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Classification of apple fruits according to their maturity state by the pattern recognition analysis of their polyphenolic compositions

机译:通过苹果果实多酚组成的模式识别分析,根据其成熟状态对苹果果实进行分类

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Polyphenolic profiles of cider apple cultivars were studied in order to differentiate fruits according to their maturity state (ripe or unripe). Thiolysis and direct solvent extracts of freeze-dried apple pulps and peels were analysed by HPLC-DAD. Univariate data treatment did not achieve the mentioned target; thus a multivariate approach was considered. For each apple tissue data set, several chemometric techniques were applied to the most discriminant variables. Cluster analysis allowed a preliminary study of the data structure. Then, supervised pattern recognition procedures, namely linear discriminant analysis, K-nearest neighbours, soft independent modelling of class analogy, and multilayer feed-forward artificial neural networks (MLF-ANN), were used to develop decision rules to classify samples in the established categories. Excellent results were afforded by MLF-ANN applied to the concentrations of total procyanidins and (+)-catechin and the average degree of polymerisation of procyanidins in apple pulp, with success in the predictioq ability of 97% and 99% for unripe and ripe categories, respectively.
机译:对苹果酒苹果品种的多酚谱进行了研究,以便根据果实的成熟状态(成熟或未成熟)区分果实。冷冻干燥的苹果果肉和果皮的硫解和直接溶剂提取物通过HPLC-DAD分析。单变量数据处理未达到上述目标;因此,考虑了多元方法。对于每个苹果组织数据集,将几种化学计量技术应用于最有区别的变量。聚类分析允许对数据结构进行初步研究。然后,使用监督模式识别程序,即线性判别分析,K近邻,类比的软独立建模和多层前馈人工神经网络(MLF-ANN),制定决策规则对样本中的样本进行分类类别。 MLF-ANN对苹果浆中原花青素和(+)-儿茶素的总浓度以及原花青素的平均聚合度进行了测定,结果出色,对于未成熟和成熟类别的预测能力分别为97%和99% , 分别。

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