HEroBM: a deep equivariant graph neural network for universal backmapping from coarse-grained to all-atom representations
Daniele Angioletti, Stefano Raniolo, Vittorio Limongelli

TL;DR
HEroBM is a scalable deep equivariant graph neural network that enables universal, high-accuracy backmapping from coarse-grained to all-atom molecular representations across diverse biological systems.
Contribution
This work introduces HEroBM, a novel deep equivariant graph neural network method that universally and efficiently reconstructs atomistic details from coarse-grained models, surpassing rule-based and existing ML approaches.
Findings
Accurately reconstructs atomistic structures from coarse-grained models.
Handles any type of coarse-grained mapping with high transferability.
Successfully applied to complex biological systems, including G protein-coupled receptor.
Abstract
Molecular simulations have assumed a paramount role in the fields of chemistry, biology, and material sciences, being able to capture the intricate dynamic properties of systems. Within this realm, coarse-grained (CG) techniques have emerged as invaluable tools to sample large-scale systems and reach extended timescales by simplifying system representation. However, CG approaches come with a trade-off: they sacrifice atomistic details that might hold significant relevance in deciphering the investigated process. Therefore, a recommended approach is to identify key CG conformations and process them using backmapping methods, which retrieve atomistic coordinates. Currently, rule-based methods yield subpar geometries and rely on energy relaxation, resulting in less-than-optimal outcomes. Conversely, machine learning techniques offer higher accuracy but are either limited in transferability…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Advanced Graph Neural Networks
