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Title: | The application of multi-elemental fingerprints and chemometrics for discriminating between cage and free-range table eggs based on atomic absorption spectrometry (AAS) and colorimetry. | Authors: | Dibakoane, Siphosethu Richard. Meiring, Belinda. Dube, Buhlebenkosi Amanda. Wokadala, Obiro Cuthbert. Mlambo, Victor. University of Mpumalanga Tshwane University of Technology University of Mpumalanga University of Mpumalanga University of Mpumalanga |
Keywords: | Label claims.;Grain-fed eggs.;Free-range eggs.;Machine learning.;Principal component analysis.;Naive bayes (bayesian).;Support vector machine learning.;K-means clustering.;Flame-atomic absorption spectrometry (AAS). | Issue Date: | 2023 | Publisher: | Journal of Food Measurement and Characterization | Abstract: | Mislabeling is a common fraudulent activity in food marketing as producers take advantage of rising demand for ethically produced, high quality animal products such as free-range table eggs. Detection and prevention of this commercial fraud requires robust and widely available tools that can accurately distinguish table eggs from a variety of sources. In this study, the efficacy of multi-elemental fingerprints to discriminate between cage and free-range table whole eggs was assessed using chemometrics. The elemental concentrations of N, P, K, Ca, Mg, Na, Zn, Cu, Fe, and B in cage and free-range table eggs consisting of 99 specimens, with an 80%:20% split between the calibration and verification sets (83 and 16 specimen, respectively) were determined using Flame-Atomic Absorption spectrometry (AAS) and colorimetry. Principal Component Analysis (PCA) for fingerprint determination was applied in combination with Bayesian Machine Learning (PCA-BML), Support Vector Machine (PCA-SVM), and K-Means Clustering (PCA/K-Means). The classification verification set specimens were identified with accuracy and F1-scores ranging from 81.3- 100.0% and 80–100% respectively. PCA/K-Means was the most effective classification model with sensitivity, precision/specificity, accuracy, and FI-score values of 100% while the false positivity rates (FPR) was 0%. The results demonstrated that AAS and colorimetry derived multi-elemental fingerprints and chemometrics were an effective and feasible tool to discriminate between cage and free-range table eggs. Therefore, AAS and colorimetry multi-elemental fingerprints combined with chemometrics can be used to reduce fraudulent marketing practices and improve quality control in the egg industry due to their wide availability, versality, robustness. | Description: | Published version | URI: | https://openscholar.ump.ac.za/handle/20.500.12714/749 | DOI: | 10.1007/s11694-023-01899-4 |
Appears in Collections: | Journal articles |
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The-application-of-multi-elemental-fingerprints-and-chemometrics-for-discriminating-between-cage-and-free-range-table-eggs.pdf Until 2050-01-03 | Published version | 1.08 MB | Adobe PDF | View/Open Request a copy |
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