Literature DB >> 14756263

Prediction of 3-yr cadaveric graft survival based on pre-transplant variables in a large national dataset.

Alexander S Goldfarb-Rumyantzev1, John D Scandling, Lisa Pappas, Randall J Smout, Susan Horn.   

Abstract

Pre- and post-transplant predictive factors of graft survival for optimal and expanded criteria grafts have been studied in the past. The goal of our study was to evaluate the recent large set of United Network of Organ Sharing records (1990-1998) to generate a prediction algorithm of 3-yr graft survival based on pre-transplant variables alone. The dataset of patients with end-stage renal disease and cadaveric kidney or kidney-pancreas transplantation (1990-1998) used in the study consisted of 37,407 records. Logistic regression (LM) and a tree-based model (TBM) were used to identify predictors of 3-yr allograft survival and to generate prediction algorithm. Donor and recipient demographic characteristics (age, race, and gender) and body mass index showed non-linear, while human leukocyte antigen match showed strong linear relationships with 3-yr graft survival. Prediction of the probability of graft survival from the model, achieved a good match with the observed survival of the separate dataset, with a correlation of r = 0.998 for LM and r = 0.984 for TBM. The positive predictive value (PV) of allograft survival with LM and TBM was 76.0% and the negative PV was 63 and 53.8% for LM and TBM, respectively. Both LM and the TBM can potentially be used in clinical practice for long-term prediction of kidney allograft survival based on pre-transplant variables.

Entities:  

Mesh:

Year:  2003        PMID: 14756263     DOI: 10.1046/j.0902-0063.2003.00051.x

Source DB:  PubMed          Journal:  Clin Transplant        ISSN: 0902-0063            Impact factor:   2.863


  9 in total

1.  Predictive Score for Posttransplantation Outcomes.

Authors:  Miklos Z Molnar; Danh V Nguyen; Yanjun Chen; Vanessa Ravel; Elani Streja; Mahesh Krishnan; Csaba P Kovesdy; Rajnish Mehrotra; Kamyar Kalantar-Zadeh
Journal:  Transplantation       Date:  2017-06       Impact factor: 4.939

Review 2.  Machine learning, the kidney, and genotype-phenotype analysis.

Authors:  Rachel S G Sealfon; Laura H Mariani; Matthias Kretzler; Olga G Troyanskaya
Journal:  Kidney Int       Date:  2020-04-01       Impact factor: 10.612

Review 3.  Artificial intelligence (AI) in urology-Current use and future directions: An iTRUE study.

Authors:  Milap Shah; Nithesh Naik; Bhaskar K Somani; B M Zeeshan Hameed
Journal:  Turk J Urol       Date:  2020-05-27

4.  The future is coming: promising perspectives regarding the use of machine learning in renal transplantation.

Authors:  Pedro Guilherme Coelho Hannun; Luis Gustavo Modelli de Andrade
Journal:  J Bras Nefrol       Date:  2018-10-18

5.  Prediction of delayed graft function after kidney transplantation: comparison between logistic regression and machine learning methods.

Authors:  Alexander Decruyenaere; Philippe Decruyenaere; Patrick Peeters; Frank Vermassen; Tom Dhaene; Ivo Couckuyt
Journal:  BMC Med Inform Decis Mak       Date:  2015-10-14       Impact factor: 2.796

6.  A Machine Learning Approach Using Survival Statistics to Predict Graft Survival in Kidney Transplant Recipients: A Multicenter Cohort Study.

Authors:  Kyung Don Yoo; Junhyug Noh; Hajeong Lee; Dong Ki Kim; Chun Soo Lim; Young Hoon Kim; Jung Pyo Lee; Gunhee Kim; Yon Su Kim
Journal:  Sci Rep       Date:  2017-08-21       Impact factor: 4.379

7.  Prediction of the Mortality Risk in Peritoneal Dialysis Patients using Machine Learning Models: A Nation-wide Prospective Cohort in Korea.

Authors:  Junhyug Noh; Kyung Don Yoo; Wonho Bae; Jong Soo Lee; Kangil Kim; Jang-Hee Cho; Hajeong Lee; Dong Ki Kim; Chun Soo Lim; Shin-Wook Kang; Yong-Lim Kim; Yon Su Kim; Gunhee Kim; Jung Pyo Lee
Journal:  Sci Rep       Date:  2020-05-04       Impact factor: 4.379

8.  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

9.  Using machine learning techniques to develop risk prediction models to predict graft failure following kidney transplantation: protocol for a retrospective cohort study.

Authors:  Sameera Senanayake; Adrian Barnett; Nicholas Graves; Helen Healy; Keshwar Baboolal; Sanjeewa Kularatna
Journal:  F1000Res       Date:  2019-10-29
  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.