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XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury

The accurate prediction of neurological outcomes in patients with cervical spinal cord injury (SCI) is difficult because of heterogeneity in patient characteristics, treatment strategies, and radiographic findings. Although machine learning algorithms may increase the accuracy of outcome predictions...

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Autores principales: Inoue, Tomoo, Ichikawa, Daisuke, Ueno, Taro, Cheong, Maxwell, Inoue, Takashi, Whetstone, William D., Endo, Toshiki, Nizuma, Kuniyasu, Tominaga, Teiji
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Mary Ann Liebert, Inc., publishers 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8240917/
https://www.ncbi.nlm.nih.gov/pubmed/34223526
http://dx.doi.org/10.1089/neur.2020.0009
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author Inoue, Tomoo
Ichikawa, Daisuke
Ueno, Taro
Cheong, Maxwell
Inoue, Takashi
Whetstone, William D.
Endo, Toshiki
Nizuma, Kuniyasu
Tominaga, Teiji
author_facet Inoue, Tomoo
Ichikawa, Daisuke
Ueno, Taro
Cheong, Maxwell
Inoue, Takashi
Whetstone, William D.
Endo, Toshiki
Nizuma, Kuniyasu
Tominaga, Teiji
author_sort Inoue, Tomoo
collection PubMed
description The accurate prediction of neurological outcomes in patients with cervical spinal cord injury (SCI) is difficult because of heterogeneity in patient characteristics, treatment strategies, and radiographic findings. Although machine learning algorithms may increase the accuracy of outcome predictions in various fields, limited information is available on their efficacy in the management of SCI. We analyzed data from 165 patients with cervical SCI, and extracted important factors for predicting prognoses. Extreme gradient boosting (XGBoost) as a machine learning model was applied to assess the reliability of a machine learning algorithm to predict neurological outcomes compared with that of conventional methodology, such as a logistic regression or decision tree. We used regularly obtainable data as predictors, such as demographics, magnetic resonance variables, and treatment strategies. Predictive tools, including XGBoost, a logistic regression, and a decision tree, were applied to predict neurological improvements in the functional motor status (ASIA [American Spinal Injury Association] Impairment Scale [AIS] D and E) 6 months after injury. We evaluated predictive performance, including accuracy and the area under the receiver operating characteristic curve (AUC). Regarding predictions of neurological improvements in patients with cervical SCI, XGBoost had the highest accuracy (81.1%), followed by the logistic regression (80.6%) and the decision tree (78.8%). Regarding AUC, the logistic regression showed 0.877, followed by XGBoost (0.867) and the decision tree (0.753). XGBoost reliably predicted neurological alterations in patients with cervical SCI. The utilization of predictive machine learning algorithms may enhance personalized management choices through pre-treatment categorization of patients.
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spelling pubmed-82409172021-07-02 XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury Inoue, Tomoo Ichikawa, Daisuke Ueno, Taro Cheong, Maxwell Inoue, Takashi Whetstone, William D. Endo, Toshiki Nizuma, Kuniyasu Tominaga, Teiji Neurotrauma Rep Original Article The accurate prediction of neurological outcomes in patients with cervical spinal cord injury (SCI) is difficult because of heterogeneity in patient characteristics, treatment strategies, and radiographic findings. Although machine learning algorithms may increase the accuracy of outcome predictions in various fields, limited information is available on their efficacy in the management of SCI. We analyzed data from 165 patients with cervical SCI, and extracted important factors for predicting prognoses. Extreme gradient boosting (XGBoost) as a machine learning model was applied to assess the reliability of a machine learning algorithm to predict neurological outcomes compared with that of conventional methodology, such as a logistic regression or decision tree. We used regularly obtainable data as predictors, such as demographics, magnetic resonance variables, and treatment strategies. Predictive tools, including XGBoost, a logistic regression, and a decision tree, were applied to predict neurological improvements in the functional motor status (ASIA [American Spinal Injury Association] Impairment Scale [AIS] D and E) 6 months after injury. We evaluated predictive performance, including accuracy and the area under the receiver operating characteristic curve (AUC). Regarding predictions of neurological improvements in patients with cervical SCI, XGBoost had the highest accuracy (81.1%), followed by the logistic regression (80.6%) and the decision tree (78.8%). Regarding AUC, the logistic regression showed 0.877, followed by XGBoost (0.867) and the decision tree (0.753). XGBoost reliably predicted neurological alterations in patients with cervical SCI. The utilization of predictive machine learning algorithms may enhance personalized management choices through pre-treatment categorization of patients. Mary Ann Liebert, Inc., publishers 2020-07-23 /pmc/articles/PMC8240917/ /pubmed/34223526 http://dx.doi.org/10.1089/neur.2020.0009 Text en © Tomoo Inoue et al., 2020; Published by Mary Ann Liebert, Inc. https://creativecommons.org/licenses/by/4.0/This Open Access article is distributed under the terms of the Creative Commons License (http://creativecommons.org/licenses/by/4.0 (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited.
spellingShingle Original Article
Inoue, Tomoo
Ichikawa, Daisuke
Ueno, Taro
Cheong, Maxwell
Inoue, Takashi
Whetstone, William D.
Endo, Toshiki
Nizuma, Kuniyasu
Tominaga, Teiji
XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title_full XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title_fullStr XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title_full_unstemmed XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title_short XGBoost, a Machine Learning Method, Predicts Neurological Recovery in Patients with Cervical Spinal Cord Injury
title_sort xgboost, a machine learning method, predicts neurological recovery in patients with cervical spinal cord injury
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8240917/
https://www.ncbi.nlm.nih.gov/pubmed/34223526
http://dx.doi.org/10.1089/neur.2020.0009
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