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Pocket optimization and its application to identify small-molecule inhibitors of protein-protein interactions.

机译:口袋优化及其在鉴定蛋白质相互作用中的小分子抑制剂中的应用。

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摘要

Because of their ubiquitous nature in many cellular processes, modulating protein-protein interactions offers tremendous therapeutic potential. However, protein-protein interactions remain a difficult class of drug targets, as most protein interaction sites have not evolved to bind small molecules. Indeed, some protein interaction sites are thought to be simply not amenable to binding any small molecule at all. Other sites feature small molecule binding pockets that simply are not present in the unbound or protein-bound conformations, making structure-based drug discovery difficult. Sometimes, inhibitors bind to multiple family members with high affinity, causing toxicity. In this dissertation I seek to address many of these challenges, by developing methodologies to assess the druggability of a target, assess the selectivity of known inhibitors, identify conformations that are sampled uniquely by a single protein, and identify inhibitors of protein-protein interactions.;To assess druggability, I developed the "pocket optimization" protocol which uses a biasing potential to create an ensemble of conformations that contain pockets at a specified location on the protein surface. I showed that low-resolution, low energy inhibitor shapes are encoded at druggable sites and sampled through low-energy fluctuations, whereas they are not present at random sites on protein surfaces.;To assess selectivity and screen for inhibitors, I developed "exemplars", representations of a pocket based on the perfect "non-physical" complementary ligand, allowing the comparison of pocket shapes independent of protein sequence. I predicted the selectivity of an array of inhibitors to a related family of proteins by comparing the exemplars from the known small-molecule bound conformation to the ensemble of exemplars from a "pocket optimized" ensemble. I identified distinct conformations that could be targeted for identifying selective inhibitors de novo by comparing ensembles of exemplars from related family members to one another. Finally, I developed a screening protocol that uses the speed of exemplar versus small molecule comparisons to screen very large compound libraries against ensembles of distinct, "pocket optimized" pocket conformations.
机译:由于它们在许多细胞过程中无处不在,调节蛋白质-蛋白质相互作用提供了巨大的治疗潜力。然而,由于大多数蛋白质相互作用位点尚未进化成能结合小分子,因此蛋白质-蛋白质相互作用仍然是药物靶向的难题。实际上,一些蛋白质相互作用位点被认为根本不适合结合任何小分子。其他位点的特征是小分子结合袋,这些结合袋根本不存在于未结合或与蛋白质结合的构象中,从而使基于结构的药物发现变得困难。有时,抑制剂以高亲和力结合多个家族成员,从而引起毒性。在本文中,我试图通过开发方法来评估靶标的可药性,评估已知抑制剂的选择性,鉴定单个蛋白质唯一采样的构象以及鉴定蛋白质-蛋白质相互作用的抑制剂,来应对许多挑战。 ;为了评估可药物性,我开发了“口袋优化”方案,该方案使用了偏倚潜力来创建构象的整体,这些构象在蛋白质表面上的指定位置包含口袋。我证明了低分辨率,低能量抑制剂的形状在可药物作用的位置进行编码,并通过低能量的波动进行采样,而在蛋白质表面的随机位置却不存在。;为了评估抑制剂的选择性和筛选,我开发了“示例” ,基于完美的“非物理”互补配体的口袋表示,可以比较独立于蛋白质序列的口袋形状。通过比较已知小分子结合构象的示例与“口袋优化”集成的示例集合,我预测了一系列抑制剂对相关蛋白质家族的选择性。我通过比较相关家族成员的样例,发现了可用于识别从头选择性抑制剂的独特构象。最后,我开发了一种筛选方案,该方案使用示例性分子与小分子分子的比较速度来筛选非常大的化合物文库,以针对不同的,“口袋优化”的口袋构象。

著录项

  • 作者

    Johnson, David Keith.;

  • 作者单位

    University of Kansas.;

  • 授予单位 University of Kansas.;
  • 学科 Bioinformatics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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