首页> 外文期刊>Evidence-based complementary and alternative medicine: eCAM >Optimization of Bioactive Ingredient Extraction from Chinese Herbal Medicine Glycyrrhiza glabra: A Comparative Study of Three Optimization Models
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Optimization of Bioactive Ingredient Extraction from Chinese Herbal Medicine Glycyrrhiza glabra: A Comparative Study of Three Optimization Models

机译:中草药甘草生物活性成分提取的优化甘草胶(Glycyrrhiza Glabra):三种优化模型的比较研究

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摘要

The ultraviolet spectrophotometric method is often used for determining the content of glycyrrhizic acid from Chinese herbal medicine Glycyrrhiza glabra. Based on the traditional single variable approach, four extraction parameters of ammonia concentration, ethanol concentration, circumfluence time, and liquid-solid ratio are adopted as the independent extraction variables. In the present work, central composite design of four factors and five levels is applied to design the extraction experiments. Subsequently, the prediction models of response surface methodology, artificial neural networks, and genetic algorithm-artificial neural networks are developed to analyze the obtained experimental data, while the genetic algorithm is utilized to find the optimal extraction parameters for the above well-established models. It is found that the optimization of extraction technology is presented as ammonia concentration 0.595%, ethanol concentration 58.45%, return time 2.5 h, and liquid-solid ratio 11.065 : 1. Under these conditions, the model predictive value is 381.24 mg, the experimental average value is 376.46 mg, and the expectation discrepancy is 4.78 mg. For the first time, a comparative study of these three approaches is conducted for the evaluation and optimization of the effects of the extraction independent variables. Furthermore, it is demonstrated that the combinational method of genetic algorithm and artificial neural networks provides a more reliable and more accurate strategy for design and optimization of glycyrrhizic acid extraction from Glycyrrhiza glabra.
机译:紫外分光光度法通常用于测定中草药甘草糖粒子甘草酸甘草酸的含量。基于传统的单可变方法,采用四个氨浓度,乙醇浓度,环流时间和液体 - 固体比的四种提取参数作为独立提取变量。在本作工作中,应用四个因素和五个水平的中央复合设计来设计提取实验。随后,开发了响应表面方法,人工神经网络和遗传算法 - 人工神经网络的预测模型来分析所获得的实验数据,而遗传算法用于找到上述良好型号的最佳提取参数。结果发现,提取技术的优化是氨浓度0.595%,乙醇浓度58.45%,返回时间2.5小时,液态比例11.065:1。在这些条件下,模型预测值为381.24 mg,实验平均值为376.46 mg,期望差异为4.78毫克。首次进行对比较研究这三种方法进行评估和优化提取独立变量的效果。此外,证明遗传算法和人工神经网络的组合方法提供了一种更可靠和更准确的甘草酸萃取的设计和优化甘草酸萃取的策略。

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    Zhejiang Chinese Med Univ Coll Life Sci Hangzhou 310053 Zhejiang Peoples R China;

    Zhejiang Chinese Med Univ Coll Pharmaceut Sci Hangzhou 310053 Zhejiang Peoples R China;

    Zhejiang Chinese Med Univ Coll Pharmaceut Sci Hangzhou 310053 Zhejiang Peoples R China;

    Zhejiang Chinese Med Univ Coll Life Sci Hangzhou 310053 Zhejiang Peoples R China;

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  • 正文语种 eng
  • 中图分类 临床医学;
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