Combining Multi-Element Analysis with Statistical Modeling for Tracing the Origin of Green Coffee Beans from Amhara Region, Ethiopia

被引:0
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作者
Minbale Endaye
Minaleshewa Atlabachew
Bewketu Mehari
Melkamu Alemayehu
Daniel Ayalew Mengistu
Bizuayehu Kerisew
机构
[1] Bahir Dar University,Department of Chemistry, College of Science
[2] University of Gondar,Department of Chemistry, College of Natural and Computational Sciences
[3] Bahir Dar University,Department of Plant Sciences, College of Agriculture and Environmental Sciences
[4] Bahir Dar University,Department of Geography and Environmental Studies, Faculty of Social Sciences, and Geospatial Data and Technology Center
[5] Bahir Dar University,Department of Biology, College of Science
来源
Biological Trace Element Research | 2020年 / 195卷
关键词
Amhara Region; Green coffee beans; Metals; Geographical origin; Linear discriminate analysis; Principal component analysis;
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学科分类号
摘要
Characterization of coffee terroirs is important to determine authenticity and provide confidence for consumers to select the right product. In this regard, Amhara Region, which is located at the northwestern part of Ethiopia, produces various local coffee types with distinct cup qualities. The coffees are, however, not yet registered with certification marks or trademarks for indications of their geographical origins. This study was aimed at developing analytical methodology useful to determine the geographical origin of green coffee beans produced in Amhara Region based on multi-element analysis combined with multivariate statistical techniques. For this, a total of 120 samples of green coffee beans, collected from four major cultivating zones (West Gojjam, East Gojjam, Awi, and Bahir Dar Especial Zones) were analyzed for K, Mg, Ca, Mn, Fe, Cu, Fe, Co, Ni, Zn, Si, Cr, Cd, and Pb using inductively coupled plasma–optical emission spectroscopy. The elemental analysis data were subjected to principal component analysis (PCA) and linear discriminant analysis (LDA). PCA was used to explore the natural groupings of samples and the discriminatory ability of elements. Accordingly, the elements K, Mg, Ca, and Na were found to be the main discriminators among samples. LDA provided a model to classify the coffee samples based on their production zones with an accuracy of 94.2% and prediction ability of 93.4%. Thus, the elemental composition of green coffee beans can be used as a chemical descriptor in the authentication of coffee produced in Amhara Region.
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页码:669 / 678
页数:9
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