Advancing Retrosynthesis with Retrieval-Augmented Graph Generation

Authors

  • Anjie Qiao SUN YAT-SEN UNIVERSITY
  • Zhen Wang SUN YAT-SEN UNIVERSITY Guangdong Province Key Laboratory of Computational Science
  • Jiahua Rao SUN YAT-SEN UNIVERSITY
  • Yuedong Yang SUN YAT-SEN UNIVERSITY
  • Zhewei Wei Renmin University of China

DOI:

https://doi.org/10.1609/aaai.v39i19.34203

Abstract

Diffusion-based molecular graph generative models have achieved significant success in template-free, single-step retrosynthesis prediction. However, these models typically generate reactants from scratch, often overlooking the fact that the scaffold of a product molecule typically remains unchanged during chemical reactions. To leverage this useful observation, we introduce a retrieval-augmented molecular graph generation framework. Our framework comprises three key components: a retrieval component that identifies similar molecules for the given product, an integration component that learns valuable clues from these molecules about which part of the product should remain unchanged, and a base generative model that is prompted by these clues to generate the corresponding reactants. We explore various design choices for critical and under-explored aspects of this framework and instantiate it as the Retrieval-Augmented RetroBridge (RARB). RARB demonstrates state-of-the-art performance on standard benchmarks, achieving a 14.8% relative improvement in top-1 accuracy over its base generative model, highlighting the effectiveness of retrieval augmentation. Additionally, RARB excels in handling out-of-distribution molecules, and its advantages remain significant even with smaller models or fewer denoising steps. These strengths make RARB highly valuable for real-world retrosynthesis applications, where extrapolation to novel molecules and high-throughput prediction are essential.

Published

2025-04-11

How to Cite

Qiao, A., Wang, Z., Rao, J., Yang, Y., & Wei, Z. (2025). Advancing Retrosynthesis with Retrieval-Augmented Graph Generation. Proceedings of the AAAI Conference on Artificial Intelligence, 39(19), 20004–20013. https://doi.org/10.1609/aaai.v39i19.34203

Issue

Section

AAAI Technical Track on Machine Learning V