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Biomarkers of nanomaterials hazard from multi-layer data.

Vittorio FortinoPia Anneli Sofia KinaretMichele FratelloAngela SerraLaura Aliisa SaarimäkiAudrey GalludGovind GuptaGerard ValesManuel CorreiaOmid RasoolJimmy YtterbergMarco MonopoliTiina SkoogPeter RitchieSergio MoyaSocorro Vázquez-CamposRichard HandyRoland GrafströmLang TranRoman A ZubarevRiitta LahesmaaKenneth A DawsonKatrin LoeschnerErik Husfeldt LarsenFritz KrombachHannu NorppaJuha KereKai SavolainenHarri AleniusBengt FadeelDario Greco
Published in: Nature communications (2022)
There is an urgent need to apply effective, data-driven approaches to reliably predict engineered nanomaterial (ENM) toxicity. Here we introduce a predictive computational framework based on the molecular and phenotypic effects of a large panel of ENMs across multiple in vitro and in vivo models. Our methodology allows for the grouping of ENMs based on multi-omics approaches combined with robust toxicity tests. Importantly, we identify mRNA-based toxicity markers and extensively replicate them in multiple independent datasets. We find that models based on combinations of omics-derived features and material intrinsic properties display significantly improved predictive accuracy as compared to physicochemical properties alone.
Keyphrases
  • oxidative stress
  • single cell
  • electronic health record
  • oxide nanoparticles
  • big data
  • deep learning
  • artificial intelligence