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Machine Learning-Assisted Raman Spectroscopy and SERS for Bacterial Pathogen Detection: Clinical, Food Safety, and Environmental Applications

  • Md Hasan Ur Rahman
  • , Rabbi Sikder
  • , Manoj Tripathi
  • , Mahzuzah Zahan
  • , Tao Ye
  • , Etienne Gnimpieba Z
  • , Bharat K. Jasthi
  • , Alan B. Dalton
  • , Venkataramana Gadhamshetty
  • South Dakota School of Mines & Technology
  • University of Sussex
  • University of South Dakota

Research output: Contribution to journalReview articlepeer-review

48 Scopus citations

Abstract

Detecting pathogenic bacteria and their phenotypes including microbial resistance is crucial for preventing infection, ensuring food safety, and promoting environmental protection. Raman spectroscopy offers rapid, seamless, and label-free identification, rendering it superior to gold-standard detection techniques such as culture-based assays and polymerase chain reactions. However, its practical adoption is hindered by issues related to weak signals, complex spectra, limited datasets, and a lack of adaptability for detection and characterization of bacterial pathogens. This review focuses on addressing these issues with recent Raman spectroscopy breakthroughs enabled by machine learning (ML), particularly deep learning methods. Given the regulatory requirements, consumer demand for safe food products, and growing awareness of risks with environmental pathogens, this study emphasizes addressing pathogen detection in clinical, food safety, and environmental settings. Here, we highlight the use of convolutional neural networks for analyzing complex clinical data and surface enhanced Raman spectroscopy for sensitizing early and rapid detection of pathogens and analyzing food safety and potential environmental risks. Deep learning methods can tackle issues with the lack of adequate Raman datasets and adaptability across diverse bacterial samples. We highlight pending issues and future research directions needed for accelerating real-world impacts of ML-enabled Raman diagnostics for rapid and accurate diagnosis and surveillance of pathogens across critical fields.

Original languageEnglish
Article number140
JournalChemosensors
Volume12
Issue number7
DOIs
StatePublished - Jul 2024

Keywords

  • antimicrobial resistance (AMR)
  • bacterial identification
  • convolutional neural networks (CNNs)
  • deep learning
  • machine learning
  • Raman spectroscopy
  • surface-enhanced Raman spectroscopy (SERS)

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