An in-depth multi-omics analysis in RLE-6TN rat alveolar epithelial cells allows for nanomaterial categorization

Part Fibre Toxicol. 2019 Oct 25;16(1):38. doi: 10.1186/s12989-019-0321-5.

Abstract

Background: Nanomaterials (NMs) can be fine-tuned in their properties resulting in a high number of variants, each requiring a thorough safety assessment. Grouping and categorization approaches that would reduce the amount of testing are in principle existing for NMs but are still mostly conceptual. One drawback is the limited mechanistic understanding of NM toxicity. Thus, we conducted a multi-omics in vitro study in RLE-6TN rat alveolar epithelial cells involving 12 NMs covering different materials and including a systematic variation of particle size, surface charge and hydrophobicity for SiO2 NMs. Cellular responses were analyzed by global proteomics, targeted metabolomics and SH2 profiling. Results were integrated using Weighted Gene Correlation Network Analysis (WGCNA).

Results: Cluster analyses involving all data sets separated Graphene Oxide, TiO2_NM105, SiO2_40 and Phthalocyanine Blue from the other NMs as their cellular responses showed a high degree of similarities, although apical in vivo results may differ. SiO2_7 behaved differently but still induced significant changes. In contrast, the remaining NMs were more similar to untreated controls. WGCNA revealed correlations of specific physico-chemical properties such as agglomerate size and redox potential to cellular responses. A key driver analysis could identify biomolecules being highly correlated to the observed effects, which might be representative biomarker candidates. Key drivers in our study were mainly related to oxidative stress responses and apoptosis.

Conclusions: Our multi-omics approach involving proteomics, metabolomics and SH2 profiling proved useful to obtain insights into NMs Mode of Actions. Integrating results allowed for a more robust NM categorization. Moreover, key physico-chemical properties strongly correlating with NM toxicity were identified. Finally, we suggest several key drivers of toxicity that bear the potential to improve future testing and assessment approaches.

Keywords: Grouping; Metabolomics; Multi-omics; Nanomaterials; Proteomics; SH2 profiling; WGCNA.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Alveolar Epithelial Cells / drug effects*
  • Alveolar Epithelial Cells / metabolism
  • Alveolar Epithelial Cells / pathology
  • Animals
  • Cell Line
  • Cell Survival / drug effects
  • Dose-Response Relationship, Drug
  • Graphite / classification
  • Graphite / toxicity
  • Metabolomics / methods*
  • Nanostructures / classification*
  • Nanostructures / toxicity*
  • Particle Size
  • Proteomics / methods*
  • Rats
  • Silicon Dioxide / classification
  • Silicon Dioxide / toxicity
  • Surface Properties
  • Titanium / classification
  • Titanium / toxicity

Substances

  • graphene oxide
  • titanium dioxide
  • Silicon Dioxide
  • Graphite
  • Titanium