Jun 22 – 25, 2025
University of South Dakota
US/Central timezone

LLM-powered deep graph learning for protein-nucleic acid binding site prediction

Jun 24, 2025, 9:40 AM
35m
MUC Ballroom

MUC Ballroom

The Role of LLMs, Scientific ML, and Data-Driven Approaches in Materials Innovation Plenary Session 4: AI and Data-Driven Approaches for Materials and Molecular Simulations

Speaker

Debswapna Bhattacharya (Virginia Tech)

Description

Large language models (LLMs) for biology such as protein language models (pLMs) trained on a large corpus of protein sequences have shown unprecedented scalability and broad generalizability in a wide range of predictive modeling tasks, but their power has not yet been harnessed for predicting protein–nucleic acid binding sites, critical for characterizing the interactions between proteins and nucleic acids. Here, we present EquiPNAS, a new pLM-informed E(3) equivariant deep graph neural network framework for improved protein–nucleic acid binding site prediction. By combining the strengths of pLM and symmetry-aware deep graph learning, EquiPNAS consistently outperforms the state-of-the-art methods for both protein–DNA and protein–RNA binding site prediction on multiple datasets across a diverse set of predictive modeling scenarios ranging from using experimental input to AlphaFold2 predictions. Our ablation study reveals that the pLM embeddings used in EquiPNAS are sufficiently powerful to dramatically reduce the dependence on the availability of evolutionary information without compromising on accuracy, and that the symmetry-aware nature of the E(3) equivariant graph-based neural architecture offers remarkable robustness and performance resilience. EquiPNAS is freely available at https://github.com/Bhattacharya-Lab/EquiPNAS.

Primary authors

Presentation materials

There are no materials yet.