Direct metagenomics investigation of non-surgical hard-to-heal wounds: a review

Ann Clin Microbiol Antimicrob. 2024 May 3;23(1):39. doi: 10.1186/s12941-024-00698-z.

Abstract

Background: Non-surgical chronic wounds, including diabetes-related foot diseases (DRFD), pressure injuries (PIs) and venous leg ulcers (VLU), are common hard-to-heal wounds. Wound evolution partly depends on microbial colonisation or infection, which is often confused by clinicians, thereby hampering proper management. Current routine microbiology investigation of these wounds is based on in vitro culture, focusing only on a limited panel of the most frequently isolated bacteria, leaving a large part of the wound microbiome undocumented.

Methods: A literature search was conducted on original studies published through October 2022 reporting metagenomic next generation sequencing (mNGS) of chronic wound samples. Studies were eligible for inclusion if they applied 16 S rRNA metagenomics or shotgun metagenomics for microbiome analysis or diagnosis. Case reports, prospective, or retrospective studies were included. However, review articles, animal studies, in vitro model optimisation, benchmarking, treatment optimisation studies, and non-clinical studies were excluded. Articles were identified in PubMed, Google Scholar, Web of Science, Microsoft Academic, Crossref and Semantic Scholar databases.

Results: Of the 3,202 articles found in the initial search, 2,336 articles were removed after deduplication and 834 articles following title and abstract screening. A further 14 were removed after full text reading, with 18 articles finally included. Data were provided for 3,628 patients, including 1,535 DRFDs, 956 VLUs, and 791 PIs, with 164 microbial genera and 116 species identified using mNGS approaches. A high microbial diversity was observed depending on the geographical location and wound evolution. Clinically infected wounds were the most diverse, possibly due to a widespread colonisation by pathogenic bacteria from body and environmental microbiota. mNGS data identified the presence of virus (EBV) and fungi (Candida and Aspergillus species), as well as Staphylococcus and Pseudomonas bacteriophages.

Conclusion: This study highlighted the benefit of mNGS for time-effective pathogen genome detection. Despite the majority of the included studies investigating only 16 S rDNA, ignoring a part of viral, fungal and parasite colonisation, mNGS detected a large number of bacteria through the included studies. Such technology could be implemented in routine microbiology for hard-to-heal wound microbiota investigation and post-treatment wound colonisation surveillance.

Keywords: 16S rDNA metagenomics; Non-surgical hard-to-heal wounds; Pathogen genome detection; Shotgun metagenomics, microbial diversity; Wound healing; Wound-colonising microorganisms.

Publication types

  • Review

MeSH terms

  • Bacteria* / classification
  • Bacteria* / genetics
  • Bacteria* / isolation & purification
  • Diabetic Foot / microbiology
  • High-Throughput Nucleotide Sequencing*
  • Humans
  • Metagenomics* / methods
  • Microbiota / genetics
  • Pressure Ulcer / microbiology
  • Varicose Ulcer / microbiology
  • Wound Healing
  • Wound Infection / microbiology