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Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients

KEY POINTS: An unsupervised machine learning clustering algorithm identified distinct deceased kidney donor phenotypes among older recipients. Recipients of certain donor phenotypes were at a relatively higher risk of all-cause graft loss even after accounting for recipient factors. The use of unsup...

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Autores principales: Raza Abidi, Syed Sibte, Naqvi, Asil, Worthen, George, Vinson, Amanda, Abidi, Samina, Kiberd, Bryce, Skinner, Thomas, West, Kenneth, Tennankore, Karthik K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society of Nephrology 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10371275/
https://www.ncbi.nlm.nih.gov/pubmed/37291713
http://dx.doi.org/10.34067/KID.0000000000000190
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author Raza Abidi, Syed Sibte
Naqvi, Asil
Worthen, George
Vinson, Amanda
Abidi, Samina
Kiberd, Bryce
Skinner, Thomas
West, Kenneth
Tennankore, Karthik K.
author_facet Raza Abidi, Syed Sibte
Naqvi, Asil
Worthen, George
Vinson, Amanda
Abidi, Samina
Kiberd, Bryce
Skinner, Thomas
West, Kenneth
Tennankore, Karthik K.
author_sort Raza Abidi, Syed Sibte
collection PubMed
description KEY POINTS: An unsupervised machine learning clustering algorithm identified distinct deceased kidney donor phenotypes among older recipients. Recipients of certain donor phenotypes were at a relatively higher risk of all-cause graft loss even after accounting for recipient factors. The use of unsupervised clustering to support kidney allocation systems may be an important area for future study. BACKGROUND: Older transplant recipients are at a relatively increased risk of graft failure after transplantation, and some of this risk may relate to donor characteristics. Unsupervised clustering using machine learning may be a novel approach to identify donor phenotypes that may then be used to evaluate outcomes for older recipients. Using a cohort of older recipients, the purpose of this study was to (1) use unsupervised clustering to identify donor phenotypes and (2) determine the risk of death/graft failure for recipients of each donor phenotype. METHODS: We analyzed a nationally representative cohort of kidney transplant recipients aged 65 years or older captured using the Scientific Registry of Transplant Recipients between 2000 and 2017. Unsupervised clustering was used to generate phenotypes using donor characteristics inclusive of variables in the kidney donor risk index (KDRI). Cluster assignment was internally validated. Outcomes included all-cause graft failure (including mortality) and delayed graft function. Differences in the distribution of KDRI scores were also compared across the clusters. All-cause graft failure was compared for recipients of donor kidneys from each cluster using a multivariable Cox survival analysis. RESULTS: Overall, 23,558 donors were separated into five clusters. The area under the curve for internal validation of cluster assignment was 0.89. Recipients of donor kidneys from two clusters were found to be at high risk of all-cause graft failure relative to the lowest risk cluster (adjusted hazards ratio, 1.86; 95% confidence interval, 1.69 to 2.05 and 1.73; 95% confidence interval, 1.61 to 1.87). Only one of these high-risk clusters had high proportions of donors with established risk factors (i.e., hypertension, diabetes). KDRI scores were similar for the highest and lowest risk clusters (1.40 [1.18–1.67] and 1.37 [1.15–1.65], respectively). CONCLUSIONS: Unsupervised clustering can identify novel donor phenotypes comprising established donor characteristics that, in turn, may be associated with different risks of graft loss for older transplant recipients.
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spelling pubmed-103712752023-08-03 Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients Raza Abidi, Syed Sibte Naqvi, Asil Worthen, George Vinson, Amanda Abidi, Samina Kiberd, Bryce Skinner, Thomas West, Kenneth Tennankore, Karthik K. Kidney360 Original Investigation KEY POINTS: An unsupervised machine learning clustering algorithm identified distinct deceased kidney donor phenotypes among older recipients. Recipients of certain donor phenotypes were at a relatively higher risk of all-cause graft loss even after accounting for recipient factors. The use of unsupervised clustering to support kidney allocation systems may be an important area for future study. BACKGROUND: Older transplant recipients are at a relatively increased risk of graft failure after transplantation, and some of this risk may relate to donor characteristics. Unsupervised clustering using machine learning may be a novel approach to identify donor phenotypes that may then be used to evaluate outcomes for older recipients. Using a cohort of older recipients, the purpose of this study was to (1) use unsupervised clustering to identify donor phenotypes and (2) determine the risk of death/graft failure for recipients of each donor phenotype. METHODS: We analyzed a nationally representative cohort of kidney transplant recipients aged 65 years or older captured using the Scientific Registry of Transplant Recipients between 2000 and 2017. Unsupervised clustering was used to generate phenotypes using donor characteristics inclusive of variables in the kidney donor risk index (KDRI). Cluster assignment was internally validated. Outcomes included all-cause graft failure (including mortality) and delayed graft function. Differences in the distribution of KDRI scores were also compared across the clusters. All-cause graft failure was compared for recipients of donor kidneys from each cluster using a multivariable Cox survival analysis. RESULTS: Overall, 23,558 donors were separated into five clusters. The area under the curve for internal validation of cluster assignment was 0.89. Recipients of donor kidneys from two clusters were found to be at high risk of all-cause graft failure relative to the lowest risk cluster (adjusted hazards ratio, 1.86; 95% confidence interval, 1.69 to 2.05 and 1.73; 95% confidence interval, 1.61 to 1.87). Only one of these high-risk clusters had high proportions of donors with established risk factors (i.e., hypertension, diabetes). KDRI scores were similar for the highest and lowest risk clusters (1.40 [1.18–1.67] and 1.37 [1.15–1.65], respectively). CONCLUSIONS: Unsupervised clustering can identify novel donor phenotypes comprising established donor characteristics that, in turn, may be associated with different risks of graft loss for older transplant recipients. American Society of Nephrology 2023-06-09 /pmc/articles/PMC10371275/ /pubmed/37291713 http://dx.doi.org/10.34067/KID.0000000000000190 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the American Society of Nephrology https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal.
spellingShingle Original Investigation
Raza Abidi, Syed Sibte
Naqvi, Asil
Worthen, George
Vinson, Amanda
Abidi, Samina
Kiberd, Bryce
Skinner, Thomas
West, Kenneth
Tennankore, Karthik K.
Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title_full Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title_fullStr Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title_full_unstemmed Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title_short Multiview Clustering to Identify Novel Kidney Donor Phenotypes for Assessing Graft Survival in Older Transplant Recipients
title_sort multiview clustering to identify novel kidney donor phenotypes for assessing graft survival in older transplant recipients
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10371275/
https://www.ncbi.nlm.nih.gov/pubmed/37291713
http://dx.doi.org/10.34067/KID.0000000000000190
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