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Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering

BACKGROUND: Over the past decades, an international group of experts iteratively developed a consensus classification of kidney transplant rejection phenotypes, known as the Banff classification. Data-driven clustering of kidney transplant histologic data could simplify the complex and discretionary...

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Autores principales: Vaulet, Thibaut, Divard, Gillian, Thaunat, Olivier, Lerut, Evelyne, Senev, Aleksandar, Aubert, Olivier, Van Loon, Elisabet, Callemeyn, Jasper, Emonds, Marie-Paule, Van Craenenbroeck, Amaryllis, De Vusser, Katrien, Sprangers, Ben, Rabeyrin, Maud, Dubois, Valérie, Kuypers, Dirk, De Vos, Maarten, Loupy, Alexandre, De Moor, Bart, Naesens, Maarten
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society of Nephrology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8259675/
https://www.ncbi.nlm.nih.gov/pubmed/33687976
http://dx.doi.org/10.1681/ASN.2020101418
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author Vaulet, Thibaut
Divard, Gillian
Thaunat, Olivier
Lerut, Evelyne
Senev, Aleksandar
Aubert, Olivier
Van Loon, Elisabet
Callemeyn, Jasper
Emonds, Marie-Paule
Van Craenenbroeck, Amaryllis
De Vusser, Katrien
Sprangers, Ben
Rabeyrin, Maud
Dubois, Valérie
Kuypers, Dirk
De Vos, Maarten
Loupy, Alexandre
De Moor, Bart
Naesens, Maarten
author_facet Vaulet, Thibaut
Divard, Gillian
Thaunat, Olivier
Lerut, Evelyne
Senev, Aleksandar
Aubert, Olivier
Van Loon, Elisabet
Callemeyn, Jasper
Emonds, Marie-Paule
Van Craenenbroeck, Amaryllis
De Vusser, Katrien
Sprangers, Ben
Rabeyrin, Maud
Dubois, Valérie
Kuypers, Dirk
De Vos, Maarten
Loupy, Alexandre
De Moor, Bart
Naesens, Maarten
author_sort Vaulet, Thibaut
collection PubMed
description BACKGROUND: Over the past decades, an international group of experts iteratively developed a consensus classification of kidney transplant rejection phenotypes, known as the Banff classification. Data-driven clustering of kidney transplant histologic data could simplify the complex and discretionary rules of the Banff classification, while improving the association with graft failure. METHODS: The data consisted of a training set of 3510 kidney-transplant biopsies from an observational cohort of 936 recipients. Independent validation of the results was performed on an external set of 3835 biopsies from 1989 patients. On the basis of acute histologic lesion scores and the presence of donor-specific HLA antibodies, stable clustering was achieved on the basis of a consensus of 400 different clustering partitions. Additional information on kidney-transplant failure was introduced with a weighted Euclidean distance. RESULTS: Based on the proportion of ambiguous clustering, six clinically meaningful cluster phenotypes were identified. There was significant overlap with the existing Banff classification (adjusted rand index, 0.48). However, the data-driven approach eliminated intermediate and mixed phenotypes and created acute rejection clusters that are each significantly associated with graft failure. Finally, a novel visualization tool presents disease phenotypes and severity in a continuous manner, as a complement to the discrete clusters. CONCLUSIONS: A semisupervised clustering approach for the identification of clinically meaningful novel phenotypes of kidney transplant rejection has been developed and validated. The approach has the potential to offer a more quantitative evaluation of rejection subtypes and severity, especially in situations in which the current histologic categorization is ambiguous.
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spelling pubmed-82596752022-05-03 Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering Vaulet, Thibaut Divard, Gillian Thaunat, Olivier Lerut, Evelyne Senev, Aleksandar Aubert, Olivier Van Loon, Elisabet Callemeyn, Jasper Emonds, Marie-Paule Van Craenenbroeck, Amaryllis De Vusser, Katrien Sprangers, Ben Rabeyrin, Maud Dubois, Valérie Kuypers, Dirk De Vos, Maarten Loupy, Alexandre De Moor, Bart Naesens, Maarten J Am Soc Nephrol Basic Research BACKGROUND: Over the past decades, an international group of experts iteratively developed a consensus classification of kidney transplant rejection phenotypes, known as the Banff classification. Data-driven clustering of kidney transplant histologic data could simplify the complex and discretionary rules of the Banff classification, while improving the association with graft failure. METHODS: The data consisted of a training set of 3510 kidney-transplant biopsies from an observational cohort of 936 recipients. Independent validation of the results was performed on an external set of 3835 biopsies from 1989 patients. On the basis of acute histologic lesion scores and the presence of donor-specific HLA antibodies, stable clustering was achieved on the basis of a consensus of 400 different clustering partitions. Additional information on kidney-transplant failure was introduced with a weighted Euclidean distance. RESULTS: Based on the proportion of ambiguous clustering, six clinically meaningful cluster phenotypes were identified. There was significant overlap with the existing Banff classification (adjusted rand index, 0.48). However, the data-driven approach eliminated intermediate and mixed phenotypes and created acute rejection clusters that are each significantly associated with graft failure. Finally, a novel visualization tool presents disease phenotypes and severity in a continuous manner, as a complement to the discrete clusters. CONCLUSIONS: A semisupervised clustering approach for the identification of clinically meaningful novel phenotypes of kidney transplant rejection has been developed and validated. The approach has the potential to offer a more quantitative evaluation of rejection subtypes and severity, especially in situations in which the current histologic categorization is ambiguous. American Society of Nephrology 2021-05-03 2021-05-03 /pmc/articles/PMC8259675/ /pubmed/33687976 http://dx.doi.org/10.1681/ASN.2020101418 Text en Copyright © 2021 by the American Society of Nephrology This is an Open Access article: American Society of Nephrology
spellingShingle Basic Research
Vaulet, Thibaut
Divard, Gillian
Thaunat, Olivier
Lerut, Evelyne
Senev, Aleksandar
Aubert, Olivier
Van Loon, Elisabet
Callemeyn, Jasper
Emonds, Marie-Paule
Van Craenenbroeck, Amaryllis
De Vusser, Katrien
Sprangers, Ben
Rabeyrin, Maud
Dubois, Valérie
Kuypers, Dirk
De Vos, Maarten
Loupy, Alexandre
De Moor, Bart
Naesens, Maarten
Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title_full Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title_fullStr Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title_full_unstemmed Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title_short Data-driven Derivation and Validation of Novel Phenotypes for Acute Kidney Transplant Rejection using Semi-supervised Clustering
title_sort data-driven derivation and validation of novel phenotypes for acute kidney transplant rejection using semi-supervised clustering
topic Basic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8259675/
https://www.ncbi.nlm.nih.gov/pubmed/33687976
http://dx.doi.org/10.1681/ASN.2020101418
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