Affiliation:
1. Abteilung Mikrobiologie, Zentralinstitut für Ernährungs- und Lebensmittelforschung (ZIEL), Technische Universität München, D-85350 Freising, Germany
2. Synthon GmbH, Im Neuenheimer Feld 583, D-69120 Heidelberg, Germany
3. Institut für Mikrosystemtechnik, Universität Freiburg, 79110 Freiburg, Germany
Abstract
ABSTRACT
Differentiation of the species within the genus
Listeria
is important for the food industry but only a few reliable methods are available so far. While a number of studies have used Fourier transform infrared (FTIR) spectroscopy to identify bacteria, the extraction of complex pattern information from the infrared spectra remains difficult. Here, we apply artificial neural network technology (ANN), which is an advanced multivariate data-processing method of pattern analysis, to identify
Listeria
infrared spectra at the species level. A hierarchical classification system based on ANN analysis for
Listeria
FTIR spectra was created, based on a comprehensive reference spectral database including 243 well-defined reference strains of
Listeria monocytogenes
,
L. innocua
,
L. ivanovii
,
L. seeligeri
, and
L. welshimeri
. In parallel, a univariate FTIR identification model was developed. To evaluate the potentials of these models, a set of 277 isolates of diverse geographical origins, but not included in the reference database, were assembled and used as an independent external validation for species discrimination. Univariate FTIR analysis allowed the correct identification of 85.2% of all strains and of 93% of the
L. monocytogenes
strains. ANN-based analysis enhanced differentiation success to 96% for all
Listeria
species, including a success rate of 99.2% for correct
L. monocytogenes
identification. The identity of the 277-strain test set was also determined with the standard phenotypical API
Listeria
system. This kit was able to identify 88% of the test isolates and 93% of
L. monocytogenes
strains. These results demonstrate the high reliability and strong potential of ANN-based FTIR spectrum analysis for identification of the five
Listeria
species under investigation. Starting from a pure culture, this technique allows the cost-efficient and rapid identification of
Listeria
species within 25 h and is suitable for use in a routine food microbiological laboratory.
Publisher
American Society for Microbiology
Subject
Ecology,Applied Microbiology and Biotechnology,Food Science,Biotechnology
Reference41 articles.
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