Combining Partial Least Squares (PLS) Discriminant Analysis and Rapid Visco Analyser (RVA) to Classify Barley Samples According to Year of Harvest and Locality
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posted on 2024-11-02, 09:14 authored by Daniel Cozzolino, Sophie Roumeliotis, Jason EglintonThe aim of this study was to evaluate the usefulness of the Rapid Visco Analyser (RVA) instrument combined with pattern recognition methods as tools to differentiate commercial barley samples from two South Australian localities and three harvests. Principal component analysis (PCA), partial least squares discriminant analysis (PLS-DA) and stepwise discriminant analysis were applied to classify samples based on the RVA profiles using full cross validation (leave-one-out) as the validation method. The PLS-DA models correctly classify 96.3 and 97.8 % of the barley samples according to harvest and locality, using the profiles generated by the RVA instrument. Analysis and interpretation of the eigenvectors and loadings from the PCA or PLS-DA models developed verified that the RVA profiles contain relevant information related to starch pasting properties that allows sample classification. These results suggest that RVA coupled with PLS-DA holds necessary information for a successful classification of barley samples sourced from different localities and harvests. © 2013 Springer Science+Business Media New York.
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Journal
Food Analytical MethodsVolume
7Issue
4Start page
887End page
892Total pages
6Publisher
Springer New York LLCPlace published
New York, United StatesLanguage
EnglishCopyright
© Springer Science+Business Media New York 2013Former Identifier
2006089691Esploro creation date
2020-06-22Fedora creation date
2019-03-26Usage metrics
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