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0  structures 1  species 0  interactions 1  sequence 1  architecture

Protein: A0A1D6P9F2_MAIZE (A0A1D6P9F2)

Summary

This is the summary of UniProt entry A0A1D6P9F2_MAIZE (A0A1D6P9F2).

Description: SAP30_Sin3_bdg domain-containing protein {ECO:0000259|Pfam:PF13867}
Source organism: Zea mays (Maize) (NCBI taxonomy ID 4577)
Length: 82 amino acids
Reference Proteome: ✓

Please note: when we start each new Pfam data release, we take a copy of the UniProt sequence database. This snapshot of UniProt forms the basis of the overview that you see here. It is important to note that, although some UniProt entries may be removed after a Pfam release, these entries will not be removed from Pfam until the next Pfam data release.

Pfam domains

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Source Domain Start End
low_complexity n/a 12 26
Pfam SAP30_Sin3_bdg 21 73

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Sequence information

This is the amino acid sequence of the UniProt sequence database entry with the accession A0A1D6P9F2. This sequence is stored in the Pfam database and updated with each new Pfam release, but this means that the sequence we store may differ from that stored by UniProt.

Sequence:
1
MMIMLFVDIC QLLKKLKLSK LELTALWRYW RHYNLDACPN PYREQLLDAV
50
51
QRHFIAQQLD ELQVIVGFMQ VAKRLKTTMK VA                   
82
 

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Checksums:
CRC64:F2253731BC3E8665
MD5:67fe9358391ef93ce19b88671136c3ae

AlphaFold Structure Prediction

The protein structure below has been predicted by DeepMind with AlphaFold. For more information, please visit the AlphaFold page for this protein.

Model confidence scale

  Very High (pLDDT > 90)
  Confident (90 > pLDDT > 70)
  Low (70 > pLDDT > 50)
  Very Low (pLDDT < 50)
Highly accurate protein structure prediction with AlphaFold. John Jumper, Richard Evans, Alexander Pritzel, Tim Green, Michael Figurnov, Olaf Ronneberger, Kathryn Tunyasuvunakool, Russ Bates, Augustin Žídek, Anna Potapenko, Alex Bridgland, Clemens Meyer, Simon A. A. Kohl, Andrew J. Ballard, Andrew Cowie, Bernardino Romera-Paredes, Stanislav Nikolov, Rishub Jain, Jonas Adler, Trevor Back, Stig Petersen, David Reiman, Ellen Clancy, Michal Zielinski, Martin Steinegger, Michalina Pacholska, Tamas Berghammer, Sebastian Bodenstein, David Silver, Oriol Vinyals, Andrew W. Senior, Koray Kavukcuoglu, Pushmeet Kohli & Demis Hassabis Nature 2021-07-15; DOI: 10.1038/s41586-021-03819-2;