A Comprehensive Quality Evaluation of Cimicifugae Rhizoma Using UPLC-Q-Orbitrap-MS/MS Coupled with Multivariate Chemometric Methods.

IF 1.7 4区 农林科学 Q3 CHEMISTRY, ANALYTICAL
Zi Cheng Ma, Mei Qi Liu, Guo Qiang Liu, Zhen Yu Zhou, Xiao Liang Ren, Lili Sun, Meng Wang
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引用次数: 0

Abstract

Background: Cimicifugae Rhizoma, known in Chinese as Shengma, is a common medicinal material in traditional Chinese medicine (TCM), mainly used for treating wind-heat headaches, sore throat, uterine prolapse, and other diseases.

Objectives: An approach using a combination of ultra-performance liquid chromatography (UPLC), MS, and multivariate chemometric methods was designed to assess the quality of Cimicifugae Rhizoma.

Methods: All materials were crushed into powder and the powdered sample was dissolved in 70% aqueous methanol for sonication. Chemometric methods, including hierarchical cluster analysis (HCA), principal component analysis (PCA), and orthogonal partial least-squares discriminant analysis (OPLS-DA), were adopted to classify and perform a comprehensive visualization study of Cimicifugae Rhizoma. The unsupervised recognition models of HCA and PCA obtained a preliminary classification and provided a basis for classification. In addition, we constructed a supervised OPLS-DA model and established a prediction set to further validate the explanatory power of the model for the variables and unknown samples.

Results: Exploratory research found that the samples were divided into two groups, and the differences were related to appearance traits. The correct classification of the prediction set also demonstrated a strong predictive ability of the models for new samples. Subsequently, six chemical makers were characterized by UPLC-Q-Orbitrap-MS/MS, and the content of four components was determined. The results of the content determination revealed the distribution of representative chemical markers caffeic acid, ferulic acid, isoferulic acid, and cimifugin in two classes of samples.

Conclusions: This strategy can provide a reference for assessing the quality of Cimicifugae Rhizoma, which is significant for the clinical practice and QC of Cimicifugae Rhizoma.

Highlights: The HCA, PCA and OPLS-DA models visually classify Cimicifugae Rhizoma by appearance traits and obtain the chemical markers that influence the classification. The training and prediction sets were built to demonstrate the accuracy of the classification. Advanced UPLC-Q-Orbitrap-MS/MS technology provides powerful elucidation of critical chemical markers.

UPLC-Q-Orbitrap-MS/MS结合多元化学计量法评价枸杞子质量
背景:山楂是一种常见的中药药材,主要用于治疗风热性头痛、咽喉痛、子宫脱垂等疾病。目的:建立超高效液相色谱(UPLC)、质谱(MS)和多元化学计量相结合的方法,对慈母药材进行质量评价。方法:将所有材料粉碎成粉末,将粉末样品溶解于70%甲醇水溶液中超声处理。采用层次聚类分析(HCA)、主成分分析(PCA)和正交偏最小二乘判别分析(OPLS-DA)等化学计量学方法对慈母药材进行分类和可视化研究。HCA和PCA的无监督识别模型得到了初步的分类,为分类提供了依据。此外,我们构建了有监督的OPLS-DA模型,并建立了预测集,进一步验证了模型对变量和未知样本的解释能力。结果:探索性研究发现,样本分为两组,差异与外观性状有关。预测集的正确分类也证明了模型对新样本的预测能力强。随后,采用UPLC-Q-Orbitrap-MS/MS对6种化学制剂进行了表征,并测定了4种成分的含量。含量测定结果揭示了咖啡酸、阿魏酸、异阿魏酸和cimifugin在两类样品中的代表性化学标记分布。结论:该方法可为慈母药材质量评价提供参考,对慈母药材的临床实践和质量控制具有重要意义。重点:HCA、PCA和OPLS-DA模型通过外观性状对慈母进行视觉分类,获得影响慈母分类的化学标记。建立训练集和预测集来证明分类的准确性。先进的UPLC-Q-Orbitrap-MS/MS技术提供了强大的关键化学标记的解析。
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来源期刊
Journal of AOAC International
Journal of AOAC International 医学-分析化学
CiteScore
3.10
自引率
12.50%
发文量
144
审稿时长
2.7 months
期刊介绍: The Journal of AOAC INTERNATIONAL publishes the latest in basic and applied research in analytical sciences related to foods, drugs, agriculture, the environment, and more. The Journal is the method researchers'' forum for exchanging information and keeping informed of new technology and techniques pertinent to regulatory agencies and regulated industries.
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