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Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients

The clinical course of COVID-19 is highly variable. It is therefore essential to predict as early and accurately as possible the severity level of the disease in a COVID-19 patient who is admitted to the hospital. This means identifying the contributing factors of mortality and developing an easy-to...

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Autores principales: González-Cebrián, Alba, Borràs-Ferrís, Joan, Ordovás-Baines, Juan Pablo, Hermenegildo-Caudevilla, Marta, Climente-Marti, Mónica, Tarazona, Sonia, Vitale, Raffaele, Palací-López, Daniel, Sierra-Sánchez, Jesús Francisco, Saez de la Fuente, Javier, Ferrer, Alberto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9499271/
https://www.ncbi.nlm.nih.gov/pubmed/36137106
http://dx.doi.org/10.1371/journal.pone.0274171
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author González-Cebrián, Alba
Borràs-Ferrís, Joan
Ordovás-Baines, Juan Pablo
Hermenegildo-Caudevilla, Marta
Climente-Marti, Mónica
Tarazona, Sonia
Vitale, Raffaele
Palací-López, Daniel
Sierra-Sánchez, Jesús Francisco
Saez de la Fuente, Javier
Ferrer, Alberto
author_facet González-Cebrián, Alba
Borràs-Ferrís, Joan
Ordovás-Baines, Juan Pablo
Hermenegildo-Caudevilla, Marta
Climente-Marti, Mónica
Tarazona, Sonia
Vitale, Raffaele
Palací-López, Daniel
Sierra-Sánchez, Jesús Francisco
Saez de la Fuente, Javier
Ferrer, Alberto
author_sort González-Cebrián, Alba
collection PubMed
description The clinical course of COVID-19 is highly variable. It is therefore essential to predict as early and accurately as possible the severity level of the disease in a COVID-19 patient who is admitted to the hospital. This means identifying the contributing factors of mortality and developing an easy-to-use score that could enable a fast assessment of the mortality risk using only information recorded at the hospitalization. A large database of adult patients with a confirmed diagnosis of COVID-19 (n = 15,628; with 2,846 deceased) admitted to Spanish hospitals between December 2019 and July 2020 was analyzed. By means of multiple machine learning algorithms, we developed models that could accurately predict their mortality. We used the information about classifiers’ performance metrics and about importance and coherence among the predictors to define a mortality score that can be easily calculated using a minimal number of mortality predictors and yielded accurate estimates of the patient severity status. The optimal predictive model encompassed five predictors (age, oxygen saturation, platelets, lactate dehydrogenase, and creatinine) and yielded a satisfactory classification of survived and deceased patients (area under the curve: 0.8454 with validation set). These five predictors were additionally used to define a mortality score for COVID-19 patients at their hospitalization. This score is not only easy to calculate but also to interpret since it ranges from zero to eight, along with a linear increase in the mortality risk from 0% to 80%. A simple risk score based on five commonly available clinical variables of adult COVID-19 patients admitted to hospital is able to accurately discriminate their mortality probability, and its interpretation is straightforward and useful.
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spelling pubmed-94992712022-09-23 Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients González-Cebrián, Alba Borràs-Ferrís, Joan Ordovás-Baines, Juan Pablo Hermenegildo-Caudevilla, Marta Climente-Marti, Mónica Tarazona, Sonia Vitale, Raffaele Palací-López, Daniel Sierra-Sánchez, Jesús Francisco Saez de la Fuente, Javier Ferrer, Alberto PLoS One Research Article The clinical course of COVID-19 is highly variable. It is therefore essential to predict as early and accurately as possible the severity level of the disease in a COVID-19 patient who is admitted to the hospital. This means identifying the contributing factors of mortality and developing an easy-to-use score that could enable a fast assessment of the mortality risk using only information recorded at the hospitalization. A large database of adult patients with a confirmed diagnosis of COVID-19 (n = 15,628; with 2,846 deceased) admitted to Spanish hospitals between December 2019 and July 2020 was analyzed. By means of multiple machine learning algorithms, we developed models that could accurately predict their mortality. We used the information about classifiers’ performance metrics and about importance and coherence among the predictors to define a mortality score that can be easily calculated using a minimal number of mortality predictors and yielded accurate estimates of the patient severity status. The optimal predictive model encompassed five predictors (age, oxygen saturation, platelets, lactate dehydrogenase, and creatinine) and yielded a satisfactory classification of survived and deceased patients (area under the curve: 0.8454 with validation set). These five predictors were additionally used to define a mortality score for COVID-19 patients at their hospitalization. This score is not only easy to calculate but also to interpret since it ranges from zero to eight, along with a linear increase in the mortality risk from 0% to 80%. A simple risk score based on five commonly available clinical variables of adult COVID-19 patients admitted to hospital is able to accurately discriminate their mortality probability, and its interpretation is straightforward and useful. Public Library of Science 2022-09-22 /pmc/articles/PMC9499271/ /pubmed/36137106 http://dx.doi.org/10.1371/journal.pone.0274171 Text en © 2022 González-Cebrián et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
González-Cebrián, Alba
Borràs-Ferrís, Joan
Ordovás-Baines, Juan Pablo
Hermenegildo-Caudevilla, Marta
Climente-Marti, Mónica
Tarazona, Sonia
Vitale, Raffaele
Palací-López, Daniel
Sierra-Sánchez, Jesús Francisco
Saez de la Fuente, Javier
Ferrer, Alberto
Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title_full Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title_fullStr Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title_full_unstemmed Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title_short Machine-learning-derived predictive score for early estimation of COVID-19 mortality risk in hospitalized patients
title_sort machine-learning-derived predictive score for early estimation of covid-19 mortality risk in hospitalized patients
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9499271/
https://www.ncbi.nlm.nih.gov/pubmed/36137106
http://dx.doi.org/10.1371/journal.pone.0274171
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