Abstract

Animal testing is the current standard for drug and chemicals safety assessment, but hazards translation to human is uncertain. Human invitro models can address the species translation but might not replicate invivo complexity. Herein, we propose a network-based method addressing these translational multiscale problems that derives invivo liver injury biomarkers applicable to invitro human early safety screening. We applied weighted correlation network analysis (WGCNA) toa large rat liver transcriptomic dataset to obtain co-regulated gene clusters (modules). We identified modules statistically associated with liver pathologies, including a module enriched for ATF4-regulated genes as associated with theoccurrence of hepatocellular single-cell necrosis, and as preserved in human liver invitro models. Within the module, we identified TRIB3 and MTHFD2 as a novel candidate stress biomarkers, and developed and used BAC-eGFPHepG2 reporters in a compound screening, identifying compounds showing ATF4-dependent stress response and potential early safety signals.

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