Analytical strategies for the discovery and validation of quality-markers of traditional Chinese medicine

标准化 质量(理念) 斯科普斯 控制(管理) 计算机科学 中医药 瓶颈 风险分析(工程) 医学 数据科学 管理科学 梅德林 替代医学 工程类 人工智能 政治学 病理 哲学 认识论 法学 嵌入式系统 操作系统
作者
Junling Ren,Aihua Zhang,Ling Kong,Ying Han,Guangli Yan,Hui Sun,Xijun Wang
出处
期刊:Phytomedicine [Elsevier BV]
卷期号:67: 153165-153165 被引量:137
标识
DOI:10.1016/j.phymed.2019.153165
摘要

Quality control of traditional Chinese medicine (TCM) is the basis of clinical efficacy. Due to the complexity of TCM, it is difficult to unify the quality control, and hinders the further implementation of the quality standardization of TCM. As a new concept, quality-marker (Q-marker) plays a powerful role in promoting the standardization of quality control system of TCM.The present review aims to provide reference and scientific basis for further development of Q-marker and assist standardization of quality control of TCM.Extensive search of various documents and electronic databases such as Pubmed, Royal Society of Chemistry, Science Direct, Springer, Web of Science, and Wiley, etc., were used to search scientific contributions. Other online academic libraries, e.g. Google Scholars, Scopus and national pharmacology literature were also been employed to learn more relevant information about Q-marker.Q-markers play vital role in promoting the standardization of quality control of TCM. The factors that affect the quality of TCM, the advantages and disadvantages of the analytical techniques commonly used in Q-marker research were reviewed, as well as the systematic research strategies, which were verified by practices.The proposal of Q-marker not only provided a new perspective to break through the bottleneck of current quality control, but also can be used in the evaluation of pharmacological efficiency, therapeutic discovery, toxicology, etc. In addition, the Q-marker analysis strategies summarized in this paper is helpful to standardize the quality control of TCM and promote the internationalization of TCM.
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