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将药用植物体外培养与机器学习技术相结合以最大化酚类化合物的产量。

Combining Medicinal Plant In Vitro Culture with Machine Learning Technologies for Maximizing the Production of Phenolic Compounds.

作者信息

García-Pérez Pascual, Lozano-Milo Eva, Landín Mariana, Gallego Pedro Pablo

机构信息

Plant Biology and Soil Science Department, Biology Faculty, University of Vigo, 36310 Vigo, Spain.

Pharmacology, Pharmacy and Pharmaceutical Technology Department, Faculty of Pharmacy, University of Santiago, E-15782 Santiago de Compostela, Spain.

出版信息

Antioxidants (Basel). 2020 Mar 4;9(3):210. doi: 10.3390/antiox9030210.

Abstract

We combined machine learning and plant in vitro culture methodologies as a novel approach for unraveling the phytochemical potential of unexploited medicinal plants In order to induce phenolic compound biosynthesis, the in vitro culture of three different species of under nutritional stress was established. To optimize phenolic extraction, four solvents with different MeOH proportions were used, and total phenolic content (TPC), flavonoid content (FC) and radical-scavenging activity (RSA) were determined. All results were subjected to data modeling with the application of artificial neural networks to provide insight into the significant factors that influence such multifactorial processes. Our findings suggest that aerial parts accumulate a higher proportion of phenolic compounds and flavonoids in comparison to roots. TPC was increased under ammonium concentrations below 15 mM, and their extraction was maximum when using solvents with intermediate methanol proportions (55-85%). The same behavior was reported for RSA, and, conversely, FC was independent of culture media composition, and their extraction was enhanced using solvents with high methanol proportions (>85%). These findings confer a wide perspective about the relationship between abiotic stress and secondary metabolism and could serve as the starting point for the optimization of bioactive compound production at a biotechnological scale.

摘要

我们将机器学习与植物体外培养方法相结合,作为一种揭示未开发药用植物植物化学潜力的新方法。为了诱导酚类化合物的生物合成,建立了三种不同物种在营养胁迫下的体外培养体系。为了优化酚类提取,使用了四种不同甲醇比例的溶剂,并测定了总酚含量(TPC)、黄酮含量(FC)和自由基清除活性(RSA)。所有结果都应用人工神经网络进行数据建模,以深入了解影响此类多因素过程的重要因素。我们的研究结果表明,与根相比,地上部分积累的酚类化合物和黄酮类化合物比例更高。在铵浓度低于15 mM时,TPC增加,使用甲醇比例适中(55-85%)的溶剂提取时,TPC达到最大值。RSA也有同样的情况,相反,FC与培养基组成无关,使用甲醇比例高(>85%)的溶剂提取时,FC会增加。这些发现为非生物胁迫与次生代谢之间的关系提供了广阔的视角,并可作为生物技术规模优化生物活性化合物生产的起点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77c0/7139750/b5a7402bf530/antioxidants-09-00210-g001.jpg

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