Literature DB >> 26387917

Validation in a Single-Center Cohort of Existing Predictive Models for Delayed Graft Function After Kidney Transplantation.

Alexander Decruyenaere1, Philippe Decruyenaere1, Patrick Peeters1, Frank Vermassen2.   

Abstract

BACKGROUND Kidney transplantation is the preferred treatment for patients with end-stage renal disease. Delayed graft function (DGF) is a common complication and is associated with short- and long-term outcomes. Several predictive models for DGF have been developed. MATERIAL AND METHODS 497 kidney transplantations from deceased donors at our center between 2005-2011 are included. Firstly, the predictive accuracy of the existing models proposed by Irish et al. (M1), Jeldres et al. (M2), Chapal et al. (M3), and Zaza et al. (M4) was assessed. Secondly, the existing models were aggregated into a meta-model (MM) using stacked regressions. Finally, the association between 47 risk factors and DGF was studied in our -cohort-fitted model (CFM) using logistic regression. The accuracy of all models was assessed by area under the receiver operating characteristic curve (AUROC) and Hosmer-Lemeshow test. RESULTS M1, M2, M3, M4, MM, and CFM have AUROCs of 0.78, 0.65, 0.59, 0.67, 0.78, and 0.82, respectively. M1 (P=0.018), M2 (P<0.001), M3 (P<0.001), and M4 (P<0.001) overestimate the risk. MM (P=0.255) and CFM (P=0.836) are well calibrated. Donor subtype (P<0.001), recipient cardiac function (P<0.001), donor serum creatinine (P<0.001), donor age (P=0.006), duration of dialysis (P=0.02), recipient BMI (P=0.008), donor BMI (P=0.041), and recipient preoperative diastolic blood pressure (P=0.049) are associated with DGF in our CFM. CONCLUSIONS Four existing predictive models for DGF overestimate the risk in a cohort with a low incidence of DGF. We have identified 2 recipient parameters that are not included in previous models: cardiac function and preoperative diastolic blood pressure.

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Year:  2015        PMID: 26387917     DOI: 10.12659/AOT.894034

Source DB:  PubMed          Journal:  Ann Transplant        ISSN: 1425-9524            Impact factor:   1.530


  5 in total

1.  Proteins in Preservation Fluid as Predictors of Delayed Graft Function in Kidneys from Donors after Circulatory Death.

Authors:  Bas W M van Balkom; Hendrik Gremmels; Liselotte S S Ooms; Raechel J Toorop; Frank J M F Dor; Olivier G de Jong; Laura A Michielsen; Gert J de Borst; Wilco de Jager; Alferso C Abrahams; Arjan D van Zuilen; Marianne C Verhaar
Journal:  Clin J Am Soc Nephrol       Date:  2017-05-08       Impact factor: 8.237

2.  Delayed Graft Function 5 Months After Living Donor Kidney Transplantation.

Authors:  Tim Schulz; Alexandra Pries; Matthias Kapischke
Journal:  Am J Case Rep       Date:  2016-02-26

3.  Machine Learning Support for Decision-Making in Kidney Transplantation: Step-by-step Development of a Technological Solution.

Authors:  François-Xavier Paquette; Amir Ghassemi; Olga Bukhtiyarova; Moustapha Cisse; Natanael Gagnon; Alexia Della Vecchia; Hobivola A Rabearivelo; Youssef Loudiyi
Journal:  JMIR Med Inform       Date:  2022-06-14

4.  Risk Prediction for Delayed Allograft Function: Analysis of the Deterioration of Kidney Allograft Function (DeKAF) Study Data.

Authors:  Arthur J Matas; Erika Helgeson; Ann Fieberg; Robert Leduc; Robert S Gaston; Bertram L Kasiske; David Rush; Lawrence Hunsicker; Fernando Cosio; Joseph P Grande; J Michael Cecka; John Connett; Roslyn B Mannon
Journal:  Transplantation       Date:  2022-02-01       Impact factor: 5.385

5.  Evaluation of predictive models for delayed graft function of deceased kidney transplantation.

Authors:  Huanxi Zhang; Linli Zheng; Shuhang Qin; Longshan Liu; Xiaopeng Yuan; Qian Fu; Jun Li; Ronghai Deng; Suxiong Deng; Fangchao Yu; Xiaoshun He; Changxi Wang
Journal:  Oncotarget       Date:  2017-11-27
  5 in total

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