Is there a unified model for generating molecules considering different conditions, such as binding pockets and chemical properties? Although target-aware generative models have made significant advances in drug design, they do not consider chemistry conditions and cannot guarantee the desired chemical properties. Unfortunately, merging the target-aware and chemical-aware models into a unified model to meet customized requirements may lead to the problem of negative transfer. Inspired by the success of multi-task learning in the NLP area, we use prefix embeddings to provide a novel generative model that considers both the targeted pocket's circumstances and a variety of chemical properties. All conditional information is represented as learnable features, which the generative model subsequently employs as a contextual prompt. Experiments show that our model exhibits good controllability in both single and multi-conditional molecular generation. The controllability enables us to outperform previous structure-based drug design methods. More interestingly, we open up the attention mechanism and reveal coupling relationships between conditions, providing guidance for multi-conditional molecule generation.
翻译:· 尽管目标认知基因模型在药物设计方面取得了显著进步,但它们并不考虑化学条件,也不能保证理想的化学特性。不幸的是,将目标认知模型和化学意识模型合并成一个统一的模型,以满足定制要求,可能导致负转移问题。由于在NLP地区多任务学习的成功,我们利用前置嵌入模型提供一个新的基因模型,既考虑到目标口袋的情况,又考虑到各种化学特性。所有有条件的信息都作为可学习的特征,而基因模型随后又作为背景的提示使用。实验表明,我们的模型在单一和多条件分子生成中都表现出良好的可控制性。控制性使我们能够超越以往基于结构的药物设计方法。更有意思的是,我们打开了关注机制,并揭示了各种条件之间的联动关系,为多条件分子生成提供了指导。