Abstract
Retrosynthesis is vital in synthesizing target products, guiding reaction pathway design crucial for drug and material discovery. Current models often neglect multi-scale feature extraction, limiting efficacy in leveraging molecular descriptors. Our proposed SB-Net model, a deep-learning architecture tailored for retrosynthesis prediction, addresses this gap. SB-Net combines CNN and Bi-LSTM architectures, excelling in capturing multi-scale molecular features. It integrates parallel branches for processing one-hot encoded descriptors and ECFP, merging through dense layers. Experimental results demonstrate SB-Net's superiority, achieving 73.6 % top-1 and 94.6 % top-10 accuracy on USPTO-50k data. Versatility is validated on MetaNetX, with rates of 52.8 % top-1, 74.3 % top-3, 79.8 % top-5, and 83.5 % top-10. SB-Net's success in bioretrosynthesis prediction tasks indicates its efficacy. This research advances computational chemistry, offering a robust deep-learning model for retrosynthesis prediction. With implications for drug discovery and synthesis planning, SB-Net promises innovative and efficient pathways.
| Original language | English |
|---|---|
| Article number | 108130 |
| Journal | Computational Biology and Chemistry |
| Volume | 112 |
| DOIs | |
| State | Published - 2024.10 |
Keywords
- Bidirectional LSTM
- Convolutional neural network
- Drug discovery
- Multi-scale features
- Retrosynthesis prediction
Quacquarelli Symonds(QS) Subject Topics
- Mathematics
- Engineering - Petroleum
- Chemistry
- Biological Sciences
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