9GDX

SARS-CoV-2 Spike protein Beta Variant at 4C structural flexibility / heterogeneity analyses


Experimental Data Snapshot

  • Method: ELECTRON MICROSCOPY
  • Resolution: 2.80 Å
  • Aggregation State: PARTICLE 
  • Reconstruction Method: SINGLE PARTICLE 

Starting Model: experimental
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wwPDB Validation   3D Report Full Report


This is version 1.1 of the entry. See complete history


Literature

Real-space heterogeneous reconstruction, refinement, and disentanglement of CryoEM conformational states with HetSIREN.

Herreros, D.Mata, C.P.Noddings, C.Irene, D.Krieger, J.Agard, D.A.Tsai, M.D.Sorzano, C.O.S.Carazo, J.M.

(2024) bioRxiv 

  • DOI: https://doi.org/10.1101/2024.09.16.613176
  • Primary Citation of Related Structures:  
    9GDX, 9GDY

  • PubMed Abstract: 

    Single-particle analysis by Cryo-electron microscopy (CryoEM) provides direct access to the conformation of each macromolecule. However, the image's signal-to-noise ratio is low, and some form of classification is usually performed at the image processing level to allow structural modeling. Classical classification methods imply the existence of a discrete number of structural conformations. However, new heterogeneity algorithms introduce a novel reconstruction paradigm, where every state is represented by a lower number of particles, potentially just one, allowing the estimation of conformational landscapes representing the different structural states a biomolecule explores. In this work, we present a novel deep learning-based method called HetSIREN. HetSIREN can fully reconstruct or refine a CryoEM volume in real space based on the structural information summarized in a conformational latent space. The unique characteristics that set HetSIREN apart start with the definition of the approach as a real space-based only method, a fact that allows spatially focused analysis, but also the introduction of a novel network architecture specifically designed to make use of meta-sinusoidal activations, with proven high analytics capacities. Continuing with innovations, HetSIREN can also refine the pose parameters of the images at the same time that it conditions the network with prior information/constraints on the maps, such as Total Variation and L 1 denoising, ultimately yielding cleaner volumes with high-quality structural features. Finally, but very importantly, HetSIREN addresses one of the most confusing issues in heterogeneity analysis, as it is the fact that real structural heterogeneity estimation is entangled with pose estimation (and to a lesser extent with CTF estimation), in this way, HetSIREN introduces a novel encoding architecture able to decouple pose and CTF information from the conformational landscape, resulting in more accurate and interpretable conformational latent spaces. We present results on computer-simulated data, public data from EMPIAR, and data from experimental systems currently being studied in our laboratories. An important finding is the sensitivity of the structure and dynamics of the SARS-CoV-2 Spike protein on the storage temperature.


  • Organizational Affiliation

    Centro Nacional de Biotecnologia-CSIC, C/ Darwin, 3, 28049, Cantoblanco, Madrid, Spain.


Macromolecules
Find similar proteins by:  (by identity cutoff)  |  3D Structure
Entity ID: 1
MoleculeChains Sequence LengthOrganismDetailsImage
Spike glycoprotein,Fibritin
A, B, C
1,230Severe acute respiratory syndrome coronavirus 2Tequatrovirus T4
This entity is chimeric
Mutation(s): 14 
Gene Names: S2wac
UniProt
Find proteins for P0DTC2 (Severe acute respiratory syndrome coronavirus 2)
Explore P0DTC2 
Go to UniProtKB:  P0DTC2
Find proteins for P10104 (Enterobacteria phage T4)
Explore P10104 
Go to UniProtKB:  P10104
Entity Groups  
Sequence Clusters30% Identity50% Identity70% Identity90% Identity95% Identity100% Identity
UniProt GroupsP0DTC2P10104
Sequence Annotations
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  • Reference Sequence
Experimental Data & Validation

Experimental Data

  • Method: ELECTRON MICROSCOPY
  • Resolution: 2.80 Å
  • Aggregation State: PARTICLE 
  • Reconstruction Method: SINGLE PARTICLE 
EM Software:
TaskSoftware PackageVersion
MODEL REFINEMENTCoot
MODEL REFINEMENTPHENIX

Structure Validation

View Full Validation Report



Entry History & Funding Information

Deposition Data


Funding OrganizationLocationGrant Number
Ministerio de Ciencia e Innovacion (MCIN)Spainrant PID2022-136594NB-I00 funded by MICIU /AEI/ 10.13039/501100011033/
European Research Council (ERC)European UnionHighResCells (ERC-2018-SyG, Proposal: 810057
iNEXT-DiscoveryEuropean UnioniNEXT-Discovery (Proposal: 871037)
Academia Sinica (Taiwan)Taiwan(AS-KPQ-109-TPP2)
Academia Sinica (Taiwan)TaiwanNSTC 113-2740-B-006-004
Academia Sinica (Taiwan)TaiwanAS-CFII-108-110

Revision History  (Full details and data files)

  • Version 1.0: 2024-10-30
    Type: Initial release
  • Version 1.1: 2024-11-13
    Changes: Data collection