基于Graph_Robot的MagRO_NMRViewJ固态核磁共振数据分析:膜蛋白和淀粉样蛋白的应用。

IF 3.3 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Naohiro Kobayashi , Yoshitaka Ishii
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引用次数: 0

摘要

近年来,固体核磁共振(ssNMR)方法在生物大分子的信号分配和三维结构建模方面得到了不断的发展。因此,我们正在接近一个时代,在这个时代,这些方法在研究中得到更广泛的应用,包括生物大分子的功能阐明和药物发现。然而,多维核磁共振方法并不像溶液核磁共振方法那样先进,特别是在自动化数据分析方面。本文描述了一个新开发的Graph_Robot模块是如何在MagRO-NMRViewJ中实现的,它是如何从名为Kujira的核磁共振数据分析集成工具(由Kobayashi等人开发。[1])演变而来的。这些打包的工具系统地利用灵活、复杂而简单的库,仅用于解决方案- nmr数据分析,提供一个直观的界面,即使是新手用户也可以访问。在这项研究中,以13C/15N标记的水通道蛋白Z和42-残基淀粉样蛋白-β纤维的ssNMR数据集的主链和侧链信号的半自动分配为例,展示了Graph_Robot如何加快ssNMR光谱数据的视觉检测和处理。此外,Graph_Robot系统的功能使计算机能够基于有限自动机模型解释磁化传递的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Analysis of solid-state NMR data facilitated by MagRO_NMRViewJ with Graph_Robot: Application for membrane protein and amyloid.

Analysis of solid-state NMR data facilitated by MagRO_NMRViewJ with Graph_Robot: Application for membrane protein and amyloid.
Solid-state NMR (ssNMR) methods have continued to be developed in recent years for the efficient assignment of signals and 3D structure modeling of biomacromolecules. Consequently, we are approaching an era in which vigorous applications of these methods are more widespread in research, including functional elucidation of biomacromolecules and drug discovery. However, multidimensional ssNMR methods are not as advanced as solution NMR methods, especially for automated data analysis. This article describes how a newly developed Graph_Robot module, implemented in MagRO-NMRViewJ, evolved from integrated tools for NMR data analysis named Kujira (developed by Kobayashi et al. [1]). These packaged tools systematically utilize flexible, sophisticated, yet simple libraries that facilitate only for solution-NMR data analysis, offering an intuitive interface accessible even to novice users. In this study, semi-automated assignments of backbone and side chain signals of ssNMR datasets for uniformly 13C/15N labeled aquaporin Z and 42-residue amyloid-β fibril were examined as examples to demonstrate how Graph_Robot can expedite the visual inspection and handling of multidimensional ssNMR spectral data. In addition, the functionality of the Graph_Robot system enables a computer to interpret the behavior of magnetization transfer based on a finite automaton model.
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来源期刊
Biophysical chemistry
Biophysical chemistry 生物-生化与分子生物学
CiteScore
6.10
自引率
10.50%
发文量
121
审稿时长
20 days
期刊介绍: Biophysical Chemistry publishes original work and reviews in the areas of chemistry and physics directly impacting biological phenomena. Quantitative analysis of the properties of biological macromolecules, biologically active molecules, macromolecular assemblies and cell components in terms of kinetics, thermodynamics, spatio-temporal organization, NMR and X-ray structural biology, as well as single-molecule detection represent a major focus of the journal. Theoretical and computational treatments of biomacromolecular systems, macromolecular interactions, regulatory control and systems biology are also of interest to the journal.
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