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采用智能融合指纹法与系统定量指纹法对复方甘草片进行预测性质量控制。

Predictive quality control for compound liquorice tablets by the intelligent mergence fingerprint method combined with the systematic quantitative fingerprint method.

机构信息

Department of Pharmacy and Health Management, Hebei Chemical and Pharmaceutical College, Shijiazhuang, 050026, China.

School of Pharmacy, Shenyang Pharmaceutical University, Shenyang, 110016, China.

出版信息

Phytochem Anal. 2021 Nov;32(6):1118-1130. doi: 10.1002/pca.3053. Epub 2021 May 5.

Abstract

INTRODUCTION

Compound liquorice tablet (CLT) is a herbal compound preparation and is used as a classic antitussive and expectorant in China. It is composed of liquorice extract powder, opioid powder, star anise oil, camphor, and sodium benzoate. The complexity of herbal materials brings a huge challenge in producing compound preparations with stable and uniform quality consistency.

OBJECTIVE

To establish a new intelligent model for predicting the quality of CLT.

METHODS

The HPLC fingerprints of raw materials including liquorice extract powder, powdered opium, star anise oil, and sodium benzoate were tested and merged to generate the intelligent mergence fingerprints, whose correlation with the raw materials and the CLT samples was studied. The consistency of the intelligently merged fingerprints with the standard fingerprints was observed by using the systematic quantitative fingerprint method in order to calculate quality evaluation results.

RESULTS

The intelligent mergence fingerprints covered all the main fingerprint peaks of four raw materials and had a good correlation with the CLT sample fingerprint. There were no significant quality differences either among the six intelligent mergence models obtained by combining different batches of raw materials or between the reference fingerprint of the intelligent mergence connection fingerprints (RFP ) and the theoretical standard preparation (RFP ).

CONCLUSION

The computer-aided model of intelligent mergence fingerprints could be used to predict the quality of herbal compound preparations based on raw materials. In this way, preproduction quality prediction can be realised in order to avoid low-quality medicinal materials and improve the quality consistency among different batches.

摘要

简介

复方甘草片(CLT)是一种中草药复方制剂,在中国被用作经典的止咳化痰药。它由甘草浸膏粉、阿片粉、八角茴香油、樟脑和苯甲酸钠组成。由于草药材料的复杂性,生产具有稳定和一致质量一致性的复方制剂带来了巨大的挑战。

目的

建立一种新的智能模型来预测 CLT 的质量。

方法

对包括甘草浸膏粉、阿片粉、八角茴香油和苯甲酸钠在内的原料进行 HPLC 指纹图谱检测,并进行智能合并,生成智能合并指纹图谱,研究其与原料和 CLT 样品的相关性。采用系统定量指纹法观察智能合并指纹与标准指纹的一致性,以计算质量评价结果。

结果

智能合并指纹涵盖了四种原料的主要指纹峰,与 CLT 样品指纹具有良好的相关性。由不同批次原料组合而成的六个智能合并模型之间,或智能合并连接指纹的参考指纹(RFP)与理论标准制剂(RFP)之间,均无显著的质量差异。

结论

基于原料的计算机辅助智能合并指纹模型可用于预测中草药复方制剂的质量。这样可以实现生产前的质量预测,避免使用低质量的药材,提高不同批次之间的质量一致性。

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