基于现场的虚拟筛选:增加潜在客户化学多样性的新趋势

A. Deplano, Javier Vázquez, Albert Herrero, Enric Gibert, E. Herrero, F. Luque
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引用次数: 0

摘要

计算化学方法通过筛选不合适的候选物质和发现新的化学物质,可以显著降低药物开发项目早期的实验成本。分子定位是化合物之间三维相似性评价和药效团解析的关键先决条件。基于优化的类药物分子的最大可实现结合亲和力的变化主要是由于脱溶的假设,我们在此探索了一种新的小分子3D定位策略,该策略利用分子疏水性划分为原子贡献,并结合每个化合物中氢键供体/受体基团分布的信息。简要介绍了该方法,并在软件包PharmScreen中实现。计算过程通过使用来自文献的属于14个不同靶点的402个分子数据集进行校准,并针对CCDC阿斯利康121个实验衍生分子覆盖的测试集进行验证。结果证实了基于MST的疏水参数对生成分子叠加的适用性,分别对100%、93%和55%的易、中、难分类分子得到了正确的预测。该工具在药物发现活动中的潜力随后在回顾性研究中进行评估,目的是评估一系列sigma-1受体配体的活性和相似性评分之间的相关性。结果证实了该工具用于药物发现目的的适用性,在排名的Q1中发现67%的最活性配体(≤10 nM)和第5位最活性的化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Field-based virtual screening: New trends to increase the chemical diversity of your leads
Computational chemistry methods can significantly reduce experimental costs in early stages of a drug development project by filtering out unsuitable candidates and discovering new chemical matter. Molecular alignment is a key pre-requisite for 3D similarity evaluation between compounds and pharmacophore elucidation. Relying on the hypothesis that the variation in maximal achievable binding affinity for an optimized drug-like molecule is largely due to desolvation, we explore herein a novel small molecule 3D alignment strategy that exploits the partitioning of molecular hydrophobicity into atomic contributions in conjunction with information about the distribution of hydrogen-bond donor/acceptor groups in each compound. A brief description of the method, as implemented in the software package PharmScreen, is presented. The computational procedure is calibrated by using a dataset of 402 molecules pertaining to 14 distinct targets taken from the literature and validated against the CCDC AstraZeneca test set of 121 experimentally derived molecular overlays. The results confirm the suitability of MST based-hydrophobic parameters for generating molecular overlays with correct predictions obtained for 100%, 93%, and 55% of the molecules classified into easy, moderate and hard sets, respectively. The potential of this tool in a drug discovery campaign is then evaluated in a retrospective study with the aim to evaluate the correlations between activities and similarity score of a series of sigma-1 receptor ligands. The results confirm the suitability of the tool for Drug Discovery purposes finding the 67% of the most active ligands (≤10 nM) in Q1 of the ranking and the most active compound in position five.
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