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Retroformer: Pushing the Limits of Interpretable End-to-end Retrosynthesis Transformer

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Retrosynthesis prediction is one of the fundamental challenges in organic synthesis. The task is to predict the reactants given a core product. With the advancement of machine learning, computer-aided synthesis planning has gained increasing interest. Numerous methods were proposed to solve this problem with different levels of dependency on additional chemical knowledge. In this paper, we propose Retroformer, a novel Transformer-based architecture for retrosynthesis prediction without relying on any cheminformatics tools for molecule editing. Via the proposed local attention head, the model can jointly encode the molecular sequence and graph, and efficiently exchange information between the local reactive region and the global reaction context. Retroformer reaches the new state-of-the-art accuracy for the end-to-end template-free retrosynthesis, and improves over many strong baselines on better molecule and reaction validity. In addition, its generative procedure is highly interpretable and controllable. Overall, Retroformer pushes the limits of the reaction reasoning ability of deep generative models.

Yue Wan, Benben Liao, Chang-Yu Hsieh, Shengyu Zhang• 2022

Related benchmarks

TaskDatasetResultRank
RetrosynthesisUSPTO-50k Reaction type unknown (test)
Top-1 Accuracy53.2
59
RetrosynthesisUSPTO-50k Reaction type known (test)
Top-1 Accuracy64
50
RetrosynthesisUSPTO (test)
Exact Match0.536
11
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