Publication | Closed Access
Machine learning models for predicting endocrine disruption potential of environmental chemicals
13
Citations
19
References
2018
Year
Environmental ChemicalsDrug TargetEngineeringMachine LearningMachine Learning ModelsSystem PharmacologyEndocrine Disruption PotentialCerapp Toxcast DatasetSystems PharmacologyMolecular PharmacologyEnvironmental ChemistryData ScienceChemical CompoundsEnvironmental HealthToxicologyMl4tox ModelsToxicological AspectHuman BiomonitoringPredictive ToxicologyDe Novo Drug DesignPredictive AnalyticsEcotoxicologyComputational ModelingDeep LearningPharmacologyTarget PredictionEndocrine DisruptorsRational Drug DesignEnvironmental ToxicologyMedicineDrug DiscoveryQuantitative Pharmacology
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1