2012
DOI: 10.1038/npre.2012.7053
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Determination of Soybean Oil, Protein and Amino Acid Residues in Soybean Seeds by High Resolution Nuclear Magnetic Resonance (NMRS) and Near Infrared (NIRS)

Abstract: A detailed account is here presented of our high resolution nuclear magnetic resonance (HR-NMR) and near infrared (NIR) calibration models, methodologies and validation procedures, together with a large number of composition analyses for soybean seeds. NIR calibrations were developed based on both HR-NMR and analytical chemistry reference data for oil and twelve amino acid residues in mature soybeans and soybean embryos. This is our first report of HR-NMR determinations of amino acid profiles of proteins from … Show more

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Cited by 9 publications
(13 citation statements)
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“…The cost‐effective, accurate, and high‐throughput phenotyping for seed composition traits significantly contributed to the acceleration of genetic improvement through molecular breeding approaches. In soybean, major seed composition traits, for example protein, oil, and sucrose, are measured using high‐throughput near‐infrared reflectance (NIR) methods (Baianu et al ., ). The HPLC (high‐performance liquid chromatography) platform is considered more reliable for sucrose content analysis due to its accuracy; however, this platform has limitations to use for high‐throughput assay and also involved higher costs per sample.…”
Section: Resultsmentioning
confidence: 97%
See 1 more Smart Citation
“…The cost‐effective, accurate, and high‐throughput phenotyping for seed composition traits significantly contributed to the acceleration of genetic improvement through molecular breeding approaches. In soybean, major seed composition traits, for example protein, oil, and sucrose, are measured using high‐throughput near‐infrared reflectance (NIR) methods (Baianu et al ., ). The HPLC (high‐performance liquid chromatography) platform is considered more reliable for sucrose content analysis due to its accuracy; however, this platform has limitations to use for high‐throughput assay and also involved higher costs per sample.…”
Section: Resultsmentioning
confidence: 97%
“…The spectrophotometer was a FOSS NIR System 6500. Two individual samples from each replication of each location were analysed at regular interval to confirm repeatability of measurements (Baianu et al ., ). For the correlation analysis, seed samples of 100 RILs from the experiment grown at the BREC in 2013 and two parents were evaluated on HPLC (Agilent Technologies, Santa Ana, CA) as described by Valliyodan et al .…”
Section: Methodsmentioning
confidence: 97%
“…These methods produce highly accurate results, but the analytical processes are time‐consuming and laborious and the chemical reagents that are used contribute to environmental pollution (Liu, ). Alternative rapid and accurate analytical methods are, therefore, urgently needed (Baianu et al., ; Martin, ; Zhu et al., ).…”
Section: Introductionmentioning
confidence: 99%
“…Near‐infrared spectroscopy (NIRS) is a rapid technique that can be used for the simultaneous detection and analysis of multiple components (Acquah, Via, Billor, Fasina, & Eckhardt, ; Baianu et al., ; Louw & Theron, ; Wehling, Pierce, & Froning, ; Williams, Norris, & Sobering, ). Different chemical components in samples can be rapidly quantified using NIRS by taking advantage of the vibrational absorption modes of the compounds in the NIR region of the spectrum (Martelovidal & Vazquez, ).…”
Section: Introductionmentioning
confidence: 99%
“…For some applications, the MSC approach was found to be effective for correcting spectral variations caused by light scattering. As a result of MSC, both the accuracy and reliability of the NIR analysis significantly improved in comparison to calibrations that were based on 'raw' (uncorrected) spectra (Baianu et al, 2004). The central point of OSC is reducing the variation in the X matrix (instrumental response matrix) that is not related to the Y matrix (parameters that are predicted by the model) (Pereira et al, 2008).…”
Section: Preprocessing Of Spectra Datamentioning
confidence: 97%