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Published in: Diabetologia 1/2014

01-01-2014 | Review

The potential of novel biomarkers to improve risk prediction of type 2 diabetes

Authors: Christian Herder, Bernd Kowall, Adam G. Tabak, Wolfgang Rathmann

Published in: Diabetologia | Issue 1/2014

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Abstract

The incidence of type 2 diabetes can be reduced substantially by implementing preventive measures in high-risk individuals, but this requires prior knowledge of disease risk in the individual. Various diabetes risk models have been designed, and these have all included a similar combination of factors, such as age, sex, obesity, hypertension, lifestyle factors, family history of diabetes and metabolic traits. The accuracy of prediction models is often assessed by the area under the receiver operating characteristic curve (AROC) as a measure of discrimination, but AROCs should be complemented by measures of calibration and reclassification to estimate the incremental value of novel biomarkers. This review discusses the potential of novel biomarkers to improve model accuracy. The range of molecules that serve as potential predictors of type 2 diabetes includes genetic variants, RNA transcripts, peptides and proteins, lipids and small metabolites. Some of these biomarkers lead to a statistically significant increase of model accuracy, but their incremental value currently seems too small for routine clinical use. However, only a fraction of potentially relevant biomarkers have been assessed with regard to their predictive value. Moreover, serial measurements of biomarkers may help determine individual risk. In conclusion, current risk models provide valuable tools of risk estimation, but perform suboptimally in the prediction of individual diabetes risk. Novel biomarkers still fail to have a clinically applicable impact. However, more efficient use of biomarker data and technological advances in their measurement in clinical settings may allow the development of more accurate predictive models in the future.
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Metadata
Title
The potential of novel biomarkers to improve risk prediction of type 2 diabetes
Authors
Christian Herder
Bernd Kowall
Adam G. Tabak
Wolfgang Rathmann
Publication date
01-01-2014
Publisher
Springer Berlin Heidelberg
Published in
Diabetologia / Issue 1/2014
Print ISSN: 0012-186X
Electronic ISSN: 1432-0428
DOI
https://doi.org/10.1007/s00125-013-3061-3

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