| Literature DB >> 33863888 |
Veronica V Rezelj1, Lucía Carrau1, Fernando Merwaiss2, Laura I Levi1,3, Diana Erazo1, Quang Dinh Tran1,3, Annabelle Henrion-Lacritick2, Valérie Gausson2, Yasutsugu Suzuki2, Djoshkun Shengjuler1, Bjoern Meyer1, Thomas Vallet1, James Weger-Lucarelli1, Veronika Bernhauerová1, Avi Titievsky4, Vadim Sharov4, Stefano Pietropaoli5, Marco A Diaz-Salinas6, Vincent Legros5, Nathalie Pardigon6, Giovanna Barba-Spaeth5, Leonid Brodsky4, Maria-Carla Saleh7, Marco Vignuzzi8.
Abstract
Arthropod-borne viruses pose a major threat to global public health. Thus, innovative strategies for their control and prevention are urgently needed. Here, we exploit the natural capacity of viruses to generate defective viral genomes (DVGs) to their detriment. While DVGs have been described for most viruses, identifying which, if any, can be used as therapeutic agents remains a challenge. We present a combined experimental evolution and computational approach to triage DVG sequence space and pinpoint the fittest deletions, using Zika virus as an arbovirus model. This approach identifies fit DVGs that optimally interfere with wild-type virus infection. We show that the most fit DVGs conserve the open reading frame to maintain the translation of the remaining non-structural proteins, a characteristic that is fundamental across the flavivirus genus. Finally, we demonstrate that the high fitness DVG is antiviral in vivo both in the mammalian host and the mosquito vector, reducing transmission in the latter by up to 90%. Our approach establishes the method to interrogate the DVG fitness landscape, and enables the systematic identification of DVGs that show promise as human therapeutics and vector control strategies to mitigate arbovirus transmission and disease.Entities:
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Year: 2021 PMID: 33863888 DOI: 10.1038/s41467-021-22341-7
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919