1,000-5,000 candidates analyzed per hour
Input required: toxicity threshold tolerated + 1 click
Optional input: set/library of compounds of interest
Candidates input by the user, or from the previous step, are screened through a first-of-its-kind set of toxicity filters, which are entirely based on first principles and provide mechanistic interpretation and feedback to the design phase.
The pipeline identifies the inhibition of key metabolic enzymes in multiple organs, such as the liver, heart, kidney, and brain. Additionally, it predicts the biodegradation into toxic metabolites, based on our curated database of key enzymatic reactions and known toxic substrates.
Our approach achieves unparalleled accuracy compared to existing Deep Learning toxicity models, which are doomed to remain theoretical experiments, as they are not trained on billions of in vivo and clinical proprietary data, which most organizations do not have access to.