DD-transpeptidase

AF-A0A218M1Z7-F1-v4
Google DeepMind dataset
unreviewed Unreviewed
Protein
DD-transpeptidase
Gene
pbp2
Source organism
UniProt
Biological function
Catalytic activity: [GlcNAc-(1->4)-Mur2Ac(oyl-L-Ala-gamma-D-Glu-L-Lys-D-Ala-D-Ala)](n)-di-trans,octa-cis-undecaprenyl diphosphate + beta-D-GlcNAc-(1->4)-Mur2Ac(oyl-L-Ala-gamma-D-Glu-L-Lys-D-Ala-D-Ala)-di-trans,octa-cis-undecaprenyl diphosphate = [GlcNAc-(1->4)-Mur2Ac(oyl-L-Ala-gamma-D-Glu-L-Lys-D-Ala-D-Ala)](n+1)-di-trans,octa-cis-undecaprenyl diphosphate + di-trans,octa-cis-undecaprenyl diphosphate + H(+)
Experimental structures
None available in the PDB
Average pLDDThelp icon
86.94 (High)
pLDDT distribution
  66.3% Very high
  21% High
  3.6% Low
  9.1% Very low
DD-transpeptidase, Sequence length 727
Last updated
Last updated in AlphaFold DB version 2022-11-01, created with the AlphaFold Monomer v2.0 pipeline.
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Jumper, J et al. Highly accurate protein structure prediction with AlphaFold. Nature (2021).

Fleming J. et al. AlphaFold Protein Structure Database and 3D-Beacons: New Data and Capabilities. Journal of Molecular Biology, (2025)

 

If you use data from AlphaMissense in your work, please cite the following papers:

Cheng, J et al. Accurate proteome-wide missense variant effect prediction with AlphaMissense. Science (2023).

 

AlphaFold Data Copyright (2022) DeepMind Technologies Limited.
AlphaFold Data Copyright (2023) DeepMind Technologies Limited.

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