COSMIC: Molecular Conformation Space Modeling in Internal Coordinates with an Adversarial Framework.
Maksim KuznetsovFedor RyabovRoman S SchutskiRim ShayakhmetovYen-Chu LinAlexander AliperDaniil PolykovskiyPublished in: Journal of chemical information and modeling (2024)
The fast and accurate conformation space modeling is an essential part of computational approaches for solving ligand and structure-based drug discovery problems. Recent state-of-the-art diffusion models for molecular conformation generation show promising distribution coverage and physical plausibility metrics but suffer from a slow sampling procedure. We propose a novel adversarial generative framework, COSMIC, that shows comparable generative performance but provides a time-efficient sampling and training procedure. Given a molecular graph and random noise, the generator produces a conformation in two stages. First, it constructs a conformation in a rotation and translation invariant representation─ internal coordinates . In the second step, the model predicts the distances between neighboring atoms and performs a few fast optimization steps to refine the initial conformation. The proposed model considers conformation energy, achieving comparable space coverage, and diversity metrics results.