Cargando…
Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score
BACKGROUND: During the COVID-19 pandemic, risk stratification has been used to decide patient eligibility for inpatient, critical and domiciliary care. Here, we sought to validate the MSL-COVID-19 score, originally developed to predict COVID-19 mortality in Mexicans. Also, an adaptation of the formu...
Autores principales: | , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7743927/ https://www.ncbi.nlm.nih.gov/pubmed/33326502 http://dx.doi.org/10.1371/journal.pone.0244051 |
_version_ | 1783624329351659520 |
---|---|
author | Bello-Chavolla, Omar Yaxmehen Antonio-Villa, Neftali E. Ortiz-Brizuela, Edgar Vargas-Vázquez, Arsenio González-Lara, María Fernanda de Leon, Alfredo Ponce Sifuentes-Osornio, José Aguilar-Salinas, Carlos A. |
author_facet | Bello-Chavolla, Omar Yaxmehen Antonio-Villa, Neftali E. Ortiz-Brizuela, Edgar Vargas-Vázquez, Arsenio González-Lara, María Fernanda de Leon, Alfredo Ponce Sifuentes-Osornio, José Aguilar-Salinas, Carlos A. |
author_sort | Bello-Chavolla, Omar Yaxmehen |
collection | PubMed |
description | BACKGROUND: During the COVID-19 pandemic, risk stratification has been used to decide patient eligibility for inpatient, critical and domiciliary care. Here, we sought to validate the MSL-COVID-19 score, originally developed to predict COVID-19 mortality in Mexicans. Also, an adaptation of the formula is proposed for the prediction of COVID-19 severity in a triage setting (Nutri-CoV). METHODS: We included patients evaluated from March 16(th) to August 17(th), 2020 at the Instituto Nacional de Ciencias Médicas y Nutrición, defining severe COVID-19 as a composite of death, ICU admission or requirement for intubation (n = 3,007). We validated MSL-COVID-19 for prediction of mortality and severe disease. Using Elastic Net Cox regression, we trained (n = 1,831) and validated (n = 1,176) a model for prediction of severe COVID-19 using MSL-COVID-19 along with clinical assessments obtained at a triage setting. RESULTS: The variables included in MSL-COVID-19 are: pneumonia, early onset type 2 diabetes, age > 65 years, chronic kidney disease, any form of immunosuppression, COPD, obesity, diabetes, and age <40 years. MSL-COVID-19 had good performance to predict COVID-19 mortality (c-statistic = 0.722, 95%CI 0.690–0.753) and severity (c-statistic = 0.777, 95%CI 0.753–0.801). The Nutri-CoV score includes the MSL-COVID-19 plus respiratory rate, and pulse oximetry. This tool had better performance in both training (c-statistic = 0.797, 95%CI 0.765–0.826) and validation cohorts (c-statistic = 0.772, 95%CI 0.0.745–0.800) compared to other severity scores. CONCLUSIONS: MSL-COVID-19 predicts inpatient COVID-19 lethality. The Nutri-CoV score is an adaptation of MSL-COVID-19 to be used in a triage environment. Both scores have been deployed as web-based tools for clinical use in a triage setting. |
format | Online Article Text |
id | pubmed-7743927 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-77439272020-12-31 Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score Bello-Chavolla, Omar Yaxmehen Antonio-Villa, Neftali E. Ortiz-Brizuela, Edgar Vargas-Vázquez, Arsenio González-Lara, María Fernanda de Leon, Alfredo Ponce Sifuentes-Osornio, José Aguilar-Salinas, Carlos A. PLoS One Research Article BACKGROUND: During the COVID-19 pandemic, risk stratification has been used to decide patient eligibility for inpatient, critical and domiciliary care. Here, we sought to validate the MSL-COVID-19 score, originally developed to predict COVID-19 mortality in Mexicans. Also, an adaptation of the formula is proposed for the prediction of COVID-19 severity in a triage setting (Nutri-CoV). METHODS: We included patients evaluated from March 16(th) to August 17(th), 2020 at the Instituto Nacional de Ciencias Médicas y Nutrición, defining severe COVID-19 as a composite of death, ICU admission or requirement for intubation (n = 3,007). We validated MSL-COVID-19 for prediction of mortality and severe disease. Using Elastic Net Cox regression, we trained (n = 1,831) and validated (n = 1,176) a model for prediction of severe COVID-19 using MSL-COVID-19 along with clinical assessments obtained at a triage setting. RESULTS: The variables included in MSL-COVID-19 are: pneumonia, early onset type 2 diabetes, age > 65 years, chronic kidney disease, any form of immunosuppression, COPD, obesity, diabetes, and age <40 years. MSL-COVID-19 had good performance to predict COVID-19 mortality (c-statistic = 0.722, 95%CI 0.690–0.753) and severity (c-statistic = 0.777, 95%CI 0.753–0.801). The Nutri-CoV score includes the MSL-COVID-19 plus respiratory rate, and pulse oximetry. This tool had better performance in both training (c-statistic = 0.797, 95%CI 0.765–0.826) and validation cohorts (c-statistic = 0.772, 95%CI 0.0.745–0.800) compared to other severity scores. CONCLUSIONS: MSL-COVID-19 predicts inpatient COVID-19 lethality. The Nutri-CoV score is an adaptation of MSL-COVID-19 to be used in a triage environment. Both scores have been deployed as web-based tools for clinical use in a triage setting. Public Library of Science 2020-12-16 /pmc/articles/PMC7743927/ /pubmed/33326502 http://dx.doi.org/10.1371/journal.pone.0244051 Text en © 2020 Bello-Chavolla et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://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 Bello-Chavolla, Omar Yaxmehen Antonio-Villa, Neftali E. Ortiz-Brizuela, Edgar Vargas-Vázquez, Arsenio González-Lara, María Fernanda de Leon, Alfredo Ponce Sifuentes-Osornio, José Aguilar-Salinas, Carlos A. Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title | Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title_full | Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title_fullStr | Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title_full_unstemmed | Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title_short | Validation and repurposing of the MSL-COVID-19 score for prediction of severe COVID-19 using simple clinical predictors in a triage setting: The Nutri-CoV score |
title_sort | validation and repurposing of the msl-covid-19 score for prediction of severe covid-19 using simple clinical predictors in a triage setting: the nutri-cov score |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7743927/ https://www.ncbi.nlm.nih.gov/pubmed/33326502 http://dx.doi.org/10.1371/journal.pone.0244051 |
work_keys_str_mv | AT bellochavollaomaryaxmehen validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT antoniovillaneftalie validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT ortizbrizuelaedgar validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT vargasvazquezarsenio validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT gonzalezlaramariafernanda validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT deleonalfredoponce validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT sifuentesosorniojose validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore AT aguilarsalinascarlosa validationandrepurposingofthemslcovid19scoreforpredictionofseverecovid19usingsimpleclinicalpredictorsinatriagesettingthenutricovscore |