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Characterisation of lavender essential oils by using gas chromatography - mass spectrometry with correlation of linear retention indices and comparison with comprehensive two-dimensional gas chromatography

journal contribution
posted on 2023-05-16, 17:09 authored by Robert ShellieRobert Shellie, Mondello, L, Marriott, PJ, Dugo, G
Nine samples of lavender essential oil were analysed by GC-MS using low-polarity and polar capillary columns. Linear retention indices (LRI) were calculated for each component detected. Characterisation of the individual components making up the oils was performed with the use of an mass spectrometry (MS) library developed in-house. The MS library was designed to incorporate the chromatographic data in the form of linear retention indices. The MS search routine used linear retention indices as a post-search filter and identification of the "unknowns" was made more reliable as this approach provided two independent parameters on which the identification was based. Around 70% of the total number of components in each sample were reliably characterised. A total of 85 components were identified. Semi-quantitative analysis of the same nine samples was performed by gas chromatography (GC) with flame ionisation detection (FID). The identified components accounted for more than 95% of each oil. By comparing the GC-MS results with the results from the GC×GC-FID analysis of a lavender essential oil, many more components could be found within the two-dimensional separation space. © 2002 Elsevier Science B.V. All rights reserved.

History

Publication title

Journal of Chromatography A

Volume

970

Issue

1/2

Pagination

225-234

ISSN

0021-9673

Department/School

School of Natural Sciences

Publisher

Elsevier Science BV

Place of publication

Amsterdam

Repository Status

  • Restricted

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