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Estimation of composition of quinoa (Chenopodium quinoa Willd.) grains by Near-Infrared Transmission spectroscopy.

Authors :
Encina-Zelada, Christian
Cadavez, Vasco
Pereda, Jorge
Gómez-Pando, Luz
Salvá-Ruíz, Bettit
Teixeira, José A.
Ibañez, Martha
Liland, Kristian H.
Gonzales-Barron, Ursula
Source :
LWT - Food Science & Technology. Jun2017, Vol. 79, p126-134. 9p.
Publication Year :
2017

Abstract

The aim of this study was to develop robust chemometric models for the routine determination of dietary constituents of quinoa ( Chenopodium quinoa Willd.) using Near-Infrared Transmission (NIT) spectroscopy. Spectra of quinoa grains of 77 cultivars were acquired while dietary constituents were determined by reference methods. Spectra were subjected to multiplicative scatter correction (MSC) or extended multiplicative signal correction (EMSC), and were (or not) treated by Savitzky-Golay (SG) filters. Latent variables were extracted by partial least squares regression (PLSR) or canonical powered partial least squares (CPPLS) algorithms, and the accuracy and predictability of all modelling strategies were compared. Smoothing the spectra improved the accuracy of the models for fat (root mean square error of cross-validation, RMSECV: 0.319–0.327%), ashes (RMSECV: 0.224–0.230%), and particularly for protein (RMSECV: 0.518–0.564%) and carbohydrates (RMSECV: 0.542–0.559%), while enhancing the prediction performance, particularly, for fat (root mean square error of prediction, RMSEP: 0.248–0.335%) and ashes (RMSEP: 0.137–0.191%). Although the highest predictability was achieved for ashes (SG-filtered EMSC/PLSR: bootstrapped 90% confidence interval for RMSEP: [0.376–0.512]) and carbohydrates (SG-filtered MSC/CPPLS: 90% CI RMSEP: [0.651–0.901]), precision was acceptable for protein (SG-filtered MSC/CPPLS: 90% CI RMSEP: [0.650–0.852]), fat (SG-filtered EMSC/CPPLS: 90% CI RMSEP: [0.478–0.654]) and moisture (non-filtered EMSC/PLSR: 90% CI RMSEP: [0.658–0.833]). [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00236438
Volume :
79
Database :
Academic Search Index
Journal :
LWT - Food Science & Technology
Publication Type :
Academic Journal
Accession number :
121360298
Full Text :
https://doi.org/10.1016/j.lwt.2017.01.026