Literature DB >> 20534243

Decisional trees in renal transplant follow-up.

R Greco1, T Papalia, D Lofaro, S Maestripieri, D Mancuso, R Bonofiglio.   

Abstract

INTRODUCTION: The predictive potentialities of application of data mining algorithms to medical research are well known. In this article, we have applied to a transplant population classification trees to build predictive models of graft failure, evaluating the interactions between body mass index (BMI) and other risk factors. The decision trees have been widely used to represent classification rules in a population by a hierarchical sequential structure. PATIENTS AND METHODS: We retrospectively studied 194 renal transplant patients with 5 years of follow-up (128 males, 66 females, mean age at time of transplant of 43.9 +/- 12.5 years). Exclusion criteria were: age < 18 years, multiorgan transplant, and retransplant. The BMI was calculated at the time of transplantation. In the classification algorithm, we considered the following parameters: age, sex, time on dialysis, donor type, donor age, HLA mismatches, delayed graft function (DGF), acute rejection episode (ARE), and chronic allograft nephropathy (CAN). The primary endpoint was graft loss within 5-years follow-up.
RESULTS: The classification algorithm produced a decision tree that allowed us to evaluate the interactions between ARE, DGF, CAN, and BMI on graft outcomes, producing a validation set with 88.2% sensitivity and 73.8% specificity. Our model was able to highlight that subjects at risk of graft loss experienced one or more events of ARE, developed DGF and CAN, or has a BMI > 24.8 kg/m(2) and CAN.
CONCLUSIONS: The use of decision trees in clinical practice may be a suitable alternative to the traditional statistical methods, since it may allow one to analyze interactions between various risk factors beyond the previous knowledge. Copyright (c) 2010 Elsevier Inc. All rights reserved.

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Mesh:

Year:  2010        PMID: 20534243     DOI: 10.1016/j.transproceed.2010.03.061

Source DB:  PubMed          Journal:  Transplant Proc        ISSN: 0041-1345            Impact factor:   1.066


  9 in total

Review 1.  Machine learning, the kidney, and genotype-phenotype analysis.

Authors:  Rachel S G Sealfon; Laura H Mariani; Matthias Kretzler; Olga G Troyanskaya
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Review 2.  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

Review 3.  Machine Learning for Renal Pathologies: An Updated Survey.

Authors:  Roberto Magherini; Elisa Mussi; Yary Volpe; Rocco Furferi; Francesco Buonamici; Michaela Servi
Journal:  Sensors (Basel)       Date:  2022-07-01       Impact factor: 3.847

4.  Predicting the survival of kidney transplantation: design and evaluation of a smartphone-based application.

Authors:  Leila Shahmoradi; Alireza Borhani; Mostafa Langarizadeh; Gholamreza Pourmand; Ziba Aghsaei Fard; Sorayya Rezayi
Journal:  BMC Nephrol       Date:  2022-06-21       Impact factor: 2.585

5.  The role of uropathogenic Escherichia coli adhesive molecules in inflammatory response- comparative study on immunocompetent hosts and kidney recipients.

Authors:  Bartosz Wojciuk; Karolina Majewska; Bartłomiej Grygorcewicz; Żaneta Krukowska; Ewa Kwiatkowska; Kazimierz Ciechanowski; Barbara Dołęgowska
Journal:  PLoS One       Date:  2022-05-23       Impact factor: 3.752

6.  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

7.  Comparing Three Data Mining Methods to Predict Kidney Transplant Survival.

Authors:  Leila Shahmoradi; Mostafa Langarizadeh; Gholamreza Pourmand; Ziba Aghsaei Fard; Alireza Borhani
Journal:  Acta Inform Med       Date:  2016-11-01

Review 8.  Using Artificial Intelligence Resources in Dialysis and Kidney Transplant Patients: A Literature Review.

Authors:  Alexandru Burlacu; Adrian Iftene; Daniel Jugrin; Iolanda Valentina Popa; Paula Madalina Lupu; Cristiana Vlad; Adrian Covic
Journal:  Biomed Res Int       Date:  2020-06-10       Impact factor: 3.411

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

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