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Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center

Acute kidney injury (AKI) is common in patients with trauma and is associated with poor outcomes. Therefore, early prediction of AKI in patients with trauma is important for risk stratification and the provision of optimal intensive care unit treatment. This study aimed to compare 2 models, machine...

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Autores principales: Choi, Hanlim, Lee, Jin Young, Sul, Younghoon, Kim, Seheon, Ye, Jin Bong, Lee, Jin Suk, Yoon, Suyoung, Seok, Junepill, Han, Jonghee, Choi, Jung Hee, Kim, Hong Rye
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10443755/
https://www.ncbi.nlm.nih.gov/pubmed/37603521
http://dx.doi.org/10.1097/MD.0000000000034847
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author Choi, Hanlim
Lee, Jin Young
Sul, Younghoon
Kim, Seheon
Ye, Jin Bong
Lee, Jin Suk
Yoon, Suyoung
Seok, Junepill
Han, Jonghee
Choi, Jung Hee
Kim, Hong Rye
author_facet Choi, Hanlim
Lee, Jin Young
Sul, Younghoon
Kim, Seheon
Ye, Jin Bong
Lee, Jin Suk
Yoon, Suyoung
Seok, Junepill
Han, Jonghee
Choi, Jung Hee
Kim, Hong Rye
author_sort Choi, Hanlim
collection PubMed
description Acute kidney injury (AKI) is common in patients with trauma and is associated with poor outcomes. Therefore, early prediction of AKI in patients with trauma is important for risk stratification and the provision of optimal intensive care unit treatment. This study aimed to compare 2 models, machine learning (ML) techniques and logistic regression, in predicting AKI in patients with trauma. We retrospectively reviewed the charts of 400 patients who sustained torso injuries between January 2016 and June 2020. Patients were included if they were aged > 15 years, admitted to the intensive care unit, survived for > 48 hours, had thoracic and/or abdominal injuries, had no end-stage renal disease, and had no missing data. AKI was defined in accordance with the Kidney Disease Improving Global Outcomes definition and staging system. The patients were divided into 2 groups: AKI (n = 78) and non-AKI (n = 322). We divided the original dataset into a training (80%) and a test set (20%), and the logistic regression with stepwise selection and ML (decision tree with hyperparameter optimization using grid search and cross-validation) was used to build a model for predicting AKI. The models established using the training dataset were evaluated using a confusion matrix receiver operating characteristic curve with the test dataset. We included 400 patients with torso injury, of whom 78 (19.5%) progressed to AKI. Age, intestinal injury, cumulative fluid balance within 24 hours, and the use of vasopressors were independent risk factors for AKI in the logistic regression model. In the ML model, vasopressors were the most important feature, followed by cumulative fluid balance within 24 hours and packed red blood cell transfusion within 4 hours. The accuracy score showed no differences between the 2 groups; however, the recall and F1 score were significantly higher in the ML model (.94 vs 56 and.75 vs 64, respectively). The ML model performed better than the logistic regression model in predicting AKI in patients with trauma. ML techniques can aid in risk stratification and the provision of optimal care.
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spelling pubmed-104437552023-08-23 Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center Choi, Hanlim Lee, Jin Young Sul, Younghoon Kim, Seheon Ye, Jin Bong Lee, Jin Suk Yoon, Suyoung Seok, Junepill Han, Jonghee Choi, Jung Hee Kim, Hong Rye Medicine (Baltimore) 3900 Acute kidney injury (AKI) is common in patients with trauma and is associated with poor outcomes. Therefore, early prediction of AKI in patients with trauma is important for risk stratification and the provision of optimal intensive care unit treatment. This study aimed to compare 2 models, machine learning (ML) techniques and logistic regression, in predicting AKI in patients with trauma. We retrospectively reviewed the charts of 400 patients who sustained torso injuries between January 2016 and June 2020. Patients were included if they were aged > 15 years, admitted to the intensive care unit, survived for > 48 hours, had thoracic and/or abdominal injuries, had no end-stage renal disease, and had no missing data. AKI was defined in accordance with the Kidney Disease Improving Global Outcomes definition and staging system. The patients were divided into 2 groups: AKI (n = 78) and non-AKI (n = 322). We divided the original dataset into a training (80%) and a test set (20%), and the logistic regression with stepwise selection and ML (decision tree with hyperparameter optimization using grid search and cross-validation) was used to build a model for predicting AKI. The models established using the training dataset were evaluated using a confusion matrix receiver operating characteristic curve with the test dataset. We included 400 patients with torso injury, of whom 78 (19.5%) progressed to AKI. Age, intestinal injury, cumulative fluid balance within 24 hours, and the use of vasopressors were independent risk factors for AKI in the logistic regression model. In the ML model, vasopressors were the most important feature, followed by cumulative fluid balance within 24 hours and packed red blood cell transfusion within 4 hours. The accuracy score showed no differences between the 2 groups; however, the recall and F1 score were significantly higher in the ML model (.94 vs 56 and.75 vs 64, respectively). The ML model performed better than the logistic regression model in predicting AKI in patients with trauma. ML techniques can aid in risk stratification and the provision of optimal care. Lippincott Williams & Wilkins 2023-08-18 /pmc/articles/PMC10443755/ /pubmed/37603521 http://dx.doi.org/10.1097/MD.0000000000034847 Text en Copyright © 2023 the Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial License 4.0 (CCBY-NC) (https://creativecommons.org/licenses/by-nc/4.0/) , where it is permissible to download, share, remix, transform, and buildup the work provided it is properly cited. The work cannot be used commercially without permission from the journal.
spellingShingle 3900
Choi, Hanlim
Lee, Jin Young
Sul, Younghoon
Kim, Seheon
Ye, Jin Bong
Lee, Jin Suk
Yoon, Suyoung
Seok, Junepill
Han, Jonghee
Choi, Jung Hee
Kim, Hong Rye
Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title_full Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title_fullStr Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title_full_unstemmed Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title_short Comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: A retrospective observational study at a single tertiary medical center
title_sort comparing machine learning and logistic regression for acute kidney injury prediction in trauma patients: a retrospective observational study at a single tertiary medical center
topic 3900
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10443755/
https://www.ncbi.nlm.nih.gov/pubmed/37603521
http://dx.doi.org/10.1097/MD.0000000000034847
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