首页> 外文期刊>Journal of chemical information and modeling >Constraint network analysis (CNA): A python software package for efficiently linking biomacromolecular structure, flexibility, (thermo-)stability, and function
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Constraint network analysis (CNA): A python software package for efficiently linking biomacromolecular structure, flexibility, (thermo-)stability, and function

机译:约束网络分析(CNA):一个Python软件包,用于有效地链接生物大分子的结构,灵活性,(热)稳定性和功能

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For deriving maximal advantage from information on biomacromolecular flexibility and rigidity, results from rigidity analyses must be linked to biologically relevant characteristics of a structure. Here, we describe the Python-based software package Constraint Network Analysis (CNA) developed for this task. CNA functions as a front-and backend to the graph-based rigidity analysis software FIRST. CNA goes beyond the mere identification of flexible and rigid regions in a biomacromolecule in that it (I) provides a refined modeling of thermal unfolding simulations that also considers the temperature-dependence of hydrophobic tethers, (II) allows performing rigidity analyses on ensembles of network topologies, either generated from structural ensembles or by using the concept of fuzzy noncovalent constraints, and (III) computes a set of global and local indices for quantifying biomacromolecular stability. This leads to more robust results from rigidity analyses and extends the application domain of rigidity analyses in that phase transition points ("melting points") and unfolding nuclei ("structural weak spots") are determined automatically. Furthermore, CNA robustly handles small-molecule ligands in general. Such advancements are important for applying rigidity analysis to data-driven protein engineering and for estimating the influence of ligand molecules on biomacromolecular stability. CNA maintains the efficiency of FIRST such that the analysis of a single protein structure takes a few seconds for systems of several hundred residues on a single core. These features make CNA an interesting tool for linking biomacromolecular structure, flexibility, (thermo-)stability, and function. CNA is available from http://cpclab.uni- duesseldorf.de/software for nonprofit organizations.
机译:为了从生物大分子的柔性和刚度信息中获得最大优势,刚度分析的结果必须与结构的生物学相关特征联系起来。在这里,我们描述了为此任务开发的基于Python的软件包Constraint Network Analysis(CNA)。 CNA充当基于图的刚度分析软件FIRST的前端和后端。 CNA不仅可以识别生物大分子中的柔性区域和刚性区域,还可以(I)提供热展开模拟的精炼模型,该模型还考虑了疏水性系链的温度依赖性,(II)可以对网络集合体进行刚性分析。拓扑结构,无论是从结构整体生成还是通过使用模糊非共价约束的概念生成,并且(III)计算一组全局和局部索引以量化生物大分子的稳定性。这样可以从刚度分析中获得更可靠的结果,并扩展了刚度分析的应用范围,因为可以自动确定相变点(“熔点”)和展开核(“结构弱点”)。此外,CNA通常可以稳固地处理小分子配体。这些进展对于将刚性分析应用于数据驱动的蛋白质工程以及估计配体分子对生物大分子稳定性的影响非常重要。 CNA保持了FIRST的效率,因此对于单个核上有数百个残基的系统,单个蛋白质结构的分析需要花费几秒钟的时间。这些功能使CNA成为连接生物大分子结构,灵活性,(热)稳定性和功能的有趣工具。非营利组织可从http://cpclab.uni- Duesseldorf.de/software获得CNA。

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