Generative Coarse-Graining of Molecular Conformations
- URL: http://arxiv.org/abs/2201.12176v1
- Date: Fri, 28 Jan 2022 15:18:34 GMT
- Title: Generative Coarse-Graining of Molecular Conformations
- Authors: Wujie Wang, Minkai Xu, Chen Cai, Benjamin Kurt Miller, Tess Smidt,
Yusu Wang, Jian Tang, Rafael G\'omez-Bombarelli
- Abstract summary: We propose a novel model that embeds the vital probabilistic nature and geometric consistency requirements of the backmapping transformation.
Our approach always recovers more realistic structures and outperforms existing data-driven methods with a significant margin.
- Score: 28.127928605838388
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Coarse-graining (CG) of molecular simulations simplifies the particle
representation by grouping selected atoms into pseudo-beads and therefore
drastically accelerates simulation. However, such CG procedure induces
information losses, which makes accurate backmapping, i.e., restoring
fine-grained (FG) coordinates from CG coordinates, a long-standing challenge.
Inspired by the recent progress in generative models and equivariant networks,
we propose a novel model that rigorously embeds the vital probabilistic nature
and geometric consistency requirements of the backmapping transformation. Our
model encodes the FG uncertainties into an invariant latent space and decodes
them back to FG geometries via equivariant convolutions. To standardize the
evaluation of this domain, we further provide three comprehensive benchmarks
based on molecular dynamics trajectories. Extensive experiments show that our
approach always recovers more realistic structures and outperforms existing
data-driven methods with a significant margin.
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