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Cosolvent-Enhanced Sampling and Unbiased Identification of Cryptic Pockets Suitable for Structure-Based Drug Design

机译:增强增强的采样和适用于基于结构的药物设计的神秘袋的无偏识别

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摘要

Modulating protein activity with small-molecules binding to cryptic pockets offers great opportunities to overcome hurdles in drug design. Cryptic sites are atypical binding sites in proteins that are closed in the absence of a stabilizing ligand and are thus inherently difficult to identify. Many studies have proposed methods to predict cryptic sites. However, a general approach to prospectively sample open conformations of these sites and to identify cryptic pockets in an unbiased manner suitable for structure-based drug design remains elusive. Here, we describe an all-atom, explicit cosolvent, molecular dynamics (MD) simulations-based workflow to sample the open states of cryptic sites and identify opened pockets, in a manner that does not require a priori knowledge about these sites. Furthermore, the workflow relies on a target-independent parametrization that only distinguishes between binding pockets for peptides or small molecules. We validated our approach on a diverse test set of seven proteins with crystallographically determined cryptic sites. The known cryptic sites were found among the three highest-ranked predicted cryptic sites, and an open site conformation was sampled and selected for most of the systems. Crystallographic ligand poses were well reproduced by docking into these identified open conformations for five of the systems. When the fully open state could not be reproduced, we were still able to predict the location of the cryptic site, or identify other cryptic sites that could be retrospectively validated with knowledge of the protein target. These characteristics render our approach valuable for investigating novel protein targets without any prior information.
机译:调节蛋白质活性与小分子与神秘的袋子结合,提供了克服药物设计障碍的机会。隐秘位点是在没有稳定配体的情况下关闭的蛋白质中的非典型结合位点,因此本身难以识别。许多研究提出了预测隐秘网站的方法。然而,一种普遍的方法来预期对这些位点进行打开的打开构象,并以适用于基于结构的药物设计的无偏见方式识别隐蔽口袋仍然难以捉摸。在这里,我们描述了一种全原子,显式的宇宙,分子动态(MD)模拟的工作流程,以采样隐藏网站的开放状态,并以不需要对这些网站的先验知识的方式识别开放的口袋。此外,工作流程依赖于目标无关的参数化,其仅区分肽或小分子的粘合袋。我们验证了我们在多样化的七种蛋白质的多样化测试组中的方法,具有晶形确定的隐蔽位点。在三个最高排名最高的预测隐秘网站中发现了已知的隐秘位点,并对大多数系统进行采样并选择开放的现场构象。通过对接到其中五种系统的这些鉴定的开放构象,结晶配体姿势良好再现。当无法再现完全打开状态时,我们仍然能够预测隐秘网站的位置,或识别可以通过了解蛋白质目标的知识来回顾性验证的其他隐秘网站。这些特征使我们的方法能够在没有任何先前信息的情况下调查新型蛋白质目标。

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