PharmRL:基于深度几何强化学习的药效团解析。

IF 4.4 1区 生物学 Q1 BIOLOGY BMC Biology Pub Date : 2024-12-31 DOI:10.1186/s12915-024-02096-5
Rishal Aggarwal, David R Koes
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引用次数: 0

摘要

背景:蛋白质及其配体之间的分子相互作用对药物设计非常重要。药效团由蛋白质结合位点的有利分子相互作用组成,可用于虚拟筛选。药物载体最容易从结合的蛋白质-配体复合物的共晶结构中识别。然而,在没有配体的情况下设计药效团是一项艰巨得多的任务。结果:在这项工作中,我们开发了一种深度学习方法,可以在没有配体的情况下识别药效团。具体来说,我们训练了一个CNN模型来识别结合位点上潜在的有利相互作用,并开发了一个深度几何q -学习算法,试图选择这些相互作用点的最佳子集来形成药效团。与从共晶结构中随机选择配体识别的特征相比,该算法在ddu - e数据集上显示出更好的前瞻性虚拟筛选性能。我们还在LIT-PCBA数据集上进行了实验,表明它为识别活性分子提供了有效的解决方案。最后,我们通过筛选COVID moonshot数据集来测试我们的方法,并表明即使在没有片段筛选实验的情况下,该方法也可以有效地识别潜在的先导分子。结论:PharmRL解决了药效团设计中自动化方法的需求,特别是在同源配体不可用的情况下。实验结果表明,PharmRL可产生功能性药效团。此外,我们提供了一个谷歌Colab笔记本,以方便使用这种方法。
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PharmRL: pharmacophore elucidation with deep geometric reinforcement learning.

Background: Molecular interactions between proteins and their ligands are important for drug design. A pharmacophore consists of favorable molecular interactions in a protein binding site and can be utilized for virtual screening. Pharmacophores are easiest to identify from co-crystal structures of a bound protein-ligand complex. However, designing a pharmacophore in the absence of a ligand is a much harder task.

Results: In this work, we develop a deep learning method that can identify pharmacophores in the absence of a ligand. Specifically, we train a CNN model to identify potential favorable interactions in the binding site, and develop a deep geometric Q-learning algorithm that attempts to select an optimal subset of these interaction points to form a pharmacophore. With this algorithm, we show better prospective virtual screening performance, in terms of F1 scores, on the DUD-E dataset than random selection of ligand-identified features from co-crystal structures. We also conduct experiments on the LIT-PCBA dataset and show that it provides efficient solutions for identifying active molecules. Finally, we test our method by screening the COVID moonshot dataset and show that it would be effective in identifying prospective lead molecules even in the absence of fragment screening experiments.

Conclusions: PharmRL addresses the need for automated methods in pharmacophore design, particularly in cases where a cognate ligand is unavailable. Experimental results demonstrate that PharmRL generates functional pharmacophores. Additionally, we provide a Google Colab notebook to facilitate the use of this method.

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来源期刊
BMC Biology
BMC Biology 生物-生物学
CiteScore
7.80
自引率
1.90%
发文量
260
审稿时长
3 months
期刊介绍: BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.
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