SERS Nanowire Chip and Machine Learning-Enabled Classification of Wild-Type and Antibiotic-Resistant Bacteria at Species and Strain Levels
Das, Sathi; Saxena, Kanchan; Tinguely, Jean-Claude; Pal, Arijit; Wickramasinghe, Nima L.; Khezri, Abdolrahman; Dubey, Vishesh Kumar; Ahmad, Azeem; Perumal, Vivekanandan; Ahmad, Rafi; Wadduwage, Dushan N.; Ahluwalia, Balpreet Singh; Mehta, Dalip Singh
Peer reviewed, Journal article
Accepted version
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https://hdl.handle.net/11250/3163462Utgivelsesdato
2023Metadata
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Originalversjon
ACS Applied Materials & Interfaces. 2023, 15 (20), 24047-24058. 10.1021/acsami.3c00612Sammendrag
Antimicrobial resistance (AMR) is a major health threat worldwide and the culture-based bacterial detection methods are slow. Surface-enhanced Raman spectroscopy (SERS) can be used to identify target analytes in real time with sensitivity down to the single-molecule level, providing a promising solution for the culture-free bacterial detection. We report the fabrication of SERS substrates having tightly packed silver (Ag) nanoparticles loaded onto long silicon nanowires (Si NWs) grown by the metal-assisted chemical etching (MACE) method for the detection of bacteria. The optimized SERS chips exhibited sensitivity down to 10–12 M concentration of R6G molecules and detected reproducible Raman spectra of bacteria down to a concentration of 100 colony forming units (CFU)/mL, which is a thousand times lower than the clinical threshold of bacterial infections like UTI (105 CFU/mL). A Siamese neural network model was used to classify SERS spectra from bacteria specimens. The trained model identified 12 different bacterial species, including those which are causative agents for tuberculosis and urinary tract infection (UTI). Next, the SERS chips and another Siamese neural network model were used to differentiate AMR strains from susceptible strains of Escherichia coli (E. coli). The enhancement offered by SERS chip-enabled acquisitions of Raman spectra of bacteria directly in the synthetic urine by spiking the sample with only 103 CFU/mL E. coli. Thus, the present study lays the ground for the identification and quantification of bacteria on SERS chips, thereby offering a potential future use for rapid, reproducible, label-free, and low limit detection of clinical pathogens.