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Publication Information

PubMed ID
Public Release Type
Journal
Publication Year
2015
Affiliation
Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI 48109, USA.
Authors
Bagnasco S, Bagnasco SM, Barisoni L, Berthier CC, Bitzer M, Bobadilla M, Brosius F, Brosius FC, Cohen C, Cohen CD, Duchateau-Nguyen G, Duran-Pacheco G, Duran-Pacheco GC, Eichinger F, Eichinger FH, ERCB, C-PROBE, NEPTUNE, and PKU-IgAN Consortium, Essioux L, Formentini I, Gadegbeku C, Gadegbeku CA, Hawkins J, Hawkins JJ, Ju W, Kretzler M, Lai J, Lai JY, Lv J, Magnone M, Magnone MC, Mariani L, Mariani LH, Nair V, Randolph A, Sampson M, Sampson MG, Schott B, Shedden K, Smith S, Solier C, Song P, Song PXK, Thier M, Wang H-, Wang HY, Zhang H, Zhou Y, Zhu L
Studies
Citation
Ju W, Nair V, Smith S, Zhu L, Shedden K, Song PXK, Mariani LH, Eichinger FH, Berthier CC, Randolph A, Lai JY, Zhou Y, Hawkins JJ, Bitzer M, Sampson MG, Thier M, Solier C, Duran-Pacheco GC, Duchateau-Nguyen G, Essioux L, Schott B, Formentini I, Magnone MC, Bobadilla M, Cohen CD, Bagnasco SM, Barisoni L, Lv J, Zhang H, Wang HY, Brosius FC, Gadegbeku CA, Kretzler M, ERCB C-PROBE NEPTUNE and PKU-IgAN Consortium. Tissue transcriptome-driven identification of epidermal growth factor as a chronic kidney disease biomarker. Sci Transl Med 2015 Dec 2;7(316):316ra193.

Abstract

Chronic kidney disease (CKD) affects 8 to 16% people worldwide, with an increasing incidence and prevalence of end-stage kidney disease (ESKD). The effective management of CKD is confounded by the inability to identify patients at high risk of progression while in early stages of CKD. To address this challenge, a renal biopsy transcriptome-driven approach was applied to develop noninvasive prognostic biomarkers for CKD progression. Expression of intrarenal transcripts was correlated with the baseline estimated glomerular filtration rate (eGFR) in 261 patients. Proteins encoded by eGFR-associated transcripts were tested in urine for association with renal tissue injury and baseline eGFR. The ability to predict CKD progression, defined as the composite of ESKD or 40% reduction of baseline eGFR, was then determined in three independent CKD cohorts. A panel of intrarenal transcripts, including epidermal growth factor (EGF), a tubule-specific protein critical for cell differentiation and regeneration, predicted eGFR. The amount of EGF protein in urine (uEGF) showed significant correlation (P < 0.001) with intrarenal EGF mRNA, interstitial fibrosis/tubular atrophy, eGFR, and rate of eGFR loss. Prediction of the composite renal end point by age, gender, eGFR, and albuminuria was significantly (P < 0.001) improved by addition of uEGF, with an increase of the C-statistic from 0.75 to 0.87. Outcome predictions were replicated in two independent CKD cohorts. Our approach identified uEGF as an independent risk predictor of CKD progression. Addition of uEGF to standard clinical parameters improved the prediction of disease events in diverse CKD populations with a wide spectrum of causes and stages.