Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/28989
Title: Combinatorial, additive and dose-dependent drug–microbiome associations
Authors: Forslund, SK
Chakaroun, R
Zimmermann-Kogadeeva, M
Markó, L
Aron-Wisnewsky, J
Nielsen, T
Moitinho-Silva, L
Schmidt, TSB
Falony, G
Vieira-Silva, S
Adriouch, S
Alves, RJ
Assmann, K
Bastard, JP
Birkner, T
Caesar, R
Chilloux, J
Coelho, LP
Fezeu, L
Galleron, N
Helft, G
Isnard, R
Ji, B
Kuhn, M
Le Chatelier, E
Myridakis, A
Olsson, L
Pons, N
Prifti, E
Quinquis, B
Roume, H
Salem, JE
Sokolovska, N
Tremaroli, V
Valles-Colomer, M
Lewinter, C
Søndertoft, NB
Pedersen, HK
Hansen, TH
Amouyal, C
Andersson Galijatovic, EA
Andreelli, F
Barthelemy, O
Batisse, JP
Belda, E
Berland, M
Bittar, R
Blottière, H
Bosquet, F
Boubrit, R
Bourron, O
Camus, M
Cassuto, D
Ciangura, C
Collet, JP
Dao, MC
Djebbar, M
Doré, A
Engelbrechtsen, L
Fellahi, S
Fromentin, S
Galan, P
Gauguier, D
Giral, P
Hartemann, A
Hartmann, B
Holst, JJ
Hornbak, M
Hoyles, L
Hulot, JS
Jaqueminet, S
Jørgensen, NR
Julienne, H
Justesen, J
Kammer, J
Krarup, N
Kerneis, M
Khemis, J
Kozlowski, R
Lejard, V
Levenez, F
Lucas-Martini, L
Massey, R
Martinez-Gili, L
Maziers, N
Medina-Stamminger, J
Montalescot, G
Moute, S
Neves, AL
Olanipekun, M
Le Pavin, LP
Poitou, C
Pousset, F
Pouzoulet, L
Rodriguez-Martinez, A
Rouault, C
Silvain, J
Svendstrup, M
Swartz, T
Vanduyvenboden, T
Keywords: biomarkers;cardiovascular diseases;systems biology
Issue Date: 8-Dec-2024
Publisher: Springer Nature
Citation: Forslund, S.K. et al. on behalf of The MetaCardis Consortium (2021) 'Combinatorial, additive and dose-dependent drug–microbiome associations', Nature, 600 (7889), pp. 500 - 505. doi: 10.1038/s41586-021-04177-9.
Abstract: During the transition from a healthy state to cardiometabolic disease, patients become heavily medicated, which leads to an increasingly aberrant gut microbiome and serum metabolome, and complicates biomarker discovery1,2,3,4,5. Here, through integrated multi-omics analyses of 2,173 European residents from the MetaCardis cohort, we show that the explanatory power of drugs for the variability in both host and gut microbiome features exceeds that of disease. We quantify inferred effects of single medications, their combinations as well as additive effects, and show that the latter shift the metabolome and microbiome towards a healthier state, exemplified in synergistic reduction in serum atherogenic lipoproteins by statins combined with aspirin, or enrichment of intestinal Roseburia by diuretic agents combined with beta-blockers. Several antibiotics exhibit a quantitative relationship between the number of courses prescribed and progression towards a microbiome state that is associated with the severity of cardiometabolic disease. We also report a relationship between cardiometabolic drug dosage, improvement in clinical markers and microbiome composition, supporting direct drug effects. Taken together, our computational framework and resulting resources enable the disentanglement of the effects of drugs and disease on host and microbiome features in multimedicated individuals. Furthermore, the robust signatures identified using our framework provide new hypotheses for drug–host–microbiome interactions in cardiometabolic disease.
Description: Data availability: The source data for the figures are provided at Zenodo (https://doi.org/10.5281/zenodo.4728981). Raw shotgun sequencing data that support the findings of this study have been deposited at the ENA under accession codes PRJEB41311, PRJEB38742 and PRJEB37249 with public access. Raw spectra for metabolomics have been deposited in the MassIVE database under the accession codes MSV000088043 (UPLC–MS/MS) and MSV000088042 (GC–MS). The metadata on disease groups and drug intake are provided in Supplementary Tables 1–3. The demographic, clinical and phenotype metadata, and processed microbiome and metabolome data for French, German and Danish participants are available at Zenodo (https://doi.org/10.5281/zenodo.4674360).
Code availability: The new drug-aware univariate biomarker testing pipeline is available as an R package (metadeconfoundR; Birkner et al., manuscript in preparation) at Github (https://github.com/TillBirkner/metadeconfoundR) and at Zenodo (https://doi.org/10.5281/zenodo.4721078). The latest version (0.1.8) of this package was used to generate the data shown in this publication. The code used for multivariate analysis based on the VpThemAll package is available at Zenodo (https://doi.org/10.5281/zenodo.4719526). The phenotype and drug intake metadata, processed microbiome, and metabolome data and code resources are available for download at Zenodo (https://doi.org/10.5281/zenodo.4674360). The code for reproducing the figures is provided at Zenodo (https://doi.org/10.5281/zenodo.4728981).
URI: https://bura.brunel.ac.uk/handle/2438/28989
DOI: https://doi.org/10.1038/s41586-021-04177-9
ISSN: 0028-0836
Other Identifiers: ORCiD: Sofia K. Forslund https://orcid.org/0000-0003-4285-6993
ORCiD: Antonis Myridakis https://orcid.org/0000-0003-1690-6651
ORCiD: Karine Clément https://orcid.org/0000-0002-2489-3355
ORCiD: Michael Stumvoll https://orcid.org/0000-0001-6225-8240
ORCiD: Peer Bork https://orcid.org/0000-0002-2627-833X
Appears in Collections:Dept of Life Sciences Research Papers

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