首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Multi-wavelength high-performance liquid chromatographic fingerprints and chemometrics to predict the antioxidant activity of Turnera diffusa as part of its quality control
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Multi-wavelength high-performance liquid chromatographic fingerprints and chemometrics to predict the antioxidant activity of Turnera diffusa as part of its quality control

机译:多波长高效液相色谱指纹图谱和化学计量学,以预测白花蛇舌草的抗氧化活性,作为其质量控制的一部分

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摘要

The determination of the antioxidant activity of Turnera diffusa using partial least squares regression (PLSR) on chromatographic data is presented. The chromatograms were recorded with a diode array detector and, for each sample, an enhanced fingerprint was constructed by compiling into a single data vector the chromatograms at four wavelengths (216, 238, 254 and 345. nm). The wavelengths were selected from a contour plot, in order to obtain the greater number of peaks at each of the wavelengths. A further pretreatment of the data that included baseline correction, scaling and correlation optimized warping was performed. Optimal values of the parameters used in the warping were found by means of simplex optimization. A PLSR model with four latent variables (LV) explained 52.5% of X variance and 98.4% of Y, with a root mean square error for cross validation of 6.02. To evaluate its reliability, it was applied to an external prediction set, retrieving a relative standard error for prediction of 7.8%. The study of the most important variables for the regression indicated the chromatographic peaks related to antioxidant activity at the used wavelengths.
机译:提出了基于色谱数据的偏最小二乘回归法(PLSR)测定白花白菜的抗氧化活性。用二极管阵列检测器记录色谱图,对于每个样品,通过将四个波长(216、238、254和345.nm)的色谱图汇编到单个数据矢量中,构建增强的指纹。从等高线图中选择波长,以便在每个波长处获得更多数量的峰。对数据进行了进一步的预处理,包括基线校正,缩放和相关优化的翘曲。通过单纯形优化找到用于变形的参数的最佳值。具有四个潜在变量(LV)的PLSR模型解释了X方差的52.5%和Y的98.4%,交叉验证的均方根误差为6.02。为了评估其可靠性,将其应用于外部预测集,检索到的相对标准误差为7.8%。对回归的最重要变量的研究表明,在使用的波长下与抗氧化剂活性相关的色谱峰。

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