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Anal Chem


Title:Volatile-Compound Fingerprinting by Headspace-Gas-Chromatography Ion-Mobility Spectrometry (HS-GC-IMS) as a Benchtop Alternative to (1)H NMR Profiling for Assessment of the Authenticity of Honey
Author(s):Gerhardt N; Birkenmeier M; Schwolow S; Rohn S; Weller P;
Address:"Institute for Instrumental Analytics and Bioanalysis, Mannheim University of Applied Sciences , 68163 Mannheim, Germany. Hamburg School of Food Science, Institute of Food Chemistry, University of Hamburg , 20146 Hamburg, Germany"
Journal Title:Anal Chem
Year:2018
Volume:20180110
Issue:3
Page Number:1777 - 1785
DOI: 10.1021/acs.analchem.7b03748
ISSN/ISBN:1520-6882 (Electronic) 0003-2700 (Linking)
Abstract:"This work describes a simple approach for the untargeted profiling of volatile compounds for the authentication of the botanical origins of honey based on resolution-optimized HS-GC-IMS combined with optimized chemometric techniques, namely PCA, LDA, and kNN. A direct comparison of the PCA-LDA models between the HS-GC-IMS and (1)H NMR data demonstrated that HS-GC-IMS profiling could be used as a complementary tool to NMR-based profiling of honey samples. Whereas NMR profiling still requires comparatively precise sample preparation, pH adjustment in particular, HS-GC-IMS fingerprinting may be considered an alternative approach for a truly fully automatable, cost-efficient, and in particular highly sensitive method. It was demonstrated that all tested honey samples could be distinguished on the basis of their botanical origins. Loading plots revealed the volatile compounds responsible for the differences among the monofloral honeys. The HS-GC-IMS-based PCA-LDA model was composed of two linear functions of discrimination and 10 selected PCs that discriminated canola, acacia, and honeydew honeys with a predictive accuracy of 98.6%. Application of the LDA model to an external test set of 10 authentic honeys clearly proved the high predictive ability of the model by correctly classifying them into three variety groups with 100% correct classifications. The constructed model presents a simple and efficient method of analysis and may serve as a basis for the authentication of other food types"
Keywords:"Brassica napus/chemistry Chromatography, Gas/*methods Flowers/chemistry Honey/*analysis/*classification Ion Mobility Spectrometry/*methods Principal Component Analysis Robinia/chemistry Volatile Organic Compounds/*analysis;"
Notes:"MedlineGerhardt, Natalie Birkenmeier, Markus Schwolow, Sebastian Rohn, Sascha Weller, Philipp eng Research Support, Non-U.S. Gov't 2018/01/04 Anal Chem. 2018 Feb 6; 90(3):1777-1785. doi: 10.1021/acs.analchem.7b03748. Epub 2018 Jan 10"

 
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