Association Pattern-enhanced Molecular Representation Learning

Authors

  • Lingxiang Jia State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Yuchen Ying State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Tian Qiu State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Shaolun Yao State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Liang Xue Computing Science and Artificial Intelligence College, Suzhou City University
  • Jie Lei College of Computer Science, Zhejiang University of Technology
  • Jie Song State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Mingli Song State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security
  • Zunlei Feng State Key Laboratory of Blockchain and Data Security, Zhejiang University Hangzhou High-Tech Zone (Binjiang) Institute of Blockchain and Data Security

DOI:

https://doi.org/10.1609/aaai.v39i17.33935

Abstract

The applicability of drug molecules in various clinical scenarios is significantly influenced by a diverse range of molecular properties. By leveraging self-supervised conditions such as atom attributes and interatomic bonds, existing advanced molecular foundation models can generate expressive representations of these molecules. However, such models often overlook the fixed association patterns within molecules that influence physiological or chemical properties. In this paper, we introduce a novel association pattern-aware message passing method, which can serve as an effective yet general plug-and-play plugin, thereby enhancing the atom representations generated by molecular foundation models without requiring additional pretraining. Additionally, molecular property-specific pattern libraries are constructed to collect the generated interpretable common patterns that bind to these properties. Extensive experiments conducted on 11 benchmark molecular property prediction tasks across 8 advanced molecular foundation models demonstrate significant superiority of the proposed method, with performance improvements of up to approximately 20%. Furthermore, a property-specific pattern library is tailored for blood-brain barrier penetration, which has undergone corresponding mechanistic validation.

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Published

2025-04-11

How to Cite

Jia, L., Ying, Y., Qiu, T., Yao, S., Xue, L., Lei, J., … Feng, Z. (2025). Association Pattern-enhanced Molecular Representation Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 39(17), 17599–17607. https://doi.org/10.1609/aaai.v39i17.33935

Issue

Section

AAAI Technical Track on Machine Learning III