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Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection

Multiomics technologies improve the biological understanding of health status in people living with HIV on antiretroviral therapy (PWH). Still, a systematic and in-depth characterization of metabolic risk profile during successful long-term treatment is lacking. Here, we used multi-omics (plasma lip...

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Autores principales: Mikaeloff, Flora, Gelpi, Marco, Benfeitas, Rui, Knudsen, Andreas D, Vestad, Beate, Høgh, Julie, Hov, Johannes R, Benfield, Thomas, Murray, Daniel, Giske, Christian G, Mardinoglu, Adil, Trøseid, Marius, Nielsen, Susanne D, Neogi, Ujjwal
Formato: Online Artículo Texto
Lenguaje:English
Publicado: eLife Sciences Publications, Ltd 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10017104/
https://www.ncbi.nlm.nih.gov/pubmed/36794912
http://dx.doi.org/10.7554/eLife.82785
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author Mikaeloff, Flora
Gelpi, Marco
Benfeitas, Rui
Knudsen, Andreas D
Vestad, Beate
Høgh, Julie
Hov, Johannes R
Benfield, Thomas
Murray, Daniel
Giske, Christian G
Mardinoglu, Adil
Trøseid, Marius
Nielsen, Susanne D
Neogi, Ujjwal
author_facet Mikaeloff, Flora
Gelpi, Marco
Benfeitas, Rui
Knudsen, Andreas D
Vestad, Beate
Høgh, Julie
Hov, Johannes R
Benfield, Thomas
Murray, Daniel
Giske, Christian G
Mardinoglu, Adil
Trøseid, Marius
Nielsen, Susanne D
Neogi, Ujjwal
author_sort Mikaeloff, Flora
collection PubMed
description Multiomics technologies improve the biological understanding of health status in people living with HIV on antiretroviral therapy (PWH). Still, a systematic and in-depth characterization of metabolic risk profile during successful long-term treatment is lacking. Here, we used multi-omics (plasma lipidomic, metabolomic, and fecal 16 S microbiome) data-driven stratification and characterization to identify the metabolic at-risk profile within PWH. Through network analysis and similarity network fusion (SNF), we identified three groups of PWH (SNF-1–3): healthy (HC)-like (SNF-1), mild at-risk (SNF-3), and severe at-risk (SNF-2). The PWH in the SNF-2 (45%) had a severe at-risk metabolic profile with increased visceral adipose tissue, BMI, higher incidence of metabolic syndrome (MetS), and increased di- and triglycerides despite having higher CD4(+) T-cell counts than the other two clusters. However, the HC-like and the severe at-risk group had a similar metabolic profile differing from HIV-negative controls (HNC), with dysregulation of amino acid metabolism. At the microbiome profile, the HC-like group had a lower α-diversity, a lower proportion of men having sex with men (MSM) and was enriched in Bacteroides. In contrast, in at-risk groups, there was an increase in Prevotella, with a high proportion of MSM, which could potentially lead to higher systemic inflammation and increased cardiometabolic risk profile. The multi-omics integrative analysis also revealed a complex microbial interplay of the microbiome-associated metabolites in PWH. Those severely at-risk clusters may benefit from personalized medicine and lifestyle intervention to improve their dysregulated metabolic traits, aiming to achieve healthier aging.
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spelling pubmed-100171042023-03-16 Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection Mikaeloff, Flora Gelpi, Marco Benfeitas, Rui Knudsen, Andreas D Vestad, Beate Høgh, Julie Hov, Johannes R Benfield, Thomas Murray, Daniel Giske, Christian G Mardinoglu, Adil Trøseid, Marius Nielsen, Susanne D Neogi, Ujjwal eLife Computational and Systems Biology Multiomics technologies improve the biological understanding of health status in people living with HIV on antiretroviral therapy (PWH). Still, a systematic and in-depth characterization of metabolic risk profile during successful long-term treatment is lacking. Here, we used multi-omics (plasma lipidomic, metabolomic, and fecal 16 S microbiome) data-driven stratification and characterization to identify the metabolic at-risk profile within PWH. Through network analysis and similarity network fusion (SNF), we identified three groups of PWH (SNF-1–3): healthy (HC)-like (SNF-1), mild at-risk (SNF-3), and severe at-risk (SNF-2). The PWH in the SNF-2 (45%) had a severe at-risk metabolic profile with increased visceral adipose tissue, BMI, higher incidence of metabolic syndrome (MetS), and increased di- and triglycerides despite having higher CD4(+) T-cell counts than the other two clusters. However, the HC-like and the severe at-risk group had a similar metabolic profile differing from HIV-negative controls (HNC), with dysregulation of amino acid metabolism. At the microbiome profile, the HC-like group had a lower α-diversity, a lower proportion of men having sex with men (MSM) and was enriched in Bacteroides. In contrast, in at-risk groups, there was an increase in Prevotella, with a high proportion of MSM, which could potentially lead to higher systemic inflammation and increased cardiometabolic risk profile. The multi-omics integrative analysis also revealed a complex microbial interplay of the microbiome-associated metabolites in PWH. Those severely at-risk clusters may benefit from personalized medicine and lifestyle intervention to improve their dysregulated metabolic traits, aiming to achieve healthier aging. eLife Sciences Publications, Ltd 2023-02-16 /pmc/articles/PMC10017104/ /pubmed/36794912 http://dx.doi.org/10.7554/eLife.82785 Text en © 2023, Mikaeloff et al https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use and redistribution provided that the original author and source are credited.
spellingShingle Computational and Systems Biology
Mikaeloff, Flora
Gelpi, Marco
Benfeitas, Rui
Knudsen, Andreas D
Vestad, Beate
Høgh, Julie
Hov, Johannes R
Benfield, Thomas
Murray, Daniel
Giske, Christian G
Mardinoglu, Adil
Trøseid, Marius
Nielsen, Susanne D
Neogi, Ujjwal
Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title_full Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title_fullStr Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title_full_unstemmed Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title_short Network-based multi-omics integration reveals metabolic at-risk profile within treated HIV-infection
title_sort network-based multi-omics integration reveals metabolic at-risk profile within treated hiv-infection
topic Computational and Systems Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10017104/
https://www.ncbi.nlm.nih.gov/pubmed/36794912
http://dx.doi.org/10.7554/eLife.82785
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