AI Article Synopsis

  • Detecting harmful bacteria and their antibiotic resistance at a single-cell level is crucial for improving clinical diagnoses but poses a significant technological challenge.
  • Using Raman spectroscopy and machine learning, researchers developed a method that accurately identifies 12 common pathogenic bacteria with an impressive accuracy of about 90.73%.
  • The study found that antibiotic-resistant strains have distinct protein structures, making Raman spectroscopy a promising tool for quickly diagnosing infections and determining antibiotic effectiveness.

Article Abstract

Rapid, accurate, and label-free detection of pathogenic bacteria and antibiotic resistance at single-cell resolution is a technological challenge for clinical diagnosis. Overcoming the cumbersome culture process of pathogenic bacteria and time-consuming antibiotic susceptibility assays will significantly benefit early diagnosis and optimize the use of antibiotics in clinics. Raman spectroscopy can collect molecular fingerprints of pathogenic bacteria in a label-free and culture-independent manner, which is suitable for pathogen diagnosis at single-cell resolution. Here, we report a method based on Raman spectroscopy combined with machine learning to rapidly and accurately identify pathogenic bacteria and detect antibiotic resistance at single-cell resolution. Our results show that the average accuracy of identification of 12 species of common pathogenic bacteria by the machine learning method is 90.73 ± 9.72%. Antibiotic-sensitive and antibiotic-resistant strains of isolated from hospital patients were distinguished with 99.92 ± 0.06% accuracy using the machine learning model. Meanwhile, we found that sensitive strains had a higher nucleic acid/protein ratio and antibiotic-resistant strains possessed abundant amide II structures in proteins. This study suggests that Raman spectroscopy is a promising method for rapidly identifying pathogens and detecting their antibiotic susceptibility.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9846160PMC
http://dx.doi.org/10.3389/fmicb.2022.1076965DOI Listing

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