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Machine learning-based urine peptidome analysis to predict and understand mechanisms of progression to kidney failure
Journal Contribution - Journal Article
Introduction: The identification of patients with chronic kidney disease (CKD) at risk of progressing to kidney failure (KF) is important for clinical decision-making. In this study we assesed whether urinary peptidome (UP) analysis may help classify patients with CKD and improve KF risk prediction.Methods: The UP was analyzed using capillary electrophoresis coupled to mass spectrometry in a case -cohort sample of 1000 patients with CKD stage G3 to G5 from the French CKD-Renal Epidemiology and Information Network (REIN) cohort. We used unsupervised and supervised machine learning to classify patients into homogenous UP clusters and to predict 3-year KF risk with UP, respectively. The predictive performance of UP was compared with the KF risk equation (KFRE), and evaluated in an external cohort of 326 patients.Results: More than 1000 peptides classified patients into 3 clusters with different CKD severities and etiologies at baseline. Peptides with the highest discriminative power for clustering were fragments of proteins involved in inflammation and fibrosis, highlighting those derived from a-1-antitrypsin, a major acute phase protein with anti-inflammatory and antiapoptotic properties, as the most significant. We then iden-tified a set of 90 urinary peptides that predicted KF with a c-index of 0.83 (95% confidence interval [CI]: 0.81-0.85) in the case-cohort and 0.89 (0.83-0.94) in the external cohort, which were close to that estimated with the KFRE (0.85 [0.83-0.87]). Combination of UP with KFRE variables did not further improve prediction.Conclusion: This study shows the potential of UP analysis to uncover new pathophysiological CKD pro-gression pathways and to predict KF risk with a performance equal to that of the KFRE.
Journal: KIDNEY INTERNATIONAL REPORTS
ISSN: 2468-0249
Issue: 3
Volume: 8
Pages: 544 - 555
Publication year:2023
Accessibility:Open