A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation

Identification of patients at risk of kidney graft loss relies on early individual prediction of graft failure. Data from 616 kidney transplant recipients with a follow-up of at least one year were retrospectively studied. A joint latent class model investigating the impact of serum creatinine (Scr)...

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Main Authors: Danko Stamenic, Annick Rousseau, Marie Essig, Philippe Gatault, Mathias Buchler, Matthieu Filloux, Pierre Marquet, Aurélie Prémaud
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:Journal of Transplantation
Online Access:http://dx.doi.org/10.1155/2019/7245142
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spelling doaj-fb795a5fad644905a275b077e8da2bb22020-11-25T02:51:25ZengHindawi LimitedJournal of Transplantation2090-00072090-00152019-01-01201910.1155/2019/72451427245142A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney TransplantationDanko Stamenic0Annick Rousseau1Marie Essig2Philippe Gatault3Mathias Buchler4Matthieu Filloux5Pierre Marquet6Aurélie Prémaud7INSERM, U1248, F-87000 Limoges, FranceINSERM, U1248, F-87000 Limoges, FranceINSERM, U1248, F-87000 Limoges, FranceCHU Tours, Service Néphrologie et Immunologie Clinique, F-37000 Tours, FranceCHU Tours, Service Néphrologie et Immunologie Clinique, F-37000 Tours, FranceCHU Limoges, Service d’immunologie et immunogénétique, F-87000 Limoges, FranceINSERM, U1248, F-87000 Limoges, FranceINSERM, U1248, F-87000 Limoges, FranceIdentification of patients at risk of kidney graft loss relies on early individual prediction of graft failure. Data from 616 kidney transplant recipients with a follow-up of at least one year were retrospectively studied. A joint latent class model investigating the impact of serum creatinine (Scr) time-trajectories and onset of de novo donor-specific anti-HLA antibody (dnDSA) on graft survival was developed. The capacity of the model to calculate individual predicted probabilities of graft failure over time was evaluated in 80 independent patients. The model classified the patients in three latent classes with significantly different Scr time profiles and different graft survivals. Donor age contributed to explaining latent class membership. In addition to the SCr classes, the other variables retained in the survival model were proteinuria measured one-year after transplantation (HR=2.4, p=0.01), pretransplant non-donor-specific antibodies (HR=3.3, p<0.001), and dnDSA in patient who experienced acute rejection (HR=15.9, p=0.02). In the validation dataset, individual predictions of graft failure risk provided good predictive performances (sensitivity, specificity, and overall accuracy of graft failure prediction at ten years were 77.7%, 95.8%, and 85%, resp.) for the 60 patients who had not developed dnDSA. For patients with dnDSA individual risk of graft failure was not predicted with a so good performance.http://dx.doi.org/10.1155/2019/7245142
collection DOAJ
language English
format Article
sources DOAJ
author Danko Stamenic
Annick Rousseau
Marie Essig
Philippe Gatault
Mathias Buchler
Matthieu Filloux
Pierre Marquet
Aurélie Prémaud
spellingShingle Danko Stamenic
Annick Rousseau
Marie Essig
Philippe Gatault
Mathias Buchler
Matthieu Filloux
Pierre Marquet
Aurélie Prémaud
A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
Journal of Transplantation
author_facet Danko Stamenic
Annick Rousseau
Marie Essig
Philippe Gatault
Mathias Buchler
Matthieu Filloux
Pierre Marquet
Aurélie Prémaud
author_sort Danko Stamenic
title A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
title_short A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
title_full A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
title_fullStr A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
title_full_unstemmed A Prognostic Tool for Individualized Prediction of Graft Failure Risk within Ten Years after Kidney Transplantation
title_sort prognostic tool for individualized prediction of graft failure risk within ten years after kidney transplantation
publisher Hindawi Limited
series Journal of Transplantation
issn 2090-0007
2090-0015
publishDate 2019-01-01
description Identification of patients at risk of kidney graft loss relies on early individual prediction of graft failure. Data from 616 kidney transplant recipients with a follow-up of at least one year were retrospectively studied. A joint latent class model investigating the impact of serum creatinine (Scr) time-trajectories and onset of de novo donor-specific anti-HLA antibody (dnDSA) on graft survival was developed. The capacity of the model to calculate individual predicted probabilities of graft failure over time was evaluated in 80 independent patients. The model classified the patients in three latent classes with significantly different Scr time profiles and different graft survivals. Donor age contributed to explaining latent class membership. In addition to the SCr classes, the other variables retained in the survival model were proteinuria measured one-year after transplantation (HR=2.4, p=0.01), pretransplant non-donor-specific antibodies (HR=3.3, p<0.001), and dnDSA in patient who experienced acute rejection (HR=15.9, p=0.02). In the validation dataset, individual predictions of graft failure risk provided good predictive performances (sensitivity, specificity, and overall accuracy of graft failure prediction at ten years were 77.7%, 95.8%, and 85%, resp.) for the 60 patients who had not developed dnDSA. For patients with dnDSA individual risk of graft failure was not predicted with a so good performance.
url http://dx.doi.org/10.1155/2019/7245142
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