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Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study

OBJECTIVE: To identify more severe COVID-19 presentations. METHODS: Consecutive intensive care unit-admitted patients were subjected to a stepwise clustering method. RESULTS: Data from 147 patients who were on average 56 ± 16 years old with a Simplified Acute Physiological Score 3 of 72 ± 18, of whi...

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Autores principales: Ururahy, Raul dos Reis, Gallo, César Albuquerque, Besen, Bruno Adler Maccagnan Pinheiro, de Carvalho, Marcelo Ticianelli, Ribeiro, José Mauro, Zigaib, Rogério, Mendes, Pedro Vitale, Park, Marcelo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Associação de Medicina Intensiva Brasileira - AMIB 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8275075/
https://www.ncbi.nlm.nih.gov/pubmed/34231800
http://dx.doi.org/10.5935/0103-507X.20210027
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author Ururahy, Raul dos Reis
Gallo, César Albuquerque
Besen, Bruno Adler Maccagnan Pinheiro
de Carvalho, Marcelo Ticianelli
Ribeiro, José Mauro
Zigaib, Rogério
Mendes, Pedro Vitale
Park, Marcelo
author_facet Ururahy, Raul dos Reis
Gallo, César Albuquerque
Besen, Bruno Adler Maccagnan Pinheiro
de Carvalho, Marcelo Ticianelli
Ribeiro, José Mauro
Zigaib, Rogério
Mendes, Pedro Vitale
Park, Marcelo
author_sort Ururahy, Raul dos Reis
collection PubMed
description OBJECTIVE: To identify more severe COVID-19 presentations. METHODS: Consecutive intensive care unit-admitted patients were subjected to a stepwise clustering method. RESULTS: Data from 147 patients who were on average 56 ± 16 years old with a Simplified Acute Physiological Score 3 of 72 ± 18, of which 103 (70%) needed mechanical ventilation and 46 (31%) died in the intensive care unit, were analyzed. From the clustering algorithm, two well-defined groups were found based on maximal heart rate [Cluster A: 104 (95%CI 99 - 109) beats per minute versus Cluster B: 159 (95%CI 155 - 163) beats per minute], maximal respiratory rate [Cluster A: 33 (95%CI 31 - 35) breaths per minute versus Cluster B: 50 (95%CI 47 - 53) breaths per minute], and maximal body temperature [Cluster A: 37.4 (95%CI 37.1 - 37.7)°C versus Cluster B: 39.3 (95%CI 39.1 - 39.5)°C] during the intensive care unit stay, as well as the oxygen partial pressure in the blood over the oxygen inspiratory fraction at intensive care unit admission [Cluster A: 116 (95%CI 99 - 133) mmHg versus Cluster B: 78 (95%CI 63 - 93) mmHg]. Subphenotypes were distinct in inflammation profiles, organ dysfunction, organ support, intensive care unit length of stay, and intensive care unit mortality (with a ratio of 4.2 between the groups). CONCLUSION: Our findings, based on common clinical data, revealed two distinct subphenotypes with different disease courses. These results could help health professionals allocate resources and select patients for testing novel therapies.
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spelling pubmed-82750752021-07-16 Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study Ururahy, Raul dos Reis Gallo, César Albuquerque Besen, Bruno Adler Maccagnan Pinheiro de Carvalho, Marcelo Ticianelli Ribeiro, José Mauro Zigaib, Rogério Mendes, Pedro Vitale Park, Marcelo Rev Bras Ter Intensiva Original Article OBJECTIVE: To identify more severe COVID-19 presentations. METHODS: Consecutive intensive care unit-admitted patients were subjected to a stepwise clustering method. RESULTS: Data from 147 patients who were on average 56 ± 16 years old with a Simplified Acute Physiological Score 3 of 72 ± 18, of which 103 (70%) needed mechanical ventilation and 46 (31%) died in the intensive care unit, were analyzed. From the clustering algorithm, two well-defined groups were found based on maximal heart rate [Cluster A: 104 (95%CI 99 - 109) beats per minute versus Cluster B: 159 (95%CI 155 - 163) beats per minute], maximal respiratory rate [Cluster A: 33 (95%CI 31 - 35) breaths per minute versus Cluster B: 50 (95%CI 47 - 53) breaths per minute], and maximal body temperature [Cluster A: 37.4 (95%CI 37.1 - 37.7)°C versus Cluster B: 39.3 (95%CI 39.1 - 39.5)°C] during the intensive care unit stay, as well as the oxygen partial pressure in the blood over the oxygen inspiratory fraction at intensive care unit admission [Cluster A: 116 (95%CI 99 - 133) mmHg versus Cluster B: 78 (95%CI 63 - 93) mmHg]. Subphenotypes were distinct in inflammation profiles, organ dysfunction, organ support, intensive care unit length of stay, and intensive care unit mortality (with a ratio of 4.2 between the groups). CONCLUSION: Our findings, based on common clinical data, revealed two distinct subphenotypes with different disease courses. These results could help health professionals allocate resources and select patients for testing novel therapies. Associação de Medicina Intensiva Brasileira - AMIB 2021 /pmc/articles/PMC8275075/ /pubmed/34231800 http://dx.doi.org/10.5935/0103-507X.20210027 Text en https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Ururahy, Raul dos Reis
Gallo, César Albuquerque
Besen, Bruno Adler Maccagnan Pinheiro
de Carvalho, Marcelo Ticianelli
Ribeiro, José Mauro
Zigaib, Rogério
Mendes, Pedro Vitale
Park, Marcelo
Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title_full Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title_fullStr Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title_full_unstemmed Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title_short Bedside clinical data subphenotypes of critically ill COVID-19 patients: a cohort study
title_sort bedside clinical data subphenotypes of critically ill covid-19 patients: a cohort study
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8275075/
https://www.ncbi.nlm.nih.gov/pubmed/34231800
http://dx.doi.org/10.5935/0103-507X.20210027
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