PlumX Metrics
Embed PlumX Metrics

A deep learning approach for rational ligand generation with toxicity control via reactive building blocks

Nature Computational Science, ISSN: 2662-8457, Vol: 4, Issue: 11, Page: 851-864
2024
  • 1
    Citations
  • 0
    Usage
  • 9
    Captures
  • 0
    Mentions
  • 0
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

Article Description

Deep generative models are gaining attention in the field of de novo drug design. However, the rational design of ligand molecules for novel targets remains challenging, particularly in controlling the properties of the generated molecules. Here, inspired by the DNA-encoded compound library technique, we introduce DeepBlock, a deep learning approach for block-based ligand generation tailored to target protein sequences while enabling precise property control. DeepBlock neatly divides the generation process into two steps: building blocks generation and molecule reconstruction, accomplished by a neural network and a rule-based reconstruction algorithm we proposed, respectively. Furthermore, DeepBlock synergizes the optimization algorithm and deep learning to regulate the properties of the generated molecules. Experiments show that DeepBlock outperforms existing methods in generating ligands with affinity, synthetic accessibility and drug likeness. Moreover, when integrated with simulated annealing or Bayesian optimization using toxicity as the optimization objective, DeepBlock successfully generates ligands with low toxicity while preserving affinity with the target.

Bibliographic Details

Li, Pengyong; Zhang, Kaihao; Liu, Tianxiao; Lu, Ruiqiang; Chen, Yangyang; Yao, Xiaojun; Gao, Lin; Zeng, Xiangxiang

Springer Science and Business Media LLC

Computer Science

Provide Feedback

Have ideas for a new metric? Would you like to see something else here?Let us know