Addressing systematic inconsistencies between in vitro and in vivo transcriptomic mode of action signatures

Toxicol In Vitro. 2019 Aug:58:1-12. doi: 10.1016/j.tiv.2019.02.014. Epub 2019 Feb 23.

Abstract

Because of their broad biological coverage and increasing affordability transcriptomic technologies have increased our ability to evaluate cellular response to chemical stressors, providing a potential means of evaluating chemical response while decreasing dependence on apical endpoints derived from traditional long-term animal studies. It has recently been suggested that dose-response modeling of transcriptomic data may be incorporated into risk assessment frameworks as a means of approximating chemical hazard. However, identification of mode of action from transcriptomics lacks a similar systematic framework. To this end, we developed a web-based interactive browser-MoAviz-that allows visualization of perturbed pathways. We populated this browser with expression data from a large public toxicogenomic database (TG-GATEs). We evaluated the extent to which gene expression changes from in-life exposures could be associated with mode of action by developing a novel similarity index-the Modified Jaccard Index (MJI)-that provides a quantitative description of genomic pathway similarity (rather than gene level comparison). While typical compound-compound similarity is low (median MJI = 0.026), clustering of the TG-GATES compounds identifies groups of similar chemistries. Some clusters aggregated compounds with known similar modes of action, including PPARa agonists (median MJI = 0.315) and NSAIDs (median MJI = 0.322). Analysis of paired in vitro (hepatocyte)-in vivo (liver) experiments revealed systematic patterns in the responses of model systems to chemical stress. Accounting for these model-specific, but chemical-independent, differences improved pathway concordance by 36% between in vivo and in vitro models.

Keywords: Biological pathway visualization; Chemical mode of action; MoAviz; TG-GATES; Toxicogenomics response; Transcriptomics.

MeSH terms

  • Animals
  • Databases, Factual
  • Gene Expression Profiling*
  • Gene Ontology
  • Hepatocytes / metabolism
  • Humans
  • Risk Assessment
  • Transcriptome