中药多变量高效液相色谱系统评估与优化:天麻案例研究

IF 2.7 3区 化学 Q2 CHEMISTRY, ANALYTICAL
Qilin Xu, Xinyi Huo, Xianggang Yin, XiaoHan Zhao, Meixu Chen, Linlin Wu, Yifeng Zhou
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引用次数: 0

摘要

中药高效液相色谱分析方法的开发过程复杂而耗时,受到色谱柱磨损、溶剂纯度和仪器设置等因素的影响。对高效液相色谱系统进行全面评估对于减少潜在的变异性和确保数据的可靠性至关重要。鉴于中药中化学成分的复杂性和协同性,这一点尤为重要,因此有必要采用多元测量系统分析(MSA)来有效评估多种相关的质量特性。本研究介绍了一种基于加权主成分(WPC)的多元测定系统分析方法,用于评估测定天麻代谢物的高效液相色谱系统。通过整合多个主成分并根据其特征值分配权重,加权主成分法显著提高了准确性和稳健性。该方法的重复性和再现性(% R&R)为 26.43%,不同类别数(ndc)指数为 5,证实了该系统的可接受性。我们采用了全因子实验设计来确定关键的性能因素,从而建议使用五种参考溶液来绘制标准曲线,并采用三重样品制备来提高精确度和准确性。蒙特卡罗模拟证实了系统的可靠性,显示 R&R % 和 ndc 值符合正态分布,分别为 19% 至 22% 和 6.07 至 7.38。色谱条件采用盒-贝肯实验设计进行了优化。随后的验证实验验证了该方法的高准确性和可靠性,分析精度、重复性和稳定性的相对标准偏差值均低于 5%。该方法的回收率也很高,三个浓度水平的回收率均超过 91%,RSD 值低于 4%。总之,应用基于 WPC 的多元 MSA 可以对 HPLC 系统进行详细评估,确保准确可靠地测量质量属性。该方法体现了科学严谨的传统中药分析方法,提高了精确度和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multivariate HPLC system assessment and optimization for traditional Chinese medicine: a case study of Gastrodia elata

Multivariate HPLC system assessment and optimization for traditional Chinese medicine: a case study of Gastrodia elata
The development of HPLC analytical methods for traditional Chinese medicine is intricate and time-consuming, influenced by factors such as column wear, solvent purity, and instrumental settings. A comprehensive evaluation of the HPLC system is crucial to mitigate potential variability and ensure the reliability of data. This is especially important given the complex and synergistic nature of the chemical components in traditional Chinese medicine, necessitating a multivariate measurement system analysis (MSA) to assess multiple correlated quality characteristics effectively. This study introduced a multivariate MSA method based on weighted principal components (WPC) to evaluate the HPLC system for the determination of metabolites in Gastrodia elata. By integrating multiple principal components and assigning weights according to their eigenvalues, the WPC method significantly enhanced both accuracy and robustness. It demonstrated a repeatability and reproducibility (% R&R) of 26.43% and a number of distinct categories (ndc) index of 5, confirming the system's acceptability. A full factorial experimental design was employed to identify key performance factors, leading to the recommendation to use five reference solutions for the standard curve and to triple sample preparations for improved precision and accuracy. Monte Carlo simulations confirmed the reliability of the system, showing % R&R and ndc values that follow a normal distribution, ranging from 19% to 22% and 6.07 to 7.38, respectively. Chromatographic conditions were optimized using a Box–Behnken experimental design. Subsequent validation experiments verified the method's high accuracy and reliability, with all relative standard deviation values for analytical precision, repeatability, and stability below 5%. The method also exhibited high recovery rates, exceeding 91% across three concentration levels, with RSD values under 4%. In conclusion, the application of a WPC-based multivariate MSA enabled a detailed evaluation of the HPLC system, ensuring accurate and reliable measurement of quality attributes. This method exemplified a scientifically rigorous approach for developing analytical methods in traditional Chinese medicine, enhancing both precision and reliability.
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来源期刊
Analytical Methods
Analytical Methods CHEMISTRY, ANALYTICAL-FOOD SCIENCE & TECHNOLOGY
CiteScore
5.10
自引率
3.20%
发文量
569
审稿时长
1.8 months
期刊介绍: Early applied demonstrations of new analytical methods with clear societal impact
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