Laboratory of Physical Chemistry, ETH Zürich, 8093, Zürich, Switzerland.
Institute of Biophysical Chemistry, Center for Biomolecular Magnetic Resonance, Goethe University Frankfurt, Max-von-Laue-Str. 9, 60438, Frankfurt am Main, Germany.
J Biomol NMR. 2022 Apr;76(1-2):39-47. doi: 10.1007/s10858-022-00392-2. Epub 2022 Mar 19.
Recent advances in the field of protein structure determination using liquid-state NMR enable the elucidation of multi-state protein conformations that can provide insight into correlated and non-correlated protein dynamics at atomic resolution. So far, NMR-derived multi-state structures were typically evaluated by means of visual inspection of structure superpositions, target function values that quantify the violation of experimented restraints and root-mean-square deviations that quantify similarity between conformers. As an alternative or complementary approach, we present here the use of a recently introduced structural correlation measure, PDBcor, that quantifies the clustering of protein states as an additional measure for multi-state protein structure analysis. It can be used for various assays including the validation of experimental distance restraints, optimization of the number of protein states, estimation of protein state populations, identification of key distance restraints, NOE network analysis and semiquantitative analysis of the protein correlation network. We present applications for the final quality analysis stages of typical multi-state protein structure calculations.
近年来,利用液相 NMR 进行蛋白质结构测定方面的进展使得能够阐明多态蛋白质构象,从而深入了解相关和非相关蛋白质动力学的原子分辨率。到目前为止,通过结构叠加的直观检查、量化违反实验约束的目标函数值以及量化构象相似性的均方根偏差,通常对 NMR 衍生的多态结构进行评估。作为替代或补充方法,我们在这里介绍了最近引入的结构相关度量 PDBcor 的使用,该度量量化了蛋白质状态的聚类,作为多态蛋白质结构分析的附加度量。它可用于各种分析,包括验证实验距离约束、优化蛋白质状态数量、估计蛋白质状态种群、识别关键距离约束、NOE 网络分析和蛋白质相关网络的半定量分析。我们介绍了典型多态蛋白质结构计算的最终质量分析阶段的应用。