Spotlight Presentation: Informed lead generation from the screening of ultra large databases
21 Nov 2024
Data Quality
Drug Response Prediction
Lead Generation & Optimization
Target Identification
Our platform employs geometric deep learning and molecular modelling for rapid, high-throughput virtual screening, analyzing billions of molecules within hours from a database subset representing a 0.001% of the total library. It uses this data to train a surrogate model that estimates docking scores across the entire database, validated through an induced fit docking Monte Carlo algorithm. With an active learning strategy designed for efficient retraining, the system thoroughly navigates extensive molecular spaces. An explainability component underscores key docking substructures, facilitating lead optimization, which is later performed by a pocket geometry constrained diffusion model.
Industry Expert