An integrated in silico and in vitro genotype to phenotype pipeline to predict and characterise new RSV F site zero escape mutants
Discuss this preprint
Start a discussion What are Sciety discussions?Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
The new respiratory syncytial virus (RSV) interventions target the Fusion (F) protein and may therefore impose a selective pressure upon the F gene. Identifying monoclonal antibody-resistant mutants (MARMs) of concern is a priority to ensure continued antibody effectiveness. Here we evaluated genomes of RSV isolates sampled in the UK prior to vaccine or nirsevimab implementation. We observed a low frequency of the K68E mutation in site Ø which we confirmed had increased resistance to a nirsevimab-like monoclonal antibody. To predict other MARMs of concern we used bioinformatic tools to model the interface between nirsevimab and RSV-F. There was a very strong correlation between antibody-antigen Kd and in vitro neutralisation data. Performing in silico deep mutational scanning of each viral contact residue identified new mutations of concern in RSV-A (N63T, I64V, D200E, K201N) which are already circulating; increased resistance to a site Ø targeting antibody was confirmed using reverse genetics derived RSV. To explore the universality of the pipeline, we also tested correlations between predicted and actual binding for licensed antibodies targeting SARS-CoV-2. We therefore demonstrate the ability to determine previously unidentified escape mutations in silico and flag them for further surveillance.