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Target-specific toxicity knowledgebase (TsTKb): a novel toolkit for in silico predictive toxicology.

Yan LiGabriel IdakwoSundar ThangapandianMinjun ChenHuixiao HongChaoyang ZhangPing Gong
Published in: Journal of environmental science and health. Part C, Environmental carcinogenesis & ecotoxicology reviews (2018)
As the number of man-made chemicals increases at an unprecedented pace, efforts of quickly screening and accurately evaluating their potential adverse biological effects have been hampered by prohibitively high costs of in vivo/vitro toxicity testing. While it is unrealistic and unnecessary to test every uncharacterized chemical, it remains a major challenge to develop alternative in silico tools with high reliability and precision in toxicity prediction. To address this urgent need, we have developed a novel mode-of-action-guided, molecular modeling-based, and machine learning-enabled modeling approach for in silico chemical toxicity prediction. Here we introduce the core element of this approach, Target-specific Toxicity Knowledgebase (TsTKb), which consists of two main components: Chemical Mode of Action (ChemMoA) database and a suite of prediction model libraries.
Keyphrases
  • oxidative stress
  • machine learning
  • molecular docking
  • oxide nanoparticles
  • emergency department
  • risk assessment
  • molecular dynamics simulations
  • big data