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Biomarker panels associated with progression of renal disease in type 1 diabetes.

Accepted version
Peer-reviewed

Type

Article

Change log

Authors

Colombo, Marco 
Valo, Erkka 
McGurnaghan, Stuart J 
Sandholm, Niina 
Blackbourn, Luke AK 

Abstract

AIMS/HYPOTHESIS: We aimed to identify a sparse panel of biomarkers for improving the prediction of renal disease progression in type 1 diabetes. METHODS: We considered 859 individuals recruited from the Scottish Diabetes Research Network Type 1 Bioresource (SDRNT1BIO) and 315 individuals from the Finnish Diabetic Nephropathy (FinnDiane) study. All had an entry eGFR between 30 and 75 ml min-1[1.73 m]-2, with those from FinnDiane being oversampled for albuminuria. A total of 297 circulating biomarkers (30 proteins, 121 metabolites, 146 tryptic peptides) were measured in non-fasting serum samples using the Luminex platform and LC electrospray tandem MS (LC-MS/MS). We investigated associations with final eGFR adjusted for baseline eGFR and with rapid progression (a loss of more than 3 ml min-1[1.73 m]-2 year-1) using linear and logistic regression models. Panels of biomarkers were identified using a penalised Bayesian approach, and their performance was evaluated through 10-fold cross-validation and compared with using clinical record data alone. RESULTS: For final eGFR, 16 proteins and 30 metabolites or tryptic peptides showed significant association in SDRNT1BIO, and nine proteins and five metabolites or tryptic peptides in FinnDiane, beyond age, sex, diabetes duration, study day eGFR and length of follow-up (all at p < 10-4). The strongest associations were with CD27 antigen (CD27), kidney injury molecule 1 (KIM-1) and α1-microglobulin. Including the Luminex biomarkers on top of baseline covariates increased the r2 for prediction of final eGFR from 0.47 to 0.58 in SDRNT1BIO and from 0.33 to 0.48 in FinnDiane. At least 75% of the increment in r2 was attributable to CD27 and KIM-1. However, using the weighted average of historical eGFR gave similar performance to biomarkers. The LC-MS/MS platform performed less well. CONCLUSIONS/INTERPRETATION: Among a large set of associated biomarkers, a sparse panel of just CD27 and KIM-1 contains most of the predictive information for eGFR progression. The increment in prediction beyond clinical data was modest but potentially useful for oversampling individuals with rapid disease progression into clinical trials, especially where there is little information on prior eGFR trajectories.

Description

Keywords

Clinical science, Epidemiology, Metabolomics, Nephropathy, Proteomics, Adult, Bayes Theorem, Biomarkers, Chromatography, Liquid, Diabetes Mellitus, Type 1, Diabetic Nephropathies, Disease Progression, Female, Glomerular Filtration Rate, Humans, Logistic Models, Male, Middle Aged, Tandem Mass Spectrometry

Journal Title

Diabetologia

Conference Name

Journal ISSN

0012-186X
1432-0428

Volume Title

62

Publisher

Springer Science and Business Media LLC

Rights

All rights reserved
Sponsorship
Juvenile Diabetes Research Foundation Ltd (JDRF) (via University of Edinburgh) (1-SRA-2016-333-M-R)
Medical Research Council (G0600717)
Medical Research Council (G0600717/1)
This study was supported by funding from Juvenile Diabetes Research Foundation (Ref. 1-SRA-2016-333-M-R); Chief Scientist Office (Ref. ETM/47); Diabetes UK (Ref. 10/0004010); Folkhälsan Research Foundation; the Wilhelm and Else Stockmann Foundation; the Liv och Hälsa Society; the Novo Nordisk Foundation; the Helsinki University Hospital Research Funds; and the Academy of Finland (134379 and 275614). In-kind contribution from Scottish Diabetes Research Network.