RetroComposer: Composing Templates for Template-Based Retrosynthesis Prediction

20 Dec 2021  ·  Chaochao Yan, Peilin Zhao, Chan Lu, Yang Yu, Junzhou Huang ·

The main target of retrosynthesis is to recursively decompose desired molecules into available building blocks. Existing template-based retrosynthesis methods follow a template selection stereotype and suffer from limited training templates, which prevents them from discovering novel reactions. To overcome this limitation, we propose an innovative retrosynthesis prediction framework that can compose novel templates beyond training templates. As far as we know, this is the first method that uses machine learning to compose reaction templates for retrosynthesis prediction. Besides, we propose an effective reactant candidate scoring model that can capture atom-level transformations, which helps our method outperform previous methods on the USPTO-50K dataset. Experimental results show that our method can produce novel templates for 15 USPTO-50K test reactions that are not covered by training templates. We have released our source implementation.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Single-step retrosynthesis USPTO-50k RetroComposer Top-1 accuracy 53.3 # 8
Top-3 accuracy 75.2 # 3
Top-5 accuracy 80.9 # 5
Top-10 accuracy 85.0 # 7
Top-20 accuracy 86.1 # 4
Top-50 accuracy 86.2 # 6

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