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Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19

BACKGROUND: Approximately 13.8% and 6.1% of coronavirus disease 2019 (COVID-19) patients require hospitalization and sometimes intensive care unit (ICU) admission, respectively. There is no biomarker to predict which of these patients will develop an aggressive stage that we could improve their qual...

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Autores principales: Martínez-Diz, Silvia, Marín-Benesiu, Fernando, López-Torres, Ginesa, Santiago, Olivia, Díaz-Cuéllar, José F., Martín-Esteban, Sara, Cortés-Valverde, Ana I., Arenas-Rodríguez, Verónica, Cuenca-López, Sergio, Porras-Quesada, Patricia, Ruiz-Ruiz, Carmen, Abadía-Molina, Ana C., Entrala-Bernal, Carmen, Martínez-González, Luis J., Álvarez-Cubero, Maria Jesus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10031647/
https://www.ncbi.nlm.nih.gov/pubmed/36969980
http://dx.doi.org/10.3389/fimmu.2022.1094644
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author Martínez-Diz, Silvia
Marín-Benesiu, Fernando
López-Torres, Ginesa
Santiago, Olivia
Díaz-Cuéllar, José F.
Martín-Esteban, Sara
Cortés-Valverde, Ana I.
Arenas-Rodríguez, Verónica
Cuenca-López, Sergio
Porras-Quesada, Patricia
Ruiz-Ruiz, Carmen
Abadía-Molina, Ana C.
Entrala-Bernal, Carmen
Martínez-González, Luis J.
Álvarez-Cubero, Maria Jesus
author_facet Martínez-Diz, Silvia
Marín-Benesiu, Fernando
López-Torres, Ginesa
Santiago, Olivia
Díaz-Cuéllar, José F.
Martín-Esteban, Sara
Cortés-Valverde, Ana I.
Arenas-Rodríguez, Verónica
Cuenca-López, Sergio
Porras-Quesada, Patricia
Ruiz-Ruiz, Carmen
Abadía-Molina, Ana C.
Entrala-Bernal, Carmen
Martínez-González, Luis J.
Álvarez-Cubero, Maria Jesus
author_sort Martínez-Diz, Silvia
collection PubMed
description BACKGROUND: Approximately 13.8% and 6.1% of coronavirus disease 2019 (COVID-19) patients require hospitalization and sometimes intensive care unit (ICU) admission, respectively. There is no biomarker to predict which of these patients will develop an aggressive stage that we could improve their quality of life and healthcare management. Our main goal is to include new markers for the classification of COVID-19 patients. METHODS: Two tubes of peripheral blood were collected from a total of 66 (n = 34 mild and n = 32 severe) samples (mean age 52 years). Cytometry analysis was performed using a 15-parameter panel included in the Maxpar(®) Human Monocyte/Macrophage Phenotyping Panel Kit. Cytometry by time-of-flight mass spectrometry (CyTOF) panel was performed in combination with genetic analysis using TaqMan(®) probes for ACE2 (rs2285666), MX1 (rs469390), and TMPRSS2 (rs2070788) variants. GemStone™ and OMIQ software were used for cytometry analysis. RESULTS: The frequency of CD163(+)/CD206(-) population of transitional monocytes (T-Mo) was decreased in the mild group compared to that of the severe one, while T-Mo CD163(-)/CD206(-) were increased in the mild group compared to that of the severe one. In addition, we also found differences in CD11b expression in CD14(dim) monocytes in the severe group, with decreased levels in the female group (p = 0.0412). When comparing mild and severe disease, we also found that CD45(-) [p = 0.014; odds ratio (OR) = 0.286, 95% CI 0.104–0.787] and CD14(dim)/CD33(+) (p = 0.014; OR = 0.286, 95% CI 0.104–0.787) monocytes were the best options as biomarkers to discriminate between these patient groups. CD33 was also indicated as a good biomarker for patient stratification by the analysis of GemStone™ software. Among genetic markers, we found that G carriers of TMPRSS2 (rs2070788) have an increased risk (p = 0.02; OR = 3.37, 95% CI 1.18–9.60) of severe COVID-19 compared to those with A/A genotype. This strength is further increased when combined with CD45(-), T-Mo CD163(+)/CD206(-), and C14(dim)/CD33(+). CONCLUSIONS: Here, we report the interesting role of TMPRSS2, CD45(-), CD163/CD206, and CD33 in COVID-19 aggressiveness. This strength is reinforced for aggressiveness biomarkers when TMPRSS2 and CD45(-), TMPRSS2 and CD163/CD206, and TMPRSS2 and CD14(dim)/CD33(+) are combined.
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spelling pubmed-100316472023-03-23 Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19 Martínez-Diz, Silvia Marín-Benesiu, Fernando López-Torres, Ginesa Santiago, Olivia Díaz-Cuéllar, José F. Martín-Esteban, Sara Cortés-Valverde, Ana I. Arenas-Rodríguez, Verónica Cuenca-López, Sergio Porras-Quesada, Patricia Ruiz-Ruiz, Carmen Abadía-Molina, Ana C. Entrala-Bernal, Carmen Martínez-González, Luis J. Álvarez-Cubero, Maria Jesus Front Immunol Immunology BACKGROUND: Approximately 13.8% and 6.1% of coronavirus disease 2019 (COVID-19) patients require hospitalization and sometimes intensive care unit (ICU) admission, respectively. There is no biomarker to predict which of these patients will develop an aggressive stage that we could improve their quality of life and healthcare management. Our main goal is to include new markers for the classification of COVID-19 patients. METHODS: Two tubes of peripheral blood were collected from a total of 66 (n = 34 mild and n = 32 severe) samples (mean age 52 years). Cytometry analysis was performed using a 15-parameter panel included in the Maxpar(®) Human Monocyte/Macrophage Phenotyping Panel Kit. Cytometry by time-of-flight mass spectrometry (CyTOF) panel was performed in combination with genetic analysis using TaqMan(®) probes for ACE2 (rs2285666), MX1 (rs469390), and TMPRSS2 (rs2070788) variants. GemStone™ and OMIQ software were used for cytometry analysis. RESULTS: The frequency of CD163(+)/CD206(-) population of transitional monocytes (T-Mo) was decreased in the mild group compared to that of the severe one, while T-Mo CD163(-)/CD206(-) were increased in the mild group compared to that of the severe one. In addition, we also found differences in CD11b expression in CD14(dim) monocytes in the severe group, with decreased levels in the female group (p = 0.0412). When comparing mild and severe disease, we also found that CD45(-) [p = 0.014; odds ratio (OR) = 0.286, 95% CI 0.104–0.787] and CD14(dim)/CD33(+) (p = 0.014; OR = 0.286, 95% CI 0.104–0.787) monocytes were the best options as biomarkers to discriminate between these patient groups. CD33 was also indicated as a good biomarker for patient stratification by the analysis of GemStone™ software. Among genetic markers, we found that G carriers of TMPRSS2 (rs2070788) have an increased risk (p = 0.02; OR = 3.37, 95% CI 1.18–9.60) of severe COVID-19 compared to those with A/A genotype. This strength is further increased when combined with CD45(-), T-Mo CD163(+)/CD206(-), and C14(dim)/CD33(+). CONCLUSIONS: Here, we report the interesting role of TMPRSS2, CD45(-), CD163/CD206, and CD33 in COVID-19 aggressiveness. This strength is reinforced for aggressiveness biomarkers when TMPRSS2 and CD45(-), TMPRSS2 and CD163/CD206, and TMPRSS2 and CD14(dim)/CD33(+) are combined. Frontiers Media S.A. 2023-03-08 /pmc/articles/PMC10031647/ /pubmed/36969980 http://dx.doi.org/10.3389/fimmu.2022.1094644 Text en Copyright © 2023 Martínez-Diz, Marín-Benesiu, López-Torres, Santiago, Díaz-Cuéllar, Martín-Esteban, Cortés-Valverde, Arenas-Rodríguez, Cuenca-López, Porras-Quesada, Ruiz-Ruiz, Abadía-Molina, Entrala-Bernal, Martínez-González and Álvarez-Cubero https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Martínez-Diz, Silvia
Marín-Benesiu, Fernando
López-Torres, Ginesa
Santiago, Olivia
Díaz-Cuéllar, José F.
Martín-Esteban, Sara
Cortés-Valverde, Ana I.
Arenas-Rodríguez, Verónica
Cuenca-López, Sergio
Porras-Quesada, Patricia
Ruiz-Ruiz, Carmen
Abadía-Molina, Ana C.
Entrala-Bernal, Carmen
Martínez-González, Luis J.
Álvarez-Cubero, Maria Jesus
Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title_full Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title_fullStr Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title_full_unstemmed Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title_short Relevance of TMPRSS2, CD163/CD206, and CD33 in clinical severity stratification of COVID-19
title_sort relevance of tmprss2, cd163/cd206, and cd33 in clinical severity stratification of covid-19
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10031647/
https://www.ncbi.nlm.nih.gov/pubmed/36969980
http://dx.doi.org/10.3389/fimmu.2022.1094644
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