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

IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Pengyong Li, Kaihao Zhang, Tianxiao Liu, Ruiqiang Lu, Yangyang Chen, Xiaojun Yao, Lin Gao, Xiangxiang Zeng
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引用次数: 0

Abstract

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.

通过活性构件控制毒性的深度学习配体生成方法。
深度生成模型在新药设计领域越来越受到关注。然而,为新靶点合理设计配体分子仍然具有挑战性,尤其是在控制生成分子的性质方面。在此,受DNA编码化合物库技术的启发,我们引入了DeepBlock,这是一种深度学习方法,用于根据目标蛋白质序列生成基于块的配体,同时实现精确的性质控制。DeepBlock 巧妙地将生成过程分为两个步骤:构件生成和分子重构,分别由我们提出的神经网络和基于规则的重构算法完成。此外,DeepBlock 还协同优化算法和深度学习来调节生成分子的属性。实验表明,DeepBlock 在生成配体的亲和性、合成可及性和药物相似性方面优于现有方法。此外,当与以毒性为优化目标的模拟退火或贝叶斯优化相结合时,DeepBlock 能成功生成低毒性配体,同时保持与靶点的亲和性。
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来源期刊
CiteScore
11.70
自引率
0.00%
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