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1.
Electrophoresis ; 28(8): 1289-99, 2007 Apr.
Article in English | MEDLINE | ID: mdl-17351893

ABSTRACT

Practical approaches to the use of multivariate data analysis of 2-DE protein patterns are demonstrated by three independent strategies for the image analysis and the multivariate analysis on the same set of 2-DE data. Four wheat varieties were selected on the basis of their baking quality. Two of the varieties were of strong baking quality and hard wheat kernel and two were of weak baking quality and soft kernel. Gliadins at different stages of grain development were analyzed by the application of multivariate data analysis on images of 2-DEs. Patterns related to the wheat varieties, harvest times and quality were detected on images of 2-DE protein patterns for all the three strategies. The use of the multivariate methods was evaluated in the alignment and matching procedures of 2-DE gels. All the three strategies were able to discriminate the samples according to quality, harvest time and variety, although different subsets of protein spots were selected. The explorative approach of using multivariate data analysis and variable selection in the analyses of 2-DEs seems to be promising as a fast, reliable and convenient way of screening and transforming many gel images into spot quantities.


Subject(s)
Electrophoresis, Gel, Two-Dimensional/methods , Image Processing, Computer-Assisted/methods , Proteins/isolation & purification , Gliadin/isolation & purification , Multivariate Analysis , Triticum/chemistry
2.
J Mass Spectrom ; 39(6): 607-12, 2004 Jun.
Article in English | MEDLINE | ID: mdl-15236298

ABSTRACT

Rapid methods for the identification of wheat varieties and their end-use quality have been developed. The methods combine the analysis of wheat protein extracts by mass spectrometry with partial least-squares regression in order to predict the variety or end-use quality of unknown wheat samples. The whole process takes approximately 30 min. Extracts of alcohol-soluble storage proteins (gliadins) from wheat were analysed by matrix-assisted laser desorption/ionization time-of-flight mass spectrometry. Partial least-squares regression was subsequently applied using these mass spectra for making models that could predict the wheat variety or end-use quality. Previously, an artificial neural network was used to identify wheat varieties based on their protein mass spectra profiles. The present study showed that partial least-squares regression is at least as useful as neural networks for this identification. Furthermore, it was demonstrated that partial least-squares regression could be used to predict wheat end-use quality, which has not been possible using neural networks.


Subject(s)
Food Analysis/methods , Plant Proteins/analysis , Plant Proteins/chemistry , Triticum/chemistry , Triticum/classification , Denmark , Gliadin/analysis , Least-Squares Analysis , Mass Spectrometry , Quality Control , Species Specificity , Time Factors
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