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Geographical origin discrimination of wheat kernel and white flour using near-infrared reflectance spectroscopy fingerprinting coupled with chemometrics

机译:使用近红外反射光谱法与化学计量学相结合的近红外反射光谱法的地理原点鉴别麦内核和白面粉

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摘要

Wheat kernel and flour with three genotypes across 4 years procured from three different geographical areas of China were analysed using near-infrared reflectance (NIR) spectroscopy coupled with chemometrics to better classify wheat according to the origin, production year and genotypes, respectively. For this purpose, principle component analysis-linear discriminant analysis and multi-way anova were applied to the NIR data. The best classification percentages were obtained for flour matrix both for geographical origin and production years with the correct percentages of 100% and 73%, respectively. For genotypes, wheat whole kernel showed better classification percentage (98.2%). All the samples were validated using external validation procedure and the obtained percentages were found satisfactory with the average prediction abilities of 85% in all regions indicating the suitability of the developed model. Multivariate anova showed that NIR fingerprints of wheat kernels and flours were significantly influenced by regions, years, genotypes and their interactions. In conclusion, white flour showed better performance in discriminating the geographical origin as compared to wheat whole kernel.
机译:使用近红外反射率(NIR)光谱分析来自中国三个不同地理区域的4年的小麦核和面粉,并使用近红外反射率(NIR)光谱分别与化学计量学相结合,以便根据起源,生产年和基因型来更好地分类小麦。为此目的,将原理分析分析 - 线性判别分析和多元ANOVA应用于NIR数据。对于地理来源和生产年份,为面粉矩阵获得最佳分类百分比,分别为100%和73%的正确百分比。对于基因型,小麦全核显示出更好的分类百分比(98.2%)。使用外部验证程序验证所有样品,并发现所获得的百分比令人满意,所有地区的平均预测能力为> 85%,表明了开发模型的适用性。多变量Anova表明,小麦核和面粉的鼻耳指纹受到地区,年,基因型及其相互作用的显着影响。总之,与小麦全核相比,白面粉表现出更好的性能,以鉴别地理来源。

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