Consistency across multi-omics layers in a drug-perturbed gut microbial community

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  • Sander Wuyts
  • Renato Alves
  • Maria Zimmermann-Kogadeeva
  • Suguru Nishijima
  • Sonja Blasche
  • Marja Driessen
  • Philipp E. Geyer
  • Rajna Hercog
  • Ece Kartal
  • Lisa Maier
  • Johannes B. Müller
  • Sarela Garcia Santamarina
  • Thomas Sebastian B. Schmidt
  • Daniel C. Sevin
  • Anja Telzerow
  • Peter V. Treit
  • Tobias Wenzel
  • Athanasios Typas
  • Kiran R. Patil
  • Michael Kuhn
  • Peer Bork
Multi-omics analyses are used in microbiome studies to understand molecular changes in microbial communities exposed to different conditions. However, it is not always clear how much each omics data type contributes to our understanding and whether they are concordant with each other. Here, we map the molecular response of a synthetic community of 32 human gut bacteria to three non-antibiotic drugs by using five omics layers (16S rRNA gene profiling, metagenomics, metatranscriptomics, metaproteomics and metabolomics). We find that all the omics methods with species resolution are highly consistent in estimating relative species abundances. Furthermore, different omics methods complement each other for capturing functional changes. For example, while nearly all the omics data types captured that the antipsychotic drug chlorpromazine selectively inhibits Bacteroidota representatives in the community, the metatranscriptome and metaproteome suggested that the drug induces stress responses related to protein quality control. Metabolomics revealed a decrease in oligosaccharide uptake, likely caused by Bacteroidota depletion. Our study highlights how multi-omics datasets can be utilized to reveal complex molecular responses to external perturbations in microbial communities.
OriginalsprogEngelsk
Artikelnummere11525
TidsskriftMolecular Systems Biology
Vol/bind19
Udgave nummer9
Antal sider17
ISSN1744-4292
DOI
StatusUdgivet - 2023

Bibliografisk note

Funding Information:
We acknowledge Vladimir Benes, Matthew Hayward, Melanie Tramontano, Thea Van Rossum, Camille Goemans, Carlos Voogdt and Michael Zimmermann for helpful discussions. We gratefully acknowledge support by the EMBL's Genomics Core facility. The work was supported by the European Molecular Biology Laboratory and has received funding from the European Union's Horizon 2020 research and innovation programme under grant agreement number 668031 (to RA, SN, SW). PB: German Federal Ministry of Education and Research (LAMarCK, no. 031L0181A). KRP: UK Medical Research Council (project number MC_UU_00025/11). MZ‐K: Postdoc Mobility Fellowship from the Swiss National Science Foundation (P400PB_186795) and a postdoctoral fellowship from the AXA Research Fund. LM, SGS and TW were supported by the EMBL Interdisciplinary Postdoc (EIPOD) program under Marie Sklodowska‐Curie Actions COFUND (grant numbers 291772 and 664726). Open Access funding enabled and organized by Projekt DEAL. Open Access funding enabled and organized by Projekt DEAL.

Publisher Copyright:
© 2023 The Authors. Published under the terms of the CC BY 4.0 license.

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