Abstract
Detection and prevention of fish food fraud are of ever-increasing importance, prompting the need for rapid, high-throughput fish speciation techniques. Rapid Evaporative Ionisation Mass Spectrometry (REIMS) has quickly established itself as a powerful technique for the instant in situ analysis of foodstuffs. In the current study, a total of 1736 samples (2015–2021) - comprising 17 different commercially valuable fish species - were analysed using iKnife-REIMS, followed by classification with various multivariate and machine learning strategies. The results demonstrated that multivariate models, i.e. PCA-LDA and (O)PLS-DA, delivered accuracies from 92.5 to 100.0%, while RF and SVM-based classification generated accuracies from 88.7 to 96.3%. Real-time recognition on a separate test set of 432 samples (2022) generated correct speciation between 89.6 and 99.5% for the multivariate models, while the ML models underperformed (22.3–95.1%), in particular for the white fish species. As such, we propose a real-time validated modelling strategy using directly amenable PCA-LDA for rapid industry-proof large-scale fish speciation.
Original language | English |
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Article number | 134632 |
Number of pages | 8 |
Journal | Food Chemistry |
Volume | 404 |
Issue number | Part B |
Early online date | 21 Oct 2022 |
DOIs | |
Publication status | Published - 15 Mar 2023 |
Keywords
- Ambient Ionisation Mass Spectrometry
- Fish Speciation
- Machine Learning
- Metabolomics
- Multivariate Chemometric Modelling
- Real-time Prediction
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Dive into the research topics of 'Multivariate versus machine learning-based classification of rapid evaporative ionisation mass spectrometry spectra towards industry based large-scale fish speciation'. Together they form a unique fingerprint.Student theses
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Advanced mass spectrometry coupled with chemometric data analysis for innovative food authenticity measurement
Hong, Y. (Author), Elliott, C. (Supervisor) & van Ruth, S. (Supervisor), Dec 2023Student thesis: Doctoral Thesis › Doctor of Philosophy
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