用HMM-SA结构字母表探索治疗靶点:方法、工具和对HIV-2蛋白酶的应用。

IF 3
Anne-Claude Camproux, Marine Baillif, Léa Dufay, Leslie Regad
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引用次数: 0

摘要

可获得的三维蛋白质结构的快速扩展——来自实验技术和生物信息学预测——为药物发现提供了前所未有的机会,特别是对于历史上难以表征的靶标。然而,对这些日益复杂和庞大的结构数据集进行有效分析仍然是一个主要挑战。蛋白质构象的有效表征对于促进大规模比较、结构分类和治疗背景下的功能解释至关重要。结构字母的概念是由Pr S. Hazout在1999年提出的,它提供了一个强大的、可扩展的框架,使用一组有限的重复结构基序来表示局部蛋白质主链构象。这种表示使三维蛋白质结构的一维编码保留了二级结构以外的基本几何特征,同时允许系统和可解释的分析。在这篇综述中,我们关注HMM-SA,一个使用隐马尔可夫模型构建的结构字母表。HMM-SA定义了27个结构基元,包括18个专门用于循环的区域,并捕获了它们之间的统计依赖关系。我们详细概述了HMM-SA框架,以及从该结构字母表衍生的计算工具,这些工具用于探索蛋白质功能、构象变异性和分子识别的结构决定因素。通过HIV-2蛋白酶(PR2)的案例研究说明了HMM-SA的效用,PR2是抗逆转录病毒药物开发中的关键酶。通过分析PR2结构不对称、配体诱导的构象变化和突变驱动的改变,我们强调了基于hmm - sa的方法识别与配体特异性和耐药机制相关的关键结构特征的能力,从而推进了治疗靶点分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring therapeutic targets with the HMM-SA structural alphabet: Methods, tools, and application to HIV-2 protease.

The rapid expansion of available three-dimensional protein structures-derived from both experimental techniques and bioinformatic predictions-offers unprecedented opportunities for drug discovery, particularly for targets that have historically been difficult to characterize. However, the effective analysis of these increasingly complex and voluminous structural datasets remains a major challenge. Efficient representations of protein conformations are essential to facilitate large-scale comparison, structural classification, and functional interpretation in therapeutic contexts. The concept of structural alphabets, introduced by Pr S. Hazout in 1999, provides a robust and scalable framework to represent local protein backbone conformations using a limited set of recurring structural motifs. This representation enables a one-dimensional encoding of three-dimensional protein structures that retains essential geometric features beyond secondary structure, while allowing systematic and interpretable analyses. In this review, we focus on HMM-SA, a structural alphabet constructed using a hidden Markov model. HMM-SA defines 27 structural motifs, including 18 regions specifically dedicated to loops, and captures the statistical dependencies between them. We present a detailed overview of the HMM-SA framework, and of the computational tools derived from this structural alphabet, developed to explore protein function, conformational variability, and the structural determinants of molecular recognition. The utility of HMM-SA is illustrated through a case study on HIV-2 protease (PR2), a critical enzyme in antiretroviral drug development. By analyzing PR2 structural asymmetry, ligand-induced conformational changes, and mutation-driven alterations, we highlight the ability of HMM-SA-based methods to identify key structural features involved in ligand specificity and resistance mechanisms, thereby advancing therapeutic target analysis.

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