4.8 Article

Rapid Identification and Classification of Pathogens That Produce Carbapenemases and Cephalosporinases with a Colorimetric Paper-Based Multisensor

Journal

ANALYTICAL CHEMISTRY
Volume 94, Issue 26, Pages 9442-9449

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.analchem.2c017249442Anal

Keywords

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Funding

  1. la Caixa Foundation
  2. European Institute of Innovation and Technology, EIT (European Union) [CI20/00538]
  3. IdISBa, Impost turisme sostenible
  4. Agencia d'Estrategia Turistica de les Illes Balears-Govern de les Illes Balears

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In this study, a multisensor was proposed for the rapid detection of bacterial pathogens carrying different types of β-lactamases. The sensor can generate colored spots that can be quantified and interpreted to identify the presence of specific enzymes.
ABSTRACT: Infections caused by bacteria that produce ,glactamases (BLs) are a major problem in hospital settings. The phenotypic detection of these bacterial strains requires culturing samples prior to analysis. This procedure may take up to 72 h, and therefore it cannot be used to guide the administration of the first antibiotic regimen. Here, we propose a multisensor for identifying pathogens bearing different types of ,g-lactamases above the infectious dose threshold within 90 min that does not require culturing samples. Instead, bacterial cells are preconcentrated in the cellulose scaffold of a paper-based multisensor. Then, 12 assays are performed in parallel to identify whether the pathogens produce carbapenemases and/or cephalosporinases, including metallo-,glactamases, extended-spectrum ,g-lactamases (ESBLs), and AmpC enzymes. The multisensor generates an array of colored spots that can be quantified with image processing software and whose interpretation leads to the detection of the different enzymes depending on their specificity toward the hydrolysis of certain antibiotics, and/or their pattern of inhibition or cofactor activation. The test was validated for the diagnosis of urinary tract infections. The inexpensive paper platform along with the uncomplicated colorimetric readout makes the proposed prototypes promising for developing fully automated platforms for streamlined clinical diagnosis.

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