| Literature DB >> 24001817 |
L H Xie1, S Q Tang, N Chen, J Luo, G A Jiao, G N Shao, X J Wei, P S Hu.
Abstract
Near-infrared reflectance spectroscopy (NIRS) has been used to predict the cooking quality parameters of rice, such as the protein (PC) and amylose content (AC). Using brown and milled flours from 519 rice samples representing a wide range of grain qualities, this study was to compare the calibration models generated by different mathematical, preprocessing treatments, and combinations of different regression algorithm. A modified partial least squares model (MPLS) with the mathematic treatment "2, 8, 8, 2" (2nd order derivative computed based on 8 data points, and 8 and 2 data points in the 1st and 2nd smoothing, respectively) and inverse multiplicative scattering correction preprocessing treatment was identified as the best model for simultaneously measurement of PC and AC in brown flours. MPLS/"2, 8, 8, 2"/detrend preprocessing was identified as the best model for milled flours. The results indicated that NIRS could be useful in estimation of PC and AC of breeding lines in early generations of the breeding programs, and for the purposes of quality control in the food industry.Entities:
Keywords: 1 minus variance ratio; 1−VR; AC; Amylose content; Calibration equation; DPS; GH; Global H distance; INQR; MLR; MPLS; MSC; NIRS; PC; PCR; PLS; Protein; RSQ; SD; SEC; SECV; SEP; SEP(C); SNV; amylose content; average of the residuals; bias; coefficient of determination; corrected standard error; data processing system; international network for quality rice; modified partial least squares; multiple linear regressions; near-infrared reflectance spectroscopy; partial least squares regression; principal component regression; protein content; standard deviations; standard error; standard error of calibration; standard error of cross validation; standard multiplicative scattering correction; standard normal variant
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Year: 2013 PMID: 24001817 DOI: 10.1016/j.foodchem.2013.07.030
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514