Label‐free surface‐enhanced Raman spectroscopy coupled with machine learning algorithms in pathogenic microbial identification: Current trends, challenges, and perspectives

Author:

Tang Jia‐Wei12,Yuan Quan3,Wen Xin‐Ru3,Usman Muhammad3,Tay Alfred Chin Yen2456ORCID,Wang Liang1789ORCID

Affiliation:

1. Laboratory Medicine Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences) Southern Medical University Guangzhou China

2. The Marshall Centre for Infectious Diseases Research and Training The University of Western Australia Perth Australia

3. The School of Medical Informatics and Engineering Xuzhou Medical University Xuzhou China

4. Marshall Laboratory of Biomedical Engineering School of Medicine Shenzhen University Shenzhen China

5. Marshall International Digestive Diseases Hospital Zhengzhou University Zhengzhou China

6. Marshall Medical Research Center Fifth Affiliated Hospital of Zhengzhou University Zhengzhou China

7. Division of Microbiology and Immunology School of Biomedical Sciences The University of Western Australia Perth Australia

8. Center for Precision Health School of Medical and Health Sciences Edith Cowan University Perth Australia

9. School of Agriculture and Food Sustainability University of Queensland Brisbane Australia

Abstract

AbstractInfectious diseases caused by microbial pathogens remain a primary contributor to global health burdens. Prompt control and effective prevention of these pathogens are critical for public health and medical diagnostics. Conventional microbial detection methods suffer from high complexity, low sensitivity, and poor selectivity. Therefore, developing rapid and reliable methods for microbial pathogen detection has become imperative. Surface‐enhanced Raman Spectroscopy (SERS), as an innovative non‐invasive diagnostic technique, holds significant promise in pathogenic microorganism detection due to its rapid, reliable, and cost‐effective advantages. This review comprehensively outlines the fundamental theories of Raman Spectroscopy (RS) with a focus on label‐free SERS strategy, reporting on the latest advancements of SERS technique in detecting bacteria, viruses, and fungi in clinical settings. Furthermore, we emphasize the application of machine learning algorithms in SERS spectral analysis. Finally, challenges faced by SERS application are probed, and the prospective development is discussed.

Publisher

Wiley

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