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

Detalhes bibliográficos
Autor(a) principal: Hannun,Pedro Guilherme Coelho
Data de Publicação: 2019
Outros Autores: Andrade,Luis Gustavo Modelli de
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Jornal Brasileiro de Nefrologia
Texto Completo: http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0101-28002019000200284
Resumo: Abstract Introduction: The prediction of post transplantation outcomes is clinically important and involves several problems. The current prediction models based on standard statistics are very complex, difficult to validate and do not provide accurate prediction. Machine learning, a statistical technique that allows the computer to make future predictions using previous experiences, is beginning to be used in order to solve these issues. In the field of kidney transplantation, computational forecasting use has been reported in prediction of chronic allograft rejection, delayed graft function, and graft survival. This paper describes machine learning principles and steps to make a prediction and performs a brief analysis of the most recent applications of its application in literature. Discussion: There is compelling evidence that machine learning approaches based on donor and recipient data are better in providing improved prognosis of graft outcomes than traditional analysis. The immediate expectations that emerge from this new prediction modelling technique are that it will generate better clinical decisions based on dynamic and local practice data and optimize organ allocation as well as post transplantation care management. Despite the promising results, there is no substantial number of studies yet to determine feasibility of its application in a clinical setting. Conclusion: The way we deal with storage data in electronic health records will radically change in the coming years and machine learning will be part of clinical daily routine, whether to predict clinical outcomes or suggest diagnosis based on institutional experience.
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spelling The future is coming: promising perspectives regarding the use of machine learning in renal transplantationMachine LearningKidney TransplantationModels, StatisticalAbstract Introduction: The prediction of post transplantation outcomes is clinically important and involves several problems. The current prediction models based on standard statistics are very complex, difficult to validate and do not provide accurate prediction. Machine learning, a statistical technique that allows the computer to make future predictions using previous experiences, is beginning to be used in order to solve these issues. In the field of kidney transplantation, computational forecasting use has been reported in prediction of chronic allograft rejection, delayed graft function, and graft survival. This paper describes machine learning principles and steps to make a prediction and performs a brief analysis of the most recent applications of its application in literature. Discussion: There is compelling evidence that machine learning approaches based on donor and recipient data are better in providing improved prognosis of graft outcomes than traditional analysis. The immediate expectations that emerge from this new prediction modelling technique are that it will generate better clinical decisions based on dynamic and local practice data and optimize organ allocation as well as post transplantation care management. Despite the promising results, there is no substantial number of studies yet to determine feasibility of its application in a clinical setting. Conclusion: The way we deal with storage data in electronic health records will radically change in the coming years and machine learning will be part of clinical daily routine, whether to predict clinical outcomes or suggest diagnosis based on institutional experience.Sociedade Brasileira de Nefrologia2019-06-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersiontext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0101-28002019000200284Brazilian Journal of Nephrology v.41 n.2 2019reponame:Jornal Brasileiro de Nefrologiainstname:Sociedade Brasileira de Nefrologia (SBN)instacron:SBN10.1590/2175-8239-jbn-2018-0047info:eu-repo/semantics/openAccessHannun,Pedro Guilherme CoelhoAndrade,Luis Gustavo Modelli deeng2019-07-29T00:00:00Zoai:scielo:S0101-28002019000200284Revistahttp://www.bjn.org.br/ONGhttps://old.scielo.br/oai/scielo-oai.php||jbn@sbn.org.br2175-82390101-2800opendoar:2019-07-29T00:00Jornal Brasileiro de Nefrologia - Sociedade Brasileira de Nefrologia (SBN)false
dc.title.none.fl_str_mv The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
title The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
spellingShingle The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
Hannun,Pedro Guilherme Coelho
Machine Learning
Kidney Transplantation
Models, Statistical
title_short The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
title_full The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
title_fullStr The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
title_full_unstemmed The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
title_sort The future is coming: promising perspectives regarding the use of machine learning in renal transplantation
author Hannun,Pedro Guilherme Coelho
author_facet Hannun,Pedro Guilherme Coelho
Andrade,Luis Gustavo Modelli de
author_role author
author2 Andrade,Luis Gustavo Modelli de
author2_role author
dc.contributor.author.fl_str_mv Hannun,Pedro Guilherme Coelho
Andrade,Luis Gustavo Modelli de
dc.subject.por.fl_str_mv Machine Learning
Kidney Transplantation
Models, Statistical
topic Machine Learning
Kidney Transplantation
Models, Statistical
description Abstract Introduction: The prediction of post transplantation outcomes is clinically important and involves several problems. The current prediction models based on standard statistics are very complex, difficult to validate and do not provide accurate prediction. Machine learning, a statistical technique that allows the computer to make future predictions using previous experiences, is beginning to be used in order to solve these issues. In the field of kidney transplantation, computational forecasting use has been reported in prediction of chronic allograft rejection, delayed graft function, and graft survival. This paper describes machine learning principles and steps to make a prediction and performs a brief analysis of the most recent applications of its application in literature. Discussion: There is compelling evidence that machine learning approaches based on donor and recipient data are better in providing improved prognosis of graft outcomes than traditional analysis. The immediate expectations that emerge from this new prediction modelling technique are that it will generate better clinical decisions based on dynamic and local practice data and optimize organ allocation as well as post transplantation care management. Despite the promising results, there is no substantial number of studies yet to determine feasibility of its application in a clinical setting. Conclusion: The way we deal with storage data in electronic health records will radically change in the coming years and machine learning will be part of clinical daily routine, whether to predict clinical outcomes or suggest diagnosis based on institutional experience.
publishDate 2019
dc.date.none.fl_str_mv 2019-06-01
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
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language eng
dc.relation.none.fl_str_mv 10.1590/2175-8239-jbn-2018-0047
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dc.publisher.none.fl_str_mv Sociedade Brasileira de Nefrologia
publisher.none.fl_str_mv Sociedade Brasileira de Nefrologia
dc.source.none.fl_str_mv Brazilian Journal of Nephrology v.41 n.2 2019
reponame:Jornal Brasileiro de Nefrologia
instname:Sociedade Brasileira de Nefrologia (SBN)
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instname_str Sociedade Brasileira de Nefrologia (SBN)
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reponame_str Jornal Brasileiro de Nefrologia
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