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Ultra-High-Throughput Structure-Based Virtual Screening for Small Molecule Inhibitors of Protein-Protein Interactions

机译:基于超高通量结构的蛋白质-蛋白质相互作用的小分子抑制剂的虚拟筛选。

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Protein-protein interactions play important roles in virtually all cellular processes, making them enticing targets for modulation by small-molecule therapeutics: specific examples have been well validated in diseases ranging from cancer and autoimmune disorders, to bacterial and viral infections. Despite several notable successes, however, overall these remain a very challenging target class. Protein interaction sites are especially challenging for computational approaches, because the target protein surface often undergoes a conformational change to enable ligand binding: this confounds traditional approaches for virtual screening. Through previous studies, we demonstrated that biased "pocket optimization" simulations could be used to build collections of low-energy pocket-containing conformations, starting from an unbound protein structure. Here, we demonstrate that these pockets can further be used to identify ligands that complement the protein surface. To do so, we first build from a given pocket its "exemplar": a perfect, but nonphysical, pseudoligand that would optimally match the shape and chemical features of the pocket. In our previous studies, we used these exemplars to quantitatively compare protein surface pockets to one another. Here, we now introduce this exemplar as a template for pharmacophore-based screening of chemical libraries. Through a series of benchmark experiments, we demonstrate that this approach exhibits comparable performance as traditional docking methods for identifying known inhibitors acting at protein interaction sites. However, because this approach is predicated on ligand/exemplar overlays, and thus does not require explicit calculation of protein-ligand interactions, exemplar screening provides a tremendous speed advantage over docking: 6 million compounds can be screened in about 15 min on a single 16-core, dual-GPU computer. The extreme speed at which large compound libraries can be traversed easily enables screening against a "pocket-optimized" ensemble of protein conformations, which in turn facilitates identification of more diverse classes of active compounds for a given protein target.
机译:蛋白质-蛋白质相互作用实际上在所有细胞过程中均起着重要作用,使其成为诱使小分子治疗药物进行调节的靶标:在从癌症和自身免疫性疾病到细菌和病毒感染等多种疾病中,特定实例已得到充分验证。尽管取得了一些显著成功,但总体而言,这些仍然是一个非常具有挑战性的目标类别。蛋白质相互作用位点对于计算方法尤其具有挑战性,因为目标蛋白质表面经常经历构象变化以实现配体结合:这混淆了虚拟筛选的传统方法。通过先前的研究,我们证明了有偏见的“口袋优化”模拟可用于从无结合的蛋白质结构开始构建低能量的口袋含构象的集合。在这里,我们证明了这些口袋可以进一步用于鉴定与蛋白质表面互补的配体。为此,我们首先从给定的口袋中构建其“示例”:一种完美但非物理的伪配体,可以最佳地匹配口袋的形状和化学特征。在我们以前的研究中,我们使用这些示例对蛋白质表面口袋进行了定量比较。在这里,我们现在介绍该示例作为基于药效团筛选化学文库的模板。通过一系列基准实验,我们证明了该方法具有与传统对接方法相当的性能,可用于识别作用于蛋白质相互作用位点的已知抑制剂。但是,由于该方法基于配体/示例性覆盖层,因此不需要显式计算蛋白质-配体相互作用,因此示例筛选比对接具有巨大的速度优势:一次仅需16分钟即可在大约15分钟内筛选出600万种化合物核双GPU计算机。可以轻松遍历大型化合物库的极快速度,可以筛选出“口袋优化”的蛋白质构象集合,从而有利于鉴定给定蛋白质靶标的更多种类的活性化合物。

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