片段屏蔽分子优化

Kun Li, Xiantao Cai, Jia Wu, Bo Du, Wenbin Hu
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引用次数: 0

摘要

分子优化是药物发现的一个重要方面,其目的是完善分子结构,提高药物疗效,减少副作用,最终加快整个药物开发过程。目前已提出了许多基于靶点的分子优化方法,大大促进了药物发现。然而,可用靶点数量有限和难以捕捉清晰结构等挑战阻碍了创新药物的开发。与此相反,表型药物发现(PDD)并不依赖于明确的靶点结构,它可以发现具有新颖且无偏见的多药理学特征的药物。因此,基于 PDD 的分子优化可以降低潜在的安全风险,同时优化表型活性,从而提高临床成功的可能性。因此,我们提出了一种基于 PDD 的片段掩蔽分子优化方法(FMOP)。FMOP 采用无回归扩散模型,在不进行训练的情况下对分子掩蔽区域进行条件优化,从而有效地生成具有相似褶皱的新分子。在大规模药物反应数据集 GDSCv2 上,我们优化了所有 945 个细胞系的潜在分子。总的实验结果表明,在实验室内优化的成功率达到了 94.4%,平均疗效提高了 5.3%。此外,我们还进行了大量的消融和可视化实验,证实 FMOP 是一种有效而稳健的分子优化方法。代码见 https://anonymous.4open.science/r/FMOP-98C2。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fragment-Masked Molecular Optimization
Molecular optimization is a crucial aspect of drug discovery, aimed at refining molecular structures to enhance drug efficacy and minimize side effects, ultimately accelerating the overall drug development process. Many target-based molecular optimization methods have been proposed, significantly advancing drug discovery. These methods primarily on understanding the specific drug target structures or their hypothesized roles in combating diseases. However, challenges such as a limited number of available targets and a difficulty capturing clear structures hinder innovative drug development. In contrast, phenotypic drug discovery (PDD) does not depend on clear target structures and can identify hits with novel and unbiased polypharmacology signatures. As a result, PDD-based molecular optimization can reduce potential safety risks while optimizing phenotypic activity, thereby increasing the likelihood of clinical success. Therefore, we propose a fragment-masked molecular optimization method based on PDD (FMOP). FMOP employs a regression-free diffusion model to conditionally optimize the molecular masked regions without training, effectively generating new molecules with similar scaffolds. On the large-scale drug response dataset GDSCv2, we optimize the potential molecules across all 945 cell lines. The overall experiments demonstrate that the in-silico optimization success rate reaches 94.4%, with an average efficacy increase of 5.3%. Additionally, we conduct extensive ablation and visualization experiments, confirming that FMOP is an effective and robust molecular optimization method. The code is available at:https://anonymous.4open.science/r/FMOP-98C2.
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