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基于高模糊度驱动对接的蛋白质-小分子复合物的形状约束建模。

Shape-Restrained Modeling of Protein-Small-Molecule Complexes with High Ambiguity Driven DOCKing.

机构信息

Computational Structural Biology Group, Department of Chemistry, Faculty of Science, Utrecht University, Utrecht 3584CH, The Netherlands.

出版信息

J Chem Inf Model. 2021 Sep 27;61(9):4807-4818. doi: 10.1021/acs.jcim.1c00796. Epub 2021 Aug 26.

Abstract

Small-molecule docking remains one of the most valuable computational techniques for the structure prediction of protein-small-molecule complexes. It allows us to study the interactions between compounds and the protein receptors they target at atomic detail in a timely and efficient manner. Here, we present a new protocol in HADDOCK (High Ambiguity Driven DOCKing), our integrative modeling platform, which incorporates homology information for both receptor and compounds. It makes use of HADDOCK's unique ability to integrate information in the simulation to drive it toward conformations, which agree with the provided data. The focal point is the use of shape restraints derived from homologous compounds bound to the target receptors. We have developed two protocols: in the first, the shape is composed of dummy atom beads based on the position of the heavy atoms of the homologous template compound, whereas in the second, the shape is additionally annotated with pharmacophore data for some or all beads. For both protocols, ambiguous distance restraints are subsequently defined between those beads and the heavy atoms of the ligand to be docked. We have benchmarked the performance of these protocols with a fully unbound version of the widely used DUD-E (Database of Useful Decoys-Enhanced) dataset. In this unbound docking scenario, our template/shape-based docking protocol reaches an overall success rate of 81% when a reliable template can be identified (which was the case for 99 out of 102 complexes in the DUD-E dataset), which is close to the best results reported for bound docking on the DUD-E dataset.

摘要

小分子对接仍然是蛋白质-小分子复合物结构预测最有价值的计算技术之一。它使我们能够及时有效地研究化合物与它们靶向的蛋白质受体之间的相互作用,达到原子细节的程度。在这里,我们在 HADDOCK(高模糊度驱动对接)中提出了一种新的方案,这是我们的集成建模平台,它整合了受体和化合物的同源信息。它利用 HADDOCK 独特的能力,将模拟中的信息整合起来,引导模拟朝着与提供数据一致的构象发展。重点是利用源自与靶受体结合的同源化合物的形状约束。我们开发了两种方案:在第一种方案中,形状由基于同源模板化合物重原子位置的虚拟原子珠组成,而在第二种方案中,形状还额外标注了部分或全部珠子的药效团数据。对于这两种方案,随后在这些珠子和待对接配体的重原子之间定义了模糊距离约束。我们使用广泛使用的 DUD-E(有用诱饵增强数据库)数据集的完全未结合版本对这些方案的性能进行了基准测试。在这种未结合对接场景中,当可以识别可靠的模板时(在 DUD-E 数据集中的 102 个复合物中有 99 个是这种情况),我们的模板/形状对接方案的总体成功率达到 81%,接近在 DUD-E 数据集上报告的绑定对接的最佳结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2cf7/8479858/4d493a763265/ci1c00796_0002.jpg

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