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The recognition of similarities in trace elements content in medicinal plants using MLP and RBF neural networks
Authors:Suchacz Bogdan  Wesołowski Marek
Institution:Department of Analytical Chemistry, Medical University of Gdansk, al. Gen. J. Hallera 107, 80-416 Gdansk, Poland
Abstract:The objective of the paper was to verify if the content of some elements provides enough information for proper classification of the medicinal plant raw materials. Such information could be helpful in standardization process of herbal products. Four elements—zinc, copper, lead and cadmium were determined using inverse voltammetry in commercially available medicinal herbal raw materials. Initially, principal component analysis (PCA) was employed to investigate the relationships among the analyzed trace elements. In the next stage of the study, two different types of feed-forward artificial neural networks (FANNs)—multilayer perceptron (MLP) and radial basis function (RBF) were applied. The concentrations of the elements were used as input variables to neural networks models, which were to recognize the taxonomy of the plant and the anatomical part it originated from. Although full recognition of the samples with use of FANNs on the basis of some trace elements content was not achieved, it was possible to identify two elements—cadmium and lead as the most important in the classification analysis of medicinal plants.
Keywords:Feed-forward artificial neural networks  Voltammetric determination  Classification  Inverse voltammetry  Principal component analysis
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