5 With a similarity index of 0 218 three main clusters were iden

5. With a similarity index of 0.218 three main clusters were identified. This separation agreed well with the PCA results. Besides, at about 75% similarity, the replicates can be easily identified. For subsequent classification analysis, only wildflower, eucalyptus and citrus honeys were evaluated. Using the KNN method, an unknown sample is classified according to the majority vote

of its nearest neighbors in the multi-dimensional space. If there is a tie, the closer neighbors are given priority and proximity is measured using inter-sample distance. The method is self-validating because in the training set, each sample is compared with all the others in the set but not with itself. http://www.selleckchem.com/products/abt-199.html The best value of K can be chosen based on the results from the training set alone. The SIMCA method builds a PCA model to each class and can be used to determine whether a new sample fits into a predetermined class, whether it does not fit in any of the classes or it indeed fits into more than one class. The PLS-DA method is a variant of standard

PLS regression in which the block of Y-variables consist of a set of binary indicator variables (one for each class) denoting class membership. For each binary class, a column of Y is generated by assigning a value of 0 or 1 to each sample, according to its class category. The set of predicted values by the model are rounded to AZD4547 either 0 or 1, and the true and predicted class memberships are then compared to evaluate how successful the model is at classifying the given samples. Using these concepts, KNN, SIMCA and PLS-DA models were built with spectra of seven authentic samples of each honey type. These samples were the same samples analyzed using PCA and HCA methods (Fig. 4 and Fig. 5). Step-validation was used to select the optimal complexity of the SIMCA model, which resulted to be 4 principal components for

wildflower and eucalyptus categories and 5 PCs for citrus. The variance explained was 82.1%, 69.3% and 68.3% for class 1 (wildflower), Oxymatrine 2 (eucalyptus) and class 3 (citrus), respectively. The PLS-DA loadings for the calibration models were similar to those observed in the PCA analysis. The R2, SEC and SEV for the PLS-DA calibration models were 0.96, 0.04 and 0.13, respectively, for class 1. For class 2, R2, SEC and SEV values were 0.92, 0.09 and 0.18, respectively. For class 3, R2, SEC and SEV values were 0.92, 0.08 and 0.20, respectively. The calibration statistics indicated that the model developed could be acceptable to classify new samples. Summary classification results following the application of KNN, SIMCA and PLS-DA to the prediction set of commercial samples are shown in Table 3. In the KNN classification one wildflower honey was misclassified as eucalyptus and four samples were misclassified in the citrus group. One eucalyptus honey sample was misclassified as citrus.

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