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Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure

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....

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Autores principales: Massy, Ziad A., Lambert, Oriane, Metzger, Marie, Sedki, Mohammed, Chaubet, Adeline, Breuil, Benjamin, Jaafar, Acil, Tack, Ivan, Nguyen-Khoa, Thao, Alves, Melinda, Siwy, Justyna, Mischak, Harald, Verbeke, Francis, Glorieux, Griet, Herpe, Yves-Edouard, Schanstra, Joost P., Stengel, Bénédicte, Klein, Julie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10014385/
https://www.ncbi.nlm.nih.gov/pubmed/36938091
http://dx.doi.org/10.1016/j.ekir.2022.11.023
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author Massy, Ziad A.
Lambert, Oriane
Metzger, Marie
Sedki, Mohammed
Chaubet, Adeline
Breuil, Benjamin
Jaafar, Acil
Tack, Ivan
Nguyen-Khoa, Thao
Alves, Melinda
Siwy, Justyna
Mischak, Harald
Verbeke, Francis
Glorieux, Griet
Herpe, Yves-Edouard
Schanstra, Joost P.
Stengel, Bénédicte
Klein, Julie
author_facet Massy, Ziad A.
Lambert, Oriane
Metzger, Marie
Sedki, Mohammed
Chaubet, Adeline
Breuil, Benjamin
Jaafar, Acil
Tack, Ivan
Nguyen-Khoa, Thao
Alves, Melinda
Siwy, Justyna
Mischak, Harald
Verbeke, Francis
Glorieux, Griet
Herpe, Yves-Edouard
Schanstra, Joost P.
Stengel, Bénédicte
Klein, Julie
author_sort Massy, Ziad A.
collection PubMed
description 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 α-1-antitrypsin, a major acute phase protein with anti-inflammatory and antiapoptotic properties, as the most significant. We then identified 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 progression pathways and to predict KF risk with a performance equal to that of the KFRE.
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spelling pubmed-100143852023-03-16 Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure Massy, Ziad A. Lambert, Oriane Metzger, Marie Sedki, Mohammed Chaubet, Adeline Breuil, Benjamin Jaafar, Acil Tack, Ivan Nguyen-Khoa, Thao Alves, Melinda Siwy, Justyna Mischak, Harald Verbeke, Francis Glorieux, Griet Herpe, Yves-Edouard Schanstra, Joost P. Stengel, Bénédicte Klein, Julie Kidney Int Rep Clinical Research 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 α-1-antitrypsin, a major acute phase protein with anti-inflammatory and antiapoptotic properties, as the most significant. We then identified 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 progression pathways and to predict KF risk with a performance equal to that of the KFRE. Elsevier 2022-12-12 /pmc/articles/PMC10014385/ /pubmed/36938091 http://dx.doi.org/10.1016/j.ekir.2022.11.023 Text en © 2022 Published by Elsevier Inc. on behalf of the International Society of Nephrology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Clinical Research
Massy, Ziad A.
Lambert, Oriane
Metzger, Marie
Sedki, Mohammed
Chaubet, Adeline
Breuil, Benjamin
Jaafar, Acil
Tack, Ivan
Nguyen-Khoa, Thao
Alves, Melinda
Siwy, Justyna
Mischak, Harald
Verbeke, Francis
Glorieux, Griet
Herpe, Yves-Edouard
Schanstra, Joost P.
Stengel, Bénédicte
Klein, Julie
Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title_full Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title_fullStr Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title_full_unstemmed Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title_short Machine Learning-Based Urine Peptidome Analysis to Predict and Understand Mechanisms of Progression to Kidney Failure
title_sort machine learning-based urine peptidome analysis to predict and understand mechanisms of progression to kidney failure
topic Clinical Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10014385/
https://www.ncbi.nlm.nih.gov/pubmed/36938091
http://dx.doi.org/10.1016/j.ekir.2022.11.023
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