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Prediction of crude protein and oil content of soybeans using Raman spectroscopy

While conventional chemical analysis methods for food nutrients require time-consuming, labor-intensive, and invasive pretreatment procedures, Raman spectroscopy can be used to measure a variety of food components rapidly and non-destructively without supervision from experts once the instrument has...

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Bibliographic Details
Published in:Sensors and actuators. B, Chemical Chemical, 2013-08, Vol.185, p.694-700
Main Authors: Lee, Hoonsoo, Cho, Byoung-Kwan, Kim, Moon S., Lee, Wang-Hee, Tewari, Jagdish, Bae, Hanhong, Sohn, Soo-In, Chi, Hee-Youn
Format: Article
Language:English
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Summary:While conventional chemical analysis methods for food nutrients require time-consuming, labor-intensive, and invasive pretreatment procedures, Raman spectroscopy can be used to measure a variety of food components rapidly and non-destructively without supervision from experts once the instrument has been calibrated. The purpose of this study was to develop an optimal prediction model for determining the protein and oil contents of soybeans using a dispersive Raman spectroscopy method. In general, the crude oil content of soybeans is chemically determined using the Soxhlet extraction method, while the semimicro-Kjeldahl method and an auto protein analyzer have been used to assess crude protein content. In the present study, Raman spectra were measured in the 200–1800cm−1 wavenumber range and partial least squares (PLS) analysis methods were used to develop optimal models for predicting the crude protein and oil contents of soybeans. The resultant PLS models that used the effective wavenumber regions determined by intermediate PLS (iPLS) method were better than those models developed using the entire wavenumber range under investigation. The Rp2 and SEP of the optimal PLS model for crude protein content were 0.916 and 0.636%, respectively. Likewise, the Rp2 and SEP for crude oil content were 0.872 and 0.759%, respectively. The result suggests that the conventional Raman techniques investigated in this study can be applied to the prediction of soybean crude protein and oil content.
ISSN:0925-4005
1873-3077
DOI:10.1016/j.snb.2013.04.103