Prediction models for risk of developing type 2 diabetes: systematic literature search and independent external validation study.
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ESC Guidelines on diabetes, pre-diabetes, and cardiovascular diseases developed in collaboration with the EASD - SummaryA comparison of two strategies for building an exposure prediction modelA novel testing model for opportunistic screening of pre-diabetes and diabetes among U.S. adultsValidation of the German Diabetes Risk Score within a population-based representative cohort.Urinary sulfur metabolites associate with a favorable cardiovascular risk profile and survival benefit in renal transplant recipients.Predictive models to assess risk of type 2 diabetes, hypertension and comorbidity: machine-learning algorithms and validation using national health data from Kuwait--a cohort study.Synthesis of clinical prediction models under different sets of covariates with one individual patient data.Development and Validation of HealthImpact: An Incident Diabetes Prediction Model Based on Administrative Data.Comparisons of risk prediction methods using nested case-control data.Intake of Marine-Derived Omega-3 Polyunsaturated Fatty Acids and Mortality in Renal Transplant Recipients.Circulating peroxiredoxin 4 and type 2 diabetes risk: the Prevention of Renal and Vascular Endstage Disease (PREVEND) study.Prediction models for cardiovascular disease risk in the general population: systematic review.Liver function tests and risk prediction of incident type 2 diabetes: evaluation in two independent cohorts.Bilirubin as a potential causal factor in type 2 diabetes risk: a Mendelian randomization study.An application of association rule mining to extract risk pattern for type 2 diabetes using tehran lipid and glucose study database.Evaluation of Major Online Diabetes Risk Calculators and Computerized Predictive Models.Validating prediction scales of type 2 diabetes mellitus in Spain: the SPREDIA-2 population-based prospective cohort study protocol.Evaluation of Non-Laboratory and Laboratory Prediction Models for Current and Future Diabetes Mellitus: A Cross-Sectional and Retrospective Cohort StudyUntargeted mass spectrometric approach in metabolic healthy offspring of patients with type 2 diabetes reveals medium-chain acylcarnitine as potential biomarker for lipid induced glucose intolerance (LGIT).A Systematic Review of Biomarkers and Risk of Incident Type 2 Diabetes: An Overview of Epidemiological, Prediction and Aetiological Research Literature.A competing risk analysis of sequential complication development in Asian type 2 diabetes mellitus patients.Impact of correlation of predictors on discrimination of risk models in development and external populations.Reverse Engineering and Evaluation of Prediction Models for Progression to Type 2 Diabetes: An Application of Machine Learning Using Electronic Health Records.An evaluation of the performance of the NHS Health Check programme in identifying people at high risk of developing type 2 diabetesUnbiased Prediction and Feature Selection in High-Dimensional Survival Regression.Type 2 diabetes: prevalence and relevance of genetic and acquired factors for its prediction.Preventing type 2 diabetes mellitus: a call for personalized interventionPredicting risk of type 2 diabetes mellitus with genetic risk models on the basis of established genome-wide association markers: a systematic reviewThe impact of chronic kidney disease and cardiovascular comorbidity on mortality in a multiethnic population: a retrospective cohort study.DEVELOPMENT AND VALIDATION OF A NOVEL TOOL TO PREDICT HOSPITAL READMISSION RISK AMONG PATIENTS WITH DIABETES.Validation of the German Diabetes Risk Score among the general adult population: findings from the German Health Interview and Examination Surveys.Development of a prediction model and estimation of cumulative risk for upper aerodigestive tract cancer on the basis of the aldehyde dehydrogenase 2 genotype and alcohol consumption in a Japanese population.Decision tree-based modelling for identification of potential interactions between type 2 diabetes risk factors: a decade follow-up in a Middle East prospective cohort studyIntroduction to personalized medicine in diabetes mellitus.The potential of novel biomarkers to improve risk prediction of type 2 diabetes.Risk predictive modelling for diabetes and cardiovascular disease.A Review of Emerging Technologies for the Management of Diabetes Mellitus.Meta-analytical synthesis of regression coefficients under different categorization scheme of continuous covariates.Comparison of machine-learning algorithms to build a predictive model for detecting undiagnosed diabetes - ELSA-Brasil: accuracy study.Community-Engaged Modeling of Geographic and Demographic Patterns of Multiple Public Health Risk Factors.
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P2860
Prediction models for risk of developing type 2 diabetes: systematic literature search and independent external validation study.
description
2012 nî lūn-bûn
@nan
2012年の論文
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2012年論文
@yue
2012年論文
@zh-hant
2012年論文
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2012年論文
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2012年論文
@zh-tw
2012年论文
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2012年论文
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2012年论文
@zh-cn
name
Prediction models for risk of ...... ent external validation study.
@ast
Prediction models for risk of ...... ent external validation study.
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type
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Prediction models for risk of ...... ent external validation study.
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Prediction models for risk of ...... ent external validation study.
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Prediction models for risk of ...... ent external validation study.
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Prediction models for risk of ...... ent external validation study.
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P2093
P2860
P50
P356
P1433
P1476
Prediction models for risk of ...... ent external validation study.
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P2093
Annemieke M W Spijkerman
Daphne L van der A
Gerjan Navis
Joline W J Beulens
Karel G M Moons
Linda M Peelen
Stephan J L Bakker
P2860
P356
10.1136/BMJ.E5900
P407
P577
2012-09-18T00:00:00Z