, for which the OR value for the highest versus lowest quartile was 18.15 (95% CI: 15.7-20.9). Furthermore, We also analyzed the associations between MetS risk and continuous unit of liver enzymes. Significant trends were found for increasing unit of ALT, AST, GGT and ALP (per 5 unit). The smallest effect size was for ALP (OR: 1.09, 95% CI: 1.08-1.10), and the largest was for ALT (OR: 1.41, 95% CI: 1.38-1.43). We then conducted stratified analyses by gender for the relations between MetS risk and liver enzymes, using both quartiles and continuous unit of liver enzymes (Table 3). The ORs was bigger in males for ALT and AST, while the ORs was bigger in females for GGT and ALP. In mutually adjusted models which include all of the four liver enzymes in the logistic regression model, they all remained significantly associated with MetS risk, which means the independence of their relations.
Table 2

Logistic regression analysis for the presence of MetS in relation with liver enzymes

Overall
MetS subjectsHealthy controlsORa95% CIP value
ALT
Q1 (<15)4551,398referent
Q2 (15–20)8231,6971.501.31–1.72
Q3 (20–27)1,3521,5203.002.63–3.43
Q4 (>27)3,6381,7158.037.06–9.12
Continuous (Per 5 unit increase)1.411.38–1.43P < 0.001
AST
Q1 (<22)7821,423referent
Q2 (22–25)8731,3521.151.02–1.31
Q3 (25–30)1,7741,9171.631.46–1.82
Q4 (>30)2,8391,6383.062.75–3.41
Continuous (Per 5 unit)1.331.29–1.36P < 0.001
GGT
Q1 (<16)3761,701referent
Q2 (16–20)4951,3981.901.62–2.22
Q3 (20–28)1,1511,6274.323.74–5.00
Q4 (>28)4,2461,60418.1515.7–20.9
Continuous (Per 5 unit)1.271.25–1.29P < 0.001
ALP
Q1 (<66)9201,674referent
Q2 (66–78)1,1771,4891.431.28–1.60
Q3 (78–93)1,6921,6221.871.68–2.08
Q4 (>93)2,4791,5452.802.52–3.10
Continuous (Per 5 unit)1.091.08–1.10P < 0.001

adjusted for age, gender, and education level

Table 3

Logistic regression analysis for the presence of MetS in relation with liver enzymes stratified by gender

MalesFemales
ORb95% CIP valueORb95% CIP value
ALT
Q1 (<15)referentreferent
Q2 (15–20)1.711.42–2.071.371.11–1.67
Q3 (20–27)3.643.05–4.342.431.94–3.05
Q4 (>27)10.18.57–12.04.773.79–6.01
Continuous (Per 5 unit increase)1.431.39–1.45P < 0.0011.331.28–1.39P < 0.001
AST
Q1 (<22)referentreferent
Q2 (22–25)1.351.17–1.570.880.70–1.09
Q3 (25–30)1.901.67–2.181.281.04–1.57
Q4 (>30)3.803.33–4.321.761.42–2.17
Continuous (Per 5 unit)1.371.33–1.41P < 0.0011.181.12–1.25P < 0.001
GGT
Q1 (<16)referentreferent
Q2 (16–20)1.401.10–1.772.812.27–3.50
Q3 (20–28)3.913.18–4.815.604.48–7.01
Q4 (>28)18.8115.5–22.98.346.62–10.5
Continuous (Per 5 unit)1.271.25–1.29P < 0.0011.281.24–1.33P < 0.001
ALP
Q1 (<66)referentreferent
Q2 (66–78)1.241.08–1.412.041.64–2.54
Q3 (78–93)1.591.40–1.803.142.51–3.92
Q4 (>93)2.332.06–2.635.684.55–7.13
Continuous (Per 5 unit)1.071.06–1.08P < 0.0011.161.13–1.18P < 0.001

adjusted for age, and education level.

adjusted for age, gender, and education level adjusted for age, and education level. The robustness of these findings was evaluated by sensitivity analyses. First, Additional adjustments were conducted for the a variety of factors which were shown in Table 1. None materially changed the trend, and none of the risk estimates changed by more than 5% when included. Second, we restrict the liver enzymes to levels of within-normal-limits. The significant trend kept and the risk estimates became stronger (Table 4).
Table 4

Logistic regression analysis for the presence of MetS in relation with liver enzymes within-normal-limits

Variables (Per 5 unit)ORc95% CIP value
ALT1.581.53–1.62P < 0.001
AST1.431.38–1.48P < 0.001
GGT1.641.60–1.69P < 0.001
ALP1.111.09–1.12P < 0.001

adjusted for age, gender, and education level

adjusted for age, gender, and education level

DISCUSSION

In this large, population-based case-control study with 6,268 MetS subjects and 6,330 healthy controls, we systematically evaluated levels of four liver enzymes, both in overall populations and in subjects with liver enzymes within-normal-limits, with MetS risk using both quartiles and continuous unit of liver enzymes. We also conducted stratified analyses by gender for the relations between MetS risk and liver enzymes. Significant associations were detected for all above analyses, and mutual adjustment proved the independence of the relations for all four liver enzymes. Sensitivity analyses didn’t materially changed the trend. To the best of our knowledge, this study should be the largest, which aimed at evaluating the association between liver enzymes measures and MetS risk, and the findings filled the inadequacies of past data. MetS can increase the risk of cardiovascular diseases and diabetes [26], and nonalcoholic fatty liver disease (NAFLD) has recently been recognized as one of the leading causes of MetS, diabetes, and cardiovascular diseases [27]. Considering serum biomarkers of liver enzymes being sensitive in the detection of NAFLD, it could be hypothesized that liver enzymes might be novel candidate biomarkers for MetS and its clinical outcomes. GGT and ALT chould be used to predict the deposition of fat in liver cells and, therefore, indicating a change in visceral fat [28]. Changes in visceral fat were achieved through inactivation of PPAR, then followed by MetS, insulin resistance, atherosclerosis and other cardiovascular [29, 30]. Previous epidemiological studies [20, 27, 31–42] have also suggested that liver enzymes showed high sensitivity to metabolic disorders, and liver enzymes as a diagnostic tool for the MetS is also very important, although using small sample size. In current study, we compares the levels of liver enzymes (ALT, AST, GGT, and ALP) between the healthy population and subjects with MetS, using a relatively large sample size (6,268 MetS subjects and 6,330 healthy controls). ORs values and corresponding confidence intervals (95% CI) by quartile method and continuous unit of liver enzymes. The results confirmed that liver enzyme levels of people with metabolic syndrome were far higher than those of healthy population, which further confirmed the existence of a link between the liver enzymes and MetS risk. At the same time, all of the study population were grouped according to gender. After being corrected for age and educational level, the results have shown that all the associations were statistically significant (p < 0.001). No matter in male, or in female population, liver enzyme levels were positively correlated with MetS risk. The results of this study could better improve the historical data to determine the relationship between liver enzymes and MetS development, and provide a more robust evidence to support the clinical diagnosis of the metabolic syndrome. Further, some studies [36, 38, 41] indicated that ALT level within the normal range was associated with the metabolic syndrome and its components. This indicated that in clinical diagnosis, the level of liver enzymes might change without departing from the normal range, but may indicate early metabolic disorder occurs. Thus, in the sensitivity analyses, we also tried to restrict the liver enzymes to levels of within-normal-limits. Then, the significant trend of the relations kept and the risk estimates became stronger, which is consistent with the previous findings. Strengths of this study included the large sample size, the population-based study design, the high participation rate, the homogeneous ethnic background. Further studies are warranted to confirm our findings, and results derived from other populations are needed to better understand the complicated mechanisms of MetS. In conclusion, this study determined that the liver enzyme levels are indeed associated with the MetS risk, both in overall populations and in subjects with liver enzymes within-normal-limits. Combined with previous findings, the results can better support that liver enzyme levels can be used as clinical predictors of MetS.

MATERIALS AND METHODS

The methods were carried out in “accordance” with the approved guidelines.

Definition of metabolic syndrome

The MetS was defined using the modified National Cholesterol Education Program/Adult Treatment Panel III criteria for Asian Americans as having ≥3 of the following components [6]: waist circumference ≥90 cm in men or ≥80 cm in women; triglycerides ≥1.7 mmol/L; HDL cholesterol <1.03 mmol/L in men or <1.30 mmol/L in women; blood pressure ≥130/85 mm Hg or taking antihypertensive medications; or fasting glucose ≥5.6 mmol/L, or taking antidiabetic medications.

Study population

The present study is part of the Health Survey of Adolescent Population in Chongqing (HSAPC), China, an ongoing project conducted at the first affiliated hospital of Third Military Medical University since March, 2011. This is a relatively large cohort of individuals who visit us for a routine annual check-up. Written informed consent for participation according to the instructions of the institutional ethics committee. Epidemiological survey was conducted using a structured questionnaire. Until July, 2014, a total of 57,141 subjects were included in this cohort. According to the definition of MetS above, 6,268 subjects free of diabetes mellitus and liver diseases were diagnosed as MetS. Healthy controls (without any of the five components of MetS above, N = 6,330) were frequency matched with the MetS subjects by residency area, gender, and age group (±5 years old). Fasting peripheral venous EDTA blood samples were collected and centrifuged at 4°C and 3000 rpm for 15 minutes. Human participant Institutional Review Board (IRB) approval was obtained from the IRB of Third Military Medical University.

Measurements

The waist circumference (WC) was measured at a level midway between the lowest lateral border of the ribs and the uppermost lateral iliac crest in standing position. Blood pressure was measured manually by a calibrated aneroid sphygmomanometer. The mean of all three values were used as the systolic (SBP) and diastolic blood pressure (DBP). Plasma fasting glucose, total cholesterol, high-density lipoprotein (HDL) cholesterol, low-density lipoprotein cholesterol, triglycerides, and liver enzymes were measured enzymatically on an automatic analyzer (Hitachi High Technology Co, Tokyo, Japan).

Statistical analyses

All data was summarized as mean (standard deviation [SD]) for the continuous variables and as number of patients (expressed as a percentage) in each group for the categorical variables. Characteristics of the study population between MetS subjects and healthy controls were compared using the t test and chi-square test as appropriate. In order to characterize the population, we divided the subjects into quintiles of each of the four liver enzymes according to the distribution among healthy controls. Unconditional logistic regression models were used to evaluate the association between quartiles of liver enzymes and risk of MetS. Adjusted odds ratios (ORs) and their corresponding 95% confidence intervals (CIs) were derived from logistic regression models after adjusting for potential confounders including age, gender, and education level. All statistical tests were 2-sided and 0.05 was set as the cut point of P value. All analyses were conducted using SAS, version 9.3 (SAS Institute, Cary, North Carolina).
  32 in total

1.  Positive correlations of liver enzymes with metabolic syndrome including insulin resistance in newly diagnosed type 2 diabetes mellitus.

Authors:  Yifei Zhang; Xi Lu; Jie Hong; Menglei Chao; Weiqiong Gu; Weiqing Wang; Guang Ning
Journal:  Endocrine       Date:  2010-10-23       Impact factor: 3.633

2.  Metabolic syndrome defined by new criteria in Japanese is associated with increased liver enzymes and C-reactive protein.

Authors:  Kentaro Taki; Kazuko Nishio; Nobuyuki Hamajima; Toshimitsu Niwa
Journal:  Nagoya J Med Sci       Date:  2008-03       Impact factor: 1.131

3.  Hepatic enzymes, the metabolic syndrome, and the risk of type 2 diabetes in older men.

Authors:  Sasiwarang Goya Wannamethee; Andrew Gerald Shaper; Lucy Lennon; Peter H Whincup
Journal:  Diabetes Care       Date:  2005-12       Impact factor: 19.112

Review 4.  Metabolic syndrome: screening, diagnosis, and management.

Authors:  Elissa Lane Miller; Angela Mitchell
Journal:  J Midwifery Womens Health       Date:  2006 May-Jun       Impact factor: 2.388

Review 5.  Metabolic syndrome in childhood from impaired carbohydrate metabolism to nonalcoholic fatty liver disease.

Authors:  Melania Manco
Journal:  J Am Coll Nutr       Date:  2011-10       Impact factor: 3.169

6.  Association of liver enzymes with metabolic syndrome and carotid atherosclerosis in young adults. The Cardiovascular Risk in Young Finns Study.

Authors:  Juha Koskinen; Costan G Magnussen; Mika Kähönen; Britt-Marie Loo; Jukka Marniemi; Antti Jula; Liisa A Saarikoski; Risto Huupponen; Jorma S A Viikari; Olli T Raitakari; Markus Juonala
Journal:  Ann Med       Date:  2011-01-24       Impact factor: 4.709

7.  Metabolic syndrome and 10-year cardiovascular disease risk in the Hoorn Study.

Authors:  Jacqueline M Dekker; Cynthia Girman; Thomas Rhodes; Giel Nijpels; Coen D A Stehouwer; Lex M Bouter; Robert J Heine
Journal:  Circulation       Date:  2005-08-02       Impact factor: 29.690

8.  The association of higher levels of within-normal-limits liver enzymes and the prevalence of the metabolic syndrome.

Authors:  Arie Steinvil; Itzhak Shapira; Orit Kliuk Ben-Bassat; Michael Cohen; Yaffa Vered; Shlomo Berliner; Ori Rogowski
Journal:  Cardiovasc Diabetol       Date:  2010-07-15       Impact factor: 9.951

9.  Aminotransferase levels and 20-year risk of metabolic syndrome, diabetes, and cardiovascular disease.

Authors:  Wolfram Goessling; Joseph M Massaro; Ramachandran S Vasan; Ralph B D'Agostino; R Curtis Ellison; Caroline S Fox
Journal:  Gastroenterology       Date:  2008-09-20       Impact factor: 22.682

10.  Metabolic syndrome and type 2 diabetes mellitus: focus on peroxisome proliferator activated receptors (PPAR).

Authors:  Alexander Tenenbaum; Enrique Z Fisman; Michael Motro
Journal:  Cardiovasc Diabetol       Date:  2003-03-23       Impact factor: 9.951

View more
  9 in total

1.  Association of Inflammatory and Liver Markers with Cardiometabolic Risk Factors in Patients with Depression.

Authors:  Naresh Nebhinani; Praveen Sharma; Vrinda Pareek; Navratan Suthar; Shobhan Jakhotia; Mukesh Gehlot; Purvi Purohit
Journal:  Indian J Clin Biochem       Date:  2018-02-15

2.  Associations between fatty liver index and asymptomatic intracranial vertebrobasilar stenosis in Chinese population.

Authors:  Jing Qiu; Zhiwei Zhou; Jie Wang; Yiying Wang; Chunxing Liu; Xingxiang Liu; Yunfang Xu; Lugang Yu; Hui Zhou; Jie Lin; Zhirong Guo; Chen Dong
Journal:  PLoS One       Date:  2017-11-09       Impact factor: 3.240

3.  Phosphorylation of Histone H2A.X in Peripheral Blood Mononuclear Cells May Be a Useful Marker for Monitoring Cardiometabolic Risk in Nondiabetic Individuals.

Authors:  So Ra Yoon; Juhyun Song; Jong Hwa Lee; Oh Yoen Kim
Journal:  Dis Markers       Date:  2017-05-09       Impact factor: 3.434

4.  Association between liver function and metabolic syndrome in Chinese men and women.

Authors:  Sen Wang; Jie Zhang; Li Zhu; Linlin Song; Zhaowei Meng; Qiang Jia; Xue Li; Na Liu; Tianpeng Hu; Pingping Zhou; Qing Zhang; Li Liu; Kun Song; Qiyu Jia
Journal:  Sci Rep       Date:  2017-03-20       Impact factor: 4.379

5.  Correlation between normal range of serum alanine aminotransferase level and metabolic syndrome: A community-based study.

Authors:  Han Shen; Jing Lu; Ting-Ting Shi; Cheng Cheng; Jing-Yi Liu; Jian-Ping Feng; Jin-Kui Yang
Journal:  Medicine (Baltimore)       Date:  2018-10       Impact factor: 1.817

6.  Impact of body weight gain on hepatic metabolism and hepatic inflammatory cytokines in comparison of Shetland pony geldings and Warmblood horse geldings.

Authors:  Carola Schedlbauer; Dominique Blaue; Martin Gericke; Matthias Blüher; Janine Starzonek; Claudia Gittel; Walter Brehm; Ingrid Vervuert
Journal:  PeerJ       Date:  2019-06-07       Impact factor: 2.984

7.  The Association between Anthropometry Indices and Serum Concentrations of Gamma-Glutamyl Transferase, Alkaline Phosphatase, Alanine Aminotransferase, and Aspartate Aminotransferase.

Authors:  Sahar Sobhani; Reihaneh Aryan; Mina AkbariRad; Elahe Ebrahimi Miandehi; Maryam Alinezhad-Namaghi; Seyyed Reza Sobhani; Sara Raji
Journal:  Biomed Res Int       Date:  2021-11-22       Impact factor: 3.411

8.  Association Between Aspartate Aminotransferase to Alanine Aminotransferase Ratio and Incidence of Type 2 Diabetes Mellitus in the Japanese Population: A Secondary Analysis of a Retrospective Cohort Study.

Authors:  Lidan Chen; Kebao Zhang; Xue Li; Yang Wu; Qingwen Liu; Liting Xu; Liuyan Li; Haofei Hu
Journal:  Diabetes Metab Syndr Obes       Date:  2021-11-09       Impact factor: 3.168

9.  Association between Serum Liver Enzymes and Metabolic Syndrome in Korean Adults.

Authors:  Hae Ran Kim; Mi Ah Han
Journal:  Int J Environ Res Public Health       Date:  2018-08-05       Impact factor: 3.390

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.