7N82 image
Deposition Date 2021-06-11
Release Date 2021-07-14
Last Version Date 2024-05-15
Entry Detail
PDB ID:
7N82
Title:
NMR Solution structure of Se0862
Biological Source:
Source Organism:
Method Details:
Experimental Method:
Conformers Calculated:
2000
Conformers Submitted:
20
Selection Criteria:
structures with the lowest energy
Macromolecular Entities
Structures with similar UniProt ID
Protein Blast
Polymer Type:polypeptide(L)
Molecule:Biofilm-related protein
Gene (Uniprot):Synpcc7942_0862
Chain IDs:A
Chain Length:125
Number of Molecules:1
Biological Source:Synechococcus elongatus
Ligand Molecules
Primary Citation
Assessment of prediction methods for protein structures determined by NMR in CASP14: Impact of AlphaFold2.
Proteins 89 1959 1976 (2021)
PMID: 34559429 DOI: 10.1002/prot.26246

Abstact

NMR studies can provide unique information about protein conformations in solution. In CASP14, three reference structures provided by solution NMR methods were available (T1027, T1029, and T1055), as well as a fourth data set of NMR-derived contacts for an integral membrane protein (T1088). For the three targets with NMR-based structures, the best prediction results ranged from very good (GDT_TS = 0.90, for T1055) to poor (GDT_TS = 0.47, for T1029). We explored the basis of these results by comparing all CASP14 prediction models against experimental NMR data. For T1027, NMR data reveal extensive internal dynamics, presenting a unique challenge for protein structure prediction methods. The analysis of T1029 motivated exploration of a novel method of "inverse structure determination," in which an AlphaFold2 model was used to guide NMR data analysis. NMR data provided to CASP predictor groups for target T1088, a 238-residue integral membrane porin, was also used to assess several NMR-assisted prediction methods. Most groups involved in this exercise generated similar beta-barrel models, with good agreement with the experimental data. However, as was also observed in CASP13, some pure prediction groups that did not use any NMR data generated models for T1088 that better fit the NMR data than the models generated using these experimental data. These results demonstrate the remarkable power of modern methods to predict structures of proteins with accuracies rivaling solution NMR structures, and that it is now possible to reliably use prediction models to guide and complement experimental NMR data analysis.

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Primary Citation of related structures