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首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Near infrared system coupled chemometric algorithms for the variable selection and prediction of baicalin in three different processes
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Near infrared system coupled chemometric algorithms for the variable selection and prediction of baicalin in three different processes

机译:近红外系统耦合化学计量算法,用于三种不同工艺中巴尼素的变量选择和预测

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摘要

Characteristic variables are essential and necessary basis in model construction, and are related to the prediction result closely in near infrared spectroscopy (NIRS) analysis. However, the same compound usually has different characteristic variables for different analysis and it would be lower correlation between variables and structure in many researches. So, the accuracy and reliability are expected to improve by exploring characteristic variables in different spectrum analysis. In this study, competitive adaptive weighted resampling method (CARS) was applied to select characteristic variables related to baicalin from NIRS analysis data, which were applied to analysis of baicalin in three different processes including the herb, extraction process and concentration process of Scutellaria baicalensis. After application of CARS method, 70, 50 and 50 variables were selected respectively from three processes above. The selected variables were firstly analyzed by statistical methods that they were found to be consistent and correlated among three different processes after one-way analysis of variance test and Kendall's W. Partial least-squares (PLS) regression and extreme learning machine (ELM) models were constructed based on optimized data. Models after variable selection were less complicated and had better prediction results than global models. After comparison, CARS-PLS was suitable for the prediction of extraction process, while for the concentration process and herb, CARS-ELM performed better. The Rc value of the herb, extraction and concentration model were 0.9469, 0.9841 and 0.9675, respectively. The RSEP values were 4.54%, 6.96% and 8.37%, respectively. The results help to frame a theoretical basis for characteristic variables of baicalin. (c) 2019 Elsevier B.V. All rights reserved.
机译:特征变量在模型结构中是必不可少的,必要的基础,与近红外光谱(NIRS)分析密切相关的预测结果。然而,相同的化合物通常具有不同的特征变量,用于不同的分析,在许多研究中变量和结构之间的相关性较低。因此,通过在不同频谱分析中探索特征变量来改善精度和可靠性。在这项研究中,有竞争力的自适应加权重采样法(CARS)施加到选择从NIRS分析数据,该数据是在三个不同的工艺,包括药草,提取过程和黄芩的浓度处理施加到黄芩的分析相关的黄芩的特征变量。在施加汽车方法之后,分别从上述三个过程中选择70,50和50变量。首先通过统计方法分析所选择的变量,即它们被发现在单向分析和肯德尔W.偏最小二乘(PLS)回归和极端学习机(ELM)模型之后的三种不同过程之间的一致性和相关的是基于优化的数据构建的。变量选择后的模型不太复杂,并且具有比全局模型更好的预测结果。比较之后,汽车-PLS适用于预测提取过程,而对于浓度工艺和草药,汽车 - ELM更好。草药的RC值,提取和浓度模型分别为0.9469,0.9841和0.9675。 RSEP值分别为4.54%,6.96%和8.37%。结果有助于塑造黄芩苷的特征变量的理论基础。 (c)2019 Elsevier B.v.保留所有权利。

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