Sveriges mest populära poddar
Molecular Modelling and Drug Discovery

Equivariant 3D-Conditional Diffusion Models for Molecular Linker Design | Ilia Igashov

1 tim 6 min29 november 2022

[DISCLAIMER] - For the full visual experience, we recommend you tune in through our YouTube channel to see the presented slides.

If you enjoyed this talk, consider joining the Molecular Modeling and Drug Discovery (M2D2) talks live.

Also, consider joining the M2D2 Slack.

Abstract: Fragment-based drug discovery has been an effective paradigm in early-stage drug development. An open challenge in this area is designing linkers between disconnected molecular fragments of interest to obtain chemically-relevant candidate drug molecules. In this work, we propose DiffLinker, an E(3)-equivariant 3D-conditional diffusion model for molecular linker design. Given a set of disconnected fragments, our model places missing atoms in between and designs a molecule incorporating all the initial fragments. Unlike previous approaches that are only able to connect pairs of molecular fragments, our method can link an arbitrary number of fragments. Additionally, the model automatically determines the number of atoms in the linker and its attachment points to the input fragments. We demonstrate that DiffLinker outperforms other methods on the standard datasets generating more diverse and synthetically-accessible molecules. Besides, we experimentally test our method in real-world applications, showing that it can successfully generate valid linkers conditioned on target protein pockets.

Full Paper

Speakers: Ilia Igashov

Twitter Prudencio

Twitter Therence

Twitter Jonny

Twitter Valence Discovery


Fler avsnitt av Molecular Modelling and Drug Discovery

Visa alla avsnitt av Molecular Modelling and Drug Discovery

Molecular Modelling and Drug Discovery med Valence Discovery finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.