In-tube dynamic extraction a green solventless alternative for a sensitive headspace analysis of volatile organic compounds in olive oils

•In-tube dynamic extraction was optimized for volatile compounds of olive oil.•ITEX-DHS is a robust and sensitive alternative to more classical approaches.•31 olive oils from five geographical origins were analyzed.•Linear discriminant analysis was applied to classify the samples. To analyze the vol...

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Bibliographic Details
Published inAdvances in sample preparation Vol. 1; p. 100002
Main Authors Kaziur-Cegla, Wiebke, Wykowski, Lena, Jochmann, Maik.A., Molt, Karl, Bruchmann, Andreas, Schmidt, Torsten.C.
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.02.2022
Elsevier
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Summary:•In-tube dynamic extraction was optimized for volatile compounds of olive oil.•ITEX-DHS is a robust and sensitive alternative to more classical approaches.•31 olive oils from five geographical origins were analyzed.•Linear discriminant analysis was applied to classify the samples. To analyze the volatile organic compounds of olive oils, an automated, robust and sensitive and solventless in-tube extraction dynamic headspace (ITEX-DHS) GC–MS method was developed, optimized and validated. 21 VOCs, typically appearing in olive oils and extra virgin olive oils, were used to develop the method. The extraction procedure was optimized for incubation time, incubation temperature, number of extraction cycles and desorption volume. Repeatability was between 1 and 9% for all analytes, except octanal (11%), and a good recovery (84–118%) was found. The ITEX-DHS method allowed VOC analysis in olive oils at much smaller concentration than in previous studies using solid phase microextraction, with limits of detections from 0.1 to 68.6 µg kg−1. In terms of an application, a linear discriminant analysis (LDA) was conducted including 31 olive oil samples from five different geographical origins, which led to 90.3% correct predictions.
ISSN:2772-5820
2772-5820
DOI:10.1016/j.sampre.2021.100002