A robust, scalable, and cost-efficient approach to whole genome sequencing of RSV directly from clinical samples

Author:

Köndgen Sophie1ORCID,Oh Djin-Ye1,Thürmer Andrea2,Sedaghatjoo Somayyeh2,Patrono Livia V.3,Calvignac-Spencer Sébastien3,Biere Barbara1,Wolff Thorsten1,Dürrwald Ralf1ORCID,Fuchs Stephan2,Reiche Janine1ORCID

Affiliation:

1. Influenza and Other Respiratory Viruses, Consultant Laboratory for RSV, PIV and HMPV, Robert Koch-Institute, Berlin, Germany

2. Genome Competence Center, Robert Koch-Institute, Berlin, Germany

3. Epidemiology of highly pathogenic microorganisms, Robert Koch-Institute, Berlin, Germany

Abstract

ABSTRACT Respiratory syncytial virus (RSV) is a leading cause of acute lower respiratory tract infections causing significant morbidity and mortality among children and the elderly; two RSV vaccines and a monoclonal antibody have recently been approved. Thus, there is an increasing need for a detailed and continuous genomic surveillance of RSV circulating in resource-rich and resource-limited settings worldwide. However, robust, cost-effective methods for whole genome sequencing of RSV from clinical samples that are amenable to high-throughput are still scarce. We developed Next-RSV-SEQ, an experimental and computational pipeline to generate whole genome sequences of historic and current RSV genotypes by in-solution hybridization capture-based next generation sequencing. We optimized this workflow by automating library preparation and pooling libraries prior to enrichment in order to reduce hands-on time and cost, thereby augmenting scalability. Next-RSV-SEQ yielded near-complete to complete genome sequences for 98% of specimens with Cp values ≤31, at median on-target reads >93%, and mean coverage depths between ~1,000 and >5,000, depending on viral load. Whole genomes were successfully recovered from samples with viral loads as low as 230 copies per microliter RNA. We demonstrate that the method can be expanded to other respiratory viruses like parainfluenza virus and human metapneumovirus. Next-RSV-SEQ produces high-quality RSV genomes directly from culture isolates and, more importantly, clinical specimens of all genotypes in circulation. It is cost-efficient, scalable, and can be extended to other respiratory viruses, thereby opening new perspectives for a future effective and broad genomic surveillance of respiratory viruses. IMPORTANCE Respiratory syncytial virus (RSV) is a leading cause of severe acute respiratory tract infections in children and the elderly, and its prevention has become an increasing priority. Recently, vaccines and a long-acting monoclonal antibody to protect effectively against severe disease have been approved for the first time. Hence, there is an urgent need for genomic surveillance of RSV at the global scale to monitor virus evolution, especially with an eye toward immune evasion. However, robust, cost-effective methods for RSV whole genome sequencing that are suitable for high-throughput of clinical samples are currently scarce. Therefore, we have developed Next-RSV-SEQ, an experimental and computational pipeline that produces reliably high-quality RSV genomes directly from clinical specimens and isolates.

Funder

Robert Koch Institut

Bundesministerium für Gesundheit (BMG)

Bundesministerium für Wirtschaft und Klimaschutz

Publisher

American Society for Microbiology

Reference37 articles.

1. Global, regional, and national disease burden estimates of acute lower respiratory infections due to respiratory syncytial virus in children younger than 5 years in 2019: a systematic analysis

2. European Centre for Disease Prevention and Control (ECDC). 2022. Intensified circulation of respiratory syncytial virus (RSV) and associated hospital burden in the EU/EEA. Available from: https://www.ecdc.europa.eu/sites/default/files/documents/RRA-20221128-473.pdf. Retrieved 1 Jun 2023.

3. Nirsevimab for Prevention of RSV in Healthy Late-Preterm and Term Infants

4. Respiratory Syncytial Virus Prefusion F Protein Vaccine in Older Adults

5. Vaccine Efficacy in Adults in a Respiratory Syncytial Virus Challenge Study

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