Knot or not? Identifying unknotted proteins in knotted families with sequence‐based Machine Learning model

Author:

Sikora Maciej12ORCID,Klimentova Eva34ORCID,Uchal Dawid15,Sramkova Denisa34ORCID,Perlinska Agata P.1ORCID,Nguyen Mai Lan1ORCID,Korpacz Marta12ORCID,Malinowska Roksana12,Nowakowski Szymon25,Rubach Pawel16ORCID,Simecek Petr3ORCID,Sulkowska Joanna I.1ORCID

Affiliation:

1. Centre of New Technologies, University of Warsaw Warsaw Poland

2. Faculty of Mathematics, Informatics and Mechanics, University of Warsaw Warsaw Poland

3. Central European Institute of Technology, Masaryk University Brno Czech Republic

4. National Centre for Biomolecular Research, Faculty of Science, Masaryk University Brno Czech Republic

5. Faculty of Physics, University of Warsaw Warsaw Poland

6. Warsaw School of Economics Warsaw Poland

Abstract

AbstractKnotted proteins, although scarce, are crucial structural components of certain protein families, and their roles continue to be a topic of intense research. Capitalizing on the vast collection of protein structure predictions offered by AlphaFold (AF), this study computationally examines the entire UniProt database to create a robust dataset of knotted and unknotted proteins. Utilizing this dataset, we develop a machine learning (ML) model capable of accurately predicting the presence of knots in protein structures solely from their amino acid sequences. We tested the model's capabilities on 100 proteins whose structures had not yet been predicted by AF and found agreement with our local prediction in 92% cases. From the point of view of structural biology, we found that all potentially knotted proteins predicted by AF can be classified only into 17 families. This allows us to discover the presence of unknotted proteins in families with a highly conserved knot. We found only three new protein families: UCH, DUF4253, and DUF2254, that contain both knotted and unknotted proteins, and demonstrate that deletions within the knot core could potentially account for the observed unknotted (trivial) topology. Finally, we have shown that in the majority of knotted families (11 out of 15), the knotted topology is strictly conserved in functional proteins with very low sequence similarity. We have conclusively demonstrated that proteins AF predicts as unknotted are structurally accurate in their unknotted configurations. However, these proteins often represent nonfunctional fragments, lacking significant portions of the knot core (amino acid sequence).

Funder

Narodowe Centrum Nauki

Grantová Agentura České Republiky

Publisher

Wiley

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