De novo design of protein interactions with learned surface fingerprints.

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Version: Final published version
License: CC BY 4.0
Serval ID
serval:BIB_E5B235F60B9D
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
De novo design of protein interactions with learned surface fingerprints.
Journal
Nature
Author(s)
Gainza P., Wehrle S., Van Hall-Beauvais A., Marchand A., Scheck A., Harteveld Z., Buckley S., Ni D., Tan S., Sverrisson F., Goverde C., Turelli P., Raclot C., Teslenko A., Pacesa M., Rosset S., Georgeon S., Marsden J., Petruzzella A., Liu K., Xu Z., Chai Y., Han P., Gao G.F., Oricchio E., Fierz B., Trono D., Stahlberg H., Bronstein M., Correia B.E.
ISSN
1476-4687 (Electronic)
ISSN-L
0028-0836
Publication state
Published
Issued date
05/2023
Peer-reviewed
Oui
Volume
617
Number
7959
Pages
176-184
Language
english
Notes
Publication types: Journal Article
Publication Status: ppublish
Abstract
Physical interactions between proteins are essential for most biological processes governing life <sup>1</sup> . However, the molecular determinants of such interactions have been challenging to understand, even as genomic, proteomic and structural data increase. This knowledge gap has been a major obstacle for the comprehensive understanding of cellular protein-protein interaction networks and for the de novo design of protein binders that are crucial for synthetic biology and translational applications <sup>2-9</sup> . Here we use a geometric deep-learning framework operating on protein surfaces that generates fingerprints to describe geometric and chemical features that are critical to drive protein-protein interactions <sup>10</sup> . We hypothesized that these fingerprints capture the key aspects of molecular recognition that represent a new paradigm in the computational design of novel protein interactions. As a proof of principle, we computationally designed several de novo protein binders to engage four protein targets: SARS-CoV-2 spike, PD-1, PD-L1 and CTLA-4. Several designs were experimentally optimized, whereas others were generated purely in silico, reaching nanomolar affinity with structural and mutational characterization showing highly accurate predictions. Overall, our surface-centric approach captures the physical and chemical determinants of molecular recognition, enabling an approach for the de novo design of protein interactions and, more broadly, of artificial proteins with function.
Keywords
Humans, Proteins/chemistry, Proteins/metabolism, Proteomics, Protein Binding, Protein Interaction Maps, Deep Learning, Computer Simulation, Binding Sites, Synthetic Biology
Pubmed
Web of science
Open Access
Yes
Create date
01/05/2023 8:37
Last modification date
23/01/2024 8:36
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