Literature DB >> 24622666

Non-invasive risk scores for prediction of type 2 diabetes (EPIC-InterAct): a validation of existing models.

Andre Pascal Kengne1, Joline W J Beulens2, Linda M Peelen3, Karel G M Moons3, Yvonne T van der Schouw3, Matthias B Schulze4, Annemieke M W Spijkerman5, Simon J Griffin6, Diederick E Grobbee3, Luigi Palla6, Maria-Jose Tormo7, Larraitz Arriola8, Noël C Barengo9, Aurelio Barricarte10, Heiner Boeing4, Catalina Bonet11, Françoise Clavel-Chapelon12, Laureen Dartois12, Guy Fagherazzi12, Paul W Franks13, José María Huerta7, Rudolf Kaaks14, Timothy J Key15, Kay Tee Khaw16, Kuanrong Li14, Kristin Mühlenbruch4, Peter M Nilsson13, Kim Overvad17, Thure F Overvad18, Domenico Palli19, Salvatore Panico20, J Ramón Quirós21, Olov Rolandsson22, Nina Roswall23, Carlotta Sacerdote24, María-José Sánchez25, Nadia Slimani26, Giovanna Tagliabue27, Anne Tjønneland23, Rosario Tumino28, Daphne L van der A5, Nita G Forouhi6, Stephen J Sharp6, Claudia Langenberg6, Elio Riboli29, Nicholas J Wareham6.   

Abstract

BACKGROUND: The comparative performance of existing models for prediction of type 2 diabetes across populations has not been investigated. We validated existing non-laboratory-based models and assessed variability in predictive performance in European populations.
METHODS: We selected non-invasive prediction models for incident diabetes developed in populations of European ancestry and validated them using data from the EPIC-InterAct case-cohort sample (27,779 individuals from eight European countries, of whom 12,403 had incident diabetes). We assessed model discrimination and calibration for the first 10 years of follow-up. The models were first adjusted to the country-specific diabetes incidence. We did the main analyses for each country and for subgroups defined by sex, age (<60 years vs ≥60 years), BMI (<25 kg/m(2)vs ≥25 kg/m(2)), and waist circumference (men <102 cm vs ≥102 cm; women <88 cm vs ≥88 cm).
FINDINGS: We validated 12 prediction models. Discrimination was acceptable to good: C statistics ranged from 0·76 (95% CI 0·72-0·80) to 0·81 (0·77-0·84) overall, from 0·73 (0·70-0·76) to 0·79 (0·74-0·83) in men, and from 0·78 (0·74-0·82) to 0·81 (0·80-0·82) in women. We noted significant heterogeneity in discrimination (pheterogeneity<0·0001) in all but one model. Calibration was good for most models, and consistent across countries (pheterogeneity>0·05) except for three models. However, two models overestimated risk, DPoRT by 34% (95% CI 29-39%) and Cambridge by 40% (28-52%). Discrimination was always better in individuals younger than 60 years or with a low waist circumference than in those aged at least 60 years or with a large waist circumference. Patterns were inconsistent for BMI. All models overestimated risks for individuals with a BMI of <25 kg/m(2). Calibration patterns were inconsistent for age and waist-circumference subgroups.
INTERPRETATION: Existing diabetes prediction models can be used to identify individuals at high risk of type 2 diabetes in the general population. However, the performance of each model varies with country, age, sex, and adiposity. FUNDING: The European Union.
Copyright © 2014 Elsevier Ltd. All rights reserved.

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Year:  2013        PMID: 24622666     DOI: 10.1016/S2213-8587(13)70103-7

Source DB:  PubMed          Journal:  Lancet Diabetes Endocrinol        ISSN: 2213-8587            Impact factor:   32.069


  57 in total

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5.  TRAF4 functions as an intermediate of GITR-induced NF-kappaB activation.

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7.  Machine Learning For Tuning, Selection, And Ensemble Of Multiple Risk Scores For Predicting Type 2 Diabetes.

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8.  Validation of Indian Diabetes Risk Score for Screening Prediabetes in West Tripura District of India.

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9.  Machine Learning for Predicting the 3-Year Risk of Incident Diabetes in Chinese Adults.

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10.  Association of a body shape index and hip index with cardiometabolic risk factors in children and adolescents: the CASPIAN-V study.

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Journal:  J Diabetes Metab Disord       Date:  2021-01-22
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