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Protein structural class identification directly from NMR spectra using averaged chemical shifts.

机译:使用平均化学位移直接从NMR光谱中鉴定蛋白质结构类别。

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摘要

Knowledge of the three-dimensional structure of proteins is integral to understanding their functions, and a necessity in the era of proteomics. A wide range of computational methods is employed to estimate the secondary, tertiary, and quaternary structures of proteins. Comprehensive experimental methods, on the other hand, are limited to nuclear magnetic resonance (NMR) and X-ray crystallography. The full characterization of individual structures, using either of these techniques, is extremely time intensive. The demands of high throughput proteomics necessitate the development of new, faster experimental methods for providing structural information. As a first step toward such a method, we explore the possibility of determining the structural classes of proteins directly from their NMR spectra, prior to resonance assignment, using averaged chemical shifts. This is achieved by correlating NMR-based information with empirical structure-based information available in widely used electronic databases. The results are analyzed statistically for their significance. The robustness of the method as a structure predictor is probed by applying it to a set of proteins of unknown structure. Our results show that this NMR-based method can be used as a low-resolution tool for protein structural class identification.
机译:蛋白质三维结构的知识对于理解其功能是不可或缺的,也是蛋白质组学时代的必要条件。广泛的计算方法用于估计蛋白质的二级,三级和四级结构。另一方面,综合实验方法仅限于核磁共振(NMR)和X射线晶体学。使用这些技术中的任何一种来对单个结构进行完整的表征都是非常耗时的。高通量蛋白质组学的需求需要开发新的,更快的实验方法来提供结构信息。作为迈向这种方法的第一步,我们探索了使用平均化学位移在共振分配之前直接从其NMR光谱确定蛋白质结构类别的可能性。这是通过将基于NMR的信息与广泛使用的电子数据库中可用的基于经验结构的信息进行关联来实现的。统计分析结果的意义。通过将该方法应用于一组未知结构的蛋白质,可以探究该方法作为结构预测子的稳健性。我们的结果表明,这种基于NMR的方法可以用作蛋白质结构类别识别的低分辨率工具。

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