Literature DB >> 31403555

Patient Survival After Kidney Transplantation: Important Role of Graft-sustaining Factors as Determined by Predictive Modeling Using Random Survival Forest Analysis.

Irina Scheffner1, Matthias Gietzelt2, Tanja Abeling1, Michael Marschollek2, Wilfried Gwinner1.   

Abstract

BACKGROUND: Identification of the relevant factors for death can improve patient's individual risk assessment and decision making. A well-documented patient cohort (n = 892) in a renal transplant program with protocol biopsies was used to establish multivariable models for risk assessment at 3 and 12 months posttransplantation by random survival forest analysis.
METHODS: Patients transplanted between 2000 and 2007 were observed for up to 11 years. Loss to follow-up was negligible (n = 15). A total of 2251 protocol biopsies and 1214 biopsies for cause were performed. All rejections and clinical borderline rejections in protocol biopsies were treated.
RESULTS: Ten-year patient survival was 78%, with inferior survival of patients with graft loss. Using all pre- and posttransplant variables until 3 and 12 months (n = 65), the obtained models showed good performance to predict death (concordance index: 0.77-0.78). Validation with a separate cohort of patients (n = 349) showed a concordance index of 0.76 and good discrimination of risks by the models, despite substantial differences in clinical variables. Random survival forest analysis produced robust models over a wide range of parameter settings. Besides well-established risk factors like age, cardiovascular disease, type 2 diabetes, and graft function, posttransplant urinary tract infection and rejection treatment were important factors. Urinary tract infection and rejection treatment were not specifically associated with death due to infection or malignancy but correlated strongly with inferior graft function and graft loss.
CONCLUSIONS: The established models indicate the important areas that need special attention in the care of renal transplant patients, particularly modifiable factors like graft rejection and urinary tract infection.

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Year:  2020        PMID: 31403555     DOI: 10.1097/TP.0000000000002922

Source DB:  PubMed          Journal:  Transplantation        ISSN: 0041-1337            Impact factor:   4.939


  4 in total

1.  Risk factors for graft loss and death among kidney transplant recipients: A competing risk analysis.

Authors:  Jessica Pinto-Ramirez; Andrea Garcia-Lopez; Sergio Salcedo-Herrera; Nasly Patino-Jaramillo; Juan Garcia-Lopez; Jefferson Barbosa-Salinas; Sergio Riveros-Enriquez; Gilma Hernandez-Herrera; Fernando Giron-Luque
Journal:  PLoS One       Date:  2022-07-14       Impact factor: 3.752

2.  Prognostic value for long-term graft survival of estimated glomerular filtration rate and proteinuria quantified at 3 months after kidney transplantation.

Authors:  Clément Mottola; Nicolas Girerd; Kevin Duarte; Alice Aarnink; Magali Giral; Jacques Dantal; Valérie Garrigue; Georges Mourad; Fanny Buron; Emmanuel Morelon; Marc Ladrière; Michèle Kessler; Luc Frimat; Sophie Girerd
Journal:  Clin Kidney J       Date:  2020-04-26

3.  Kidney injury after lung transplantation: Long-term mortality predicted by post-operative day-7 serum creatinine and few clinical factors.

Authors:  Julian Doricic; Robert Greite; Vijith Vijayan; Stephan Immenschuh; Andreas Leffler; Fabio Ius; Axel Haverich; Jens Gottlieb; Hermann Haller; Irina Scheffner; Wilfried Gwinner
Journal:  PLoS One       Date:  2022-03-04       Impact factor: 3.240

4.  Predictors of Survival After Liver Transplantation in Patients With the Highest Acuity (MELD ≥40).

Authors:  Michael D Evans; Jessica Diaz; Anna M Adamusiak; Timothy L Pruett; Varvara A Kirchner; Raja Kandaswamy; Vanessa R Humphreville; Thomas M Leventhal; Jeffrey O Grosland; David M Vock; Arthur J Matas; Srinath Chinnakotla
Journal:  Ann Surg       Date:  2020-09-01       Impact factor: 13.787

  4 in total

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