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Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study

BACKGROUND: The COVID-19 pandemic has placed a huge strain on the health care system globally. The metropolitan area of Milan, Italy, was one of the regions most impacted by the COVID-19 pandemic worldwide. Risk prediction models developed by combining administrative databases and basic clinical dat...

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Autores principales: Murtas, Rossella, Morici, Nuccia, Cogliati, Chiara, Puoti, Massimo, Omazzi, Barbara, Bergamaschi, Walter, Voza, Antonio, Rovere Querini, Patrizia, Stefanini, Giulio, Manfredi, Maria Grazia, Zocchi, Maria Teresa, Mangiagalli, Andrea, Brambilla, Carla Vittoria, Bosio, Marco, Corradin, Matteo, Cortellaro, Francesca, Trivelli, Marco, Savonitto, Stefano, Russo, Antonio Giampiero
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8594734/
https://www.ncbi.nlm.nih.gov/pubmed/34543227
http://dx.doi.org/10.2196/29504
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author Murtas, Rossella
Morici, Nuccia
Cogliati, Chiara
Puoti, Massimo
Omazzi, Barbara
Bergamaschi, Walter
Voza, Antonio
Rovere Querini, Patrizia
Stefanini, Giulio
Manfredi, Maria Grazia
Zocchi, Maria Teresa
Mangiagalli, Andrea
Brambilla, Carla Vittoria
Bosio, Marco
Corradin, Matteo
Cortellaro, Francesca
Trivelli, Marco
Savonitto, Stefano
Russo, Antonio Giampiero
author_facet Murtas, Rossella
Morici, Nuccia
Cogliati, Chiara
Puoti, Massimo
Omazzi, Barbara
Bergamaschi, Walter
Voza, Antonio
Rovere Querini, Patrizia
Stefanini, Giulio
Manfredi, Maria Grazia
Zocchi, Maria Teresa
Mangiagalli, Andrea
Brambilla, Carla Vittoria
Bosio, Marco
Corradin, Matteo
Cortellaro, Francesca
Trivelli, Marco
Savonitto, Stefano
Russo, Antonio Giampiero
author_sort Murtas, Rossella
collection PubMed
description BACKGROUND: The COVID-19 pandemic has placed a huge strain on the health care system globally. The metropolitan area of Milan, Italy, was one of the regions most impacted by the COVID-19 pandemic worldwide. Risk prediction models developed by combining administrative databases and basic clinical data are needed to stratify individual patient risk for public health purposes. OBJECTIVE: This study aims to develop a stratification tool aimed at improving COVID-19 patient management and health care organization. METHODS: A predictive algorithm was developed and applied to 36,834 patients with COVID-19 in Italy between March 8 and the October 9, 2020, in order to foresee their risk of hospitalization. Exposures considered were age, sex, comorbidities, and symptoms associated with COVID-19 (eg, vomiting, cough, fever, diarrhea, myalgia, asthenia, headache, anosmia, ageusia, and dyspnea). The outcome was hospitalizations and emergency department admissions for COVID-19. Discrimination and calibration of the model were also assessed. RESULTS: The predictive model showed a good fit for predicting COVID-19 hospitalization (C-index 0.79) and a good overall prediction accuracy (Brier score 0.14). The model was well calibrated (intercept –0.0028, slope 0.9970). Based on these results, 118,804 patients diagnosed with COVID-19 from October 25 to December 11, 2020, were stratified into low, medium, and high risk for COVID-19 severity. Among the overall study population, 67,030 (56.42%) were classified as low-risk patients; 43,886 (36.94%), as medium-risk patients; and 7888 (6.64%), as high-risk patients. In all, 89.37% (106,179/118,804) of the overall study population was being assisted at home, 9% (10,695/118,804) was hospitalized, and 1.62% (1930/118,804) died. Among those assisted at home, most people (63,983/106,179, 60.26%) were classified as low risk, whereas only 3.63% (3858/106,179) were classified at high risk. According to ordinal logistic regression, the odds ratio (OR) of being hospitalized or dead was 5.0 (95% CI 4.6-5.4) among high-risk patients and 2.7 (95% CI 2.6-2.9) among medium-risk patients, as compared to low-risk patients. CONCLUSIONS: A simple monitoring system, based on primary care data sets linked to COVID-19 testing results, hospital admissions data, and death records may assist in the proper planning and allocation of patients and resources during the ongoing COVID-19 pandemic.
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spelling pubmed-85947342021-12-07 Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study Murtas, Rossella Morici, Nuccia Cogliati, Chiara Puoti, Massimo Omazzi, Barbara Bergamaschi, Walter Voza, Antonio Rovere Querini, Patrizia Stefanini, Giulio Manfredi, Maria Grazia Zocchi, Maria Teresa Mangiagalli, Andrea Brambilla, Carla Vittoria Bosio, Marco Corradin, Matteo Cortellaro, Francesca Trivelli, Marco Savonitto, Stefano Russo, Antonio Giampiero JMIR Public Health Surveill Original Paper BACKGROUND: The COVID-19 pandemic has placed a huge strain on the health care system globally. The metropolitan area of Milan, Italy, was one of the regions most impacted by the COVID-19 pandemic worldwide. Risk prediction models developed by combining administrative databases and basic clinical data are needed to stratify individual patient risk for public health purposes. OBJECTIVE: This study aims to develop a stratification tool aimed at improving COVID-19 patient management and health care organization. METHODS: A predictive algorithm was developed and applied to 36,834 patients with COVID-19 in Italy between March 8 and the October 9, 2020, in order to foresee their risk of hospitalization. Exposures considered were age, sex, comorbidities, and symptoms associated with COVID-19 (eg, vomiting, cough, fever, diarrhea, myalgia, asthenia, headache, anosmia, ageusia, and dyspnea). The outcome was hospitalizations and emergency department admissions for COVID-19. Discrimination and calibration of the model were also assessed. RESULTS: The predictive model showed a good fit for predicting COVID-19 hospitalization (C-index 0.79) and a good overall prediction accuracy (Brier score 0.14). The model was well calibrated (intercept –0.0028, slope 0.9970). Based on these results, 118,804 patients diagnosed with COVID-19 from October 25 to December 11, 2020, were stratified into low, medium, and high risk for COVID-19 severity. Among the overall study population, 67,030 (56.42%) were classified as low-risk patients; 43,886 (36.94%), as medium-risk patients; and 7888 (6.64%), as high-risk patients. In all, 89.37% (106,179/118,804) of the overall study population was being assisted at home, 9% (10,695/118,804) was hospitalized, and 1.62% (1930/118,804) died. Among those assisted at home, most people (63,983/106,179, 60.26%) were classified as low risk, whereas only 3.63% (3858/106,179) were classified at high risk. According to ordinal logistic regression, the odds ratio (OR) of being hospitalized or dead was 5.0 (95% CI 4.6-5.4) among high-risk patients and 2.7 (95% CI 2.6-2.9) among medium-risk patients, as compared to low-risk patients. CONCLUSIONS: A simple monitoring system, based on primary care data sets linked to COVID-19 testing results, hospital admissions data, and death records may assist in the proper planning and allocation of patients and resources during the ongoing COVID-19 pandemic. JMIR Publications 2021-11-15 /pmc/articles/PMC8594734/ /pubmed/34543227 http://dx.doi.org/10.2196/29504 Text en ©Rossella Murtas, Nuccia Morici, Chiara Cogliati, Massimo Puoti, Barbara Omazzi, Walter Bergamaschi, Antonio Voza, Patrizia Rovere Querini, Giulio Stefanini, Maria Grazia Manfredi, Maria Teresa Zocchi, Andrea Mangiagalli, Carla Vittoria Brambilla, Marco Bosio, Matteo Corradin, Francesca Cortellaro, Marco Trivelli, Stefano Savonitto, Antonio Giampiero Russo. Originally published in JMIR Public Health and Surveillance (https://publichealth.jmir.org), 15.11.2021. 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 work, first published in JMIR Public Health and Surveillance, is properly cited. The complete bibliographic information, a link to the original publication on https://publichealth.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Murtas, Rossella
Morici, Nuccia
Cogliati, Chiara
Puoti, Massimo
Omazzi, Barbara
Bergamaschi, Walter
Voza, Antonio
Rovere Querini, Patrizia
Stefanini, Giulio
Manfredi, Maria Grazia
Zocchi, Maria Teresa
Mangiagalli, Andrea
Brambilla, Carla Vittoria
Bosio, Marco
Corradin, Matteo
Cortellaro, Francesca
Trivelli, Marco
Savonitto, Stefano
Russo, Antonio Giampiero
Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title_full Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title_fullStr Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title_full_unstemmed Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title_short Algorithm for Individual Prediction of COVID-19–Related Hospitalization Based on Symptoms: Development and Implementation Study
title_sort algorithm for individual prediction of covid-19–related hospitalization based on symptoms: development and implementation study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8594734/
https://www.ncbi.nlm.nih.gov/pubmed/34543227
http://dx.doi.org/10.2196/29504
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