Differentiating primary and secondary FSGS using non-invasive urine biomarkers

Author:

Catanese Lorenzo1234,Siwy Justyna5,Wendt Ralph6,Amann Kerstin7,Beige Joachim89ORCID,Hendry Bruce10,Mischak Harald5,Mullen William11,Paterson Ian10,Schiffer Mario1213,Wolf Michael14,Rupprecht Harald1234

Affiliation:

1. Department of Nephrology , Angiology and Rheumatology, Klinikum Bayreuth GmbH, Bayreuth , Germany

2. Kuratorium for Dialysis and Transplantation (KfH)   Bayreuth , Bayreuth, Germany

3. Medizincampus Oberfranken , , Erlangen , Germany

4. Friedrich-Alexander-University Erlangen-Nürnberg , , Erlangen , Germany

5. Mosaiques Diagnostics GmbH , Hannover , Germany

6. Division of Nephrology, St. Georg Hospital Leipzig , Leipzig , Germany

7. Department of Nephropathology, Institute of Pathology, University Hospital Erlangen, Friedrich-Alexander University Erlangen-Nuremberg , Erlangen , Germany

8. Kuratorium for Dialysis and Transplantation (KfH) Renal Unit , Leipzig , Germany

9. Department of Internal Medicine II, Martin-Luther-University Halle/Wittenberg , Halle/Saale, Germany

10. Travere Therapeutics , San Diego, CA , USA

11. Institute of Cardiovascular and Medical Sciences, University of Glasgow , Glasgow , UK

12. Department of Nephrology and Hypertension, University Hospital Erlangen, Friedrich-Alexander University (FAU) Erlangen-Nürnberg , Erlangen , Germany

13. Research Center on Rare Kidney Diseases (RECORD), University Hospital Erlangen , Erlangen , Germany

14. Travere Therapeutics , Dublin , Ireland

Abstract

ABSTRACT Background Focal segmental glomerulosclerosis (FSGS) is divided into genetic, primary (p), uncertain cause, and secondary (s) forms. The subclasses differ in management and prognosis with differentiation often being challenging. We aimed to identify specific urine proteins/peptides discriminating between clinical and biopsy-proven pFSGS and sFSGS. Methods Sixty-three urine samples were collected in two different centers (19 pFSGS and 44 sFSGS) prior to biopsy. Samples were analysed using capillary electrophoresis-coupled mass spectrometry. For biomarker definition, datasets of age-/sex-matched normal controls (NC, n = 98) and patients with other chronic kidney diseases (CKDs, n = 100) were extracted from the urinary proteome database. Independent specificity assessment was performed in additional data of NC (n = 110) and CKD (n = 170). Results Proteomics data from patients with pFSGS were first compared to NC (n = 98). This resulted in 1179 biomarker (P < 0.05) candidates. Then, the pFSGS group was compared to sFSGS, and in a third step, pFSGS data were compared to data from different CKD etiologies (n = 100). Finally, 93 biomarkers were identified and combined in a classifier, pFSGS93. Total cross-validation of this classifier resulted in an area under the receiving operating curve of 0.95. The specificity investigated in an independent set of NC and CKD of other etiologies was 99.1% for NC and 94.7% for CKD, respectively. The defined biomarkers are largely fragments of different collagens (49%). Conclusion A urine peptide-based classifier that selectively detects pFSGS could be developed. Specificity of 95%–99% could be assessed in independent samples. Sensitivity must be confirmed in independent cohorts before routine clinical application.

Funder

Bundesministerium für Bildung und Frauen

UPTAKE

KidneySign

Publisher

Oxford University Press (OUP)

Subject

Transplantation,Nephrology

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