Prospects and challenges of multi-omics data integration in toxicology

Sebastian Canzler(Helmholtz Centre for Environmental Research), Jana Schor(Helmholtz Centre for Environmental Research), Wibke Busch(Helmholtz Centre for Environmental Research), Kristin Schubert(Helmholtz Centre for Environmental Research), Ulrike Rolle‐Kampczyk(Helmholtz Centre for Environmental Research), Hervé Seitz(Centre National de la Recherche Scientifique), Hennicke Kamp(BASF (Germany)), Martin von Bergen�(Helmholtz Centre for Environmental Research), Roland Buesen(BASF (Germany)), Jörg Hackermüller(Helmholtz Centre for Environmental Research)
Archives of Toxicology
February 1, 2020
Cited by 267Open Access
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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.


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