Discrimination of the Sicilian Prickly Pear (Opuntia Ficus ‐Indica L., CV. Muscaredda) According to the Provenance by Testing Unsupervised and Supervised Chemometrics

AbstractDifferent multivariate techniques were tested in an attempt to build up a statistical model for predicting the origin of prickly pears (Opuntia ficus ‐indica L., cv. Muscaredda) from several localities within the Sicilian region. Specifically, two areas known for producing fruits marked respectively by TAP (traditional agri ‐food product) and PDO (protected designation of origin) brands, and three sites producing non‐branded fruits, were considered. A validated inductively coupled plasma mass spectrometry (ICP‐MS) method allowed to obtain elemental fingerprints of prickly pears, which were subsequently elaborated by unsupervised tools, such as hierarchical clustering analysis (HCA) and principal component analysis (PCA), and supervised techniques, such as stepwise‐canonical discriminant analysis (CDA) and partial least squares—discriminant analysis (PLS‐DA). With the exception of HCA, which was not en ough powerful to correctly cluster all selected samples, PCA successfully investigated the effect of subregional provenance on prickly pears, thus, differentiating labeled products from the non‐labeled counterpart. Also, stepwise CDA and PLS‐DA allowed to build up reliable models able to correct ly classify 100% of fruits on the basis of the production areas, by exploiting a restricted pool of metals. Both statistical models, including unsupervised (PCA) and supervised techniques (stepwise CDA or PLS‐DA), may guarantee the provenance of prickly pears ...
Source: Journal of Food Science - Category: Food Science Authors: Tags: New Horizons in Food Research Source Type: research