化学
小麦面粉
荧光光谱法
光谱学
荧光
食品科学
光谱特性
质量(理念)
食品质量
分析化学(期刊)
色谱法
光学
计算化学
量子力学
认识论
物理
哲学
作者
Denise Ziegler,Lukas Buck,Katharina Anne Scherf,Lutz Popper,Bernd Hitzmann
摘要
ABSTRACT Background and Objectives Spectroscopy of wheat kernels and flour has been used as a rapid tool to assess wheat quality, but predictions still lack in accuracy for most quality parameters except for protein content. To enable an improved prediction of further quality characteristics, new approaches are needed. This study investigates if the preprocessing of flour into flour fractions (by air classification, sieving) or dough and subsequent spectroscopic analysis of these types of samples could be a new way to improve wheat quality predictions. For this purpose, spectral differences are investigated and predictions of farinograph parameters are compared for fluorescence spectra of flour, flour fractions, and dough. Findings A wide variety of fluorophores present in cereal products was identified. Their peak intensities significantly differed for flour, flour fractions, and dough. Flour and sieve fractions were superior in predicting water absorption ( R 2 CV flour = 0.79; R 2 CV 32–50 µm = 0.81), while gluten and dough samples strongly improved predictions of rheological properties, especially dough development time ( R 2 CV flour = 0.64; R 2 CV dough = 0.90; R 2 CV gluten = 0.84). Conclusion Preprocessing of flour samples greatly alters their composition (e.g., protein enrichment), which is also reflected by spectral differences. Spectra of different sample types therefore contain different information and have the potential to improve the prediction of wheat quality. Significance and Novelty This is the first study that investigates spectral differences of a large number of different flour fractions and dough using fluorescence spectroscopy and subsequently underlines the potential of this novel approach to improve wheat quality prediction in the future.
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