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Metabolomics Markers of COVID-19 Are Dependent on Collection Wave

The effect of COVID-19 infection on the human metabolome has been widely reported, but to date all such studies have focused on a single wave of infection. COVID-19 has generated numerous waves of disease with different clinical presentations, and therefore it is pertinent to explore whether metabol...

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Autores principales: Lewis, Holly-May, Liu, Yufan, Frampas, Cecile F., Longman, Katie, Spick, Matt, Stewart, Alexander, Sinclair, Emma, Kasar, Nora, Greener, Danni, Whetton, Anthony D., Barran, Perdita E., Chen, Tao, Dunn-Walters, Deborah, Skene, Debra J., Bailey, Melanie J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9415837/
https://www.ncbi.nlm.nih.gov/pubmed/36005585
http://dx.doi.org/10.3390/metabo12080713
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author Lewis, Holly-May
Liu, Yufan
Frampas, Cecile F.
Longman, Katie
Spick, Matt
Stewart, Alexander
Sinclair, Emma
Kasar, Nora
Greener, Danni
Whetton, Anthony D.
Barran, Perdita E.
Chen, Tao
Dunn-Walters, Deborah
Skene, Debra J.
Bailey, Melanie J.
author_facet Lewis, Holly-May
Liu, Yufan
Frampas, Cecile F.
Longman, Katie
Spick, Matt
Stewart, Alexander
Sinclair, Emma
Kasar, Nora
Greener, Danni
Whetton, Anthony D.
Barran, Perdita E.
Chen, Tao
Dunn-Walters, Deborah
Skene, Debra J.
Bailey, Melanie J.
author_sort Lewis, Holly-May
collection PubMed
description The effect of COVID-19 infection on the human metabolome has been widely reported, but to date all such studies have focused on a single wave of infection. COVID-19 has generated numerous waves of disease with different clinical presentations, and therefore it is pertinent to explore whether metabolic disturbance changes accordingly, to gain a better understanding of its impact on host metabolism and enable better treatments. This work used a targeted metabolomics platform (Biocrates Life Sciences) to analyze the serum of 164 hospitalized patients, 123 with confirmed positive COVID-19 RT-PCR tests and 41 providing negative tests, across two waves of infection. Seven COVID-19-positive patients also provided longitudinal samples 2–7 months after infection. Changes to metabolites and lipids between positive and negative patients were found to be dependent on collection wave. A machine learning model identified six metabolites that were robust in diagnosing positive patients across both waves of infection: TG (22:1_32:5), TG (18:0_36:3), glutamic acid (Glu), glycolithocholic acid (GLCA), aspartic acid (Asp) and methionine sulfoxide (Met-SO), with an accuracy of 91%. Although some metabolites (TG (18:0_36:3) and Asp) returned to normal after infection, glutamic acid was still dysregulated in the longitudinal samples. This work demonstrates, for the first time, that metabolic dysregulation has partially changed over the course of the pandemic, reflecting changes in variants, clinical presentation and treatment regimes. It also shows that some metabolic changes are robust across waves, and these can differentiate COVID-19-positive individuals from controls in a hospital setting. This research also supports the hypothesis that some metabolic pathways are disrupted several months after COVID-19 infection.
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spelling pubmed-94158372022-08-27 Metabolomics Markers of COVID-19 Are Dependent on Collection Wave Lewis, Holly-May Liu, Yufan Frampas, Cecile F. Longman, Katie Spick, Matt Stewart, Alexander Sinclair, Emma Kasar, Nora Greener, Danni Whetton, Anthony D. Barran, Perdita E. Chen, Tao Dunn-Walters, Deborah Skene, Debra J. Bailey, Melanie J. Metabolites Article The effect of COVID-19 infection on the human metabolome has been widely reported, but to date all such studies have focused on a single wave of infection. COVID-19 has generated numerous waves of disease with different clinical presentations, and therefore it is pertinent to explore whether metabolic disturbance changes accordingly, to gain a better understanding of its impact on host metabolism and enable better treatments. This work used a targeted metabolomics platform (Biocrates Life Sciences) to analyze the serum of 164 hospitalized patients, 123 with confirmed positive COVID-19 RT-PCR tests and 41 providing negative tests, across two waves of infection. Seven COVID-19-positive patients also provided longitudinal samples 2–7 months after infection. Changes to metabolites and lipids between positive and negative patients were found to be dependent on collection wave. A machine learning model identified six metabolites that were robust in diagnosing positive patients across both waves of infection: TG (22:1_32:5), TG (18:0_36:3), glutamic acid (Glu), glycolithocholic acid (GLCA), aspartic acid (Asp) and methionine sulfoxide (Met-SO), with an accuracy of 91%. Although some metabolites (TG (18:0_36:3) and Asp) returned to normal after infection, glutamic acid was still dysregulated in the longitudinal samples. This work demonstrates, for the first time, that metabolic dysregulation has partially changed over the course of the pandemic, reflecting changes in variants, clinical presentation and treatment regimes. It also shows that some metabolic changes are robust across waves, and these can differentiate COVID-19-positive individuals from controls in a hospital setting. This research also supports the hypothesis that some metabolic pathways are disrupted several months after COVID-19 infection. MDPI 2022-07-30 /pmc/articles/PMC9415837/ /pubmed/36005585 http://dx.doi.org/10.3390/metabo12080713 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lewis, Holly-May
Liu, Yufan
Frampas, Cecile F.
Longman, Katie
Spick, Matt
Stewart, Alexander
Sinclair, Emma
Kasar, Nora
Greener, Danni
Whetton, Anthony D.
Barran, Perdita E.
Chen, Tao
Dunn-Walters, Deborah
Skene, Debra J.
Bailey, Melanie J.
Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title_full Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title_fullStr Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title_full_unstemmed Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title_short Metabolomics Markers of COVID-19 Are Dependent on Collection Wave
title_sort metabolomics markers of covid-19 are dependent on collection wave
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9415837/
https://www.ncbi.nlm.nih.gov/pubmed/36005585
http://dx.doi.org/10.3390/metabo12080713
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