CrossBind: Collaborative cross-modal identification of protein nucleic-acid-binding residues
Accurate identification of protein nucleic-acid-binding residues poses a significant challenge with important implications for various biological processes and drug design. Many typical computational methods for protein analysis rely on a single model that could ignore either the semantic context of the protein or the global 3D geometric information. Consequently, these approaches may result in incomplete or inaccurate protein analysis. To address the above issue, in this paper, we present CrossBind, a novel collaborative cross-modal approach for identifying binding residues by exploiting both protein geometric structure and its sequence prior knowledge extracted from a large-scale protein language model. Specifically, our multi-modal approach leverages a contrastive learning technique and atom-wise attention to capture the positional relationships between atoms and residues, thereby incorporating fine-grained local geometric knowledge, for better binding residue prediction. Extensive experimental results demonstrate that our approach outperforms the next best state-of-the-art methods, GraphSite and GraphBind, on DNA and RNA datasets by 10.8/17.3% in terms of the harmonic mean of precision and recall (F1-Score) and 11.9/24.8% in Matthews correlation coefficient (MCC), respectively.We release the code at https://github.com/BEAM-Labs/CrossBind.
Funding
National Key RD Program of China (NO.2022ZD0160101)
Shenzhen- Hong Kong Joint Funding No. SGDX20211123112401002
Shenzhen General Program No. JCYJ20220530143600001
Focus Project of AI for Science of Comprehensive Prosperity Plan for Disciplines of Fudan University, Netmind.AI, and Protagolabs Inc (to S.S.)
History
School
- Science
Department
- Computer Science
Published in
Proceedings of the 38th Annual AAAI Conference on Artificial IntelligenceVolume
38Issue
3Pages
2661-2669Source
The 38th Annual AAAI Conference on Artificial IntelligencePublisher
AAAI PressVersion
- AM (Accepted Manuscript)
Rights holder
© Association for the Advancement of Artificial IntelligencePublisher statement
This is a conference paper presented at the 38th Annual AAAI Conference on Artificial Intelligence and published openly by AAAI Press. © Association for the Advancement of Artificial Intelligence. All Rights Reserved.Acceptance date
2023-12-08Publication date
2024-03-24Copyright date
2024ISBN
9781577358800ISSN
2159-5399eISSN
2374-3468Publisher version
Language
- en