Breakthrough Solution for Antimicrobial Resistance Detection: Surface‐Enhanced Raman Spectroscopy‐based on Artificial Intelligence

Author:

Al‐Shaebi Zakarya12,Akdeniz Munevver12,Ahmed Awel Olsido12,Altunbek Mine3,Aydin Omer1245ORCID

Affiliation:

1. Department of Biomedical Engineering Erciyes University Kayseri 38039 Turkey

2. NanoThera Lab, Drug Application and Research Center (ERFARMA) Erciyes University Kayseri 38039 Turkey

3. Department of Chemical Engineering University of Massachusetts Lowell Lowell MA 01854 USA

4. Clinical Engineering Research and Implementation Center (ERKAM) Erciyes University Kayseri 38030 Turkey

5. Nanotechnology Research and Application Center (ERNAM) Erciyes University Kayseri 38039 Turkey

Abstract

AbstractAntimicrobial resistance (AMR) is a global crisis, responsible for ≈700 000 annual deaths, as reported by the World Health Organization. To counteract this growing threat to public health, innovative solutions for early detection and characterization of drug‐resistant bacterial strains are imperative. Surface‐enhanced Raman spectroscopy (SERS) combined with artificial intelligence (AI) technology presents a promising avenue to address this challenge. This review provides a concise overview of the latest advancements in SERS and AI, showcasing their transformative potential in the context of AMR. It explores the diverse methodologies proposed, highlighting their advantages and limitations. Additionally, the review underscores the significance of SERS in tandem use with machine learning (ML) and deep learning (DL) in combating AMR and emphasizes the importance of ongoing research and development efforts in this critical field. Future developments for this technology could transform the way antimicrobial resistance (AMR) is addressed and pave the way for novel approaches to the protection of public health worldwide.

Publisher

Wiley

Subject

Mechanical Engineering,Mechanics of Materials

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