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Targeted surveillance strategies for efficient detection of novel antibiotic resistance variants. | LitMetric

AI Article Synopsis

  • Genotype-based diagnostics for antibiotic resistance can help reduce unnecessary antibiotic use, but their effectiveness may decline as new resistance genes emerge.
  • Surveillance is crucial for identifying these new variants, yet effective strategies for doing so are still lacking.
  • Our study finds that while sampling based on patient traits is ineffective for detecting resistance variants, sampling based on pathogen characteristics is significantly better at identifying new resistance genes.

Article Abstract

Genotype-based diagnostics for antibiotic resistance represent a promising alternative to empiric therapy, reducing inappropriate antibiotic use. However, because such assays infer resistance based on known genetic markers, their utility will wane with the emergence of novel resistance. Maintenance of these diagnostics will therefore require surveillance to ensure early detection of novel resistance variants, but efficient strategies to do so remain undefined. We evaluate the efficiency of targeted sampling approaches informed by patient and pathogen characteristics in detecting antibiotic resistance and diagnostic escape variants in , a pathogen associated with a high burden of disease and antibiotic resistance and the development of genotype-based diagnostics. We show that patient characteristic-informed sampling is not a reliable strategy for efficient variant detection. In contrast, sampling informed by pathogen characteristics, such as genomic diversity and genomic background, is significantly more efficient than random sampling in identifying genetic variants associated with resistance and diagnostic escape.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7326491PMC
http://dx.doi.org/10.7554/eLife.56367DOI Listing

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