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Fusion data from FT-IR and MALDI-TOF MS result in more accurate classification of specific microbiota.

Wenjing GaoYing HanLiangqiang ChenXue TanJieyou LiuJinghang XieBin LiHuilin ZhaoShaoning YuHuabin TuBin FengFan Yang
Published in: The Analyst (2023)
Microbes are usually present as a specific microbiota, and their classification remains a challenge. MALDI-TOF MS is particularly successful in library-based microbial identification at the species level as it analyzes the molecular weight of peptides and ribosomal proteins. FT-IR allows more accurate classification of bacteria at the subspecies level due to the high sensitivity, specificity and repeatability of FT-IR signals from bacteria, which is not achievable with MALDI-TOF MS. Previous studies have shown that more accurate identification results can be obtained by the fusion of FT-IR and MALDI-TOF MS spectral data. Here, we constructed 20 groups of model microbiota samples and used FT-IR, MALDI-TOF MS, and their fusion data to classify them. Hierarchical clustering analysis (HCA) showed that the classification accuracy of FT-IR, MALDI-TOF MS, and the fusion data was 85%, 90%, and 100%, respectively. These results indicate that both FT-IR and MALDI-TOF MS can effectively classify specific microbiota, and the fusion of their spectral data could improve the classification accuracy. The FT-IR and MALDI-TOF MS data fusion strategy may be a promising technology for specific microbiota classification.
Keyphrases
  • mass spectrometry
  • machine learning
  • deep learning
  • electronic health record
  • big data
  • high resolution
  • optical coherence tomography
  • data analysis
  • computed tomography
  • single cell
  • bioinformatics analysis