Nature Communications (Nov 2024)

Non-invasive in vivo sensing of bacterial implant infection using catalytically-optimised gold nanocluster-loaded liposomes for urinary readout

  • Kaili Chen,
  • Adrian Najer,
  • Patrick Charchar,
  • Catherine Saunders,
  • Chalaisorn Thanapongpibul,
  • Anna Klöckner,
  • Mohamed Chami,
  • David J. Peeler,
  • Inês Silva,
  • Luca Panariello,
  • Kersti Karu,
  • Colleen N. Loynachan,
  • Leah C. Frenette,
  • Michael Potter,
  • John S. Tregoning,
  • Ivan P. Parkin,
  • Andrew M. Edwards,
  • Thomas B. Clarke,
  • Irene Yarovsky,
  • Molly M. Stevens

DOI
https://doi.org/10.1038/s41467-024-53537-2
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 18

Abstract

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Abstract Staphylococcus aureus is a leading cause of nosocomial implant-associated infections, causing significant morbidity and mortality, underscoring the need for rapid, non-invasive, and cost-effective diagnostics. Here, we optimise the synthesis of renal-clearable gold nanoclusters (AuNCs) for enhanced catalytic activity with the aim of developing a sensitive colourimetric diagnostic for bacterial infection. All-atom molecular dynamics (MD) simulations confirm the stability of glutathione-coated AuNCs and surface access for peroxidase-like activity in complex physiological environments. We subsequently develop a biosensor by encapsulating these optimised AuNCs in bacterial toxin-responsive liposomes, which is extensively studied by various single-particle techniques. Upon exposure to S. aureus toxins, the liposomes rupture, releasing AuNCs that generate a colourimetric signal after kidney-mimetic filtration. The biosensor is further validated in vitro and in vivo using a hyaluronic acid (HA) hydrogel implant infection model. Urine samples collected from mice with bacteria-infected HA hydrogel implants turn blue upon substrate addition, confirming the suitability of the sensor for non-invasive detection of implant-associated infections. This platform has significant potential as a versatile, cost-effective diagnostic tool.