Racial Differences in the Performance of Existing Risk Prediction Models for Incident Type 2 Diabetes: The CARDIA Study.

Pubmed ID: 26628420

Pubmed Central ID: PMC4722943

Journal: Diabetes care

Publication Date: Feb. 1, 2016

MeSH Terms: Humans, Male, Adult, Female, Risk Factors, Cohort Studies, Middle Aged, Risk Assessment, Young Adult, Diabetes Mellitus, Type 2, Atherosclerosis, Area Under Curve, White People, Black or African American, Glycated Hemoglobin

Grants: P30 DK079626, HHSN268201300029C, HHSN268201300025C, HHSN268201300028C, HHSN268201300026C, HHSN268200900041C, HHSN268201300027C, AG0005, UL1 TR000161, F31 DK105791, UL1 TR001453, F31-DK-105791, K01 DK095928, K01-DK-095928

Authors: Carnethon MR, Loucks EB, Eaton CB, Wellenius GA, Gjelsvik A, Wu WC, Carson AP, Luo X, Lacy ME, Kiefe CI, Gunderson EP

Cite As: Lacy ME, Wellenius GA, Carnethon MR, Loucks EB, Carson AP, Luo X, Kiefe CI, Gjelsvik A, Gunderson EP, Eaton CB, Wu WC. Racial Differences in the Performance of Existing Risk Prediction Models for Incident Type 2 Diabetes: The CARDIA Study. Diabetes Care 2016 Feb;39(2):285-91. Epub 2015 Dec 1.

Studies:

Abstract

OBJECTIVE: In 2010, the American Diabetes Association (ADA) added hemoglobin A1c (A1C) to the guidelines for diagnosing type 2 diabetes. However, existing models for predicting diabetes risk were developed prior to the widespread adoption of A1C. Thus, it remains unknown how well existing diabetes risk prediction models predict incident diabetes defined according to the ADA 2010 guidelines. Accordingly, we examined the performance of an existing diabetes prediction model applied to a cohort of African American (AA) and white adults from the Coronary Artery Risk Development Study in Young Adults (CARDIA). RESEARCH DESIGN AND METHODS: We evaluated the performance of the Atherosclerosis Risk in Communities (ARIC) diabetes risk prediction model among 2,456 participants in CARDIA free of diabetes at the 2005-2006 exam and followed for 5 years. We evaluated model discrimination, calibration, and integrated discrimination improvement with incident diabetes defined by ADA 2010 guidelines before and after adding baseline A1C to the prediction model. RESULTS: In the overall cohort, re-estimating the ARIC model in the CARDIA cohort resulted in good discrimination for the prediction of 5-year diabetes risk (area under the curve [AUC] 0.841). Adding baseline A1C as a predictor improved discrimination (AUC 0.841 vs. 0.863, P = 0.03). In race-stratified analyses, model discrimination was significantly higher in whites than AA (AUC AA 0.816 vs. whites 0.902; P = 0.008). CONCLUSIONS: Addition of A1C to the ARIC diabetes risk prediction model improved performance overall and in racial subgroups. However, for all models examined, discrimination was better in whites than AA. Additional studies are needed to further improve diabetes risk prediction among AA.