Senior Research Group for Translational Structural Biology, German Center for Neurodegenerative Diseases (DZNE), Göttingen, Germany.
Department for NMR-based Structural Biology, Max Planck Institute for Biophysical Chemistry, Göttingen, Germany.
Protein Sci. 2021 Nov;30(11):2333-2337. doi: 10.1002/pro.4175. Epub 2021 Sep 10.
The prediction of the three-dimensional (3D) structure of proteins from the amino acid sequence made a stunning breakthrough reaching atomic accuracy. Using the neural network-based method AlphaFold2, 3D structures of almost the entire human proteome have been predicted and made available (https://www.alphafold.ebi.ac.uk). To gain insight into how well AlphaFold2 structures represent the conformation of proteins in solution, I here compare the AlphaFold2 structures of selected small proteins with their 3D structures that were determined by nuclear magnetic resonance (NMR) spectroscopy. Proteins were selected for which the 3D solution structures were determined on the basis of a very large number of distance restraints and residual dipolar couplings and are thus some of the best-resolved solution structures of proteins to date. The quality of the backbone conformation of the AlphaFold2 structures is assessed by fitting a large set of experimental residual dipolar couplings (RDCs). The analysis shows that experimental RDCs fit extremely well to the AlphaFold2 structures predicted for GB3, DinI, and ubiquitin. In the case of GB3, the accuracy of the AlphaFold2 structure even surpasses that of a 1.1 Å crystal structure. Fitting of experimental RDCs furthermore allows identification of AlphaFold2 structures that are best representative of the protein's conformation in solution as seen for the EF hands of the N-terminal domain of Ca -ligated calmodulin. Taken together, the analysis shows that structures predicted by AlphaFold2 can be highly representative of the solution conformation of proteins. The combination of AlphaFold2 structures with RDCs promises to be a powerful approach to study structural changes in proteins.
从氨基酸序列预测蛋白质的三维(3D)结构取得了惊人的突破,达到了原子级精度。使用基于神经网络的方法 AlphaFold2,几乎整个人类蛋白质组的 3D 结构都已被预测并提供(https://www.alphafold.ebi.ac.uk)。为了深入了解 AlphaFold2 结构在多大程度上代表了蛋白质在溶液中的构象,我在这里将选定的小蛋白的 AlphaFold2 结构与其通过核磁共振(NMR)光谱确定的 3D 结构进行比较。选择的蛋白质是基于大量距离约束和残差偶极耦合来确定其 3D 溶液结构的,因此它们是迄今为止蛋白质溶液结构中分辨率最高的一些。通过拟合大量实验残差偶极耦合(RDC)来评估 AlphaFold2 结构的主链构象质量。分析表明,实验 RDC 与为 GB3、DinI 和泛素预测的 AlphaFold2 结构非常吻合。在 GB3 的情况下,AlphaFold2 结构的准确性甚至超过了 1.1 Å 的晶体结构。实验 RDC 的拟合还允许确定最能代表蛋白质在溶液中构象的 AlphaFold2 结构,如钙结合钙调蛋白 N 端结构域的 EF 手。总之,该分析表明,AlphaFold2 预测的结构可以高度代表蛋白质的溶液构象。将 AlphaFold2 结构与 RDC 相结合有望成为研究蛋白质结构变化的一种强大方法。