Comparison of Three Adiposity Indexes and Cutoff Values to Predict Metabolic Syndrome Among University Students

dc.contributor.authorTriana-Reina, Héctor Reynaldo
dc.contributor.authorMartínez-Torres, Javier
dc.contributor.authorPrieto-Benavides, Daniel Humberto
dc.contributor.authorRamos-Sepúlveda, Jeison Alexander
dc.contributor.authorAfanador-Rodríguez, María Isabel
dc.contributor.authorVilla-González, Emilio
dc.contributor.authorGarcía-Hermoso, Antonio
dc.contributor.authorRamírez-Vélez, Robinson
dc.contributor.authorCorrea Bautista, Jorge Enrique
dc.contributor.authorGonzález-Ruíz, Katherine
dc.contributor.authorVivas Díaz, Jose Andrés
dc.contributor.authorCarrillo Arango, Hugo Alejandro
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dc.date.accessioned2020-06-09T23:00:45Z
dc.date.available2020-06-09T23:00:45Z
dc.date.issued2017-04
dc.description.abstractPurpose: Obesity and high body fat are related to diabetes and metabolic syndrome (MetS) in all ethnic groups. Based on the International Diabetes Federation (IDF) definition of MetS, the aim of the present study was to compare body adiposity indexes (BAIs) and to assess their various cutoff values for the prediction of MetS in university students from Colombia. Methods: A cross-sectional study was conducted on 886 volunteers (51.9% woman; age mean 21.4 years). Anthropometric characteristics (height, weight, waist circumference [WC], and hip circumference [HC]) were measured, and body composition was assessed by bioelectrical impedance analysis. MetS was defined as including ‡3 of the metabolic abnormalities (WC, high-density lipoprotein cholesterol [HDL-C], triglycerides, fasting glucose, and systolic and diastolic blood pressure [BP]) in the definition provided by the IDF. The BAIs (i.e., BAI-HC [BAI], BAI-WC [BAI-w], and [BAI-p]) were calculated from formulas taking into account, height, weight, and WC, and for the visceral adiposity indexes, a formula, including WC, HDL-C, and triglycerides, was used. Results: The overall prevalence of MetS was 5.9%, higher in men than in women. The most prevalent com- ponents were low HDL-C, high triglyceride levels, WC, and BP levels. The receiver operating characteristic curves analysis showed that BAI, BAI-w, and BAI-p could be useful tools to predict MetS in this population. Conclusion: For women, the optimal MetS threshold was found to be 30.34 (area under curve [AUC] = 0.720–0.863), 19.10 (AUC = 0.799–0.925), and 29.68 (AUC= 0.779–0.901), for BAI, BAI-w, and BAI-p, respectively. For men, the optimal MetS threshold was found to be 27.83 (AUC= 0.726–0.873), 21.48 (AUC = 0.755–0.906), and 26.18 (AUC= 0.766–0.894), for BAI, BAI-w, and BAI-p, respectively. The three indexes can be useful tools to predict MetS according to the IDF criteria in university students from Colombia. Data on larger samples are needed.spa
dc.description.domainhttp://unidadinvestigacion.usta.edu.cospa
dc.format.mimetypeapplication/pdf
dc.identifier.citationCorrea-Bautista, J. E., González-Ruíz, K., Vivas, A., Triana-Reina, H. R., Martínez-Torres, J., Prieto-Benavides, D. H., Carrillo, H. A., Ramos-Sepúlveda, J. A., Afanador-Rodríguez, M. I., Villa-González, E., García-Hermoso, A., & Ramírez-Vélez, R. (2017). Comparison of Three Adiposity Indexes and Cutoff Values to Predict Metabolic Syndrome Among University Students. Metabolic syndrome and related disorders, 15(7), 363–370. https://doi.org/10.1089/met.2017.0016spa
dc.identifier.doihttps://doi.org/10.1089/met.2017.0016spa
dc.identifier.urihttp://hdl.handle.net/11634/24011
dc.publisher.branchCRAI-USTA Bogotáspa
dc.relation.referencesWorld Health Organization. Obesity and overweight. Available at www.who.int/mediacentre/factsheets/fs311/en/spa
dc.relation.referencesBooth A, Magnuson A, Fouts J, et al. Adipose tissue: An endocrine organ playing a role in metabolic regulation. Horm Mol Biol Clin Investig 2016;26:25–42.spa
dc.relation.referencesSmitka K, Maresˇova ́ D. Adipose Tissue as an Endocrine Or- gan: An update on pro-inflammatory and anti-inflammatory microenvironment. Prague Med Rep 2015;116:87–111.spa
dc.relation.referencesMattei J, Sotres-Alvarez D, Daviglus ML, et al. Diet quality and its association with cardiometabolic risk factors vary by hispanic and latino ethnic background in the hispanic community health study/Study of Latinos. J Nutr 2016; 146:2035–2044.spa
dc.relation.referencesEyre H, Kahn R, Robertson RM. Preventing cancer, car- diovascular disease, and diabetes: A common agenda for theAmerican Cancer Society, the American Diabetes As- sociation, and the American Heart Association. CA Cancer J Clin 2004;54:190–207.spa
dc.relation.referencesWildman RP, Muntner P, Reynolds K, et al. The obese without cardiometabolic risk factor clustering and the normal weight with cardiometabolic risk factor clustering: Prevalence and correlates of 2 phenotypes among the US population (NHANES 1999–2004). Arch Intern Med 2008; 168:1617–1624.spa
dc.relation.referencesDaviglus ML, Pirzada A, Talavera GA. Cardiovascular dis- ease risk factors in the Hispanic/Latino population: Lessons from the Hispanic Community Health Study/Study of Lati- nos (HCHS/SOL). Prog Cardiovasc Dis 2014;57:230–236.spa
dc.relation.referencesLlabre MM, Arguelles W, Schneiderman N, et al. Do all components of the metabolic syndrome cluster together in U.S. Hispanics/Latinos? Results from the Hispanic Com- munity Health study/Study of Latinos. Ann Epidemiol 2015; 25:480–485.spa
dc.relation.referencesMancuso P. The role of adipokines in chronic inflamma- tion. Immunotargets Ther 2016;5:47–56.spa
dc.relation.referencesChoe SS, Huh JY, Hwang IJ, et al. Adipose tissue re- modeling: Its role in energy metabolism and metabolic disorders. Front Endocrinol (Lausanne) 2016;7:30.spa
dc.relation.referencesRader DJ. Effect of insulin resistance, dyslipidemia, and intra-abdominal adiposity on the development of cardiovascular disease and diabetes mellitus. Am J Med 2007; 120(Suppl. 1):S12–S18.spa
dc.relation.referencesSnijder MB, Nicolaou M, van Valkengoed IG, et al. Newly proposed body adiposity index (bai) by Bergman et al. is not strongly related to cardiovascular health risk. Obesity (Silver Spring) 2012;20:1138–1139.spa
dc.relation.referencesAmato MC, Giordano C, Galia M, et al.; AlkaMeSy Study Group. Visceral adiposity index: A reliable indicator of visceral fat function associated with cardiometabolic risk. Diabetes Care 2010;33:920–922.spa
dc.relation.referencesRamı ́rez-Ve ́lez R, Correa-Bautista JE, Gonza ́lez-Ruı ́z K, et al. Predictive validity of the body adiposity index in overweight and obese adults using dual-energy x-ray ab- sorptiometry. Nutrients 2016;8. pii: E737.spa
dc.relation.referencesBergman RN, Stefanovski D, Buchanan TA, et al. A better index of body adiposity. Obesity (Silver Spring) 2011;19: 1083–1089.spa
dc.relation.referencesGeliebter A, Atalayer D, Flancbaum L, et al. Comparison of body adiposity index (BAI) and BMI with estimations of% body fat in clinically severe obese women. Obesity (Silver Spring) 2013;21:493–498.spa
dc.relation.referencesBernhard AB, Scabim VM, Serafim MP, et al. Modified body adiposity index for body fat estimation in severe obesity. J Hum Nutr Diet 2017;30:177–184.spa
dc.relation.referencesMora-Garcı ́a GJ, Go ́mez-Camargo D, Mazenett E, et al. Anthropometric parameters’ cut-off points and predictive value for metabolic syndrome in women from Cartagena, Colombia. Salud Publica Mex 2014;56:146–153.spa
dc.relation.referencesHingorjo MR, Zehra S, Imran E, et al. Neck circumference: A supplemental tool for the diagnosis of metabolic syn- drome. J Pak Med Assoc 2016;66:1221–1226.spa
dc.relation.referencesZaki ME, Kamal S, Reyad H, et al. The validity of body adiposity indices in predicting metabolic syndrome and its components among Egyptian women. Open Access Maced J Med Sci 2016;4:25–30.spa
dc.relation.referencesPourshahidi LK, Wallace JM, Mulhern MS, et al. Indices of adiposity as predictors of cardiometabolic risk and inflam- mation in young adults. J Hum Nutr Diet 2016;29:26–37.spa
dc.relation.referencesAlberti KG, Zimmet P, Shaw J. Metabolic syndrome—A new world-wide definition. A Consensus Statement from the International Diabetes Federation. Diabet Med 2006;23: 469–480.spa
dc.relation.referencesRamı ́rez-Ve ́lez R, Correa-Bautista JE, Lobelo F, et al. High muscular fitness has a powerful protective cardiometabolic effect in adults: Influence of weight status. BMC Public Health 2016;16:1012.spa
dc.relation.referencesWorld Health Organization. Obesity: Preventing and Managing the Global Epidemic. Report of a WHO con- sultation on obesity, 3–5 June 1997, WHO/NUT/NCD/98.1 1997, Geneva: WHO; 1997.spa
dc.relation.referencesRamı ́rez-Ve ́lez R, Correa-Bautista JE, Martı ́nez-Torres J, et al. LMS tables for waist circumference and waist-height ratio in Colombian adults: Analysis of nationwide data 2010. Eur J Clin Nutr 2016;70:1189–1196.spa
dc.relation.referencesThivel D, O’Malley G, Pereira B, et al. Comparison of total body and abdominal adiposity indexes to dual x-ray ab- sorptiometry scan in obese adolescents. Am J Hum Biol 2015;27:334–338.spa
dc.relation.referencesAmato MC, Giordano C, Galia M, et al. Visceral adiposity index: A reliable indicator of visceral fat function associ- ated with cardiometabolic risk. Diabetes Care 2010;33: 920–922.spa
dc.relation.referencesGonza ́lez-Ruı ́z K, Correa-Bautista JE, Ramı ́rez-Ve ́lez R. Body adiposity and its relationship of metabolic syndrome components in colombian adults. Nutr Hosp 2015;32:1468– 1475.spa
dc.relation.referencesNazare JA, Smith J, Borel AL, et al.; INSPIRE ME IAA Investigators. Usefulness of measuring both body mass index and waist circumference for the estimation of visceral adi- posity and related cardiometabolic risk profile (from the INSPIRE ME IAA study). Am J Cardiol 2015;115:307–315.spa
dc.relation.referencesSchuster J, Vogel P, Eckhardt C, et al. Applicability of the visceral adiposity index (VAI) in predicting components of metabolic syndrome in young adults. Nutr Hosp 2014; 30:806–812.spa
dc.relation.referencesMenke A, Muntner P, Wildman RP, et al. Measures of adiposity and cardiovascular disease risk factors. Obesity (Silver Spring) 2007;15:785–795.spa
dc.relation.referencesKnowles KM, Paiva LL, Sanchez SE, et al. Waist cir- cumference, body mass index, and other measures of adi- posity in predicting cardiovascular disease risk factors among peruvian adults. Int J Hypertens 2011;2011:931402.spa
dc.relation.referencesZhang ZQ, Liu YH, Xu Y, et al. The validity of the body adiposity index in predicting percentage body fat and car- diovascular risk factors among Chinese. Clin Endocrinol (Oxf ) 2014;81:356–362.spa
dc.relation.referencesDepartamento Administrativo Nacional de Estadı ́stica. Censo Genreal de 2005. Libro Censo General, 1st ed, DANE: Bogota ́; 2006.spa
dc.relation.referencesBautista LE, Casas JP, Herrera VM, et al. The Latin American Consortium of Studies in Obesity (LASO). Obes Rev 2009;10:364–370.spa
dc.relation.referencesSiervo M, Prado CM, Stephan BC, et al. Association of the body adiposity index (BAI) with metabolic risk factors in young and older overweight and obese women. Eat Weight Disord 2014;19:397–402.spa
dc.relation.referencesCerqueira M, Amorim P, Magalhaes F, et al. Validity of body adiposity index in predicting body fat in a sample of Brazilian women. Obesity (Silver 319 Spring) 2013;21: E696–E699.spa
dc.relation.referencesKuhn PC, Vieira Filho JP, Franco L, et al. Evaluation of body adiposity index (BAI) to estimate percent body fat in an indigenous population. Clin Nutr 2014;33:287–290.spa
dc.relation.referencesLuke A, Durazo-Arvizu R, Rotimi C, et al. Relation be- tween body mass index and body fat in black population samples from Nigeria, Jamaica, and the United States. Am J Epidemiol 1997;145:620–628.spa
dc.relation.referencesNorgan NG. Population differences in body composition in relation to the body mass index. Eur J Clin Nutr 1994;48 Suppl 3:S10–S25; discussion S26–17.spa
dc.relation.referencesDeurenberg P, Yap M, Van Staveren WA. Body mass index and percent body fat: A meta analysis among different ethnic groups. Int J Obes Relat Metab Disord 1998;22: 1164–1171.spa
dc.rightsAtribución-NoComercial-SinDerivadas 2.5 Colombia
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/2.5/co/
dc.subject.keywordObesityspa
dc.subject.keywordDyslipidemiaspa
dc.subject.keywordMetabolic syndromespa
dc.subject.lembObesidadspa
dc.subject.lembEnfermedades metabólicasspa
dc.subject.lembSíndrome metabólicospa
dc.titleComparison of Three Adiposity Indexes and Cutoff Values to Predict Metabolic Syndrome Among University Studentsspa
dc.type.categoryGeneración de Nuevo Conocimiento: Artículos publicados en revistas especializadas - Electrónicosspa

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