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Utilization of machine-learning models to accurately predict the risk for critical COVID-19

Among patients with Coronavirus disease (COVID-19), the ability to identify patients at risk for deterioration during their hospital stay is essential for effective patient allocation and management. To predict patient risk for critical COVID-19 based on status at admission using machine-learning mo...

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Autores principales: Assaf, Dan, Gutman, Ya’ara, Neuman, Yair, Segal, Gad, Amit, Sharon, Gefen-Halevi, Shiraz, Shilo, Noya, Epstein, Avi, Mor-Cohen, Ronit, Biber, Asaf, Rahav, Galia, Levy, Itzchak, Tirosh, Amit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7433773/
https://www.ncbi.nlm.nih.gov/pubmed/32812204
http://dx.doi.org/10.1007/s11739-020-02475-0
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author Assaf, Dan
Gutman, Ya’ara
Neuman, Yair
Segal, Gad
Amit, Sharon
Gefen-Halevi, Shiraz
Shilo, Noya
Epstein, Avi
Mor-Cohen, Ronit
Biber, Asaf
Rahav, Galia
Levy, Itzchak
Tirosh, Amit
author_facet Assaf, Dan
Gutman, Ya’ara
Neuman, Yair
Segal, Gad
Amit, Sharon
Gefen-Halevi, Shiraz
Shilo, Noya
Epstein, Avi
Mor-Cohen, Ronit
Biber, Asaf
Rahav, Galia
Levy, Itzchak
Tirosh, Amit
author_sort Assaf, Dan
collection PubMed
description Among patients with Coronavirus disease (COVID-19), the ability to identify patients at risk for deterioration during their hospital stay is essential for effective patient allocation and management. To predict patient risk for critical COVID-19 based on status at admission using machine-learning models. Retrospective study based on a database of tertiary medical center with designated departments for patients with COVID-19. Patients with severe COVID-19 at admission, based on low oxygen saturation, low partial arterial oxygen pressure, were excluded. The primary outcome was risk for critical disease, defined as mechanical ventilation, multi-organ failure, admission to the ICU, and/or death. Three different machine-learning models were used to predict patient deterioration and compared to currently suggested predictors and to the APACHEII risk-prediction score. Among 6995 patients evaluated, 162 were hospitalized with non-severe COVID-19, of them, 25 (15.4%) patients deteriorated to critical COVID-19. Machine-learning models outperformed the all other parameters, including the APACHE II score (ROC AUC of 0.92 vs. 0.79, respectively), reaching 88.0% sensitivity, 92.7% specificity and 92.0% accuracy in predicting critical COVID-19. The most contributory variables to the models were APACHE II score, white blood cell count, time from symptoms to admission, oxygen saturation and blood lymphocytes count. Machine-learning models demonstrated high efficacy in predicting critical COVID-19 compared to the most efficacious tools available. Hence, artificial intelligence may be applied for accurate risk prediction of patients with COVID-19, to optimize patients triage and in-hospital allocation, better prioritization of medical resources and improved overall management of the COVID-19 pandemic.
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spelling pubmed-74337732020-08-18 Utilization of machine-learning models to accurately predict the risk for critical COVID-19 Assaf, Dan Gutman, Ya’ara Neuman, Yair Segal, Gad Amit, Sharon Gefen-Halevi, Shiraz Shilo, Noya Epstein, Avi Mor-Cohen, Ronit Biber, Asaf Rahav, Galia Levy, Itzchak Tirosh, Amit Intern Emerg Med Im - Original Among patients with Coronavirus disease (COVID-19), the ability to identify patients at risk for deterioration during their hospital stay is essential for effective patient allocation and management. To predict patient risk for critical COVID-19 based on status at admission using machine-learning models. Retrospective study based on a database of tertiary medical center with designated departments for patients with COVID-19. Patients with severe COVID-19 at admission, based on low oxygen saturation, low partial arterial oxygen pressure, were excluded. The primary outcome was risk for critical disease, defined as mechanical ventilation, multi-organ failure, admission to the ICU, and/or death. Three different machine-learning models were used to predict patient deterioration and compared to currently suggested predictors and to the APACHEII risk-prediction score. Among 6995 patients evaluated, 162 were hospitalized with non-severe COVID-19, of them, 25 (15.4%) patients deteriorated to critical COVID-19. Machine-learning models outperformed the all other parameters, including the APACHE II score (ROC AUC of 0.92 vs. 0.79, respectively), reaching 88.0% sensitivity, 92.7% specificity and 92.0% accuracy in predicting critical COVID-19. The most contributory variables to the models were APACHE II score, white blood cell count, time from symptoms to admission, oxygen saturation and blood lymphocytes count. Machine-learning models demonstrated high efficacy in predicting critical COVID-19 compared to the most efficacious tools available. Hence, artificial intelligence may be applied for accurate risk prediction of patients with COVID-19, to optimize patients triage and in-hospital allocation, better prioritization of medical resources and improved overall management of the COVID-19 pandemic. Springer International Publishing 2020-08-18 2020 /pmc/articles/PMC7433773/ /pubmed/32812204 http://dx.doi.org/10.1007/s11739-020-02475-0 Text en © Società Italiana di Medicina Interna (SIMI) 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Im - Original
Assaf, Dan
Gutman, Ya’ara
Neuman, Yair
Segal, Gad
Amit, Sharon
Gefen-Halevi, Shiraz
Shilo, Noya
Epstein, Avi
Mor-Cohen, Ronit
Biber, Asaf
Rahav, Galia
Levy, Itzchak
Tirosh, Amit
Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title_full Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title_fullStr Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title_full_unstemmed Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title_short Utilization of machine-learning models to accurately predict the risk for critical COVID-19
title_sort utilization of machine-learning models to accurately predict the risk for critical covid-19
topic Im - Original
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7433773/
https://www.ncbi.nlm.nih.gov/pubmed/32812204
http://dx.doi.org/10.1007/s11739-020-02475-0
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