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首页> 外文期刊>Iranian Journal of Chemistry and Chemical Engineering >Modelling Through Artificial Neural Networks of the Phenolic Compounds and Antioxidant Activity of Blueberries
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Modelling Through Artificial Neural Networks of the Phenolic Compounds and Antioxidant Activity of Blueberries

机译:通过人工神经网络模拟酚类化合物和蓝莓抗氧化活性

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摘要

The present study aimed at investigating the influence of several production factors, conservation conditions, and extraction procedures on the phenolic compounds and antioxidant activity of blueberries from different cultivars. The experimental data was used to train artificial neural networks, using a feed-forward model, which gave information about the variables affecting the antioxidant activity and the concentration of phenolic compounds in blueberries. The ANN input variables were location, cultivar, the age of the bushes, the altitude of the farm, production mode, state, storage time, type of extract and order of extract, while the output variables were total phenolic compounds, tannins as well as ABTS and DPPH antioxidant activity. The ANN model was fairly good, with values of the correlation factor for the whole dataset varying from 0.948 to 0.979, while the values of mean squared error were ranging from 0.846 to 0.018, for DPPH antioxidant acidity and anthocyanins, respectively. The results obtained showed that the methanol extracts contained higher amounts of total phenols and anthocyanins as compared to acetone: water extracts, while presenting similar quantities of tannins in both extracts. The blueberries from organic farming were richer in phenolic compounds and possessed higher antioxidant activity than those from conventional agriculture. Even though the effect of storage was not established with high certainty, a trend was observed for an increase in the phenolic compounds and antioxidant activity along storage, either when under refrigeration or under freezing, for the storage periods evaluated.
机译:本研究旨在研究几种生产因子,保护条件和提取程序对不同品种的蓝莓酚类化合物和抗氧化活性的影响。使用前馈模型用于培训人工神经网络的实验数据,该模型提供了有关影响抗氧化活性的变量和蓝莓中酚类化合物的浓度的信息。 ANN输入变量是位置,品种,灌木的年龄,农场的海拔高度,生产模式,状态,储存时间,提取物的类型和提取物的顺序,而输出变量是总酚类化合物,单宁以及ABTS和DPPH抗氧化活性。 ANN模型相当良好,具有从0.948到0.979的整个数据集的相关因子的值,而平均平方误差的值分别为0.846至0.018,分别为DPPH抗氧化酸度和花青素。得到的结果表明,与丙酮:水提取物相比,甲醇提取物含有较高量的总酚和花青素,同时在两种提取物中呈现类似的单宁数量。来自有机耕种的蓝莓在酚类化合物中更富裕,并且具有比来自常规农业的抗氧化活性更高。尽管储存的效果不是以高确定性建立的,但仍然观察到饮用储存的酚类化合物和抗氧化剂活性的趋势,无论是在制冷中还是在冷冻时都会被评估。

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