A fluorescent sensor array based on antibiotic-stabilized metal nanoclusters for the multiplex detection of bacteria.
Maryam MousavizadeganMorteza HosseiniMahsa N SheikholeslamiMohammad Reza GanjaliPublished in: Mikrochimica acta (2024)
To address the need for facile, rapid detection of pathogens in water supplies, a fluorescent sensing array platform based on antibiotic-stabilized metal nanoclusters was developed for the multiplex detection of pathogens. Using five common antibiotics, eight different nanoclusters (NCs) were synthesized including ampicillin stabilized copper NCs, cefepime stabilized gold and copper NCs, kanamycin stabilized gold and copper NCs, lysozyme stabilized gold NCs, and vancomycin stabilized gold/silver and copper NCs. Based on the different interaction of each NC with the bacteria strains, unique patterns were generated. Various machine learning algorithms were employed for pattern discernment, among which the artificial neural networks proved to have the highest performance, with an accuracy of 100%. The developed prediction model performed well on an independent test dataset and on real samples gathered from drinking water, tap water and the Anzali Lagoon water, with prediction accuracy of 96.88% and 95.14%, respectively. This work demonstrates how generic antibiotics can be implemented for NC synthesis and used as recognition elements for pathogen detection. Furthermore, it displays how merging machine learning techniques can elevate sensitivity of analytical devices.
Keyphrases
- label free
- machine learning
- drinking water
- real time pcr
- high throughput
- sensitive detection
- quantum dots
- loop mediated isothermal amplification
- silver nanoparticles
- neural network
- living cells
- fluorescent probe
- escherichia coli
- gram negative
- energy transfer
- health risk assessment
- mass spectrometry
- single cell
- visible light
- metal organic framework