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Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning

Embolic stroke (ES) is characterized by high morbidity and mortality. Its mortality predictors remain unclear. The present study aimed to use machine learning (ML) to identify the key predictors of mortality for ES patients in the intensive care unit (ICU). Data were extracted from two large ICU dat...

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Autores principales: Liu, Wei, Ma, Wei, Bai, Na, Li, Chunyan, Liu, Kuangpin, Yang, Jinwei, Zhang, Sijia, Zhu, Kewei, Zhou, Qiang, Liu, Hua, Guo, Jianhui, Li, Liyan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Portland Press Ltd. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9484010/
https://www.ncbi.nlm.nih.gov/pubmed/35993194
http://dx.doi.org/10.1042/BSR20220995
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author Liu, Wei
Ma, Wei
Bai, Na
Li, Chunyan
Liu, Kuangpin
Yang, Jinwei
Zhang, Sijia
Zhu, Kewei
Zhou, Qiang
Liu, Hua
Guo, Jianhui
Li, Liyan
author_facet Liu, Wei
Ma, Wei
Bai, Na
Li, Chunyan
Liu, Kuangpin
Yang, Jinwei
Zhang, Sijia
Zhu, Kewei
Zhou, Qiang
Liu, Hua
Guo, Jianhui
Li, Liyan
author_sort Liu, Wei
collection PubMed
description Embolic stroke (ES) is characterized by high morbidity and mortality. Its mortality predictors remain unclear. The present study aimed to use machine learning (ML) to identify the key predictors of mortality for ES patients in the intensive care unit (ICU). Data were extracted from two large ICU databases: Medical Information Mart for Intensive Care (MIMIC)-IV for training and internal validation, and eICU Collaborative Research Database (eICU-CRD) for external validation. We developed predictive models of ES mortality based on 15 ML algorithms. We relied on the synthetic minority oversampling technique (SMOTE) to address class imbalance. Our main performance metric was area under the receiver operating characteristic (AUROC). We adopted recursive feature elimination (RFE) for feature selection. We assessed model performance using three disease-severity scoring systems as benchmarks. Of the 1566 and 207 ES patients enrolled in the two databases, there were 173 (15.70%), 73 (15.57%), and 36 (17.39%) hospital mortality in the training, internal validation, and external validation cohort, respectively. The random forest (RF) model had the largest AUROC (0.806) in the internal validation phase and was chosen as the best model. The AUROC of the RF compact (RF-COM) model containing the top six features identified by RFE was 0.795. In the external validation phase, the AUROC of the RF model was 0.838, and the RF-COM model was 0.830, outperforming other models. Our findings suggest that the RF model was the best model and the top six predictors of ES hospital mortality were Glasgow Coma Scale, white blood cell, blood urea nitrogen, bicarbonate, age, and mechanical ventilation.
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spelling pubmed-94840102022-09-22 Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning Liu, Wei Ma, Wei Bai, Na Li, Chunyan Liu, Kuangpin Yang, Jinwei Zhang, Sijia Zhu, Kewei Zhou, Qiang Liu, Hua Guo, Jianhui Li, Liyan Biosci Rep Neuroscience Embolic stroke (ES) is characterized by high morbidity and mortality. Its mortality predictors remain unclear. The present study aimed to use machine learning (ML) to identify the key predictors of mortality for ES patients in the intensive care unit (ICU). Data were extracted from two large ICU databases: Medical Information Mart for Intensive Care (MIMIC)-IV for training and internal validation, and eICU Collaborative Research Database (eICU-CRD) for external validation. We developed predictive models of ES mortality based on 15 ML algorithms. We relied on the synthetic minority oversampling technique (SMOTE) to address class imbalance. Our main performance metric was area under the receiver operating characteristic (AUROC). We adopted recursive feature elimination (RFE) for feature selection. We assessed model performance using three disease-severity scoring systems as benchmarks. Of the 1566 and 207 ES patients enrolled in the two databases, there were 173 (15.70%), 73 (15.57%), and 36 (17.39%) hospital mortality in the training, internal validation, and external validation cohort, respectively. The random forest (RF) model had the largest AUROC (0.806) in the internal validation phase and was chosen as the best model. The AUROC of the RF compact (RF-COM) model containing the top six features identified by RFE was 0.795. In the external validation phase, the AUROC of the RF model was 0.838, and the RF-COM model was 0.830, outperforming other models. Our findings suggest that the RF model was the best model and the top six predictors of ES hospital mortality were Glasgow Coma Scale, white blood cell, blood urea nitrogen, bicarbonate, age, and mechanical ventilation. Portland Press Ltd. 2022-09-14 /pmc/articles/PMC9484010/ /pubmed/35993194 http://dx.doi.org/10.1042/BSR20220995 Text en © 2022 The Author(s). https://creativecommons.org/licenses/by/4.0/This is an open access article published by Portland Press Limited on behalf of the Biochemical Society and distributed under the Creative Commons Attribution License 4.0 (CC BY) (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Neuroscience
Liu, Wei
Ma, Wei
Bai, Na
Li, Chunyan
Liu, Kuangpin
Yang, Jinwei
Zhang, Sijia
Zhu, Kewei
Zhou, Qiang
Liu, Hua
Guo, Jianhui
Li, Liyan
Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title_full Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title_fullStr Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title_full_unstemmed Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title_short Identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
title_sort identification of key predictors of hospital mortality in critically ill patients with embolic stroke using machine learning
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9484010/
https://www.ncbi.nlm.nih.gov/pubmed/35993194
http://dx.doi.org/10.1042/BSR20220995
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