Classification of Bee Pollen and Prediction of Sensory and Colorimetric Attributes-A Sensometric Fusion Approach by e-Nose, e-Tongue and NIR

被引:19
|
作者
Sipos, Laszlo [1 ]
Vegh, Rita [2 ]
Bodor, Zsanett [3 ]
Zaukuu, John-Lewis Zinia [3 ]
Hitka, Geza [1 ]
Bazar, Gyorgy [4 ,5 ]
Kovacs, Zoltan [3 ]
机构
[1] Szent Istvan Univ, Fac Food Sci, Dept Postharvest, Commercial & Sensory Sci, 39-43 Villanyi St, H-1118 Budapest, Hungary
[2] Szent Istvan Univ, Fac Food Sci, Dept Food Chem & Nutr Sci, 14-16 Somloi St, H-1118 Budapest, Hungary
[3] Szent Istvan Univ, Fac Food Sci, Dept Measurement & Proc Control, 14-16 Somloi St, H-1118 Budapest, Hungary
[4] Szent Istvan Univ, Fac Agr & Environm Sci, Dept Nutr Sci & Prod Technol, 40 Guba Sandor St, H-7400 Kaposvar, Hungary
[5] ADEXGO Ltd, 13 Lapostelki St, H-8230 Balatonfured, Hungary
关键词
CIE L*a*b* colour coordinates; spectra; palynological analysis; electronic nose; electronic tongue; sensory panel performance; multivariate analysis; principal component analysis (PCA); linear discriminant analysis (LDA); partial least square regression (PLSR); BOTANICAL ORIGIN; HONEY; ADULTERATION; PREFERENCE; PRODUCTS; VOLATILE; FRESH; COLOR;
D O I
10.3390/s20236768
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The chemical composition of bee pollens differs greatly and depends primarily on the botanical origin of the product. Therefore, it is a crucially important task to discriminate pollens of different plant species. In our work, we aim to determine the applicability of microscopic pollen analysis, spectral colour measurement, sensory, NIR spectroscopy, e-nose and e-tongue methods for the classification of bee pollen of five different botanical origins. Chemometric methods (PCA, LDA) were used to classify bee pollen loads by analysing the statistical pattern of the samples and to determine the independent and combined effects of the above-mentioned methods. The results of the microscopic analysis identified 100% of sunflower, red clover, rapeseed and two polyfloral pollens mainly containing lakeshore bulrush and spiny plumeless thistle. The colour profiles of the samples were different for the five different samples. E-nose and NIR provided 100% classification accuracy, while e-tongue > 94% classification accuracy for the botanical origin identification using LDA. Partial least square regression (PLS) results built to regress on the sensory and spectral colour attributes using the fused data of NIR spectroscopy, e-nose and e-tongue showed higher than 0.8 R-2 during the validation except for one attribute, which was much higher compared to the independent models built for instruments.
引用
收藏
页码:1 / 22
页数:21
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