Abstract
Multivariate analysis (PC-CVA and GA-CVA) was carried out on time-of-flight secondary ion mass spectra (ToF-SIMS) derived from 16 bacterial isolates associated with urinary tract infections, with an objective of extracting the spectral information relevant to their species-level discrimination. The use of spectral pre-processing, such as removal of the dominant peaks prior to analysis and analysis of the dominant peaks alone, enabled the identification of 37 peaks contributing to the principal components-canonical variates analysis (PC-CVA) discrimination of the bacterial isolates in the mass range of m/z 1-1000. These included signals at m/z 70, 84, 120, 134, 140, 150, 175 and 200. A univariate statistical analysis (Kruskal-Wallis) of the signal intensities at the identified m/z enabled an understanding of the discriminatory basis, which can be used in the development of robust parsimonious models for predictive purposes. The utility of genetic algorithm (GA)-based feature selection in identifying the discriminatory variables is also demonstrated. A database search of the identified signals enabled the biochemical origins of some these signals to be postulated. © The Royal Society of Chemistry 2009.
Original language | English |
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Pages (from-to) | 2352-2360 |
Number of pages | 8 |
Journal | Analyst |
Volume | 134 |
Issue number | 11 |
DOIs | |
Publication status | Published - 2009 |
Keywords
- lactic-acid bacteria
- urinary-tract-infection
- ion mass-spectrometry
- principal component analysis
- enterococcus-faecalis
- klebsiella-pneumoniae
- genetic algorithms
- variable selection
- amino-acids
- identification
Research Beacons, Institutes and Platforms
- Manchester Institute of Biotechnology