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AlphaFold predicts novel human proteins with knots

Autor
Greń, Bartosz
Perlińska, Agata
Sułkowska, Joanna
Rubach, Pawel
Nowakowski, Szymon
Bukowicki, Marek
Niemyska, Wanda
Data publikacji
2023
Abstrakt (EN)

The fact that proteins can have their chain formed in a knot is known for almost 30 years. However, as they are not common, only a fraction of such proteins is available in the Protein Data Bank. It was not possible to assess their importance and versatility up until now because we did not have access to the whole proteome of an organism, let alone a human one. The arrival of efficient machine learning methods for protein structure prediction, such as AlphaFold and RoseTTaFold, changed that. We analyzed all proteins from the human proteome (over 20,000) determined with AlphaFold in search for knots and found them in less than 2% of the structures. Using a variety of methods, including homolog search, clustering, quality assessment, and visual inspection, we determined the nature of each of the knotted structures and classified it as either knotted, potentially knotted, or an artifact, and deposited all of them in a database available at: https://knotprot.cent.uw.edu.pl/alphafold. Overall, we found 51 credible knotted proteins (0.2% of human proteome). The set of potentially knotted structures includes a new complex type of a knot not reported in proteins yet. That knot type, denoted 63 in mathematical notation, would necessitate a more complex folding path than any knotted protein characterized to date

Dyscyplina PBN
informatyka
Czasopismo
Protein Science
Tom
32
Zeszyt
5
Strony od-do
1-10
ISSN
0961-8368
Data udostępnienia w otwartym dostępie
2023-03-23
Licencja otwartego dostępu
Uznanie autorstwa