2019
DOI: 10.1177/0003702818815642
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Bulk Protein and Oil Prediction in Soybeans Using Transmission Raman Spectroscopy: A Comparison of Approaches to Optimize Accuracy

Abstract: Rapid measurements of protein and oil content are important for a variety of uses, from sorting of soybeans at the point of harvest to feedback during soybean meal production. In this study, our goal is to develop a simple protocol to permit rapid and robust quantitative prediction of soybean constituents using transmission Raman spectroscopy (TRS). To develop this approach, we systematically varied the various elements of the measurement process to provide a diverse test bed. First, we utilized an in-house-bu… Show more

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Cited by 12 publications
(7 citation statements)
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References 37 publications
(58 reference statements)
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“…Thus, three groups of pixels were selected for each cell and used as a dataset (nucleus, lipid droplets, and cytoplasm (without LDs pixels)). Partial Least Squares Regression (PLSR) 60 and map creation were carried out using MatLab R2017b (MathWorks, Inc., USA). PLS analysis was performed on the Raman spectra with a k-fold Cross-Validation (CV) scheme to determine the optimal number of Latent Variables (LVs) of the model.…”
Section: Methodsmentioning
confidence: 99%
“…Thus, three groups of pixels were selected for each cell and used as a dataset (nucleus, lipid droplets, and cytoplasm (without LDs pixels)). Partial Least Squares Regression (PLSR) 60 and map creation were carried out using MatLab R2017b (MathWorks, Inc., USA). PLS analysis was performed on the Raman spectra with a k-fold Cross-Validation (CV) scheme to determine the optimal number of Latent Variables (LVs) of the model.…”
Section: Methodsmentioning
confidence: 99%
“…In a previous study, Morey et al (2020) verified that Raman spectroscopy can predict the starch content of potato samples based on the intensity of the 479 cm -1 band. Quantification of amylopectin and amylose, as well as proteins, have been achieved in rice (Pezzotti et al, 2021), protein, and oil in soybean (Singh et al, 2019) through the use of Raman spectroscopy. Tuber carotenoids do not seem to change in response to heat stress.…”
Section: Raman Spectramentioning
confidence: 99%
“…In their study, the soft independent modeling class analogy (SIMCA) model proved to be the most effective choice. Singh et al applied transmission Raman spectroscopy to determine the protein and oil content in soybeans . Again, statistical methods were used to gain the maximum content of information from the spectroscopic data.…”
Section: Application In Bioanalyticsmentioning
confidence: 99%
“…Singh et al applied transmission Raman spectroscopy to determine the protein and oil content in soybeans. 137 Again, statistical methods were used to gain the maximum content of information from the spectroscopic data. The authors considered not only whole beans but also differently processed meals.…”
Section: ■ Application In Bioanalyticsmentioning
confidence: 99%