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Machine learning models for predicting endocrine disruption potential of environmental chemicals.

Marco ChiericiMarco GiuliniNicole BussolaGiuseppe JurmanCesare Furlanello
Published in: Journal of environmental science and health. Part C, Environmental carcinogenesis & ecotoxicology reviews (2019)
We introduce here ML4Tox, a framework offering Deep Learning and Support Vector Machine models to predict agonist, antagonist, and binding activities of chemical compounds, in this case for the estrogen receptor ligand-binding domain. The ML4Tox models have been developed with a 10 × 5-fold cross-validation schema on the training portion of the CERAPP ToxCast dataset, formed by 1677 chemicals, each described by 777 molecular features. On the CERAPP "All Literature" evaluation set (agonist: 6319 compounds; antagonist 6539; binding 7283), ML4Tox significantly improved sensitivity over published results on all three tasks, with agonist: 0.78 vs 0.56; antagonist: 0.69 vs 0.11; binding: 0.66 vs 0.26.
Keyphrases
  • deep learning
  • estrogen receptor
  • machine learning
  • dna binding
  • artificial intelligence
  • binding protein
  • human health
  • working memory
  • randomized controlled trial
  • risk assessment
  • big data
  • neural network