发现多靶点配体的硅管道:基于DNMT1/HDAC2抑制的外源性多药理学案例研究

Fernando D. Prieto-Martínez , Eli Fernández-de Gortari , José L. Medina-Franco , L. Michel Espinoza-Fonseca
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引用次数: 3

摘要

由于药物开发过程耗时和昂贵的性质以及低成功率,寻找新的治疗化合物仍然是一项艰巨的任务。依靠一种药物-一种靶点范式的传统方法已被证明不足以治疗多因素疾病,导致向多靶点方法的转变。在这个新出现的范例中,具有脱靶和混杂相互作用的分子可能导致首选治疗。在本研究中,我们开发了一种结合机器学习算法和深度生成器网络的通用管道,以训练能够识别假定药效性状的双抑制剂分类器。作为一个案例研究,我们重点研究了靶向DNA甲基转移酶1 (DNMT)和组蛋白去乙酰化酶2 (HDAC2)的双重抑制剂,这两种酶在表观遗传调控中起着核心作用。我们使用这种方法从公共领域的一个新的大型天然产物数据库中识别双重抑制剂。我们使用对接和原子模拟作为互补的方法来建立最佳命中与DNMT1/HDAC2之间的配体相互作用谱。通过结合基于配体和结构的方法,我们发现了两种有希望的新型支架,可以同时靶向DNMT1和HDAC2。我们的结论是,所提出的管道的灵活性和适应性具有类似或衍生方法的预测能力,并且很容易适用于发现靶向许多其他治疗相关蛋白质的小分子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An in silico pipeline for the discovery of multitarget ligands: A case study for epi-polypharmacology based on DNMT1/HDAC2 inhibition

An in silico pipeline for the discovery of multitarget ligands: A case study for epi-polypharmacology based on DNMT1/HDAC2 inhibition

The search for novel therapeutic compounds remains an overwhelming task owing to the time-consuming and expensive nature of the drug development process and low success rates. Traditional methodologies that rely on the one drug-one target paradigm have proven insufficient for the treatment of multifactorial diseases, leading to a shift to multitarget approaches. In this emerging paradigm, molecules with off-target and promiscuous interactions may result in preferred therapies. In this study, we developed a general pipeline combining machine learning algorithms and a deep generator network to train a dual inhibitor classifier capable of identifying putative pharmacophoric traits. As a case study, we focused on dual inhibitors targeting DNA methyltransferase 1 (DNMT) and histone deacetylase 2 (HDAC2), two enzymes that play a central role in epigenetic regulation. We used this approach to identify dual inhibitors from a novel large natural product database in the public domain. We used docking and atomistic simulations as complementary approaches to establish the ligand-interaction profiles between the best hits and DNMT1/HDAC2. By using the combined ligand- and structure-based approaches, we discovered two promising novel scaffolds that can be used to simultaneously target both DNMT1 and HDAC2. We conclude that the flexibility and adaptability of the proposed pipeline has predictive capabilities of similar or derivative methods and is readily applicable to the discovery of small molecules targeting many other therapeutically relevant proteins.

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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
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