5
0
v1v2v3 (latest)

Generative Modeling of Full-Atom Protein Conformations using Latent Diffusion on Graph Embeddings

Main:10 Pages
4 Figures
Bibliography:6 Pages
18 Tables
Appendix:27 Pages
Abstract

Generating diverse, all-atom conformational ensembles of dynamic proteins such as G-protein-coupled receptors (GPCRs) is critical for understanding their function, yet most generative models simplify atomic detail or ignore conformational diversity altogether. We present latent diffusion for full protein generation (LD-FPG), a framework that constructs complete all-atom protein structures, including every side-chain heavy atom, directly from molecular dynamics (MD) trajectories. LD-FPG employs a Chebyshev graph neural network (ChebNet) to obtain low-dimensional latent embeddings of protein conformations, which are processed using three pooling strategies: blind, sequential and residue-based. A diffusion model trained on these latent representations generates new samples that a decoder, optionally regularized by dihedral-angle losses, maps back to Cartesian coordinates. Using D2R-MD, a 2-microsecond MD trajectory (12 000 frames) of the human dopamine D2 receptor in a membrane environment, the sequential and residue-based pooling strategy reproduces the reference ensemble with high structural fidelity (all-atom lDDT of approximately 0.7; C-alpha-lDDT of approximately 0.8) and recovers backbone and side-chain dihedral-angle distributions with a Jensen-Shannon divergence of less than 0.03 compared to the MD data. LD-FPG thereby offers a practical route to system-specific, all-atom ensemble generation for large proteins, providing a promising tool for structure-based therapeutic design on complex, dynamic targets. The D2R-MD dataset and our implementation are freely available to facilitate further research.

View on arXiv
@article{sengar2025_2506.17064,
  title={ Generative Modeling of Full-Atom Protein Conformations using Latent Diffusion on Graph Embeddings },
  author={ Aditya Sengar and Ali Hariri and Daniel Probst and Patrick Barth and Pierre Vandergheynst },
  journal={arXiv preprint arXiv:2506.17064},
  year={ 2025 }
}
Comments on this paper