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Published in: Diabetologia 2/2013

01-02-2013 | Article

A urinary peptide biomarker set predicts worsening of albuminuria in type 2 diabetes mellitus

Authors: S. S. Roscioni, D. de Zeeuw, M. E. Hellemons, H. Mischak, P. Zürbig, S. J. L. Bakker, R. T. Gansevoort, H. Reinhard, F. Persson, M. Lajer, P. Rossing, H. J. Lambers Heerspink

Published in: Diabetologia | Issue 2/2013

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Abstract

Aims/hypothesis

Microalbuminuria is considered the first clinical sign of kidney dysfunction and is associated with a poor renal and cardiovascular prognosis in type 2 diabetes. Detection of patients who are prone to develop micro- or macroalbuminuria may represent an effective strategy to start or optimise therapeutic intervention. Here we assessed the value of a urinary proteomic-based risk score (classifier) in predicting the development and progression of microalbuminuria.

Methods

We conducted a prospective case–control study. Cases (n = 44) and controls (n = 44) were selected from the PREVEND (Prevention of Renal and Vascular End-stage Disease) study and from the Steno Diabetes Center (Gentofte, Denmark). Cases were defined by transition from normo- to microalbuminuria or from micro- to macroalbuminuria over a follow-up of 3 years. Controls with no transitions in albuminuria were pair-matched for age, sex and albuminuria status. A model for the progression of albuminuria was built using a proteomic classifier based on 273 urinary peptides.

Results

The proteomic classifier was independently associated with transition to micro- or macroalbuminuria (OR 1.35 [95% CI 1.02, 1.79], p = 0.035). The classifier predicted the development and progression of albuminuria on top of albuminuria and estimated GFR (eGFR, area under the receiver operating characteristic [ROC] curve increase of 0.03, p = 0.002; integrated discrimination index [IDI]: 0.105, p = 0.002). Fragments of collagen and α-2-HS-glycoprotein showed significantly different expression between cases and controls.

Conclusions/interpretation

Although limited by the relatively small sample size, these results suggest that analysis of a urinary biomarker set enables early renal risk assessment in patients with diabetes. Further work is required to confirm the role of urinary proteomics in the prevention of renal failure in diabetes.
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Metadata
Title
A urinary peptide biomarker set predicts worsening of albuminuria in type 2 diabetes mellitus
Authors
S. S. Roscioni
D. de Zeeuw
M. E. Hellemons
H. Mischak
P. Zürbig
S. J. L. Bakker
R. T. Gansevoort
H. Reinhard
F. Persson
M. Lajer
P. Rossing
H. J. Lambers Heerspink
Publication date
01-02-2013
Publisher
Springer-Verlag
Published in
Diabetologia / Issue 2/2013
Print ISSN: 0012-186X
Electronic ISSN: 1432-0428
DOI
https://doi.org/10.1007/s00125-012-2755-2

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