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

André Pascal Kengne(South African Medical Research Council), Joline W. J. Beulens(Utrecht University), Linda M. Peelen(University Medical Center Utrecht), Karel G.M. Moons(University Medical Center Utrecht), Yvonne T. van der Schouw(University Medical Center Utrecht), Matthias B. Schulze(German Institute of Human Nutrition), Annemieke M. W. Spijkerman(National Institute for Public Health and the Environment), Simon J. Griffin(Medical Research Council), Diederick E. Grobbee(University Medical Center Utrecht), Luigi Palla(Medical Research Council), María‐José Tormo, Larraitz Arriola, Noël C. Barengo(University of Helsinki), Aurelio Barricarte, Heiner Boeing(German Institute of Human Nutrition), Catalina Bonet(Institut Català d'Ornitologia), Françoise Clavel‐Chapelon(Inserm), Laureen Dartois(Inserm), Guy Fagherazzi(Inserm), Paul W. Franks(Lund University), José María Huerta, Rudolf Kaaks(German Cancer Research Center), Timothy J. Key(University of Oxford), Kay‐Tee Khaw(University of Cambridge), Kuanrong Li(German Cancer Research Center), Kristin Mühlenbruch(German Institute of Human Nutrition), Peter M. Nilsson(Lund University), Kim Overvad(Aarhus University), Thure Filskov Overvad(Aalborg University Hospital), Domenico Palli(Piedmont Reference Center for Epidemiology and Cancer Prevention), Salvatore Panico(Federico II University Hospital), J. Ramón Quirós(Gobierno del Principado de Asturias), Olov Rolandsson(Umeå University), Nina Roswall(Danish Cancer Society), Carlotta Sacerdote(Piedmont Reference Center for Epidemiology and Cancer Prevention), María‐José Sánchez(Andalusian School of Public Health), Nadia Slimani(Centre international de recherche sur le cancer), Giovanna Tagliabue(Fondazione IRCCS Istituto Nazionale dei Tumori), Anne Tjønneland(Danish Cancer Society), ­Rosario ­Tumino(Agenzia Regionale Sanitaria della Puglia), Daphne L. van der A(National Institute for Public Health and the Environment), Nita G. Forouhi(Medical Research Council), Stephen J. Sharp(Medical Research Council), Claudia Langenberg(Medical Research Council), Elio Ríboli(Imperial College London), Nicholas J. Wareham(Medical Research Council)
The Lancet Diabetes & Endocrinology
October 7, 2013
Cited by 169Open Access
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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.


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