Affiliation:
1. Shanghai Institute for Advanced Immunochemical Studies and School of Life Science and Technology Shanghai Tech University Shanghai 201210 China
2. Shanghai Institute for Advanced Immunochemical Studies School of Life Science and Technology Information Science and Technology Shanghai Tech University Shanghai Clinical Research and Trial Center Shanghai 201210 China
Abstract
AbstractThe molecular representation model is a neural network that converts molecular representations (SMILES, Graph) into feature vectors, and is an essential module applied across a wide range of artificial intelligence‐driven drug discovery scenarios. However, current molecular representation models rarely consider the three‐dimensional conformational space of molecules, losing sight of the dynamic nature of small molecules as well as the essence of molecular conformational space that covers the heterogeneity of molecule properties, such as the multi‐target mechanism of action, recognition of different biomolecules, dynamics in cytoplasm and membrane. In this study, a new model named GeminiMol is proposed to incorporate conformational space profiles into molecular representation learning, which extracts the feature of capturing the complicated interplay between the molecular structure and the conformational space. Although GeminiMol is pre‐trained on a relatively small‐scale molecular dataset (39290 molecules), it shows balanced and superior performance not only on 67 molecular properties predictions but also on 73 cellular activity predictions and 171 zero‐shot tasks (including virtual screening and target identification). By capturing the molecular conformational space profile, the strategy paves the way for rapid exploration of chemical space and facilitates changing paradigms for drug design.
Funder
National Natural Science Foundation of China
Shanghai Science and Technology Development Foundation