Comparison of Anthropometric Characteristics in Predicting the Incidence of Type 2 Diabetes in the EPIC-Potsdam Study
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The Elevated Susceptibility to Diabetes in India: An Evolutionary PerspectiveSex and Gender Differences in Risk, Pathophysiology and Complications of Type 2 Diabetes MellitusHeight at Late Adolescence and Incident Diabetes among Young Men"Impact of stature on non-communicable diseases: evidence based on Bangladesh Demographic and Health Survey, 2011 data".Assessment of anthropometric indices among residents of Calabar, South-East Nigeria.Assessing prediction of diabetes in older adults using different adiposity measures: a 7 year prospective study in 6,923 older men and women.Diabetes prediction, lipid accumulation product, and adiposity measures; 6-year follow-up: Tehran lipid and glucose study.Sex specific incidence rates of type 2 diabetes and its risk factors over 9 years of follow-up: Tehran Lipid and Glucose StudyBody mass index, waist circumference, and the risk of type 2 diabetes mellitus: implications for routine clinical practice.The body adiposity index (hip circumference ÷ height(1.5)) is not a more accurate measure of adiposity than is BMI, waist circumference, or hip circumference.Screening for type 2 diabetes in a high-risk population: study design and feasibility of a population-based randomized controlled trial.Waist-to-height ratio and cardiovascular risk factors in elderly individuals at high cardiovascular risk.Identifying obesity indicators which best correlate with type 2 diabetes in a Chinese population.Association between adiposity in midlife and older age and risk of diabetes in older adultsClinical characteristics and beta cell function in Chinese patients with newly diagnosed type 2 diabetes mellitus with different levels of serum triglyceride.Is the body adiposity index (hip circumference/height(1.5)) more strongly related to skinfold thicknesses and risk factor levels than is BMI? The Bogalusa Heart Study.Reliability of 3D laser-based anthropometry and comparison with classical anthropometry.Risk Factors for Incidence of Cardiovascular Diseases and All-Cause Mortality in a Middle Eastern Population over a Decade Follow-up: Tehran Lipid and Glucose StudyBest anthropometric discriminators of incident type 2 diabetes among white and black adults: A longitudinal ARIC study.Baseline risk factors that predict the development of open-angle glaucoma in a population: the Los Angeles Latino Eye StudyWhat explains the American disadvantage in health compared with the English? The case of diabetesEvaluation of serum lipid profile, body mass index, and waistline in Chinese patients with type 2 diabetes mellitusInternational differences in the links between obesity and physiological dysregulation: the United States, England, and Taiwan.Does the relationship between waist circumference, morbidity and mortality depend on measurement protocol for waist circumference?The relationship between indices of iron status and selected anthropometric cardiovascular disease risk markers in an African population: the THUSA study.Glucose control in korean immigrants with type 2 diabetesOver time, do anthropometric measures still predict diabetes incidence in chinese han nationality population from chengdu community?Skinfolds and coronary heart disease risk factors are more strongly associated with BMI than with the body adiposity index.Prevention of type 2 diabetes in urban American Indian/Alaskan Native communities: The Life in BALANCE pilot study.Hip circumference, height and risk of type 2 diabetes: systematic review and meta-analysis.Prediction of cold and heat patterns using anthropometric measures based on machine learning.Changes in Waist Circumference among German Adults over Time - Compiling Results of Seven Prospective Cohort Studies.Comparisons of the strength of associations with future type 2 diabetes risk among anthropometric obesity indicators, including waist-to-height ratio: a meta-analysis.Height at Ages 7-13 Years in Relation to Developing Type 2 Diabetes Throughout Adult Life.Association between Dietary Energy Density and Incident Type 2 Diabetes in the Women's Health Initiative.N-acetyltransferase 1 and 2 polymorphisms and risk of diabetes mellitus type 2 in a Saudi population.Incidence of type 2 diabetes and number of events attributable to abdominal obesity in China: A cohort study.Effect of psychosocial factors on metabolic syndrome in male and female blue-collar workers.Actual cardiovascular disease risk and related factors: a cross-sectional study of Korean blue collar workers employed by small businesses.BMI compared with central obesity indicators in relation to diabetes and hypertension in Asians.
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Comparison of Anthropometric Characteristics in Predicting the Incidence of Type 2 Diabetes in the EPIC-Potsdam Study
description
im Juli 2006 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована в липні 2006
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name
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
@en
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
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type
label
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
@en
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
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prefLabel
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
@en
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
@nl
P2093
P50
P356
P1433
P1476
Comparison of Anthropometric C ...... etes in the EPIC-Potsdam Study
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P2093
C. Heidemann
K. Hoffmann
M. M. Bergmann
P304
P356
10.2337/DC06-0895
P407
P577
2006-07-27T00:00:00Z