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1.
biorxiv; 2022.
Preprint en Inglés | bioRxiv | ID: ppzbmed-10.1101.2022.10.19.512927

RESUMEN

A series of SARS-CoV-2 variants of concern (VOCs) have evolved in humans during the COVID-19 pandemic: Alpha, Beta, Gamma, Delta, and Omicron. Here, we used global proteomic and genomic analyses during infection to understand the molecular responses driving VOC evolution. We discovered VOC-specific differences in viral RNA and protein expression levels, including for N, Orf6, and Orf9b, and pinpointed several viral mutations responsible. An analysis of the host response to VOC infection and comprehensive interrogation of altered virus-host protein-protein interactions revealed conserved and divergent regulation of biological pathways. For example, regulation of host translation was highly conserved, consistent with suppression of VOC replication in mice using the translation inhibitor plitidepsin. Conversely, modulation of the host inflammatory response was most divergent, where we found Alpha and Beta, but not Omicron BA.1, antagonized interferon stimulated genes (ISGs), a phenotype that correlated with differing levels of Orf6. Additionally, Delta more strongly upregulated proinflammatory genes compared to other VOCs. Systematic comparison of Omicron subvariants revealed BA.5 to have evolved enhanced ISG and proinflammatory gene suppression that similarly correlated with Orf6 expression, effects not seen in BA.4 due to a mutation that disrupts the Orf6-nuclear pore interaction. Our findings describe how VOCs have evolved to fine-tune viral protein expression and protein-protein interactions to evade both innate and adaptive immune responses, offering a likely explanation for increased transmission in humans.


Asunto(s)
Infecciones , COVID-19
2.
biorxiv; 2021.
Preprint en Inglés | bioRxiv | ID: ppzbmed-10.1101.2021.05.10.443524

RESUMEN

The SARS-CoV-2 protein Nsp2 has been implicated in a wide range of viral processes, but its exact functions, and the structural basis of those functions, remain unknown. Here, we report an atomic model for full-length Nsp2 obtained by combining cryo-electron microscopy with deep learning-based structure prediction from AlphaFold2. The resulting structure reveals a highly-conserved zinc ion-binding site, suggesting a role for Nsp2 in RNA binding. Mapping emerging mutations from variants of SARS-CoV-2 on the resulting structure shows potential host-Nsp2 interaction regions. Using structural analysis together with affinity tagged purification mass spectrometry experiments, we identify Nsp2 mutants that are unable to interact with the actin-nucleation-promoting WASH protein complex or with GIGYF2, an inhibitor of translation initiation and modulator of ribosome-associated quality control. Our work suggests a potential role of Nsp2 in linking viral transcription within the viral replication-transcription complexes (RTC) to the translation initiation of the viral message. Collectively, the structure reported here, combined with mutant interaction mapping, provides a foundation for functional studies of this evolutionary conserved coronavirus protein and may assist future drug design.

3.
biorxiv; 2021.
Preprint en Inglés | bioRxiv | ID: ppzbmed-10.1101.2021.02.24.432721

RESUMEN

The COVID19 pandemic is a global crisis severely impacting many people across the world. An important part of the response is monitoring viral variants and determining the impact they have on viral properties, such as infectivity, disease severity and interactions with drugs and vaccines. In this work we generate and make available computational variant effect predictions for all possible single amino-acid substitutions to SARS-CoV-2 in order to complement and facilitate experiments and expert analysis. The resulting dataset contains predictions from evolutionary conservation and protein and complex structural models, combined with viral phosphosites, experimental results and variant frequencies. We demonstrate predictions' effectiveness by comparing them with expectations from variant frequency and prior experiments. We then identify higher frequency variants with significant predicted effects as well as finding variants measured to impact antibody binding that are least likely to impact other viral functions. A web portal is available at sars.mutfunc.com, where the dataset can be searched and downloaded.


Asunto(s)
COVID-19 , Infecciones
4.
David E. Gordon; Gwendolyn M. Jang; Mehdi Bouhaddou; Jiewei Xu; Kirsten Obernier; Jeffrey Z. Guo; Danielle L. Swaney; Tia A. Tummino; Ruth Huttenhain; Robyn M. Kaake; Alicia L. Richards; Beril Tutuncuoglu; Helene Foussard; Jyoti Batra; Kelsey Haas; Maya Modak; Minkyu Kim; Paige Haas; Benjamin J. Polacco; Hannes Braberg; Jacqueline M. Fabius; Manon Eckhardt; Margaret Soucheray; Melanie J. Bennett; Merve Cakir; Michael J. McGregor; Qiongyu Li; Zun Zar Chi Naing; Yuan Zhou; Shiming Peng; Ilsa T. Kirby; James E. Melnyk; John S Chorba; Kevin Lou; Shizhong A. Dai; Wenqi Shen; Ying Shi; Ziyang Zhang; Inigo Barrio-Hernandez; Danish Memon; Claudia Hernandez-Armenta; Christopher J.P. Mathy; Tina Perica; Kala B. Pilla; Sai J. Ganesan; Daniel J. Saltzberg; Rakesh Ramachandran; Xi Liu; Sara B. Rosenthal; Lorenzo Calviello; Srivats Venkataramanan; Jose Liboy-Lugo; Yizhu Lin; Stephanie A. Wankowicz; Markus Bohn; Phillip P. Sharp; Raphael Trenker; Janet M. Young; Devin A. Cavero; Joseph Hiatt; Theo Roth; Ujjwal Rathore; Advait Subramanian; Julia Noack; Mathieu Hubert; Ferdinand Roesch; Thomas Vallet; Björn Meyer; Kris M. White; Lisa Miorin; Oren S. Rosenberg; Kliment A. Verba; David Agard; Melanie Ott; Michael Emerman; Davide Ruggero; Adolfo Garc&iacute-Sastre; Natalia Jura; Mark von Zastrow; Jack Taunton; Alan Ashworth; Olivier Schwartz; Marco Vignuzzi; Shaeri Mukherjee; Matt Jacobson; Harmit S. Malik; Danica G Fujimori; Trey Ideker; Charles S Craik; Stephen Floor; James S. Fraser; John Gross; Andrej Sali; Tanja Kortemme; Pedro Beltrao; Kevan Shokat; Brian K. Shoichet; Nevan J. Krogan.
biorxiv; 2020.
Preprint en Inglés | bioRxiv | ID: ppzbmed-10.1101.2020.03.22.002386

RESUMEN

An outbreak of the novel coronavirus SARS-CoV-2, the causative agent of COVID-19 respiratory disease, has infected over 290,000 people since the end of 2019, killed over 12,000, and caused worldwide social and economic disruption1,2. There are currently no antiviral drugs with proven efficacy nor are there vaccines for its prevention. Unfortunately, the scientific community has little knowledge of the molecular details of SARS-CoV-2 infection. To illuminate this, we cloned, tagged and expressed 26 of the 29 viral proteins in human cells and identified the human proteins physically associated with each using affinity-purification mass spectrometry (AP-MS), which identified 332 high confidence SARS-CoV-2-human protein-protein interactions (PPIs). Among these, we identify 66 druggable human proteins or host factors targeted by 69 existing FDA-approved drugs, drugs in clinical trials and/or preclinical compounds, that we are currently evaluating for efficacy in live SARS-CoV-2 infection assays. The identification of host dependency factors mediating virus infection may provide key insights into effective molecular targets for developing broadly acting antiviral therapeutics against SARS-CoV-2 and other deadly coronavirus strains.


Asunto(s)
COVID-19 , Enfermedades Respiratorias , Infecciones Tumorales por Virus
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