Identification and discrimination of oral asaccharolytic Eubacterium spp. by pyrolysis mass spectrometry and artificial neural networks

R Goodacre, S J Hiom, S L Cheeseman, D Murdoch, A J Weightman, W G Wade

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    41 Citations (Scopus)

    Abstract

    Curie-point pyrolysis mass spectra were obtained from 29 oral asaccharolytic Eubacterium strains and 6 abscess isolates previously identified as Peptostreptococcus heliotrinreducens. Pyrolysis mass spectrometry (PyMS) with cluster analysis was able to clarify the taxonomic position of this group of organisms. Artificial neural networks (ANNS) were then trained by supervised learning (with the back-propagation algorithm) to recognize the strains from their pyrolysis mass spectra; all Eubacterium strains were correctly identified, and the abscess isolates were identified as un-named Eubacterium taxon C2 and were distinct from the type strain of P. heliotrinreducens. These results demonstrate that the combination of PyMS and ANNs provides a rapid and accurate identification technique.
    Original languageEnglish
    Pages (from-to)77-84
    Number of pages8
    JournalCURRENT MICROBIOLOGY
    Volume32
    Issue number2
    Publication statusPublished - 1996

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