Prospects and challenges of multi-omics data integration in toxicology

Arch Toxicol. 2020 Feb;94(2):371-388. doi: 10.1007/s00204-020-02656-y. Epub 2020 Feb 8.

Abstract

Exposure of cells or organisms to chemicals can trigger a series of effects at the regulatory pathway level, which involve changes of levels, interactions, and feedback loops of biomolecules of different types. A single-omics technique, e.g., transcriptomics, will detect biomolecules of one type and thus can only capture changes in a small subset of the biological cascade. Therefore, although applying single-omics analyses can lead to the identification of biomarkers for certain exposures, they cannot provide a systemic understanding of toxicity pathways or adverse outcome pathways. Integration of multiple omics data sets promises a substantial improvement in detecting this pathway response to a toxicant, by an increase of information as such and especially by a systemic understanding. Here, we report the findings of a thorough evaluation of the prospects and challenges of multi-omics data integration in toxicological research. We review the availability of such data, discuss options for experimental design, evaluate methods for integration and analysis of multi-omics data, discuss best practices, and identify knowledge gaps. Re-analyzing published data, we demonstrate that multi-omics data integration can considerably improve the confidence in detecting a pathway response. Finally, we argue that more data need to be generated from studies with a multi-omics-focused design, to define which omics layers contribute most to the identification of a pathway response to a toxicant.

Keywords: Chemical exposure; Data integration; Multi-omics; Risk assessment; Toxicology.

Publication types

  • Review

MeSH terms

  • Animals
  • Computational Biology / methods
  • Genomics / methods*
  • Humans
  • Metabolomics / methods*
  • Protein Processing, Post-Translational
  • Proteomics / methods*
  • Single-Cell Analysis
  • Tissue Distribution
  • Toxicology / methods*