Project Details
Molecular Machine Learning for Asymmetric (Organo-)Catalysis
Applicant
Professor Dr. Peter R. Schreiner
Subject Area
Organic Molecular Chemistry - Synthesis and Characterisation
Term
since 2022
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 497198316
Asymmetric catalysis plays a pivotal role in the synthesis of pharmaceutically active compounds. Organocatalysis aims to enable such transformations without the use of potentially toxic metals. Its biggest challenge, however, lies in the design of potent organocatalysts and prediction of activity: In most cases, the correlation between a catalyst's molecular structure and its activity is poorly understood. Thus, we will develop and apply machine learning (ML) techniques to thiourea and oligopeptide catalyst libraries: We aim to determine the most viable candidates for organocatalytic transformations of pharmaceutical interest, such as for the synthesis of anti-malarial agents. By using explainable AI techniques on our ML models, we plan to reveal the molecular features responsible for catalyst activity to move further towards the goal of true de novo catalyst design.
DFG Programme
Priority Programmes
Subproject of
SPP 2363:
Utilization and Development of Machine Learning for Molecular Applications – Molecular Machine Learning
Co-Investigator
Dr. Dennis Gerbig