Project Details
Virtual Drug Screening in the Chemical Space Accessible by Chemical Synthesis
Subject Area
Theoretical Chemistry: Electronic Structure, Dynamics, Simulation
Term
since 2022
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 497135079
Modern approaches to drug development start with the identification of a target and virtual screening of “drug-like” organic molecules. This entails two intertwined challenges: first the “ligand” must be functional and second it must be synthetically accessible. Often, previously studied substance classes are to be avoided due competing patents. Here we propose a computational approach to virtual drug screening that combines modern techniques of machine learning for functional evaluation of molecules, rule-based modelling to chemical reactions to maintain synthetic plausibility, and an Evolutionary Algorithm-inspired optimization approach. Cross-over and mutation operations are phrased in the rule-based framework, aiming at restricting the search to chemically realistic molecules. We propose, based on recent observations on the importance of representation, that the graph grammars built to reflect the chemist’s intuition of structural formulae and elementary reactions constitute a natural representative framework for both the traversal of chemical space and for learning functionally important features. We aim at the development of a comprehensive framework and accompanying software for virtual drug screening that will be tested against a suite of screening that are already available to the applicants. A part of the proposal we will also devise benchmarking procedures for this kind of virtual screening approaches including experimental validation with collaboration partners at University of Leipzig.
DFG Programme
Priority Programmes
Subproject of
SPP 2363:
Utilization and Development of Machine Learning for Molecular Applications – Molecular Machine Learning
International Connection
Denmark
Cooperation Partner
Professor Dr. Jakob Lykke Andersen