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Restoring protein glycosylation with GlycoShape

Restoring protein glycosylation with GlycoShape
Restoring protein glycosylation with GlycoShape
Despite ground-breaking innovations in experimental structural biology and protein structure prediction techniques, capturing the structure of the glycans that functionalize proteins remains a challenge. Here we introduce GlycoShape (https://glycoshape.org), an open-access glycan structure database and toolbox designed to restore glycoproteins to their native and functional form in seconds. The GlycoShape database counts over 500 unique glycans so far, covering the human glycome and augmented by elements from a wide range of organisms, obtained from 1 ms of cumulative sampling from molecular dynamics simulations. These structures can be linked to proteins with a robust algorithm named Re-Glyco, directly compatible with structural data in open-access repositories, such as the Research Collaboratory for Structural Bioinformatics Protein Data Bank (RCSB PDB) and AlphaFold Protein Structure Database, or own. The quality, performance and broad applicability of GlycoShape is demonstrated by its ability to predict N-glycosylation occupancy, scoring a 93% agreement with experiment, based on screening all proteins in the PDB with a corresponding glycoproteomics profile, for a total of 4,259 N-glycosylation sequons.
1548-7091
2117-2127
Ives, Callum M.
b8c798a7-ddf0-40ac-8194-c757032b85e2
Singh, Ojas
19bd7eaf-a35f-418f-a6aa-be0e7fd28756
D’Andrea, Silvia
0653d16f-e4d4-4b5b-9a87-1a1f6a731432
Fogarty, Carl A.
33e6619c-776e-4c6c-9161-bd0128e1d5ac
Harbison, Aoife M.
bc5281e0-038d-4b73-b15b-b60396a88e9c
Satheesan, Akash
6a4f408d-6914-4c7e-9dfa-ff1b80cbc575
Tropea, Beatrice
5160353d-572a-41e9-b06c-76cd4a939729
Fadda, Elisa
11ba1755-9585-44aa-a38e-a8bcfd766abb
Ives, Callum M.
b8c798a7-ddf0-40ac-8194-c757032b85e2
Singh, Ojas
19bd7eaf-a35f-418f-a6aa-be0e7fd28756
D’Andrea, Silvia
0653d16f-e4d4-4b5b-9a87-1a1f6a731432
Fogarty, Carl A.
33e6619c-776e-4c6c-9161-bd0128e1d5ac
Harbison, Aoife M.
bc5281e0-038d-4b73-b15b-b60396a88e9c
Satheesan, Akash
6a4f408d-6914-4c7e-9dfa-ff1b80cbc575
Tropea, Beatrice
5160353d-572a-41e9-b06c-76cd4a939729
Fadda, Elisa
11ba1755-9585-44aa-a38e-a8bcfd766abb

Ives, Callum M., Singh, Ojas, D’Andrea, Silvia, Fogarty, Carl A., Harbison, Aoife M., Satheesan, Akash, Tropea, Beatrice and Fadda, Elisa (2024) Restoring protein glycosylation with GlycoShape. Nature Methods, 21 (11), 2117-2127. (doi:10.1038/s41592-024-02464-7).

Record type: Article

Abstract

Despite ground-breaking innovations in experimental structural biology and protein structure prediction techniques, capturing the structure of the glycans that functionalize proteins remains a challenge. Here we introduce GlycoShape (https://glycoshape.org), an open-access glycan structure database and toolbox designed to restore glycoproteins to their native and functional form in seconds. The GlycoShape database counts over 500 unique glycans so far, covering the human glycome and augmented by elements from a wide range of organisms, obtained from 1 ms of cumulative sampling from molecular dynamics simulations. These structures can be linked to proteins with a robust algorithm named Re-Glyco, directly compatible with structural data in open-access repositories, such as the Research Collaboratory for Structural Bioinformatics Protein Data Bank (RCSB PDB) and AlphaFold Protein Structure Database, or own. The quality, performance and broad applicability of GlycoShape is demonstrated by its ability to predict N-glycosylation occupancy, scoring a 93% agreement with experiment, based on screening all proteins in the PDB with a corresponding glycoproteomics profile, for a total of 4,259 N-glycosylation sequons.

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s41592-024-02464-7 - Version of Record
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Accepted/In Press date: 12 September 2024
e-pub ahead of print date: 14 October 2024
Published date: 1 November 2024

Identifiers

Local EPrints ID: 500247
URI: http://eprints.soton.ac.uk/id/eprint/500247
ISSN: 1548-7091
PURE UUID: 62887385-f3a0-494a-9548-b2e726aa75c7
ORCID for Elisa Fadda: ORCID iD orcid.org/0000-0002-2898-7770

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Date deposited: 23 Apr 2025 16:43
Last modified: 22 Aug 2025 02:42

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Contributors

Author: Callum M. Ives
Author: Ojas Singh
Author: Silvia D’Andrea
Author: Carl A. Fogarty
Author: Aoife M. Harbison
Author: Akash Satheesan
Author: Beatrice Tropea
Author: Elisa Fadda ORCID iD

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