28YJ image
Deposition Date 2026-03-02
Release Date 2026-03-18
Last Version Date 2026-04-22
Entry Detail
PDB ID:
28YJ
Title:
Molecular basis of ZPD homopolymerization: cryo-EM structure of a native vertebrate egg coat filament
Biological Source:
Source Organism(s):
Gallus gallus (Taxon ID: 9031)
Method Details:
Experimental Method:
Resolution:
4.60 Å
Aggregation State:
FILAMENT
Reconstruction Method:
SINGLE PARTICLE
Macromolecular Entities
Structures with similar UniProt ID
Protein Blast
Polymer Type:polypeptide(L)
Molecule:Uromodulin
Chain IDs:A, B, C, D
Chain Length:324
Number of Molecules:4
Biological Source:Gallus gallus
Ligand Molecules
Primary Citation
AlphaFold as a prior: experimental structure determination conditioned on a pretrained neural network.
Nat. Methods 23 785 795 (2026)
PMID: 41922571 DOI: 10.1038/s41592-026-03047-4

Abstact

Advances in machine learning have transformed structural biology, enabling swift and accurate prediction of protein structure from sequence. However, key challenges persist in modeling side-chain packing, condition-dependent conformational changes and biomolecular interactions, largely because of limited high-quality training data. At the same time, emerging experimental techniques such as cryo-electron microscopy (cryo-EM), cryo-electron tomography (cryo-ET) and high-throughput crystallography are generating vast amounts of structural information but converting these data into mechanistically interpretable atomic models often remains difficult. Here we show that integrating experimental measurements directly into protein structure prediction can overcome these limitations. We introduce ROCKET, an augmentation of AlphaFold2 that refines predicted structures using cryo-EM, cryo-ET and X-ray crystallography data. By optimizing structures in the space of coevolutionary embeddings rather than Cartesian coordinates, ROCKET captures biologically meaningful structural variation that is inaccessible to AlphaFold2 alone and to existing automated modeling approaches, especially when the signal-to-noise ratio is low. ROCKET enables scalable, automated model building without retraining and provides a general framework for integrating experimental observables with biomolecular machine learning.

Legend

Protein

Chemical

Disease

Primary Citation of related structures
Feedback Form
Name
Email
Institute
Feedback