The Ability of Near-Infrared Spectroscopy to Discriminate Plant Protein Mixtures: A Preliminary Study

Buddhi Dayananda, Priyam Chahwala, D. Cozzolino
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Abstract

The aim of this paper was to evaluate the effect of two different matrices (e.g., starch base flour vs. protein base flour) on the ability of near-infrared (NIR) spectroscopy to classify binary mixtures of chickpea (protein), corn and tapioca (starch) flours. Binary mixtures were made by mixing different proportions of chickpea plus corn, chickpea plus tapioca, and corn plus tapioca flour. Spectra were collected using NIR spectroscopy and the data analyzed using techniques such as principal component analysis (PCA) and partial least squares discriminant analysis (PLS-DA). The results showed an effect of the matrix on the PLS-DA classification results, in both classification rates and PLS loadings. The different combinations of flours/mixtures showed changes in absorbance values around 4752 cm−1 that are associated with starch and protein. Nevertheless, the use of NIR spectroscopic might provide a valuable initial screening and identification of the potential contamination of flours along the supply and value chains, enabling more costly methods to be used more productively on suspect samples.
近红外光谱鉴别植物蛋白混合物能力的初步研究
本文的目的是评价两种不同基质(如淀粉基粉和蛋白质基粉)对近红外光谱(NIR)区分鹰嘴豆(蛋白质)、玉米和木薯(淀粉)粉二元混合物的能力的影响。将鹰嘴豆与玉米、鹰嘴豆与木薯粉、玉米与木薯粉按不同比例混合制成二元混合物。光谱采集采用近红外光谱,数据分析采用主成分分析(PCA)和偏最小二乘判别分析(PLS-DA)等技术。结果表明,在分类率和PLS负载两方面,矩阵对PLS- da分类结果都有影响。不同的面粉/混合物组合在4752 cm−1附近显示出与淀粉和蛋白质相关的吸光度值的变化。尽管如此,近红外光谱的使用可能为面粉在供应链和价值链上的潜在污染提供有价值的初步筛选和识别,使更昂贵的方法能够更有效地用于可疑样品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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