Litcius/Paper detail

DASH: Dynamic Attention-Based Substructure Hierarchy for Partial Charge Assignment

Marc Lehner, Paul Katzberger, Niels Maeder, Carl C. G. Schiebroek, Jakob Teetz, Gregory A. Landrum, Sereina Riniker

2023Journal of Chemical Information and Modeling15 citationsDOIOpen Access PDF

Abstract

We present a robust and computationally efficient approach for assigning partial charges of atoms in molecules. The method is based on a hierarchical tree constructed from attention values extracted from a graph neural network (GNN), which was trained to predict atomic partial charges from accurate quantum-mechanical (QM) calculations. The resulting dynamic attention-based substructure hierarchy (DASH) approach provides fast assignment of partial charges with the same accuracy as the GNN itself, is software-independent, and can easily be integrated in existing parametrization pipelines, as shown for the Open force field (OpenFF). The implementation of the DASH workflow, the final DASH tree, and the training set are available as open source/open data from public repositories.

Topics & Concepts

Partial chargeDashComputer scienceWorkflowSubstructureHierarchySet (abstract data type)Data miningTheoretical computer scienceCharge (physics)PhysicsEngineeringQuantum mechanicsDatabaseEconomicsProgramming languageMarket economyStructural engineeringOperating systemMachine Learning in Materials ScienceComputational Drug Discovery MethodsProtein Structure and Dynamics