Literature DB >> 32801186

Arcobacter Identification and Species Determination Using Raman Spectroscopy Combined with Neural Networks.

Kaidi Wang1, Lei Chen1,2, Xiangyun Ma1,3, Lina Ma1, Keng C Chou2, Yankai Cao4, Izhar U H Khan5, Greta Gölz6, Xiaonan Lu7,2.   

Abstract

Rapid and accurate identification of Arcobacter is of great importance because it is considered an emerging food- and waterborne pathogen and potential zoonotic agent. Raman spectroscopy can differentiate bacteria based on Raman scattering spectral patterns of whole cells in a fast, reagentless, and easy-to-use manner. We aimed to detect and discriminate Arcobacter bacteria at the species level using confocal micro-Raman spectroscopy (785 nm) coupled with neural networks. A total of 82 reference and field isolates of 18 Arcobacter species from clinical, environmental, and agri-food sources were included. We determined that the bacterial cultivation time and growth temperature did not significantly influence the Raman spectral reproducibility and discrimination capability. The genus Arcobacter could be successfully differentiated from the closely related genera Campylobacter and Helicobacter using principal-component analysis. For the identification of Arcobacter to the species level, an accuracy of 97.2% was achieved for all 18 Arcobacter species using Raman spectroscopy combined with a convolutional neural network (CNN). The predictive capability of Raman-CNN was further validated using an independent data set of 12 Arcobacter strains. Furthermore, a Raman spectroscopy-based fully connected artificial neural network (ANN) was constructed to determine the actual ratio of a specific Arcobacter species in a bacterial mixture ranging from 5% to 100% by biomass (regression coefficient >0.99). The application of both CNN and fully connected ANN improved the accuracy of Raman spectroscopy for bacterial species determination compared to the conventional chemometrics. This newly developed approach enables rapid identification and species determination of Arcobacter within an hour following cultivation.IMPORTANCE Rapid identification of bacterial pathogens is critical for developing an early warning system and performing epidemiological investigation. Arcobacter is an emerging foodborne pathogen and has become more important in recent decades. The incidence of Arcobacter species in the agro-ecosystem is probably underestimated mainly due to the limitation in the available detection and characterization techniques. Raman spectroscopy combined with machine learning can accurately identify Arcobacter at the species level in a rapid and reliable manner, providing a promising tool for epidemiological surveillance of this microbe in the agri-food chain. The knowledge elicited from this study has the potential to be used for routine bacterial screening and diagnostics by the government, food industry, and clinics.
Copyright © 2020 American Society for Microbiology.

Entities:  

Keywords:  Arcobacterzzm321990; Raman spectroscopy; convolutional neural network; fully connected artificial neural network; machine learning; rapid identification

Mesh:

Year:  2020        PMID: 32801186      PMCID: PMC7531966          DOI: 10.1128/AEM.00924-20

Source DB:  PubMed          Journal:  Appl Environ Microbiol        ISSN: 0099-2240            Impact factor:   4.792


  50 in total

Review 1.  Taxonomy of Campylobacter, Arcobacter, Helicobacter and related bacteria: current status, future prospects and immediate concerns.

Authors:  S L On
Journal:  Symp Ser Soc Appl Microbiol       Date:  2001

2.  Development of a multiplex PCR assay for the simultaneous detection and identification of Arcobacter butzleri, Arcobacter cryaerophilus and Arcobacter skirrowii.

Authors:  K Houf; A Tutenel; L De Zutter; J Van Hoof; P Vandamme
Journal:  FEMS Microbiol Lett       Date:  2000-12-01       Impact factor: 2.742

Review 3.  Prevalence of Helicobacter pylori infection worldwide: a systematic review of studies with national coverage.

Authors:  Bárbara Peleteiro; Ana Bastos; Ana Ferro; Nuno Lunet
Journal:  Dig Dis Sci       Date:  2014-02-22       Impact factor: 3.199

4.  Convolutional neural networks for vibrational spectroscopic data analysis.

Authors:  Jacopo Acquarelli; Twan van Laarhoven; Jan Gerretzen; Thanh N Tran; Lutgarde M C Buydens; Elena Marchiori
Journal:  Anal Chim Acta       Date:  2016-12-27       Impact factor: 6.558

5.  Deep convolutional neural networks for Raman spectrum recognition: a unified solution.

Authors:  Jinchao Liu; Margarita Osadchy; Lorna Ashton; Michael Foster; Christopher J Solomon; Stuart J Gibson
Journal:  Analyst       Date:  2017-10-23       Impact factor: 4.616

6.  Near infrared Raman spectra of human brain lipids.

Authors:  Christoph Krafft; Lars Neudert; Thomas Simat; Reiner Salzer
Journal:  Spectrochim Acta A Mol Biomol Spectrosc       Date:  2005-05       Impact factor: 4.098

7.  Raman spectroscopy for optical diagnosis in normal and cancerous tissue of the nasopharynx-preliminary findings.

Authors:  David P Lau; Zhiwei Huang; Harvey Lui; Chris S Man; Ken Berean; Murray D Morrison; Haishan Zeng
Journal:  Lasers Surg Med       Date:  2003       Impact factor: 4.025

8.  Circulation and long-term fate of functionalized, biocompatible single-walled carbon nanotubes in mice probed by Raman spectroscopy.

Authors:  Zhuang Liu; Corrine Davis; Weibo Cai; Lina He; Xiaoyuan Chen; Hongjie Dai
Journal:  Proc Natl Acad Sci U S A       Date:  2008-01-29       Impact factor: 11.205

9.  A PCR-DGGE method for detection and identification of Campylobacter, Helicobacter, Arcobacter and related Epsilobacteria and its application to saliva samples from humans and domestic pets.

Authors:  R F Petersen; C S Harrington; H E Kortegaard; S L W On
Journal:  J Appl Microbiol       Date:  2007-10-03       Impact factor: 3.772

10.  Raman spectroscopy for identification of epithelial cancers.

Authors:  Nicholas Stone; Catherine Kendall; Jenny Smith; Paul Crow; Hugh Barr
Journal:  Faraday Discuss       Date:  2004       Impact factor: 4.008

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3.  Discrimination between Carbapenem-Resistant and Carbapenem-Sensitive Klebsiella pneumoniae Strains through Computational Analysis of Surface-Enhanced Raman Spectra: a Pilot Study.

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