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首页> 外文期刊>BMC Plant Biology >Optimization of salicylic acid and chitosan treatment for bitter secoiridoid and xanthone glycosides production in shoot cultures of Swertia paniculata using response surface methodology and artificial neural network
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Optimization of salicylic acid and chitosan treatment for bitter secoiridoid and xanthone glycosides production in shoot cultures of Swertia paniculata using response surface methodology and artificial neural network

机译:利用响应面法和人工神经网络,优化苦区胰蛋白和磷酸盐糖苷的培养培养蛋白糖苷和磷酸酯糖苷的优化

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摘要

In this study, response surface methodology (RSM) and artificial neural network (ANN) was used to construct the predicted models of linear, quadratic and interactive effects of two independent variables viz. salicylic acid (SA) and chitosan (CS) for the production of amarogentin (I), swertiamarin (II) and mangiferin (III) from shoot cultures of Swertia paniculata Wall. These compounds are the major therapeutic metabolites in the Swertia plant, which have significant role and demand in the pharmaceutical industries. Present study highlighted that different concentrations of SA and CS elicitors substantially influenced the % yield of (I), (II) and (III) compounds in the shoot culture established on modified ? MS medium (supplemented with 2.22?mM each of BA and KN and 2.54?mM NAA). In RSM, different response variables with linear, quadratic and 2 way interaction model were computed with five-factor-three level full factorial CCD. In ANN modelling, 13 runs of CCD matrix was divided into 3 subsets, with approximate 8:1:1 ratios to train, validate and test. The optimal enhancement of (I) (0.435%), (II) (4.987%) and (III) (4.357%) production was achieved in 14?days treatment in shoot cultures of S. paniculata elicited by 9?mM and 12?mg?L??1 concentrations (SA) and (CS). In optimization study, (I) show 0.170–0.435%; (II) display 1.020–4.987% and (III) upto 2.550–4.357% disparity with varied range of SA (1–20?mM) and CS (1–20?mg?L??1). Overall, optimization of elicitors to promote secoiridoid and xanthone glycoside production with ANN modeling (r2?=?100%) offered more significant results as compared to RSM (r2?=?99.8%).
机译:在本研究中,响应面方法(RSM)和人工神经网络(ANN)用于构造两个独立变量viz的线性,二次和交互效果的预测模型。用于生产Amarogentin(I),Swertiamarin(II)和Mangiferin(III)的水杨酸(SA)和壳聚糖(CS)来自Shertia Paniculata壁的芽培养。这些化合物是斯伯里亚植物中的主要治疗性代谢物,在制药行业具有重要作用和需求。目前的研究强调,不同浓度的SA和Cs Elictors大大影响了在修饰的拍摄培养物中的(I),(II)和(III)化合物的百分比产率? MS培养基(补充2.22?mm,每个BA和KN和2.54?MM NAA)。在RSM中,使用具有五因素三级完整因子CCD计算具有线性,二次和2路交互模型的不同响应变量。在ANN建模中,将13个CCD矩阵分为3个亚群,近似8:1:1的比率,训练,验证和测试。 (i)(0.435%),(II)(4.987%)和(III)(4.357%)的最佳增强在14℃的芽培养中占9?mm和12的芽培养中的治疗中获得mg?l ?? 1浓度(sa)和(cs)。在优化研究中,(i)显示0.170-0.435%; (ii)显示1.020-4.987%和(iii)高达2.550-4.357%的差异,随着SA(1-20毫米)和Cs(1-20?Mg?L 2)。总体而言,优化Elicerors促进Secoiridoid和X吨酮糖苷的产生与ANN建模(R2?= 100%)与RSM相比提供了更明显的结果(R2?= 99.8%)。

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