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Predicting Wheat Quality Characteristics and Functionality Using Near‐Infrared Spectroscopy
Author(s) -
Dowell F. E.,
Maghirang E. B.,
Xie F.,
Lookhart G. L.,
Pierce R. O.,
Seabourn B. W.,
Bean S. R.,
Wilson J. D.,
Chung O. K.
Publication year - 2006
Publication title -
cereal chemistry
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.558
H-Index - 100
eISSN - 1943-3638
pISSN - 0009-0352
DOI - 10.1094/cc-83-0529
Subject(s) - farinograph , glutenin , chemistry , gluten , water content , wheat flour , food science , gliadin , particle size , volume (thermodynamics) , falling number , biochemistry , physics , geotechnical engineering , protein subunit , quantum mechanics , engineering , gene
The accuracy of using near‐infrared spectroscopy (NIRS) for predicting 186 grain, milling, flour, dough, and breadmaking quality parameters of 100 hard red winter (HRW) and 98 hard red spring (HRS) wheat and flour samples was evaluated. NIRS shows the potential for predicting protein content, moisture content, and flour color b * values with accuracies suitable for process control (R 2 > 0.97). Many other parameters were predicted with accuracies suitable for rough screening including test weight, average single kernel diameter and moisture content, SDS sedimentation volume, color a * values, total gluten content, mixograph, farinograph, and alveograph parameters, loaf volume, specific loaf volume, baking water absorption and mix time, gliadin and glutenin content, flour particle size, and the percentage of dark hard and vitreous kernels. Similar results were seen when analyzing data from either HRW or HRS wheat, and when predicting quality using spectra from either grain or flour. However, many attributes were correlated to protein content and this relationship influenced classification accuracies. When the influence of protein content was removed from the analyses, the only factors that could be predicted by NIRS with R 2 > 0.70 were moisture content, test weight, flour color, free lipids, flour particle size, and the percentage of dark hard and vitreous kernels. Thus, NIRS can be used to predict many grain quality and functionality traits, but mainly because of the high correlations of these traits to protein content.