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Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot

BACKGROUND: Renal replacement therapy (RRT) is a public health problem worldwide. Kidney transplantation (KT) is the best treatment for elderly patients' longevity and quality of life. OBJECTIVES: The primary endpoint was to compare elderly versus younger KT recipients by analyzing the risk cov...

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Autores principales: Elihimas Júnior, Ubiracé Fernando, Couto, Jamila Pinho, Pereira, Wallace, Barros de Oliveira Sá, Michel Pompeu, Tenório de França, Eduardo Eriko, Aguiar, Filipe Carrilho, Cabral, Diogo Buarque Cordeiro, Alencar, Saulo Barbosa Vasconcelos, Feitosa, Saulo José da Costa, Claizoni dos Santos, Thais Oliveira, dos Santos Elihimas, Helen Conceição, Alves, Emilly Pereira, José de Carvalho Lima, Marcio, Branco Cavalcanti, Frederico Castelo, Schwingel, Paulo Adriano
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7453245/
https://www.ncbi.nlm.nih.gov/pubmed/32922997
http://dx.doi.org/10.1155/2020/7413616
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author Elihimas Júnior, Ubiracé Fernando
Couto, Jamila Pinho
Pereira, Wallace
Barros de Oliveira Sá, Michel Pompeu
Tenório de França, Eduardo Eriko
Aguiar, Filipe Carrilho
Cabral, Diogo Buarque Cordeiro
Alencar, Saulo Barbosa Vasconcelos
Feitosa, Saulo José da Costa
Claizoni dos Santos, Thais Oliveira
dos Santos Elihimas, Helen Conceição
Alves, Emilly Pereira
José de Carvalho Lima, Marcio
Branco Cavalcanti, Frederico Castelo
Schwingel, Paulo Adriano
author_facet Elihimas Júnior, Ubiracé Fernando
Couto, Jamila Pinho
Pereira, Wallace
Barros de Oliveira Sá, Michel Pompeu
Tenório de França, Eduardo Eriko
Aguiar, Filipe Carrilho
Cabral, Diogo Buarque Cordeiro
Alencar, Saulo Barbosa Vasconcelos
Feitosa, Saulo José da Costa
Claizoni dos Santos, Thais Oliveira
dos Santos Elihimas, Helen Conceição
Alves, Emilly Pereira
José de Carvalho Lima, Marcio
Branco Cavalcanti, Frederico Castelo
Schwingel, Paulo Adriano
author_sort Elihimas Júnior, Ubiracé Fernando
collection PubMed
description BACKGROUND: Renal replacement therapy (RRT) is a public health problem worldwide. Kidney transplantation (KT) is the best treatment for elderly patients' longevity and quality of life. OBJECTIVES: The primary endpoint was to compare elderly versus younger KT recipients by analyzing the risk covariables involved in worsening renal function, proteinuria, graft loss, and death one year after KT. The secondary endpoint was to create a robot based on logistic regression capable of predicting the likelihood that elderly recipients will develop worse renal function one year after KT. METHOD: Unicentric retrospective analysis of a cohort was performed with individuals aged ≥60 and <60 years old. We analysed medical records of KT recipients from January to December 2017, with a follow-up time of one year after KT. We used multivariable logistic regression to estimate odds ratios for elderly vs younger recipients, controlled for demographic, clinical, laboratory, data pre- and post-KT, and death. RESULTS: 18 elderly and 100 younger KT recipients were included. Pretransplant immune variables were similar between two groups. No significant differences (P > 0.05) between groups were observed after KT on laboratory data means and for the prevalences of diabetes mellitus, hypertension, acute rejection, cytomegalovirus, polyomavirus, and urinary infections. One year after KT, the creatinine clearance was higher (P = 0.006) in youngers (70.9 ± 25.2 mL/min/1.73 m(2)) versus elderlies (53.3 ± 21.1 mL/min/1.73 m(2)). There was no difference in death outcome comparison. Multivariable analysis among covariables predisposing chronic kidney disease epidemiology collaboration (CKD-EPI) equation <60 mL/min/1.73 m(2) presented a statistical significance for age ≥60 years (P = 0.01) and reduction in serum haemoglobin (P = 0.03). The model presented goodness-fit in the evaluation of artificial intelligence metrics (precision: 90%; sensitivity: 71%; and F(1) score: 0.79). CONCLUSION: Renal function in elderly KT recipients was lower than in younger KT recipients. However, patients aged ≥60 years maintained enough renal function to remain off dialysis. Moreover, a learning machine application built a robot (Elderly KTbot) to predict in the elderly populations the likelihood of worse renal function one year after KT.
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spelling pubmed-74532452020-09-11 Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot Elihimas Júnior, Ubiracé Fernando Couto, Jamila Pinho Pereira, Wallace Barros de Oliveira Sá, Michel Pompeu Tenório de França, Eduardo Eriko Aguiar, Filipe Carrilho Cabral, Diogo Buarque Cordeiro Alencar, Saulo Barbosa Vasconcelos Feitosa, Saulo José da Costa Claizoni dos Santos, Thais Oliveira dos Santos Elihimas, Helen Conceição Alves, Emilly Pereira José de Carvalho Lima, Marcio Branco Cavalcanti, Frederico Castelo Schwingel, Paulo Adriano J Aging Res Research Article BACKGROUND: Renal replacement therapy (RRT) is a public health problem worldwide. Kidney transplantation (KT) is the best treatment for elderly patients' longevity and quality of life. OBJECTIVES: The primary endpoint was to compare elderly versus younger KT recipients by analyzing the risk covariables involved in worsening renal function, proteinuria, graft loss, and death one year after KT. The secondary endpoint was to create a robot based on logistic regression capable of predicting the likelihood that elderly recipients will develop worse renal function one year after KT. METHOD: Unicentric retrospective analysis of a cohort was performed with individuals aged ≥60 and <60 years old. We analysed medical records of KT recipients from January to December 2017, with a follow-up time of one year after KT. We used multivariable logistic regression to estimate odds ratios for elderly vs younger recipients, controlled for demographic, clinical, laboratory, data pre- and post-KT, and death. RESULTS: 18 elderly and 100 younger KT recipients were included. Pretransplant immune variables were similar between two groups. No significant differences (P > 0.05) between groups were observed after KT on laboratory data means and for the prevalences of diabetes mellitus, hypertension, acute rejection, cytomegalovirus, polyomavirus, and urinary infections. One year after KT, the creatinine clearance was higher (P = 0.006) in youngers (70.9 ± 25.2 mL/min/1.73 m(2)) versus elderlies (53.3 ± 21.1 mL/min/1.73 m(2)). There was no difference in death outcome comparison. Multivariable analysis among covariables predisposing chronic kidney disease epidemiology collaboration (CKD-EPI) equation <60 mL/min/1.73 m(2) presented a statistical significance for age ≥60 years (P = 0.01) and reduction in serum haemoglobin (P = 0.03). The model presented goodness-fit in the evaluation of artificial intelligence metrics (precision: 90%; sensitivity: 71%; and F(1) score: 0.79). CONCLUSION: Renal function in elderly KT recipients was lower than in younger KT recipients. However, patients aged ≥60 years maintained enough renal function to remain off dialysis. Moreover, a learning machine application built a robot (Elderly KTbot) to predict in the elderly populations the likelihood of worse renal function one year after KT. Hindawi 2020-08-19 /pmc/articles/PMC7453245/ /pubmed/32922997 http://dx.doi.org/10.1155/2020/7413616 Text en Copyright © 2020 Ubiracé Fernando Elihimas Júnior et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Elihimas Júnior, Ubiracé Fernando
Couto, Jamila Pinho
Pereira, Wallace
Barros de Oliveira Sá, Michel Pompeu
Tenório de França, Eduardo Eriko
Aguiar, Filipe Carrilho
Cabral, Diogo Buarque Cordeiro
Alencar, Saulo Barbosa Vasconcelos
Feitosa, Saulo José da Costa
Claizoni dos Santos, Thais Oliveira
dos Santos Elihimas, Helen Conceição
Alves, Emilly Pereira
José de Carvalho Lima, Marcio
Branco Cavalcanti, Frederico Castelo
Schwingel, Paulo Adriano
Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title_full Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title_fullStr Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title_full_unstemmed Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title_short Logistic Regression Model in a Machine Learning Application to Predict Elderly Kidney Transplant Recipients with Worse Renal Function One Year after Kidney Transplant: Elderly KTbot
title_sort logistic regression model in a machine learning application to predict elderly kidney transplant recipients with worse renal function one year after kidney transplant: elderly ktbot
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7453245/
https://www.ncbi.nlm.nih.gov/pubmed/32922997
http://dx.doi.org/10.1155/2020/7413616
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