Predicting multiple conformations via sequence clustering and AlphaFold2
成果类型:
Article
署名作者:
Wayment-Steele, Hannah K.; Ojoawo, Adedolapo; Otten, Renee; Apitz, Julia M.; Pitsawong, Warintra; Homberger, Marc; Ovchinnikov, Sergey; Colwell, Lucy; Kern, Dorothee
署名单位:
Brandeis University; Howard Hughes Medical Institute; Harvard University; Alphabet Inc.; Google Incorporated; University of Cambridge
刊物名称:
Nature
ISSN/ISSBN:
0028-4322
DOI:
10.1038/s41586-023-06832-9
发表日期:
2024-01-25
关键词:
nmr chemical-shift
protein-structure
checkpoint protein
generation
folds
performance
EVOLUTION
alignment
signals
SPACE
摘要:
AlphaFold2 (ref. 1) has revolutionized structural biology by accurately predicting single structures of proteins. However, a protein's biological function often depends on multiple conformational substates2, and disease-causing point mutations often cause population changes within these substates3,4. We demonstrate that clustering a multiple-sequence alignment by sequence similarity enables AlphaFold2 to sample alternative states of known metamorphic proteins with high confidence. Using this method, named AF-Cluster, we investigated the evolutionary distribution of predicted structures for the metamorphic protein KaiB5 and found that predictions of both conformations were distributed in clusters across the KaiB family. We used nuclear magnetic resonance spectroscopy to confirm an AF-Cluster prediction: a cyanobacteria KaiB variant is stabilized in the opposite state compared with the more widely studied variant. To test AF-Cluster's sensitivity to point mutations, we designed and experimentally verified a set of three mutations predicted to flip KaiB from Rhodobacter sphaeroides from the ground to the fold-switched state. Finally, screening for alternative states in protein families without known fold switching identified a putative alternative state for the oxidoreductase Mpt53 in Mycobacterium tuberculosis. Further development of such bioinformatic methods in tandem with experiments will probably have a considerable impact on predicting protein energy landscapes, essential for illuminating biological function. An analysis of the evolutionary distribution of predicted structures for the metamorphic protein KaiB using AF-Cluster reveals that both conformations of KaiB were distributed in clusters across the KaiB family.