772 related articles for article (PubMed ID: 24827713)
1. Effectiveness of different waist circumference cut-off values in predicting metabolic syndrome prevalence and risk factors in adults in China.
Zhou HC; Lai YX; Shan ZY; Jia WP; Yang WY; Lu JM; Weng JP; Ji LN; Liu J; Tian HM; Ji QH; Zhu DL; Chen L; Guo XH; Zhao ZG; Li Q; Zhou ZG; Ge JP; Shan GL
Biomed Environ Sci; 2014 May; 27(5):325-34. PubMed ID: 24827713
[TBL] [Abstract][Full Text] [Related]
2. The Optimal Ethnic-Specific Waist-Circumference Cut-Off Points of Metabolic Syndrome among Low-Income Rural Uyghur Adults in Far Western China and Implications in Preventive Public Health.
He J; Ma R; Liu J; Zhang M; Ding Y; Guo H; Mu L; Zhang J; Wei B; Yan Y; Ma J; Pang H; Li S; Guo S
Int J Environ Res Public Health; 2017 Feb; 14(2):. PubMed ID: 28208723
[No Abstract] [Full Text] [Related]
3. The Prevalence of Metabolic Syndrome Using Three Different Diagnostic Criteria among Low Earning Nomadic Kazakhs in the Far Northwest of China: New Cut-Off Points of Waist Circumference to Diagnose MetS and Its Implications.
Guo H; Liu J; Zhang J; Ma R; Ding Y; Zhang M; He J; Xu S; Li S; Yan Y; Mu L; Rui D; Niu Q; Guo S
PLoS One; 2016; 11(2):e0148976. PubMed ID: 26901035
[TBL] [Abstract][Full Text] [Related]
4. Comparative analysis of IDF, ATPIII and CDS in the diagnosis of metabolic syndrome among adult inhabitants in Jiangxi Province, China.
Cheng L; Yan W; Zhu L; Chen Y; Liu J; Xu Y; Ji L; He J
PLoS One; 2017; 12(12):e0189046. PubMed ID: 29216328
[TBL] [Abstract][Full Text] [Related]
5. Optimal waist circumference cut-off values for identifying metabolic risk factors in middle-aged and elderly subjects in Shandong Province of China.
Hou XG; Wang C; Ma ZQ; Yang WF; Wang JX; Li CQ; Wang YL; Liu SM; Hu XP; Zhang XP; Jiang M; Wang WQ; Ning G; Zheng HZ; Ma AX; Sun Y; Song J; Lin P; Liang K; Liu FQ; Li WJ; Xiao J; Gong L; Wang MJ; Liu JD; Yan F; Yang JP; Wang LS; Tian M; Zhao RX; Jiang L; Chen L
Biomed Environ Sci; 2014 May; 27(5):353-9. PubMed ID: 24827716
[TBL] [Abstract][Full Text] [Related]
6. Discordance of metabolic syndrome and abdominal obesity prevalence according to different criteria in Andean highlanders: A community-based study.
Herrera-Enriquez K; Narvaez-Guerra O
Diabetes Metab Syndr; 2017 Nov; 11 Suppl 1():S359-S364. PubMed ID: 28284909
[TBL] [Abstract][Full Text] [Related]
7. Optimal cut-off levels of obesity indices by different definitions of metabolic syndrome in a southeast rural Chinese population.
Pan J; Wang M; Ye Z; Yu M; Shen Y; He Q; Cao N; Ning G; Bi Y; Gong W; Hu R
J Diabetes Investig; 2016 Jul; 7(4):594-600. PubMed ID: 27181602
[TBL] [Abstract][Full Text] [Related]
8. Optimal waist circumference cutoff values for predicting metabolic syndrome among older adults in Ecuador.
Orces CH; Montalvan M; Tettamanti D
Diabetes Metab Syndr; 2019; 13(2):1015-1020. PubMed ID: 31336437
[TBL] [Abstract][Full Text] [Related]
9. Prevalence and determinants of metabolic syndrome in Qatar: results from a National Health Survey.
Al-Thani MH; Al-Thani AA; Cheema S; Sheikh J; Mamtani R; Lowenfels AB; Al-Chetachi WF; Almalki BA; Hassan Khalifa SA; Haj Bakri AO; Maisonneuve P
BMJ Open; 2016 Sep; 6(9):e009514. PubMed ID: 27601485
[TBL] [Abstract][Full Text] [Related]
10. Age and gender-specific distribution of metabolic syndrome components in East China: role of hypertriglyceridemia in the SPECT-China study.
Jiang B; Zheng Y; Chen Y; Chen Y; Li Q; Zhu C; Wang N; Han B; Zhai H; Lin D; Lu Y
Lipids Health Dis; 2018 Apr; 17(1):92. PubMed ID: 29678174
[TBL] [Abstract][Full Text] [Related]
11. Comparison of three diagnosis criteria for metabolic syndrome in Mongolian people of agricultural and pastoral regions.
Yu L; Zhang YH; Liu YY; Wu BT; Zhang XY; Tong WJ
J Endocrinol Invest; 2009 May; 32(5):420-5. PubMed ID: 19794291
[TBL] [Abstract][Full Text] [Related]
12. Determination of most suitable cut off point of waist circumference for diagnosis of metabolic syndrome in Kerman.
Gozashti MH; Najmeasadat F; Mohadeseh S; Najafipour H
Diabetes Metab Syndr; 2014; 8(1):8-12. PubMed ID: 24661751
[TBL] [Abstract][Full Text] [Related]
13. Percentage of Body Fat and Fat Mass Index as a Screening Tool for Metabolic Syndrome Prediction in Colombian University Students.
Ramírez-Vélez R; Correa-Bautista JE; Sanders-Tordecilla A; Ojeda-Pardo ML; Cobo-Mejía EA; Castellanos-Vega RDP; García-Hermoso A; González-Jiménez E; Schmidt-RioValle J; González-Ruíz K
Nutrients; 2017 Sep; 9(9):. PubMed ID: 28902162
[TBL] [Abstract][Full Text] [Related]
14. Optimal waist circumference cut-off points and ability of different metabolic syndrome criteria for predicting diabetes in Japanese men and women: Japan Epidemiology Collaboration on Occupational Health Study.
Hu H; Kurotani K; Sasaki N; Murakami T; Shimizu C; Shimizu M; Nakagawa T; Honda T; Yamamoto S; Okazaki H; Nagahama S; Uehara A; Yamamoto M; Tomita K; Imai T; Nishihara A; Kochi T; Eguchi M; Miyamoto T; Hori A; Kuwahara K; Akter S; Kashino I; Kabe I; Liu W; Mizoue T; Kunugita N; Dohi S;
BMC Public Health; 2016 Mar; 16():220. PubMed ID: 26939609
[TBL] [Abstract][Full Text] [Related]
15. Prevalence of the metabolic syndrome in the Yan-an region of northwest China.
Li SL; Yang Q; Lv SY; Zhang YL; Zhang JA
J Int Med Res; 2012; 40(2):673-80. PubMed ID: 22613429
[TBL] [Abstract][Full Text] [Related]
16. Comparison of coronary heart disease risk assessments among individuals with metabolic syndrome using three diagnostic definitions: a cross-sectional study from China.
Zhou J; Gao Q; Wang J; Zhang M; Ma J; Wang C; Chen H; Peng X; Hao L
BMJ Open; 2018 Oct; 8(10):e022974. PubMed ID: 30366915
[TBL] [Abstract][Full Text] [Related]
17. The metabolic syndrome among postmenopausal women in rural Canton: prevalence, associated factors, and the optimal obesity and atherogenic indices.
Liang H; Chen X; Chen Q; Wang Y; Wu X; Li Y; Pan B; Liu H; Li M
PLoS One; 2013; 8(9):e74121. PubMed ID: 24040183
[TBL] [Abstract][Full Text] [Related]
18. Metabolic syndrome in adolescents: definition based on regression of IDF adult cut-off points.
Benmohammed K; Valensi P; Balkau B; Lezzar A
Public Health; 2016 Dec; 141():88-94. PubMed ID: 27932021
[TBL] [Abstract][Full Text] [Related]
19. Prevalence of metabolic syndrome components among the elderly using three different definitions: a cohort study in Finland.
Saukkonen T; Jokelainen J; Timonen M; Cederberg H; Laakso M; Härkönen P; Keinänen-Kiukaanniemi S; Rajala U
Scand J Prim Health Care; 2012 Mar; 30(1):29-34. PubMed ID: 22324547
[TBL] [Abstract][Full Text] [Related]
20. The prevelance of metabolic syndrome on the sample of paramedics.
Rębak D; Suliga E; Grabowska U; Głuszek S
Int J Occup Med Environ Health; 2018 Dec; 31(6):741–751. PubMed ID: 30572699
[TBL] [Abstract][Full Text] [Related]
[Next] [New Search]