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Combining Charge Density Analysis with Machine Learning Tools To Investigate the Cruzain Inhibition Mechanism

机译:将电荷密度分析与机器学习工具相结合以研究克鲁萨因抑制机制

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Trypanosoma cruzi, a flagellate protozoan parasite, is responsible for Chagas disease. The parasite major cysteine protease, cruzain (Cz), plays a vital role at every stage of its life cycle and the active-site region of the enzyme, similar to those of other members of the papain superfamily, is well characterized. Taking advantage of structural information available in public databases about Cz bound to known covalent inhibitors, along with their corresponding activity annotations, in this work, we performed a deep analysis of the molecular interactions at the Cz binding cleft, in order to investigate the enzyme inhibition mechanism. Our toolbox for performing this study consisted of the charge density topological analysis of the complexes to extract the molecular interactions and machine learning classification models to relate the interactions with biological activity. More precisely, such a combination was useful for the classification of molecular interactions as “active-like” or “inactive-like” according to whether they are prevalent in the most active or less active complexes, respectively. Further analysis of interactions with the help of unsupervised learning tools also allowed the understanding of how these interactions come into play together to trigger the enzyme into a particular conformational state. Most active inhibitors induce some conformational changes within the enzyme that lead to an overall better fit of the inhibitor into the binding cleft. Curiously, some of these conformational changes can be considered as a hallmark of the substrate recognition event, which means that most active inhibitors are likely recognized by the enzyme as if they were its own substrate so that the catalytic machinery is arranged as if it is about to break the substrate scissile bond. Overall, these results contribute to a better understanding of the enzyme inhibition mechanism. Moreover, the information about main interactions extracted through this work is already being used in our lab to guide docking solutions in ongoing prospective virtual screening campaigns to search for novel noncovalent cruzain inhibitors.
机译:鞭毛原生动物寄生虫克氏锥虫是南美锥虫病的病因。寄生虫主要的半胱氨酸蛋白酶克鲁萨因(Cz)在其生命周期的每个阶段都起着至关重要的作用,并且与木瓜蛋白酶超家族其他成员相似,该酶的活性位点区域也得到了很好的表征。利用公共数据库中有关与已知共价抑制剂结合的Cz的结构信息及其相应的活性注释,在这项工作中,我们对Cz结合裂隙处的分子相互作用进行了深入分析,以研究酶的抑制作用机制。我们进行这项研究的工具箱包括对复合物的电荷密度拓扑分析以提取分子相互作用,以及将相互作用与生物活性相关联的机器学习分类模型。更精确地,根据分别在活性最高或活性最低的复合物中普遍存在的情况,这种组合对于将分子相互作用分类为“活性样”或“非活性样”是有用的。在无监督学习工具的帮助下,对相互作用的进一步分析也使人们了解了这些相互作用如何共同发挥作用,从而将酶触发为特定的构象状态。大多数活性抑制剂会引起酶内某些构象变化,从而使抑制剂总体上更好地适合于结合裂隙。奇怪的是,这些构象变化中的一些可以看作是底物识别事件的标志,这意味着大多数活性抑制剂很可能被酶识别,就像它们是其自身底物一样,因此催化机制的排列就好像是破坏基板的易裂键。总体而言,这些结果有助于更好地理解酶抑制机制。此外,通过这项工作提取的有关主要相互作用的信息已在我们的实验室中用于指导正在进行的前瞻性虚拟筛选活动中的对接解决方案,以寻找新型的非共价克鲁萨因抑制剂。

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