BMC Medical Genomics (Nov 2024)

Development of a clinical metagenomics workflow for the diagnosis of wound infections

  • Carl Halford,
  • Thanh Le Viet,
  • Katie Edge,
  • Paul Russell,
  • Nathan Moore,
  • Fiona Trim,
  • Lluis Moragues-Solanas,
  • Roman Lukaszewski,
  • Simon A. Weller,
  • Matthew Gilmour

DOI
https://doi.org/10.1186/s12920-024-02044-w
Journal volume & issue
Vol. 17, no. 1
pp. 1 – 24

Abstract

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Abstract Background Wound infections are a common complication of injuries negatively impacting the patient’s recovery, causing tissue damage, delaying wound healing, and possibly leading to the spread of the infection beyond the wound site. The current gold-standard diagnostic methods based on microbiological testing are not optimal for use in austere medical treatment facilities due to the need for large equipment and the turnaround time. Clinical metagenomics (CMg) has the potential to provide an alternative to current diagnostic tests enabling rapid, untargeted identification of the causative pathogen and the provision of additional clinically relevant information using equipment with a reduced logistical and operative burden. Methods This study presents the development and demonstration of a CMg workflow for wound swab samples. This workflow was applied to samples prospectively collected from patients with a suspected wound infection and the results were compared to routine microbiology and real-time quantitative polymerase chain reaction (qPCR). Results Wound swab samples were prepared for nanopore-based DNA sequencing in approximately 4 h and achieved sensitivity and specificity values of 83.82% and 66.64% respectively, when compared to routine microbiology testing and species-specific qPCR. CMg also enabled the provision of additional information including the identification of fungal species, anaerobic bacteria, antimicrobial resistance (AMR) genes and microbial species diversity. Conclusions This study demonstrates that CMg has the potential to provide an alternative diagnostic method for wound infections suitable for use in austere medical treatment facilities. Future optimisation should focus on increased method automation and an improved understanding of the interpretation of CMg outputs, including robust reporting thresholds to confirm the presence of pathogen species and AMR gene identifications.

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