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Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population

Background: In a time when the incidence of severe traumatic brain injury (TBI) is increasing in low- to middle-income countries (LMICs), it is important to understand the behavior of predictive variables in an LMIC's population. There are few previous attempts to generate prediction models for...

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Autores principales: Amorim, Robson Luis, Oliveira, Louise Makarem, Malbouisson, Luis Marcelo, Nagumo, Marcia Mitie, Simoes, Marcela, Miranda, Leandro, Bor-Seng-Shu, Edson, Beer-Furlan, Andre, De Andrade, Almir Ferreira, Rubiano, Andres M., Teixeira, Manoel Jacobsen, Kolias, Angelos G., Paiva, Wellingson Silva
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6992595/
https://www.ncbi.nlm.nih.gov/pubmed/32038454
http://dx.doi.org/10.3389/fneur.2019.01366
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author Amorim, Robson Luis
Oliveira, Louise Makarem
Malbouisson, Luis Marcelo
Nagumo, Marcia Mitie
Simoes, Marcela
Miranda, Leandro
Bor-Seng-Shu, Edson
Beer-Furlan, Andre
De Andrade, Almir Ferreira
Rubiano, Andres M.
Teixeira, Manoel Jacobsen
Kolias, Angelos G.
Paiva, Wellingson Silva
author_facet Amorim, Robson Luis
Oliveira, Louise Makarem
Malbouisson, Luis Marcelo
Nagumo, Marcia Mitie
Simoes, Marcela
Miranda, Leandro
Bor-Seng-Shu, Edson
Beer-Furlan, Andre
De Andrade, Almir Ferreira
Rubiano, Andres M.
Teixeira, Manoel Jacobsen
Kolias, Angelos G.
Paiva, Wellingson Silva
author_sort Amorim, Robson Luis
collection PubMed
description Background: In a time when the incidence of severe traumatic brain injury (TBI) is increasing in low- to middle-income countries (LMICs), it is important to understand the behavior of predictive variables in an LMIC's population. There are few previous attempts to generate prediction models for TBI outcomes from local data in LMICs. Our study aim is to design and compare a series of predictive models for mortality on a new cohort in TBI patients in Brazil using Machine Learning. Methods: A prospective registry was set in São Paulo, Brazil, enrolling all patients with a diagnosis of TBI that require admission to the intensive care unit. We evaluated the following predictors: gender, age, pupil reactivity at admission, Glasgow Coma Scale (GCS), presence of hypoxia and hypotension, computed tomography findings, trauma severity score, and laboratory results. Results: Overall mortality at 14 days was 22.8%. Models had a high prediction performance, with the best prediction for overall mortality achieved through Naive Bayes (area under the curve = 0.906). The most significant predictors were the GCS at admission and prehospital GCS, age, and pupil reaction. When predicting the length of stay at the intensive care unit, the Conditional Inference Tree model had the best performance (root mean square error = 1.011), with the most important variable across all models being the GCS at scene. Conclusions: Models for early mortality and hospital length of stay using Machine Learning can achieve high performance when based on registry data even in LMICs. These models have the potential to inform treatment decisions and counsel family members. Level of evidence: This observational study provides a level IV evidence on prognosis after TBI.
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spelling pubmed-69925952020-02-07 Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population Amorim, Robson Luis Oliveira, Louise Makarem Malbouisson, Luis Marcelo Nagumo, Marcia Mitie Simoes, Marcela Miranda, Leandro Bor-Seng-Shu, Edson Beer-Furlan, Andre De Andrade, Almir Ferreira Rubiano, Andres M. Teixeira, Manoel Jacobsen Kolias, Angelos G. Paiva, Wellingson Silva Front Neurol Neurology Background: In a time when the incidence of severe traumatic brain injury (TBI) is increasing in low- to middle-income countries (LMICs), it is important to understand the behavior of predictive variables in an LMIC's population. There are few previous attempts to generate prediction models for TBI outcomes from local data in LMICs. Our study aim is to design and compare a series of predictive models for mortality on a new cohort in TBI patients in Brazil using Machine Learning. Methods: A prospective registry was set in São Paulo, Brazil, enrolling all patients with a diagnosis of TBI that require admission to the intensive care unit. We evaluated the following predictors: gender, age, pupil reactivity at admission, Glasgow Coma Scale (GCS), presence of hypoxia and hypotension, computed tomography findings, trauma severity score, and laboratory results. Results: Overall mortality at 14 days was 22.8%. Models had a high prediction performance, with the best prediction for overall mortality achieved through Naive Bayes (area under the curve = 0.906). The most significant predictors were the GCS at admission and prehospital GCS, age, and pupil reaction. When predicting the length of stay at the intensive care unit, the Conditional Inference Tree model had the best performance (root mean square error = 1.011), with the most important variable across all models being the GCS at scene. Conclusions: Models for early mortality and hospital length of stay using Machine Learning can achieve high performance when based on registry data even in LMICs. These models have the potential to inform treatment decisions and counsel family members. Level of evidence: This observational study provides a level IV evidence on prognosis after TBI. Frontiers Media S.A. 2020-01-24 /pmc/articles/PMC6992595/ /pubmed/32038454 http://dx.doi.org/10.3389/fneur.2019.01366 Text en Copyright © 2020 Amorim, Oliveira, Malbouisson, Nagumo, Simoes, Miranda, Bor-Seng-Shu, Beer-Furlan, De Andrade, Rubiano, Teixeira, Kolias and Paiva. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Amorim, Robson Luis
Oliveira, Louise Makarem
Malbouisson, Luis Marcelo
Nagumo, Marcia Mitie
Simoes, Marcela
Miranda, Leandro
Bor-Seng-Shu, Edson
Beer-Furlan, Andre
De Andrade, Almir Ferreira
Rubiano, Andres M.
Teixeira, Manoel Jacobsen
Kolias, Angelos G.
Paiva, Wellingson Silva
Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title_full Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title_fullStr Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title_full_unstemmed Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title_short Prediction of Early TBI Mortality Using a Machine Learning Approach in a LMIC Population
title_sort prediction of early tbi mortality using a machine learning approach in a lmic population
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6992595/
https://www.ncbi.nlm.nih.gov/pubmed/32038454
http://dx.doi.org/10.3389/fneur.2019.01366
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