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Bridging the gap between molecular and genomic epidemiology in tuberculosis: inferring MIRU-VNTR patterns from genomic data.

Sergio Buenestado-SerranoMiguel Martínez-LirolaAnzaan DippenaarAmadeo Sanz-PérezJosé Antonio Garrido-CárdenasAna Belén Esteban-GarcíaAdriana Justine García-ToledoCristina Rodríguez-GrandeMarta Herranz-MartínSheri M SaleebPatricia MuñozRobin Mark WarrenLaura Pérez-LagoDarío García de Viedma
Published in: Journal of clinical microbiology (2024)
The transition from molecular epidemiology in tuberculosis (TB), based on the analysis of repetitive regions (VNTR-based genotyping), to genomic epidemiology transforms in the precision with which we track transmission. However, short-read sequencing, the most common method for performing genomic analysis, is poor at analyzing repetitive regions. This means that we face a gap between the new genomic data and the large amount of information stored in historical databases, which is also an obstacle to cross-national surveillance involving settings where only molecular data are available. Long-read sequencing could help bridge this knowledge gap by allowing analysis of repetitive regions. Our study demonstrates that MIRU-VNTR patterns can be successfully inferred from long-read sequences, allowing the correct assignment of new cases as clustered/orphan by linking new data extracted from genomic analysis to historical MIRU-VNTR databases. Our data may provide a starting point for bridging the knowledge gap between the molecular and genomic eras in tuberculosis epidemiology.
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