Association of metabolic syndrome with inflammatory markers in a sample of community-dwelling older adults

Cristiane Vilas Boas Neves Juliana Vaz de Melo Mambrini Karen Cecília Lima Torres Andréa Teixeira-Carvalho Olindo Assis Martins-Filho Maria Fernanda Lima-Costa Sérgio Viana Peixoto About the authors

Abstract

The study aimed to identify the cutoff points for inflammatory markers that best discriminate the occurrence of metabolic syndrome in community-dwelling older adults. Baseline data were used from the elderly cohort in the city of Bambuí, Minas Gerais State, Brazil. The target exposure was presence of metabolic syndrome, defined according to the Adult Treatment Panel III criterion, and the outcomes included the following inflammatory markers: cytokines (IL-1β, IL-6, IL-10, IL-12 e TNF), chemokines (CXCL8, CXCL9, CCL2, CXCL10, and CCL5), and C-reactive protein (CRP). Definition of the cutoff points for the inflammatory markers was based on the Classification and Regression Tree (CART) method. The associations between these markers and metabolic syndrome were estimated by logistic regression models, obtaining odds ratios and 95% confidence intervals, considering adjustment for confounding factors. Prevalence of metabolic syndrome was 49.1%, and IL-1β, IL-12, and TNF levels were not associated statistically with this exposure. After adjustment, presence of metabolic syndrome was associated with higher IL-6 and CRP levels and lower CXCL8 and CCL5. Significant associations were also observed with intermediate serum CXCL9 and CXCL10 levels. The combination of markers also showed a significant and consistent association with metabolic syndrome. In addition to demonstrating an association between metabolic syndrome and a wide range of biomarkers (some not previously described in the literature), the results highlight that this association occurs at much lower levels than previously demonstrated, suggesting that metabolic syndrome plays an important role in the inflammatory profile of the older adults.

Keywords:
Metabolic Syndrome; Inflammation; Biomarkers; Health of the Elderly


Introduction

Metabolic syndrome is characterized by a series of dysfunctions in the individual’s metabolism, such as hyperglycemia, visceral obesity, dyslipidemia, hypertension, and proinflammatory and prothrombotic state 11. Eckel RH, Alberti K, Grundy SM, Zimmet PZ. The metabolic syndrome. Lancet 2010; 375:181-3.,22. Sociedade Brasileira de Cardiologia. I Diretriz Brasileira de Diagnóstico e Tratamento da Síndrome Metabólica. Arq Bras Cardiol 2005; 84 Suppl 1:3-28.,33. Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults. Third Report of The National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evalution and Treatmentof High Blood Cholesterol in Adults (Adult Treatment Panel III) final report. JAMA 2001; 285:2486-97.. Although using the same diagnostic criterion, prevalence of metabolic syndrome varies widely between elderly populations (from 25% to 60%), which may be explained by differences in the populations’ composition in terms of gender, age bracket, ethnicity, and environmental factors, among others 44. Liu M, Wang J, Jiang B, Sun D, Wu L, Yang S, et al. Increasing prevalence of metabolic syndrome in a Chinese elderly population: 2001-2010. PLoS One 2013; 8:e66233.,55. Rigo JC, Vieira JL, Dalacorte RR, Reichert CL. Prevalence of metabolic syndrome in an elderly community: comparison between three diagnostic methods. Arq Bras Cardiol 2009; 93:85-91.,66. Saad MA, Cardoso GP, Martins WA, Velarde GC, Cruz Filho RA. Prevalence of metabolic syndrome in elderly and agreement among four diagnostic criteria. Arq Bras Cardiol 2014; 102:263-9.,77. Ravaglia G, Forti P, Maioli F, Bastagli L, Chiappelli M, Montesi F, et al. Metabolic syndrome prevalence and prediction of mortality in elderly individuals. Diabetes Care 2006; 29:2471-6.,88. Aleman-Mateo H, López Teros MJ, Urquidez-Romero R, Huesca L. Prevalence of meabolic syndrome and its determinants in older Mexican non-diabetic adults. Nutr Hosp 2018; 35:294-304.,99. Sumner AD, Sardi GL, Reed 3rd JF. Components of the metabolic syndrome differ between young and old adults in the US population. J Clin Hypertens 2012; 14:502-6.. Among North Americans without a history of cardiovascular disease, prevalence of metabolic syndrome reached 32.2% in the 50-69-year bracket and 34.6% in individuals 70 years and older 99. Sumner AD, Sardi GL, Reed 3rd JF. Components of the metabolic syndrome differ between young and old adults in the US population. J Clin Hypertens 2012; 14:502-6., while prevalence was 27% in a sample of elderly Italians 77. Ravaglia G, Forti P, Maioli F, Bastagli L, Chiappelli M, Montesi F, et al. Metabolic syndrome prevalence and prediction of mortality in elderly individuals. Diabetes Care 2006; 29:2471-6.. Higher levels have been observed in low-income countries, reaching 36% in elderly Mexicans 88. Aleman-Mateo H, López Teros MJ, Urquidez-Romero R, Huesca L. Prevalence of meabolic syndrome and its determinants in older Mexican non-diabetic adults. Nutr Hosp 2018; 35:294-304., 45-50% in some Brazilian cities 55. Rigo JC, Vieira JL, Dalacorte RR, Reichert CL. Prevalence of metabolic syndrome in an elderly community: comparison between three diagnostic methods. Arq Bras Cardiol 2009; 93:85-91.,66. Saad MA, Cardoso GP, Martins WA, Velarde GC, Cruz Filho RA. Prevalence of metabolic syndrome in elderly and agreement among four diagnostic criteria. Arq Bras Cardiol 2014; 102:263-9., and 58.1% in China 44. Liu M, Wang J, Jiang B, Sun D, Wu L, Yang S, et al. Increasing prevalence of metabolic syndrome in a Chinese elderly population: 2001-2010. PLoS One 2013; 8:e66233.. Furthermore, prevalence of metabolic syndrome has shown a steady increase over time, especially in low and middle-income countries and among the older adults 55. Rigo JC, Vieira JL, Dalacorte RR, Reichert CL. Prevalence of metabolic syndrome in an elderly community: comparison between three diagnostic methods. Arq Bras Cardiol 2009; 93:85-91.,1010. Grundy SM. Metabolic syndrome update. Trends Cardiovasc Med 2016; 26:364-73.,1111. Botoseneanu A, Ambrosius WT, Beavers DP, de Rekeneire N, Anton S, Church T, et al. Prevalence of metabolic syndrome and its association with physical capacity, disability, and self-rated health in Lifestyle Interventions and Independence for Elders Study participants. J Am Geriatr Soc 2015; 63:222-32..

Given the accelerated growth of the elderly population in Brazil and the world 1212. World Health Organization. World report on ageing and health. Geneva: World Health Organization; 2015., alongside the phenomenon of “inflammaging” 1313. Franceschi C, Campisi J. Chronic inflammation (inflammaging) and its potential contribution to age-associated diseases. J Gerontol A Biol Sci Med Sci 2014; 69 Suppl 1:S4-9., namely the higher degree of inflammation in the elderly population, it is obviously important to elucidate the role of inflammatory state as a component of the metabolic syndrome phenotype in this age group. This inflammatory profile is commonly associated with various noncommunicable diseases (NCDs) and their risk factors, common in the elderly population, as with the features of metabolic syndrome itself (obesity, dyslipidemia, hypertension, and diabetes) 1414. Kwasniewska M, Kozinska J, Dziankowska-Zaborszczyk E, Kostka T, Jegier A, Rebowska E, et al. The impact of long-term changes in metabolic status on cardiovascular biomarkers and microvascular endothelial function in middle-aged men: a 25-year prospective study. Diabetol Metab Syndr 2015; 7:81.,1515. Cao H. Adipocytokines in obesity and metabolic disease. J Endocrinol 2014; 220:T47-59.,1616. Chedraui P, Escobar GS, Pérez-López FR, Palla G, Montt-Guevara M, Cecchi E, et al. Angiogenesis, inflammation and endothelial function in postmenopausal women screened for the metabolic syndrome. Maturitas 2014; 77:370-4.,1717. Chen L, Yang Z, Lu B, Li Q, Ye Z, He M, et al. Serum CXC ligand 5 is a new marker of subclinical atherosclerosis in type 2 diabetes. Clin Endocrinol (Oxf) 2011; 75:766-70.,1818. Choi KM, Ryu OH, Lee KW, Kim HY, Seo JA, Kim SG, et al. Serum adiponectin, interleukin-10 levels and inflammatory markers in the metabolic syndrome. Diabetes Res Clin Pract 2007; 75:235-40.,1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2020. Anuurad E, Mirsoian A, Enkhmaa B, Zhang W, Beckett LA, Murphy WJ, et al. Attenuated age-impact on systemic inflammatory markers in the presence of a metabolic burden. PLoS One 2015; 10:e0121947.. Still, there is no consensus as to the best inflammatory marker or combination of markers that is most consistently associated with metabolic syndrome in this population group 1414. Kwasniewska M, Kozinska J, Dziankowska-Zaborszczyk E, Kostka T, Jegier A, Rebowska E, et al. The impact of long-term changes in metabolic status on cardiovascular biomarkers and microvascular endothelial function in middle-aged men: a 25-year prospective study. Diabetol Metab Syndr 2015; 7:81.,2121. Srikanthan K, Feyh A, Visweshwar H, Shapiro JI, Sodhi K. Systematic review of metabolic syndrome biomarkers: a panel for early detection, management, and risk stratification in the West Virginian population. Int J Med Sci 2016; 13:25-38.,2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,2323. Zakynthinos E, Pappa N. Inflammatory biomarkers in coronary artery disease. J Cardiol 2009; 53:317-33.. Previous studies among the older adults have only reported a positive association between metabolic syndrome and increased levels of interleukin 6 (IL-6) and C-reactive protein (CRP) 2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,2424. Christiana UI, Casimir AE, Nicholas AA, Christian MC, Obiefuna AI. Plasma levels of inflammatory cytokines in adult Nigerians with the metabolic syndrome. Niger Med J 2016; 57:64-8.,2525. Stenholm S, Koster A, Alley DE, Visser M, Maggio M, Harris TB, et al. Adipocytokines and the metabolic syndrome among older persons with and without obesity: the InCHIANTI study. Clin Endocrinol (Oxf) 2010; 73:55-65.,2626. Samaras K, Crawford J, Baune BT, Campbell LV, Smith E, Lux O, et al. The value of the metabolic syndrome concept in elderly adults: is it worth less than the sum of its parts? J Am Geriatr Soc 2012; 60:1734-41. but these associations have not been described in other populations 2727. Silva AO, Tibana RA, Karnikowski MGO, Funghetto SS, Prestes J. Inflammatory status in older women with and without metabolic syndrome: is there a correlation with risk factors? Clin Interv Aging 2013; 8:361-7.,2828. Ostan R, Bucci L, Cevenini E, Palmas MG, Pini E, Scurti A, et al. Metabolic syndrome in the offspring of centenarians: focus on prevalence, components, and adipokines. Age (Dordr) 2013; 35:1995-2007..

This lack of consensus on the association between metabolic syndrome and inflammatory markers may be explained at least partly by the different diagnostic criteria used for definition of the syndrome 33. Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults. Third Report of The National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evalution and Treatmentof High Blood Cholesterol in Adults (Adult Treatment Panel III) final report. JAMA 2001; 285:2486-97.,2929. Alberti KGMM, Zimmet P, Shaw J. Metabolic syndrome: a new world-wide definition. A consensus statement from the International Diabetes Federation. Diabet Med 2006; 23:469-80. and/or by the different ways of treating inflammatory markers used in the statistical analyses, using continuous measures (generally with log transformation) or categorized measures (using medians, tertiles, quartiles, etc.) 1616. Chedraui P, Escobar GS, Pérez-López FR, Palla G, Montt-Guevara M, Cecchi E, et al. Angiogenesis, inflammation and endothelial function in postmenopausal women screened for the metabolic syndrome. Maturitas 2014; 77:370-4.,1717. Chen L, Yang Z, Lu B, Li Q, Ye Z, He M, et al. Serum CXC ligand 5 is a new marker of subclinical atherosclerosis in type 2 diabetes. Clin Endocrinol (Oxf) 2011; 75:766-70.,1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2020. Anuurad E, Mirsoian A, Enkhmaa B, Zhang W, Beckett LA, Murphy WJ, et al. Attenuated age-impact on systemic inflammatory markers in the presence of a metabolic burden. PLoS One 2015; 10:e0121947.,3030. Herder C, Haastert B, Müller-Scholze S, Koenig W, Thorand B, Holle R, et al. Association of systemic chemokine concentrations with impaired glucose tolerance and type 2 diabetes results from the Cooperative Health Research in the Region of Augsburg Survey S4 (KORA S4). Diabetes 2005; 54 Suppl 2:S11-7.,3131. Ahonen TM, Saltevo JT, Kautiainen HJ, Kumpusalo EA, Vanhala MJ. The association of adiponectin and low-grade inflammation with the course of metabolic syndrome. Nutr Metab Cardiovasc Dis 2012; 22:285-91.,3232. Assunção LGS, Eloi-Santos SM, Peixoto SV. High sensitivity C-reactive protein distribution in the elderly: the Bambuí Cohort Study, Brazil. Braz J Med Biol Res 2012; 45:1284-6.,3333. Choi J, Joseph L, Pilote L. Obesity and C-reactive protein in various populations: a systematic review and meta-analysis. Obes Rev 2013; 14:232-44.,3434. Wu H, Qi Q, Yu Z, Sun Q, Wang J, Franco OH, et al. Independent and opposite associations of trunk and leg fat depots with adipokines, inflammatory markers, and metabolic syndrome in middle-aged and older Chinese men and women. J Clin Endocrinol Metab 2010; 95:4389-98., which hinders the identification of a cutoff point based on which one can show significant changes in the prevalence of the target outcomes.

The current study thus aimed to identify cutoff points in a wide range of inflammatory markers that best discriminate the occurrence of metabolic syndrome in community-dwelling older adults. The study also estimated the association between the inflammatory markers, using the cutoff points defined in this study, and the presence of metabolic syndrome, considering adjustment for potential confounding factors.

Methodology

Study population and data collection

The Bambuí Health and Aging Study is a prospective population-based cohort study in the city of Bambuí in southwestern Minas Gerais State, Brazil, located 215km from Belo Horizonte. The study’s baseline was established in 1997, when the entire resident population 60 years and older (n = 1,742) was identified by a census and invited to participate.

The data were obtained from interviews, physical examination, and blood samples for laboratory tests. The interviews were held in the participants’ homes with trained interviewers using a standardized questionnaire. Physical examination and collection of blood samples were done at the project’s field clinic (Emmanuel Dias Advanced Studies Health Post) by trained examiners and using standardized instruments, except when the elderly individual was physically unable to attend at the clinic, and in this case the procedures were performed at the participant’s home 3535. Lima-Costa MF, Firmo JO, Uchoa E. Cohort profile: The Bambuí (Brazil) Cohort Study of Ageing. Int J Epidemiol 2011; 40:862-7..

The cohort’s baseline was approved by the Institutional Review Board of the Oswaldo Cruz Foundation, and all the participants signed a free and informed consent form to participate in the study.

Study outcomes: inflammatory markers

To titrate the biomarkers, a 5mL blood sample was drawn by venipuncture using the vacuum blood collection system (Vacutainer, Becton Dickinson, USA) in a tube containing sodium heparin. Participants were instructed to fast for 12 hours before the blood draw, and the samples were centrifuged, refrigerated, and later transferred to the René Rachou Institute, Oswaldo Cruz Foundation, Belo Horizonte, having been stored in a freezer at -80ºC.

The serum levels were subsequently determined for interleukins (IL-1β, IL-6, IL-10, IL-12, and tumor necrosis factor - TNF), chemokines (CXCL8, CXCL9, CCL2, CXCL10, and CCL5), and ultrasensitive CRP (CRP-us). Multiplex flow cytometry (CBA immunoassay kit, Becton Dickinson, USA) was used for quantitative determination of cytokines (human inflammatory kit) and chemokines (human chemokines kit). The CBA inflammatory kit includes beads coupled with the monoclonal antibody (moAb) against cytokines IL-1β, IL-6, TNF, IL-12, and IL-10, and the CBA chemokines kit detects CXCL8, CXCL9, CXCL10, CCL2, and CCL5. Anti-cytokine antibodies were used, labeled with phycoerythrin to indicate the mean fluorescence intensity (MFI). MFI data were obtained with the FACSVerse flow cytometer (Becton Dickinson, USA), and the concentrations in pg/mL were calculated with the BD FCAP Array 3.0 software (Becton Dickinson, USA), based on standard concentration curves expressed in pg/mL. Intra- and inter-assay coefficients of variation were 5-10% and 7-12%, respectively 3636. Torres KCL, Rezende VB, Lima-Silva ML, Santos LJS, Costa CG, Mambrini JVM, et al. Immune senescence and biomarkers pro?le of Bambuí aged population based cohort. Exp Gerontol 2018; 103:47-56.. C-reactive protein was obtained automatically by the immunonephelometric method and expressed in mg/L (BNII, Dade Behring, Germany).

Explanatory variable: metabolic syndrome

Metabolic syndrome was defined according to the criteria of the National Cholesterol Education Program’s Adult Treatment Panel III (NCEP-ATPIII) and recommended by the 1st Brazilian Consensus on Diagnosis and Treatment of Metabolic Syndrome (I-DBSM). According to these criteria, metabolic syndrome was defined as the presence of at least three alterations among five components, namely: (a) fasting blood glucose ≥ 110mg/dL; (b) blood pressure ≥ 130/85mmHg; (c) triglycerides ≥ 150mg/dL; (d) HDL-cholesterol < 40mg/dL in men and < 50mg/dL in women; and (e) waist circumference > 102cm in men and > 88cm in women. The definition also considered treatment with the use of lipid-lowering, glucose-lowering, and antihypertensive drugs 22. Sociedade Brasileira de Cardiologia. I Diretriz Brasileira de Diagnóstico e Tratamento da Síndrome Metabólica. Arq Bras Cardiol 2005; 84 Suppl 1:3-28.,33. Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults. Third Report of The National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evalution and Treatmentof High Blood Cholesterol in Adults (Adult Treatment Panel III) final report. JAMA 2001; 285:2486-97..

Waist circumference was measured with a flexible, inelastic tape measure with the subject in standing position, at the midpoint between the last rib and the iliac crest 3737. Jelliffe DB. The assessment of nutrition states of the community. Geneva: World Health Organization; 1996.. Fasting serum glucose, HDL cholesterol, and triglycerides were measured after the recommended 12-hour fast, using an automatic analyzer (Eclipse Vitalab, Merck, Netherlands). Blood pressure was measured with a mercury sphygmomanometer (Tyco’s 5097-30, USA) and stethoscope (Littman’s Cardiology II, USA). Three measurements were taken at two-minute intervals at least 30 minutes after the last dose of caffeine or cigarettes, and the mean of the last two measurements was used 3838. The fifth report of the Joint National Committee on Detection, Evaluation, and Treatment of High Blood Pressure (JNC V). Arch Intern Med 1993; 153:154-83..

Potential confounding factors

Potential confounding factors included characteristics that were associated with both the inflammatory markers and metabolic syndrome in previous studies 1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,2525. Stenholm S, Koster A, Alley DE, Visser M, Maggio M, Harris TB, et al. Adipocytokines and the metabolic syndrome among older persons with and without obesity: the InCHIANTI study. Clin Endocrinol (Oxf) 2010; 73:55-65.,2828. Ostan R, Bucci L, Cevenini E, Palmas MG, Pini E, Scurti A, et al. Metabolic syndrome in the offspring of centenarians: focus on prevalence, components, and adipokines. Age (Dordr) 2013; 35:1995-2007.,3434. Wu H, Qi Q, Yu Z, Sun Q, Wang J, Franco OH, et al. Independent and opposite associations of trunk and leg fat depots with adipokines, inflammatory markers, and metabolic syndrome in middle-aged and older Chinese men and women. J Clin Endocrinol Metab 2010; 95:4389-98.,3939. Wang Z, Shen X-H, Feng W-M, Qiu W. Mast cell specific immunological biomarkers and metabolic syndrome among middle-aged and older Chinese adults. Endocr J 2017; 64:245-53.,4040. Dallmeier D, Larson MG, Wang N, Fontes JD, Benjamin EJ, Fox CS. Addition of inflammatory biomarkers did not improve diabetes prediction in the community: The Framingham Heart Study. J Am Heart Assoc 2012; 1:e000869.. These factors included: sociodemographic characteristics (sex, age, and schooling), health behaviors (smoking, alcohol intake, and physical activity), health conditions (arthritis, stroke, acute myocardial infarction, depressive symptoms, cognitive impairment, positive serology for Trypanosoma cruzi), and use of anti-inflammatory drugs.

Smokers were defined as individuals that reported having smoked at least 100 cigarettes in their lives and continued smoking at the time of the interview. Alcohol consumption was defined as weekly consumption of seven doses or more in the 12 months prior to the interview 4141. National Institute on Alcohol Abuse and Alcoholism. Older adults. https://www.niaaa.nih.gov/alcohol-healht/special-populations-co-occuring-disorders/older-adults (acessado em Jun/2018).
https://www.niaaa.nih.gov/alcohol-healht...
. To define “doses”, participants were shown cards with the amount of liquid corresponding to a dose of beer, wine, or distilled liquor. Physical activity was assessed by the report of 23 activities practiced in the previous 90 days in all the domains, then converted into energy expenditure (metabolic equivalents - MET). Insufficient physical activity was defined as energy expenditure less than 450MET minute/week 4242. Ramalho JRO, Lima-Costa MF, Firmo JOA, Peixoto SV. Energy expenditure through physical activity in a population of community-dwelling Brazilian elderly: cross-sectional evidences from the Bambuí Cohort Study of Aging. Cad Saúde Pública 2011; 27 Suppl 3:S399-408..

History of acute myocardial infarction and arthritis was defined as prior medical diagnosis of these conditions, and the occurrence of stroke was assessed according to a specific protocol (Plan and Operation of the Third National Health and Nutrition Examination Survey 1988-1994). Presence of depressive symptoms was defined as a score of five or greater on the General Health Questionnaire (GHQ-12), as recommended for this population 4343. Costa E, Barreto SM, Uchoa E, Firmo JOA, Lima-Costa MF, Prince M. Is the GDS-30 better than the GHQ-12 for screening depression in elderly people in the community? The Bambui Health Aging Study (BHAS). Int Psychogeriatr 2006; 18:493-503.. Cognitive impairment was assessed by the Mini-Mental State Examination (MMSE) and defined as a score below 22, which corresponds to the lower quartile of the elderly population in Bambuí 4444. Castro-Costa E, Lima-Costa MF, Carvalhais S, Firmo JOA, Uchoa E. Factors associated with depressive symptoms measured by the 12-item General Health Questionnaire in Community-Dwelling Older Adults (The Bambuí Health Aging Study). Rev Bras Psiquiatr 2008; 30:104-9.. The study also included the use of anti-inflammatory drugs in the 90 days prior to the interview, assessed by observation of the package label or medical prescription, coded by the Anatomical Therapeutic Chemical (ATC) classification system (World Health Organization Collaborating Cnetre for Drugs Statistics Methodology. ATC/DDD index. https://www.whocc.no/atc_ddd_index).

Since Bambuí is an endemic area for Chagas disease, T. cruzi infection was considered a potential confounder in the analysis. Infection was investigated with three different serological tests: hemagglutination assay (Biolab Merieux S.A., Brazil) and two immunoenzymatic assays (ELISA) (Abbott Laboratories, Inc., USA; and Wiener Laboratories, Argentina). Infection was defined as positive serology in all three tests, and absence of infection when all three results were negative.

Data analyses

The study population’s characteristics were described, as well as the presence or absence of metabolic syndrome, using proportions or means according to the nature of the variables. The groups were compared by Pearson’s chi-square test for comparison of proportions or Student’s t-test for comparison of means.

Categorization of the biomarkers used the CART method (Classification and Regression Tree), an empirical technique based on analysis of the data’s recursive partitioning. Since it does not require parametric assumptions, the method readily accommodates the analysis of highly asymmetric variables (as in the case of the cytokines here), in addition to multimodal or categorical variables.

The method involves the sample’s segregation via progressive binary divisions in order to obtain the most internally homogeneous subgroups possible, and heterogeneous between each other. The method was used in this study for the definition of cutoff points for each of the inflammatory markers, aimed at comprising homogeneous groups in relation to the presence of metabolic syndrome, and thus discriminating between individuals with and without metabolic syndrome in the population. The method’s implementation used (as conditions for interrupting the process of partitioning the dataset) the formation of a maximum of three groups, each consisting of at least 30 participants.

After defining these cutoff points by the method described above, we conducted the frequency distribution for each biomarker in the total population and between the groups with and without metabolic syndrome, comparing these proportions by Pearson’s chi-square test. We then estimated the odds ratios (OR) and respective 95% confidence intervals (95%CI), with the biomarkers as the outcome and metabolic syndrome as the principal exposure, without adjusting (crude model) and including progressive adjustment of the variables: model 1, adjusted by the sociodemographic factors and model 2: including sociodemographic factors plus health behaviors, health conditions, and use of anti-inflammatory drugs. These models were estimated by binary or multinomial logistic regression for the biomarkers categorized in two or three levels, respectively. An additional analysis verified the association between metabolic syndrome and the number of biomarkers with positive association and the number of biomarkers with negative association among those with significant association in the previous analysis, using multinomial logistic regression without adjustment and adjusted for all the confounders considered in the study.

The statistical analyses used the Stata package, version 13.0 (http://www.stata.com), except for determination of the cutoff points for the inflammatory markers by the CART method, which used the rpart package in the R environment (http://www.-r-project.org). All statistical tests were performed with 5% level of significance.

Results

Of the 1,742 older adults individuals residing in the city of Bambuí and invited to participate in the baseline cohort, 1,606 (92.2%) were interviewed and 1,333 (83%) had all the information used in the current study and were included in this analysis. Of these, 654 (49.1%) presented metabolic syndrome according to the NCEP-ATPIII criteria.

Table 1 shows the distribution of the study population’s characteristics and the association between these variables and the presence of metabolic syndrome. Participants’ mean age was 68.8 years (SD = 6.9), and the majority were women (61.4%) and had low schooling (63.2%). Current smoking was observed in 17.5% of the elderly, 5.3% consumed seven or more doses of alcoholic beverages per week, and 26.6% were classified as practicing insufficient physical activity. Among the health conditions that were assessed, the most frequent were presence of depressive symptoms (37.4%), positive serology for T. cruzi (37.2%), and history of medical diagnosis of arthritis/rheumatism (26.1%). All the variables listed in the table showed a significant association (p < 0.05) with metabolic syndrome except for history of medical diagnosis of myocardial infarction and stroke.

Table 1
Characteristics of study population according to diagnosis of metabolic syndrome. Baseline elderly cohort, Bambuí Health and Aging Study, Bambuí, Minas Gerais State, Brazil.

Table 2 describes the distribution of inflammatory markers using the cutoff points defined in the study by the CART method, according to diagnosis of metabolic syndrome. This method demonstrated that the best discrimination between individuals with and without metabolic syndrome in the population was with two cutoff points for three markers (IL-6, CXCL9, and CXCL10), generating three groups, and only one cutoff point for the other markers, generating two categories for these variables (IL-10, CXCL8, CCL2, CCL5, and CRP). All the markers showed significant associations (p < 0.05) with metabolic syndrome, without adjusting for the confounding factors. In general, elevated levels of IL-6 and CRP and intermediate levels of CXCL10 were more frequent in individuals with metabolic syndrome. On the other hand, the group with metabolic syndrome showed lower levels of IL-10, CXCL8, CCL2, and CCL5, besides intermediate levels of CXCL9.

Table 2
Distribution of inflammatory markers using the cutoff points determined by the study, according to diagnosis of metabolic syndrome. Baseline elderly cohort, Bambuí Health and Aging Study, Bambuí, Minas Gerais State, Brazil.

For IL-1β, IL-12, and TNF, the CART method was not capable of obtaining cutoff points that discriminated between groups with and without metabolic syndrome, indicating lack of significant association between these variables.

Table 3 shows the association of metabolic syndrome with the inflammatory markers, using the cutoff points defined in the study, considering the crude model and the model adjusted for potential confounders. After adjustment, metabolic syndrome was significantly and positively associated with intermediate (OR = 2.25; 95%CI: 1.26-4.05) and high IL-6 (OR = 3.15; 95%CI: 1.86-5.35), high CRP (OR = 2.49; 95%CI: 1.95-3.17), and intermediate CXCL10 (OR = 1.53; 95%CI: 1.17-1.98). Meanwhile, presence of metabolic syndrome was significantly and inversely associated with high CXCL8 (OR = 0.71; 95%CI: 0.55-0.93), high CCL5 (OR = 0.69; 95%CI: 0.52-0.91), and intermediate CXCL9 (OR = 0.75; 95%CI: 0.57-0.99).

Table 3
Association of biomarkers with metabolic syndrome in the study population, without and with adjustment for confounders. Baseline elderly cohort, Bambuí Health and Aging Study, Bambuí, Minas Gerais State, Brazil.

Table 4 shows the association of metabolic syndrome with the number of altered biomarkers (above the established cutoff points) among those with positive or negative associations with metabolic syndrome in the previous analysis. After adjusting for all the factors included in the study, metabolic syndrome was significantly associated with higher number of altered markers, both in the group with positive associations and that with negative associations. Among the markers with positive associations (IL-6, CXCL10, and CRP), MS increased the odds by more than fourfold (OR = 4.42; 95%CI: 1.25-15.62) of having a marker above the defined cutoff point, more than eightfold (OR = 8.46; 95%CI: 2.42-29.54) of having two altered markers, and by nearly 14 times (OR = 13.84; 95%CI: 3.93-48.74) of having three markers above the defined levels. Meanwhile, for the group of markers with negative associations (CXCL8, CCL5, and CXCL9), MS significantly reduced the odds of observing two (OR = 0.65; 95%CI: 0.47-0.91) or three (OR = 0.50; 95%CI: 0.29-0.88) inflammatory markers above the defined cutoff points.

Table 4
Association of number of biomarkers with metabolic syndrome in the study population, without and with adjustment for confounders. Baseline elderly cohort, Bambuí Health and Aging Study, Bambuí, Minas Gerais State, Brazil.

Discussion

The study’s results show a wide range of inflammatory markers associated with metabolic syndrome in the elderly besides those previously described in the literature, and also allowed identifying the levels at which each of these markers differentiated between individuals in the population with and without the syndrome, independently of other relevant factors considered in the analysis. In general, metabolic syndrome was positively associated with increased levels of IL-6, CXCL10, and CRP and negatively associated with increased levels of CCL5, CXCL8, and CXCL9, besides showing a consistent association with the number of altered markers, even after adjusting for the confounders measured in the study.

It is difficult to compare the results from previous studies of the elderly on the association between metabolic syndrome and inflammatory markers, because although the criterion used to define metabolic syndrome was the same as that in the current study (NCEP/ATPIII), the markers are treated differently, especially in the distribution’s percentiles 2424. Christiana UI, Casimir AE, Nicholas AA, Christian MC, Obiefuna AI. Plasma levels of inflammatory cytokines in adult Nigerians with the metabolic syndrome. Niger Med J 2016; 57:64-8.,2525. Stenholm S, Koster A, Alley DE, Visser M, Maggio M, Harris TB, et al. Adipocytokines and the metabolic syndrome among older persons with and without obesity: the InCHIANTI study. Clin Endocrinol (Oxf) 2010; 73:55-65.. Some authors suggest replacing this random categorization of continuous variables with other methods to better test the hypothesis of the association between exposure and outcome 4545. Bennette C, Vickers A. Against quantiles: categorization of continuous variables in epidemiologic research, and its discontents. BMC Med Res Methodol 2012; 12:21-5., which would allow a more detailed study of the distribution of these variables in the different groups for comparison.

The current study thus adds to the existing knowledge by using a categorization method (CART) which allowed identification of the cutoff points for the inflammatory markers that showed the highest discriminatory power in relation to metabolic syndrome. In general, the levels of markers obtained for the elderly in Bambuí were lower than those previously reported in the literature for some metabolic disorders, such as cardiovascular diseases and type 2 diabetes, among others 1616. Chedraui P, Escobar GS, Pérez-López FR, Palla G, Montt-Guevara M, Cecchi E, et al. Angiogenesis, inflammation and endothelial function in postmenopausal women screened for the metabolic syndrome. Maturitas 2014; 77:370-4.,1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,4646. Lubrano C, Valacchi G, Specchia P, Gnessi L, Rubanenko EP, Shuginina EA, et al. Integrated haematological profiles of redox status, lipid, and inflammatory protein biomarkers in benign obesity and unhealthy obesity with metabolic syndrome. Oxid Med Cell Longev 2015; 2015:490613.,4747. Kanbak G, Akalin A, Dokumacioglu A, Ozcelik E, Bal C. Cardiovascular risk assessment in patients with type 2 diabetes mellitus and metabolic syndrome: role of biomarkers. Diabetes Metab Syndr 2011; 5:7-11.. These results suggest that the metabolic events may be associated with much lower levels of these inflammatory markers, as observed in Bambuí, which should be considered in epidemiological studies on these associations and the potential application of this knowledge to the early detection of metabolic syndrome in clinical practice.

CRP and IL-6 (a pleiotropic inflammatory cytokine), with synthesis in the liver, blood vessels, adipocytes, and muscle, are biomarkers related to acute systemic inflammation and can activate insulin receptors and glucose metabolism and cause resistance and endothelial dysfunction, including atherosclerosis, infection, and systemic tissue injury 4848. Cohen MC, Cohen S. Cytokine function: a study in biologic diversity. Am J Clin Pathol 1996; 105:589-98.,4949. Kerr R, Stirling D, Ludlam CA. Interleukin 6 and haemostasis. Br J Haematol 2001; 115:3-12.,5050. Pepys MB, Hirschfield GM. C-reactive protein: a critical update. J Clin Invest 2003; 111:1805-12.,5151. Singh T, Newman AB. Inflammatory markers in population studies of aging. Ageing Res Rev 2011; 10:319-29.. Increased plasma concentrations of these markers have been associated with numerous clinical conditions, including phenotypes for metabolic risk, such as obesity, type 2 diabetes, hypertension, and other cardiovascular diseases 1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2020. Anuurad E, Mirsoian A, Enkhmaa B, Zhang W, Beckett LA, Murphy WJ, et al. Attenuated age-impact on systemic inflammatory markers in the presence of a metabolic burden. PLoS One 2015; 10:e0121947.,2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,4848. Cohen MC, Cohen S. Cytokine function: a study in biologic diversity. Am J Clin Pathol 1996; 105:589-98.,5252. Ahonen TM, Saltevo JT, Kautiainen HJ, Kumpusalo EA, Vanhala MJ. The association of adiponectin and low-grade inflammation with the course of metabolic syndrome. Nutr Metab Cardiovasc Dis 2012; 22:285-91.,5353. Timpson NJ, Nordestgaard BG, Harbord RM, Zacho J, Frayling TM, Tybjærg-Hansen A, et al. C-reactive protein levels and body mass index: Elucidating direction of causation through reciprocal Mendelian randomization. Int J Obes (Lond) 2011; 35:300-8.,5454. Haffner SM. The metabolic syndrome: inflammation, diabetes mellitus, and cardiovascular disease. Am J Cardiol 2006; 97:3A-11A.,5555. Scuteri A, Orru' M, Morrell C, Piras MG, Taub D, Schlessinger D, et al. Independent and addtive effects of cytokine patterns an the metabolic syndrome on arterial aging in the Scardinia Study. Atherosclerosis 2011; 215:459-64.,5656. Froulich M, Imhof A, Berg G, Hutchinson WL, Pepys MB, Boeing H, et al. Association between c-reactive protein and features of the metabolic syndrome. Diabetes Care 2000; 23:1835-9.,5757. Funghetto SS, Silva AO, de Sousa NMF, Stival MM, Tibana RA, Pereira LC, et al. Comparison of percentage body fat and body mass index for the prediction of inflammatory and atherogenic lipid risk profiles in elderly women. Clin Interv Aging 2015; 10:247-53.,5858. Silva B, Camões M, Simões M, Bezerra P. Obesity, physical fitness and inflammation in the elderly. Geriatrics 2017; 2:2040030.,5959. Collins KH, Herzog W, MacDonald GZ, Reimer RA, Rios JL, Smith IC, et al. Obesity, metabolic syndrome, and musculoskeletal disease: common inflammatory pathways suggest a central role for loss of muscle integrity. Front Physiol 2018; 9:112. and metabolic syndrome itself 2020. Anuurad E, Mirsoian A, Enkhmaa B, Zhang W, Beckett LA, Murphy WJ, et al. Attenuated age-impact on systemic inflammatory markers in the presence of a metabolic burden. PLoS One 2015; 10:e0121947.,3939. Wang Z, Shen X-H, Feng W-M, Qiu W. Mast cell specific immunological biomarkers and metabolic syndrome among middle-aged and older Chinese adults. Endocr J 2017; 64:245-53.,5858. Silva B, Camões M, Simões M, Bezerra P. Obesity, physical fitness and inflammation in the elderly. Geriatrics 2017; 2:2040030.,6060. Ouchi N, Parker JL, Lugus JJ, Walsh K. Adipokines in inflammation and metabolic disease. Nat Rev Immunol 2011; 11:85-97.,6161. Rodríguez-Hernández H, Simental-Mendía LE, Rodríguez-Ramírez G, Reyes-Romero MA. Obesity and inflammation: epidemiology, risk factors, and markers of inflammation. Int J Endocrinol 2013; 2013:678159.. However, the results described in Bambuí show that this association was already present at lower levels of these markers (above 0.035pg/mL for IL-6 and 2.435mg/L for CRP), contrary to previous reports. Values from 3 to 48.5mg/L for CRP 1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2020. Anuurad E, Mirsoian A, Enkhmaa B, Zhang W, Beckett LA, Murphy WJ, et al. Attenuated age-impact on systemic inflammatory markers in the presence of a metabolic burden. PLoS One 2015; 10:e0121947.,2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,2525. Stenholm S, Koster A, Alley DE, Visser M, Maggio M, Harris TB, et al. Adipocytokines and the metabolic syndrome among older persons with and without obesity: the InCHIANTI study. Clin Endocrinol (Oxf) 2010; 73:55-65.,2626. Samaras K, Crawford J, Baune BT, Campbell LV, Smith E, Lux O, et al. The value of the metabolic syndrome concept in elderly adults: is it worth less than the sum of its parts? J Am Geriatr Soc 2012; 60:1734-41.,3939. Wang Z, Shen X-H, Feng W-M, Qiu W. Mast cell specific immunological biomarkers and metabolic syndrome among middle-aged and older Chinese adults. Endocr J 2017; 64:245-53.,6262. Ueba T, Nomura S, Inami N, Yokoi T, Inoue T. Elevated RANTES level is associated with metabolic syndrome and correlated with activated platelets associated markers in healthy younger men. Clin Appl Thromb Hemost 2014; 20:813-8. and 1.24 to 36.9pg/mL for IL-6 1919. Fernández-Bergés D, Consuegra-Sánchez L, Peñafiel J, Cabrera de León A, Vila J, Félix-Redondo FJ, et al. Metabolic and inflammatory profiles of biomarkers in obesity, metabolic syndrome, and diabetes in a Mediterranean population. DARIOS Inflammatory study. Rev Esp Cardiol 2014; 67:624-31.,2525. Stenholm S, Koster A, Alley DE, Visser M, Maggio M, Harris TB, et al. Adipocytokines and the metabolic syndrome among older persons with and without obesity: the InCHIANTI study. Clin Endocrinol (Oxf) 2010; 73:55-65.,2626. Samaras K, Crawford J, Baune BT, Campbell LV, Smith E, Lux O, et al. The value of the metabolic syndrome concept in elderly adults: is it worth less than the sum of its parts? J Am Geriatr Soc 2012; 60:1734-41.,2828. Ostan R, Bucci L, Cevenini E, Palmas MG, Pini E, Scurti A, et al. Metabolic syndrome in the offspring of centenarians: focus on prevalence, components, and adipokines. Age (Dordr) 2013; 35:1995-2007.,6363. Shin MJ, Lee KH, Chung JH, Park YK, Choi MK, Oh J, et al. Circulating IL-8 levels in heart failure patients with and without metabolic syndrome. Clin Chim Acta 2009; 405:139-42. have been described in various populations, always higher than the cutoff points observed in the current study. One can thus suggest that the use of cutoff points based on the sampling distribution, such as distribution percentiles (the strategy adopted by most of the above-mentioned studies), may not adequately demonstrate the levels of biomarkers based on which metabolic syndrome may be more frequent in the population.

Besides the markers classically described in the literature, the current study showed that metabolic syndrome was associated with lower levels of CCL5, CXCL8, and CXCL9 and higher levels of CXCL10, although the latter two markers were only associated significantly at intermediate levels. Although these associations had not been reported previously in the literature, the results support the hypothesis that metabolic syndrome is accompanied by inflammatory state 4040. Dallmeier D, Larson MG, Wang N, Fontes JD, Benjamin EJ, Fox CS. Addition of inflammatory biomarkers did not improve diabetes prediction in the community: The Framingham Heart Study. J Am Heart Assoc 2012; 1:e000869., thus contributing to the understanding of alterations in inflammatory profile in the presence of metabolic syndrome. Aging is accompanied by redistribution of body fat, especially in the abdominal region, which can contribute to changes in inflammatory state, due mainly to production of proinflammatory molecules by adipocytes and macrophages in the adipose tissue, leading to metabolic dysfunction and modification of the unfavorable inflammatory profile 2828. Ostan R, Bucci L, Cevenini E, Palmas MG, Pini E, Scurti A, et al. Metabolic syndrome in the offspring of centenarians: focus on prevalence, components, and adipokines. Age (Dordr) 2013; 35:1995-2007.,6060. Ouchi N, Parker JL, Lugus JJ, Walsh K. Adipokines in inflammation and metabolic disease. Nat Rev Immunol 2011; 11:85-97.,6262. Ueba T, Nomura S, Inami N, Yokoi T, Inoue T. Elevated RANTES level is associated with metabolic syndrome and correlated with activated platelets associated markers in healthy younger men. Clin Appl Thromb Hemost 2014; 20:813-8., which could lead to an association between metabolic syndrome and these markers.

The role of CCL5, CXCL8, and CXCL9 as markers is similar in relation to the reduction in monocytes/macrophages in the injured vessel, chemotactic regulation of T-lymphocyte extravasation, and recruitment to the adipose tissue, pancreas, muscle, and liver, which are target organs for the initiation and maintenance of characteristic disorders in metabolic syndrome. These results are consistent with the pathogenesis of diabetes, atherosclerosis, and heart failure 3030. Herder C, Haastert B, Müller-Scholze S, Koenig W, Thorand B, Holle R, et al. Association of systemic chemokine concentrations with impaired glucose tolerance and type 2 diabetes results from the Cooperative Health Research in the Region of Augsburg Survey S4 (KORA S4). Diabetes 2005; 54 Suppl 2:S11-7.,4747. Kanbak G, Akalin A, Dokumacioglu A, Ozcelik E, Bal C. Cardiovascular risk assessment in patients with type 2 diabetes mellitus and metabolic syndrome: role of biomarkers. Diabetes Metab Syndr 2011; 5:7-11.,4949. Kerr R, Stirling D, Ludlam CA. Interleukin 6 and haemostasis. Br J Haematol 2001; 115:3-12.,6262. Ueba T, Nomura S, Inami N, Yokoi T, Inoue T. Elevated RANTES level is associated with metabolic syndrome and correlated with activated platelets associated markers in healthy younger men. Clin Appl Thromb Hemost 2014; 20:813-8.,6363. Shin MJ, Lee KH, Chung JH, Park YK, Choi MK, Oh J, et al. Circulating IL-8 levels in heart failure patients with and without metabolic syndrome. Clin Chim Acta 2009; 405:139-42.,6464. Zychowska M, Rojewska E, Pilat D, Mika J. The role of some chemokines from the CXC subfamily in a mouse model of diabetic neuropathy. J Diabetes Res 2015; 2015:750182.,6565. Buraczynska M, Zukowski P, Wacinski P, Berger-Smyka B, Dragan M, Mozul S. Chemotactic cytokine receptor 5 gene polymorphism: relevance to microvascular complications in type 2 diabetes. Cytokine 2012; 58:213-7.. The results described in the elderly in Bambuí thus appear to contribute to more in-depth knowledge of the inflammatory changes that are present in metabolic syndrome and are consistent with the biological role of these markers, which had not been described previously in the literature as associated with metabolic syndrome.

Meanwhile, the chemokine CXCL10 has chemoattractant action on Th1 lymphocytes, which in turn secrete interferon gamma (IFN-γ) 6666. Antonelli A, Rotondi M, Fallahi P, Romagnani P, Ferrari SM, Ferrannini E, et al. Age-dependent changes in cxc chemokine ligand 10 serum levels in euthyroid subjects. J Interferon Cytokine Res 2005; 25:547-52., tending to promote activation and migration of monocytes and macrophages on the endothelial wall, leading to dysfunction and proliferation of smooth muscle cells and greater vascular permeability, resulting in the exacerbation of hypertension or complications such as atherosclerosis, cardiopathic hypertension, and hypertensive nephrosclerosis 6767. Martynowicz H, Janus A, Nowacki D, Mazur G. The role of chemokines in hypertension. Adv Clin Exp Med 2014; 23:319-25.. Likewise, there is evidence of interaction between CXCL10 and the CXCR3 receptor, a determinant of selective destruction of pancreatic β cells and the development of diabetes 6868. Uno S, Imagawa A, Saisho K, Okita K, Iwahashi H, Hanafusa T, et al. Expression of chemokines, CXC chemokine ligand 10 (CXCL10) and CXCR3 in the inflamed islets of patients with recent-onset autoimmune type 1 diabetes. Endocr J 2010; 57:991-6.. Such evidence thus also suggests the consistency between the association described in this study between metabolic syndrome and increased CXCL10 levels, although it is still necessary to understand the reason why this association is not maintained at very high levels (> 5.982pg/mL).

Beside the previously mentioned markers, other studies have also shown significant associations (although less consistent) between metabolic syndrome or its components, especially insulin resistance and visceral obesity, and IL-10 1818. Choi KM, Ryu OH, Lee KW, Kim HY, Seo JA, Kim SG, et al. Serum adiponectin, interleukin-10 levels and inflammatory markers in the metabolic syndrome. Diabetes Res Clin Pract 2007; 75:235-40.,6868. Uno S, Imagawa A, Saisho K, Okita K, Iwahashi H, Hanafusa T, et al. Expression of chemokines, CXC chemokine ligand 10 (CXCL10) and CXCR3 in the inflamed islets of patients with recent-onset autoimmune type 1 diabetes. Endocr J 2010; 57:991-6. TNF 5151. Singh T, Newman AB. Inflammatory markers in population studies of aging. Ageing Res Rev 2011; 10:319-29.,6969. Aroor AR, McKarns S, Demarco VG, Jia G, Sowers JR. Maladaptive immune and inflammatory pathways lead to cardiovascular insulin resistance. Metabolism 2013; 62:1543-52., and CCL2 levels 7070. Kim SH, Lee JW, Im JA, Hwang HJ. Monocyte chemoattractant protein-1 is related to metabolic syndrome and homocysteine in subjects without clinically significant atherosclerotic cardiovascular disease. Scand J Clin Lab Invest 2011; 71:1-6.,7171. Ghazarian M, Luck H, Revelo XS, Winer S, Winer DA. Immunopathology of adipose tissue during metabolic syndrome. Turk Patoloji Derg 2015; 31 Suppl 1:172-80.. Still, in some populations, as observed in the elderly in Bambuí, these associations either were not observed or presented conflicting results 2222. Mirhafez SR, Pasdar A, Avan A, Esmaily H, Moezzi A, Mohebati M, et al. Cytokine and growth factor profiling in patients with the metabolic syndrome. Br J Nutr 2015; 113:1911-9.,5555. Scuteri A, Orru' M, Morrell C, Piras MG, Taub D, Schlessinger D, et al. Independent and addtive effects of cytokine patterns an the metabolic syndrome on arterial aging in the Scardinia Study. Atherosclerosis 2011; 215:459-64.,6767. Martynowicz H, Janus A, Nowacki D, Mazur G. The role of chemokines in hypertension. Adv Clin Exp Med 2014; 23:319-25.,6868. Uno S, Imagawa A, Saisho K, Okita K, Iwahashi H, Hanafusa T, et al. Expression of chemokines, CXC chemokine ligand 10 (CXCL10) and CXCR3 in the inflamed islets of patients with recent-onset autoimmune type 1 diabetes. Endocr J 2010; 57:991-6.,6969. Aroor AR, McKarns S, Demarco VG, Jia G, Sowers JR. Maladaptive immune and inflammatory pathways lead to cardiovascular insulin resistance. Metabolism 2013; 62:1543-52.,7070. Kim SH, Lee JW, Im JA, Hwang HJ. Monocyte chemoattractant protein-1 is related to metabolic syndrome and homocysteine in subjects without clinically significant atherosclerotic cardiovascular disease. Scand J Clin Lab Invest 2011; 71:1-6.,7171. Ghazarian M, Luck H, Revelo XS, Winer S, Winer DA. Immunopathology of adipose tissue during metabolic syndrome. Turk Patoloji Derg 2015; 31 Suppl 1:172-80.. Such evidence appears to suggest lack of consistency in the association between metabolic syndrome and these biomarkers as reported in the elderly population in Bambuí.

The current study’s main limitation was its cross-sectional design, which did not allow establishing temporal relations between the study variables. However, this was a population-based study with data collected by trained examiners using standardized instruments, thus guaranteeing the data’s quality. The analysis also included a wide range of biomarkers and confounding factors, allowing to advance the knowledge already produced on the association of metabolic syndrome with inflammatory profile, besides identifying the cutoff points that best discriminate this association, which had not been described previously in the literature.

Therefore, our results emphasize that although the elderly present important changes in their inflammatory profile, caused by aging itself 3636. Torres KCL, Rezende VB, Lima-Silva ML, Santos LJS, Costa CG, Mambrini JVM, et al. Immune senescence and biomarkers pro?le of Bambuí aged population based cohort. Exp Gerontol 2018; 103:47-56.,7272. Vassileva V, Piquette-Miller M. Inflammation: the dynamic force of health and disease. Clin Pharmacol Ther 2014; 96:401-5., even after adjusting for various confounding factors, the presence of metabolic syndrome was significantly associated with alterations in various biomarkers, suggesting that this syndrome may represent an important component of the inflammatory process in the elderly population. In addition to the markers classically described in the literature, the current study’s results point to other biomarkers associated with metabolic syndrome, including at lower levels than those previously reported.

Acknowledgments

The authors wish to thank the Brazilian Ministry of Health (DECIT) and Ministry of Science and Technology (CNPq and FINEP) for supporting the project. A. Teixeira-Carvalho, O. A. Martins-Filho, M. F. Lima-Costa and S. V. Peixoto hold research scholarships from the CNPq.

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Publication Dates

  • Publication in this collection
    25 Mar 2019

History

  • Received
    01 July 2018
  • Reviewed
    13 Sept 2018
  • Accepted
    27 Sept 2018
Escola Nacional de Saúde Pública Sergio Arouca, Fundação Oswaldo Cruz Rio de Janeiro - RJ - Brazil
E-mail: cadernos@ensp.fiocruz.br