State Key Laboratory of Natural Medicines, School of Traditional Chinese Pharmacy, China Pharmaceutical University, Nanjing 210009, China.
State Key Laboratory of Natural Medicines, School of Traditional Chinese Pharmacy, China Pharmaceutical University, Nanjing 210009, China.
Phytomedicine. 2018 Jun 1;45:76-83. doi: 10.1016/j.phymed.2018.04.003. Epub 2018 Apr 3.
Processing of herbal medicines is a characteristic pharmaceutical technique in Traditional Chinese Medicine, which can reduce toxicity and side effect, improve the flavor and efficacy, and even change the pharmacological action entirely. It is significant and crucial to perform a method to find chemical markers for differentiating herbal medicines in different processed degrees.
The aim of this study was to perform a rapid and reasonable method to discriminate Moutan Cortex and its processed products, and to reveal the characteristics of chemical components depend on chemical markers.
Thirty batches of Moutan Cortex and its processed products, including 11 batches of Raw Moutan Cortex (RMC), 9 batches of Moutan Cortex Tostus (MCT) and 10 batches of Moutan Cortex Carbonisatus (MCC), were directly injected in electrospray ionization quadrupole time-of-flight mass spectrometry (ESI-QTOF MS) for rapid analysis in positive and negative mode. Without chromatographic separation, each run was completed within 3 min. The raw MS data were automatically extracted by background deduction and molecular feature (MF) extraction algorithm. In negative mode, a total of 452 MFs were obtained and then pretreated by data filtration and differential analysis. After that, the filtered 85 MFs were treated by principal component analysis (PCA) to reduce the dimensions. Subsequently, a partial least squares discrimination analysis (PLS-DA) model was constructed for differentiation and chemical markers detection of Moutan Cortex in different processed degrees. The positive mode data were treated as same as those in negative mode.
RMC, MCT and MCC were successfully classified. Moreover, 14 and 3 chemical markers from negative and positive mode respectively, were screened by the combination of their relative peak areas and the parameter variable importance in the projection (VIP) values in PLS-DA model. The content changes of these chemical markers were employed in order to illustrate chemical changes of Moutan Cortex after processed.
These results showed that the proposed method which combined non-targeted metabolomics analysis with multivariate statistics analysis is reasonable and effective. It could not only be applied to discriminate herbal medicines and their processing products, but also to reveal the characteristics of chemical components during processing.
中药炮制是中医药的特色制药技术,可降低毒性和副作用,改善口感和疗效,甚至完全改变药理作用。因此,找到区分不同炮制程度的中药材的化学标志物是非常重要的。
本研究旨在建立一种快速合理的方法来区分牡丹皮及其炮制品,并揭示化学成分特征取决于化学标志物。
本研究采用电喷雾电离四极杆飞行时间质谱(ESI-QTOF MS)在正、负离子模式下直接进样分析 30 批牡丹皮及其炮制品,包括 11 批生牡丹皮(RMC)、9 批牡丹皮(MCT)和 10 批牡丹皮炭(MCC)。无需色谱分离,每个运行在 3 min 内完成。通过背景扣除和分子特征(MF)提取算法自动提取原始 MS 数据。在负离子模式下,共获得 452 个 MF,然后通过数据过滤和差异分析进行预处理。之后,对过滤后的 85 个 MF 进行主成分分析(PCA)降维处理。然后,构建偏最小二乘判别分析(PLS-DA)模型,用于区分不同炮制程度的牡丹皮。正离子模式数据的处理与负离子模式相同。
RMC、MCT 和 MCC 成功分类。此外,通过相对峰面积和偏最小二乘判别分析模型中的参数变量重要性(VIP)值相结合,从负离子模式和正离子模式分别筛选出 14 个和 3 个化学标志物。这些化学标志物的含量变化用于说明牡丹皮炮制后的化学变化。
这些结果表明,所提出的结合非靶向代谢组学分析和多元统计分析的方法是合理有效的。它不仅可以用于区分中药材及其炮制品,还可以揭示炮制过程中化学成分的特征。