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Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)

Objectives: Assess the predictive accuracy of the WHO COVID-19 severity classification on COVID-19 hospitalized patients. The secondary aim was to compare its predictive power with a new prediction model, named COVID-19 EPI-SCORE, based on a Bayesian network analysis. Methods: We retrospectively ana...

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Autores principales: de Terwangne, Christophe, Laouni, Jabber, Jouffe, Lionel, Lechien, Jerome R., Bouillon, Vincent, Place, Sammy, Capulzini, Lucio, Machayekhi, Shahram, Ceccarelli, Antonia, Saussez, Sven, Sorgente, Antonio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7692702/
https://www.ncbi.nlm.nih.gov/pubmed/33114416
http://dx.doi.org/10.3390/pathogens9110880
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author de Terwangne, Christophe
Laouni, Jabber
Jouffe, Lionel
Lechien, Jerome R.
Bouillon, Vincent
Place, Sammy
Capulzini, Lucio
Machayekhi, Shahram
Ceccarelli, Antonia
Saussez, Sven
Sorgente, Antonio
author_facet de Terwangne, Christophe
Laouni, Jabber
Jouffe, Lionel
Lechien, Jerome R.
Bouillon, Vincent
Place, Sammy
Capulzini, Lucio
Machayekhi, Shahram
Ceccarelli, Antonia
Saussez, Sven
Sorgente, Antonio
author_sort de Terwangne, Christophe
collection PubMed
description Objectives: Assess the predictive accuracy of the WHO COVID-19 severity classification on COVID-19 hospitalized patients. The secondary aim was to compare its predictive power with a new prediction model, named COVID-19 EPI-SCORE, based on a Bayesian network analysis. Methods: We retrospectively analyzed a population of 295 COVID-19 RT-PCR positive patients hospitalized at Epicura Hospital Center, Belgium, admitted between March 1st and April 30th, 2020. Results: Our cohort’s median age was 73 (62–83) years, and the female proportion was 43%. All patients were classified following WHO severity classification at admission. In total, 125 (42.4%) were classified as Moderate, 69 (23.4%) as Severe, and 101 (34.2%) as Critical. Death proportions through these three classes were 11.2%, 33.3%, and 67.3%, respectively, and the proportions of critically ill patients (dead or needed Invasive Mechanical Ventilation) were 11.2%, 34.8%, and 83.2%, respectively. A Bayesian network analysis was used to create a model to analyze predictive accuracy of the WHO severity classification and to create the EPI-SCORE. The six variables that have been automatically selected by our machine learning algorithm were the WHO severity classification, acute kidney injury, age, Lactate Dehydrogenase Levels (LDH), lymphocytes and activated prothrombin time (aPTT). Receiver Operation Characteristic (ROC) curve indexes hereby obtained were 83.8% and 91% for the models based on WHO classification only and our EPI-SCORE, respectively. Conclusions: Our study shows that the WHO severity classification is reliable in predicting a severe outcome among COVID-19 patients. The addition to this classification of a few clinical and laboratory variables as per our COVID-19 EPI-SCORE has demonstrated to significantly increase its accuracy.
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spelling pubmed-76927022020-11-28 Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE) de Terwangne, Christophe Laouni, Jabber Jouffe, Lionel Lechien, Jerome R. Bouillon, Vincent Place, Sammy Capulzini, Lucio Machayekhi, Shahram Ceccarelli, Antonia Saussez, Sven Sorgente, Antonio Pathogens Article Objectives: Assess the predictive accuracy of the WHO COVID-19 severity classification on COVID-19 hospitalized patients. The secondary aim was to compare its predictive power with a new prediction model, named COVID-19 EPI-SCORE, based on a Bayesian network analysis. Methods: We retrospectively analyzed a population of 295 COVID-19 RT-PCR positive patients hospitalized at Epicura Hospital Center, Belgium, admitted between March 1st and April 30th, 2020. Results: Our cohort’s median age was 73 (62–83) years, and the female proportion was 43%. All patients were classified following WHO severity classification at admission. In total, 125 (42.4%) were classified as Moderate, 69 (23.4%) as Severe, and 101 (34.2%) as Critical. Death proportions through these three classes were 11.2%, 33.3%, and 67.3%, respectively, and the proportions of critically ill patients (dead or needed Invasive Mechanical Ventilation) were 11.2%, 34.8%, and 83.2%, respectively. A Bayesian network analysis was used to create a model to analyze predictive accuracy of the WHO severity classification and to create the EPI-SCORE. The six variables that have been automatically selected by our machine learning algorithm were the WHO severity classification, acute kidney injury, age, Lactate Dehydrogenase Levels (LDH), lymphocytes and activated prothrombin time (aPTT). Receiver Operation Characteristic (ROC) curve indexes hereby obtained were 83.8% and 91% for the models based on WHO classification only and our EPI-SCORE, respectively. Conclusions: Our study shows that the WHO severity classification is reliable in predicting a severe outcome among COVID-19 patients. The addition to this classification of a few clinical and laboratory variables as per our COVID-19 EPI-SCORE has demonstrated to significantly increase its accuracy. MDPI 2020-10-24 /pmc/articles/PMC7692702/ /pubmed/33114416 http://dx.doi.org/10.3390/pathogens9110880 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
de Terwangne, Christophe
Laouni, Jabber
Jouffe, Lionel
Lechien, Jerome R.
Bouillon, Vincent
Place, Sammy
Capulzini, Lucio
Machayekhi, Shahram
Ceccarelli, Antonia
Saussez, Sven
Sorgente, Antonio
Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title_full Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title_fullStr Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title_full_unstemmed Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title_short Predictive Accuracy of COVID-19 World Health Organization (WHO) Severity Classification and Comparison with a Bayesian-Method-Based Severity Score (EPI-SCORE)
title_sort predictive accuracy of covid-19 world health organization (who) severity classification and comparison with a bayesian-method-based severity score (epi-score)
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7692702/
https://www.ncbi.nlm.nih.gov/pubmed/33114416
http://dx.doi.org/10.3390/pathogens9110880
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