An accurate spatial representation of protein-protein interaction networks is needed to achieve a realistic and biologically relevant representation of interactomes. Here, we leveraged the spatial information included in Proximity-Dependent Biotin Identification (BioID) interactomes of SARS-CoV-2 proteins to calculate weighted distances and model the organization of the SARS-CoV-2-human interactome in three dimensions (3D) within a cell-like volume. Cell regions with viral occupancy were highlighted, along with the coordination of viral proteins exploiting the cellular machinery. Profiling physical intra-virus and virus-host contacts enabled us to demonstrate both the accuracy and the predictive value of our 3D map for direct interactions, meaning that proteins in closer proximity tend to interact physically. Several functionally important virus-host complexes were detected, and robust structural models were obtained, opening the way to structure-directed drug discovery screens. This PPI discovery pipeline approach brings us closer to a realistic spatial representation of interactomes, which, when applied to viruses or other pathogens, can provide significant information for infection. Thus, it represents a promising tool for coping with emerging infectious diseases.
Multimodal SARS-CoV-2 interactome sketches the virus-host spatial organization.
多模态 SARS-CoV-2 相互作用组描绘了病毒-宿主的空间组织
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作者:Dugied Guillaume, Laurent Estelle Mn, Attia Mikaël, Gimeno Jean-Pascal, Bachiri Kamel, Samavarchi-Tehrani Payman, Donati Flora, Rahou Yannis, Munier Sandie, Amara Faustine, Dos Santos Mélanie, Soler Nicolas, Volant Stevenn, Pietrosemoli Natalia, Gingras Anne-Claude, Pavlopoulos Georgios A, van der Werf Sylvie, Falter-Braun Pascal, Aloy Patrick, Jacob Yves, Komarova Anastassia, Sofianatos Yorgos, Coyaud Etienne, Demeret Caroline
| 期刊: | Communications Biology | 影响因子: | 5.100 |
| 时间: | 2025 | 起止号: | 2025 Mar 26; 8(1):501 |
| doi: | 10.1038/s42003-025-07933-z | 疾病类型: | 新冠 |
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