Large-scale annotation of biochemically relevant pockets and tunnels in cognate enzyme–ligand complexes

IF 7.1 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
O. Vavra, J. Tyzack, F. Haddadi, J. Stourac, J. Damborsky, S. Mazurenko, J. M. Thornton, D. Bednar
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引用次数: 0

Abstract

Tunnels in enzymes with buried active sites are key structural features allowing the entry of substrates and the release of products, thus contributing to the catalytic efficiency. Targeting the bottlenecks of protein tunnels is also a powerful protein engineering strategy. However, the identification of functional tunnels in multiple protein structures is a non-trivial task that can only be addressed computationally. We present a pipeline integrating automated structural analysis with an in-house machine-learning predictor for the annotation of protein pockets, followed by the calculation of the energetics of ligand transport via biochemically relevant tunnels. A thorough validation using eight distinct molecular systems revealed that CaverDock analysis of ligand un/binding is on par with time-consuming molecular dynamics simulations, but much faster. The optimized and validated pipeline was applied to annotate more than 17,000 cognate enzyme–ligand complexes. Analysis of ligand un/binding energetics indicates that the top priority tunnel has the most favourable energies in 75% of cases. Moreover, energy profiles of cognate ligands revealed that a simple geometry analysis can correctly identify tunnel bottlenecks only in 50% of cases. Our study provides essential information for the interpretation of results from tunnel calculation and energy profiling in mechanistic enzymology and protein engineering. We formulated several simple rules allowing identification of biochemically relevant tunnels based on the binding pockets, tunnel geometry, and ligand transport energy profiles.

Scientific contributions

The pipeline introduced in this work allows for the detailed analysis of a large set of protein–ligand complexes, focusing on transport pathways. We are introducing a novel predictor for determining the relevance of binding pockets for tunnel calculation. For the first time in the field, we present a high-throughput energetic analysis of ligand binding and unbinding, showing that approximate methods for these simulations can identify additional mutagenesis hotspots in enzymes compared to purely geometrical methods. The predictor is included in the supplementary material and can also be accessed at https://github.com/Faranehhad/Large-Scale-Pocket-Tunnel-Annotation.git. The tunnel data calculated in this study has been made publicly available as part of the ChannelsDB 2.0 database, accessible at https://channelsdb2.biodata.ceitec.cz/.

大规模注释同源酶配体中的生化相关口袋和隧道
具有埋藏活性位点的酶中的隧道是允许底物进入和产物释放的关键结构特征,因此有助于提高催化效率。瞄准蛋白质隧道的瓶颈也是一种强大的蛋白质工程策略。然而,在多个蛋白质结构中识别功能性隧道是一项非同小可的任务,只能通过计算来解决。我们介绍了一种集成了自动结构分析和内部机器学习预测器的管道,用于注释蛋白质口袋,然后计算配体通过生化相关隧道运输的能量。使用八个不同的分子系统进行的全面验证表明,CaverDock 对配体解除/结合的分析与耗时的分子动力学模拟相当,但速度更快。经过优化和验证的管道被用于注释 17,000 多个同源酶配体复合物。配体解除/结合能量分析表明,在 75% 的情况下,最优先隧道具有最有利的能量。此外,同源配体的能量曲线显示,简单的几何分析只能在 50% 的情况下正确识别隧道瓶颈。我们的研究为解释机理酶学和蛋白质工程中隧道计算和能量剖析的结果提供了重要信息。我们制定了几条简单的规则,允许根据结合口袋、隧道几何形状和配体运输能量曲线识别与生物化学相关的隧道。 科学贡献这项工作中引入的管道可对大量蛋白质配体复合物进行详细分析,重点关注运输途径。我们引入了一种新颖的预测方法,用于确定结合口袋与隧道计算的相关性。在这一领域,我们首次提出了配体结合和解除结合的高通量能量分析,表明与纯粹的几何方法相比,这些模拟的近似方法可以发现酶中更多的诱变热点。预测器包含在补充材料中,也可通过 https://github.com/Faranehhad/Large-Scale-Pocket-Tunnel-Annotation.git 访问。本研究中计算的隧道数据已作为 ChannelsDB 2.0 数据库的一部分公开发布,访问网址为 https://channelsdb2.biodata.ceitec.cz/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Cheminformatics
Journal of Cheminformatics CHEMISTRY, MULTIDISCIPLINARY-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
14.10
自引率
7.00%
发文量
82
审稿时长
3 months
期刊介绍: Journal of Cheminformatics is an open access journal publishing original peer-reviewed research in all aspects of cheminformatics and molecular modelling. Coverage includes, but is not limited to: chemical information systems, software and databases, and molecular modelling, chemical structure representations and their use in structure, substructure, and similarity searching of chemical substance and chemical reaction databases, computer and molecular graphics, computer-aided molecular design, expert systems, QSAR, and data mining techniques.
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