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细胞色素P450酶中集成体生成及蛋白质柔性对几何隧道预测的影响

Ensemble generation and the influence of protein flexibility on geometric tunnel prediction in cytochrome P450 enzymes.

作者信息

Kingsley Laura J, Lill Markus A

机构信息

Department of Medicinal Chemistry and Molecular Pharmacology, College of Pharmacy, Purdue University, West Lafayette, Indiana, United States of America.

出版信息

PLoS One. 2014 Jun 23;9(6):e99408. doi: 10.1371/journal.pone.0099408. eCollection 2014.

Abstract

Computational prediction of ligand entry and egress paths in proteins has become an emerging topic in computational biology and has proven useful in fields such as protein engineering and drug design. Geometric tunnel prediction programs, such as Caver3.0 and MolAxis, are computationally efficient methods to identify potential ligand entry and egress routes in proteins. Although many geometric tunnel programs are designed to accommodate a single input structure, the increasingly recognized importance of protein flexibility in tunnel formation and behavior has led to the more widespread use of protein ensembles in tunnel prediction. However, there has not yet been an attempt to directly investigate the influence of ensemble size and composition on geometric tunnel prediction. In this study, we compared tunnels found in a single crystal structure to ensembles of various sizes generated using different methods on both the apo and holo forms of cytochrome P450 enzymes CYP119, CYP2C9, and CYP3A4. Several protein structure clustering methods were tested in an attempt to generate smaller ensembles that were capable of reproducing the data from larger ensembles. Ultimately, we found that by including members from both the apo and holo data sets, we could produce ensembles containing less than 15 members that were comparable to apo or holo ensembles containing over 100 members. Furthermore, we found that, in the absence of either apo or holo crystal structure data, pseudo-apo or -holo ensembles (e.g. adding ligand to apo protein throughout MD simulations) could be used to resemble the structural ensembles of the corresponding apo and holo ensembles, respectively. Our findings not only further highlight the importance of including protein flexibility in geometric tunnel prediction, but also suggest that smaller ensembles can be as capable as larger ensembles at capturing many of the protein motions important for tunnel prediction at a lower computational cost.

摘要

蛋白质中配体进出路径的计算预测已成为计算生物学中的一个新兴课题,并已在蛋白质工程和药物设计等领域证明是有用的。几何隧道预测程序,如Caver3.0和MolAxis,是识别蛋白质中潜在配体进出途径的计算高效方法。尽管许多几何隧道程序设计用于处理单个输入结构,但蛋白质灵活性在隧道形成和行为中的重要性日益得到认可,这导致在隧道预测中更广泛地使用蛋白质集合。然而,尚未有人尝试直接研究集合大小和组成对几何隧道预测的影响。在本研究中,我们将在细胞色素P450酶CYP119、CYP2C9和CYP3A4的无配体和有配体形式上,使用不同方法生成的不同大小的集合与单晶结构中发现的隧道进行了比较。测试了几种蛋白质结构聚类方法,试图生成能够重现来自较大集合数据的较小集合。最终,我们发现通过包含无配体和有配体数据集的成员,我们可以生成包含少于15个成员的集合,这些集合与包含超过100个成员的无配体或有配体集合相当。此外,我们发现,在没有无配体或有配体晶体结构数据的情况下,伪无配体或有配体集合(例如在整个分子动力学模拟过程中向无配体蛋白质添加配体)可分别用于模拟相应无配体和有配体集合的结构集合。我们的发现不仅进一步强调了在几何隧道预测中纳入蛋白质灵活性的重要性,还表明较小的集合在以较低的计算成本捕获许多对隧道预测重要的蛋白质运动方面,与较大的集合一样有能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/92b8/4067289/4babcf7cef3b/pone.0099408.g001.jpg

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