Multi-Domain Distribution Learning for De Novo Drug Design
Recording

Multi-Domain Distribution Learning for De Novo Drug Design

Paper Author

Arne Schneuing, Ilia Igashov, Adrian W. Dobbelstein, Thomas Castiglione, Michael Bronstein, Bruno Co Swiss Federal Technology Institute of Lausanne

Abstract

We introduce DrugFlow, a generative model for structure-based drug design that integrates continuous flow matching with discrete Markov bridges, demonstrating state-of-the-art performance in learning chemical, geometric, and physical aspects of three-dimensional protein-ligand data. We endow DrugFlow with an uncertainty estimate that is able to detect out-of-distribution samples. To further enhance the sampling process towards distribution regions with desirable metric values, we propose a joint preference alignment scheme applicable to both flow matching and Markov bridge frameworks. Furthermore, we extend our model to also explore the conformational landscape of the protein by jointly sampling side chain angles and molecules.

Recording

Research Paper

Previous Talks

36 talks

An Artificial Intelligence Model for Translating Natural Language into Functional de Novo Proteins

Oct 02, 2025 Timothy P. Riley, Mohammad S. Parsa, Pourya Kalantari, Ismail Naderi, Kiana Azimian, Nemya Begloo,

Self-supervised graph neural networks for polymer property prediction

Feb 20, 2025 Jana M. Weber

Learning-Order Autoregressive Models with Application to Molecular Graph Generation

Aug 07, 2025 Michalis K. Titsias