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Scope of 3D Shape-Based Approaches in Predicting the Macromolecular Targets of Structurally Complex Small Molecules Including Natural Products and Macrocyclic Ligands

机译:基于3D形状的方法的范围预测结构复杂的小分子的大分子靶标,包括天然产物和大环配体

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A plethora of similarity-based, network-based, machine learning, docking and hybrid approaches for predicting the macromolecular targets of small molecules are available today and recognized as valuable tools for providing guidance in early drug discovery. With the increasing maturity of target prediction methods, researchers have started to explore ways to expand their scope to more challenging molecules such as structurally complex natural products and macrocyclic small molecules. In this work, we systematically explore the capacity of an alignment-based approach to identify the targets of structurally complex small molecules (including large and flexible natural products and macrocyclic compounds) based on the similarity of their 3D molecular shape to noncomplex molecules (i.e., more conventional, "drug-like", synthetic compounds). For this analysis, query sets of 10 representative, structurally complex molecules were compiled for each of the 28 pharmaceutically relevant proteins. Subsequently, ROCS, a leading shape-based screening engine, was utilized to generate rank-ordered lists of the potential targets of the 28 X 10 queries according to the similarity of their 3D molecular shapes with those of compounds from a knowledge base of 272 640 noncomplex small molecules active on a total of 3642 different proteins. Four of the scores implemented in ROCS were explored for target ranking, with the TanimotoCombo score consistently outperforming all others. The score successfully recovered the targets of 30% and 41% of the 280 queries among the top-5 and top-20 positions, respectively. For 24 out of the 28 investigated targets (86%), the method correctly assigned the first rank (out of 3642) to the target of interest for at least one of the 10 queries. The shape-based target prediction approach showed remarkable robustness, with good success rates obtained even for compounds that are clearly distinct from any of the ligands present in the knowledge base. However, complex natural products and macrocyclic compounds proved to be challenging even with this approach, although cases of complete failure were recorded only for a small number of targets.
机译:今天可以获得一种基于类似的基于网络,基于网络的,基于网络的机器学习,对接和杂化方法,用于预测小分子的大分子目标,并被认为是在早期药物发现中提供指导的宝贵工具。随着目标预测方法的增加,研究人员已经开始探讨将其范围扩展到更具挑战性的分子,例如结构复杂的天然产物和大环小分子。在这项工作中,我们系统地探讨了基于对准的方法的能力,以基于其3D分子形状与非复杂分子的相似性(即,更常规,“药物状”,合成化合物)。对于该分析,为28个药学上相关的蛋白中的每一个编制10个代表性,结构复杂分子的查询组。随后,利用来自基于领先的基于形状的屏蔽发动机的ROCS根据其3D分子形状与来自知识库的3D分子形状的相似性产生28×10查询的势目标的级别靶标的列表。非复杂的小分子总共有效3642种不同的蛋白质。在Rocs中实施的四个分数用于目标排名,Tanimotocoombo评分始终表现出所有其他人。分数分别成功地恢复了前5个和前20个职位中280个查询的30%和41%的目标。对于24个调查的目标(86%)中的24个,该方法将第一个等级(以3642)正确分配给10个查询中的至少一个的目标目标。基于形状的靶预测方法显示出显着的稳健性,即使对于明显不同于知识库中存在的任何配体,也可以获得良好的成功率。然而,即使使用这种方法,复杂的天然产物和大环化合物也被证明是挑战,尽管仅为少量目标记录完全失败的情况。

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