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Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning

OBJECTIVE: To create and validate a model for predicting septic or hypovolemic shock from easily obtainable variables collected from patients at admission to an intensive care unit. METHODS: A predictive modeling study with concurrent cohort data was conducted in a hospital in the interior of northe...

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Autores principales: Pessoa, Stela Mares Brasileiro, Oliveira, Bianca Silva de Sousa, dos Santos, Wendy Gomes, Oliveira, Augusto Novais Macedo, Camargo, Marianne Silveira, de Matos, Douglas Leandro Aparecido Barbosa, Silva, Miquéias Martins Lima, Medeiros, Carolina Cintra de Queiroz, Coelho, Cláudia Soares de Sousa, Andrade Neto, José de Souza, Mistro, Sóstenes
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Associação de Medicina Intensiva Brasileira - AMIB 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9986996/
https://www.ncbi.nlm.nih.gov/pubmed/36888828
http://dx.doi.org/10.5935/0103-507X.20220280-en
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author Pessoa, Stela Mares Brasileiro
Oliveira, Bianca Silva de Sousa
dos Santos, Wendy Gomes
Oliveira, Augusto Novais Macedo
Camargo, Marianne Silveira
de Matos, Douglas Leandro Aparecido Barbosa
Silva, Miquéias Martins Lima
Medeiros, Carolina Cintra de Queiroz
Coelho, Cláudia Soares de Sousa
Andrade Neto, José de Souza
Mistro, Sóstenes
author_facet Pessoa, Stela Mares Brasileiro
Oliveira, Bianca Silva de Sousa
dos Santos, Wendy Gomes
Oliveira, Augusto Novais Macedo
Camargo, Marianne Silveira
de Matos, Douglas Leandro Aparecido Barbosa
Silva, Miquéias Martins Lima
Medeiros, Carolina Cintra de Queiroz
Coelho, Cláudia Soares de Sousa
Andrade Neto, José de Souza
Mistro, Sóstenes
author_sort Pessoa, Stela Mares Brasileiro
collection PubMed
description OBJECTIVE: To create and validate a model for predicting septic or hypovolemic shock from easily obtainable variables collected from patients at admission to an intensive care unit. METHODS: A predictive modeling study with concurrent cohort data was conducted in a hospital in the interior of northeastern Brazil. Patients aged 18 years or older who were not using vasoactive drugs on the day of admission and were hospitalized from November 2020 to July 2021 were included. The Decision Tree, Random Forest, AdaBoost, Gradient Boosting and XGBoost classification algorithms were tested for use in building the model. The validation method used was k-fold cross validation. The evaluation metrics used were recall, precision and area under the Receiver Operating Characteristic curve. RESULTS: A total of 720 patients were used to create and validate the model. The models showed high predictive capacity with areas under the Receiver Operating Characteristic curve of 0.979; 0.999; 0.980; 0.998 and 1.00 for the Decision Tree, Random Forest, AdaBoost, Gradient Boosting and XGBoost algorithms, respectively. CONCLUSION: The predictive model created and validated showed a high ability to predict septic and hypovolemic shock from the time of admission of patients to the intensive care unit.
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spelling pubmed-99869962023-03-07 Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning Pessoa, Stela Mares Brasileiro Oliveira, Bianca Silva de Sousa dos Santos, Wendy Gomes Oliveira, Augusto Novais Macedo Camargo, Marianne Silveira de Matos, Douglas Leandro Aparecido Barbosa Silva, Miquéias Martins Lima Medeiros, Carolina Cintra de Queiroz Coelho, Cláudia Soares de Sousa Andrade Neto, José de Souza Mistro, Sóstenes Rev Bras Ter Intensiva Original Article OBJECTIVE: To create and validate a model for predicting septic or hypovolemic shock from easily obtainable variables collected from patients at admission to an intensive care unit. METHODS: A predictive modeling study with concurrent cohort data was conducted in a hospital in the interior of northeastern Brazil. Patients aged 18 years or older who were not using vasoactive drugs on the day of admission and were hospitalized from November 2020 to July 2021 were included. The Decision Tree, Random Forest, AdaBoost, Gradient Boosting and XGBoost classification algorithms were tested for use in building the model. The validation method used was k-fold cross validation. The evaluation metrics used were recall, precision and area under the Receiver Operating Characteristic curve. RESULTS: A total of 720 patients were used to create and validate the model. The models showed high predictive capacity with areas under the Receiver Operating Characteristic curve of 0.979; 0.999; 0.980; 0.998 and 1.00 for the Decision Tree, Random Forest, AdaBoost, Gradient Boosting and XGBoost algorithms, respectively. CONCLUSION: The predictive model created and validated showed a high ability to predict septic and hypovolemic shock from the time of admission of patients to the intensive care unit. Associação de Medicina Intensiva Brasileira - AMIB 2022 /pmc/articles/PMC9986996/ /pubmed/36888828 http://dx.doi.org/10.5935/0103-507X.20220280-en Text en https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Pessoa, Stela Mares Brasileiro
Oliveira, Bianca Silva de Sousa
dos Santos, Wendy Gomes
Oliveira, Augusto Novais Macedo
Camargo, Marianne Silveira
de Matos, Douglas Leandro Aparecido Barbosa
Silva, Miquéias Martins Lima
Medeiros, Carolina Cintra de Queiroz
Coelho, Cláudia Soares de Sousa
Andrade Neto, José de Souza
Mistro, Sóstenes
Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title_full Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title_fullStr Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title_full_unstemmed Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title_short Prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
title_sort prediction of septic and hypovolemic shock in intensive care unit patients using machine learning
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9986996/
https://www.ncbi.nlm.nih.gov/pubmed/36888828
http://dx.doi.org/10.5935/0103-507X.20220280-en
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