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中国不同地理区域青蒿化学成分的差异。

Differences in chemical constituents of Artemisia annua L from different geographical regions in China.

作者信息

Zhang Xiaobo, Zhao Yuping, Guo Lanping, Qiu Zhidong, Huang Luqi, Qu Xiaobo

机构信息

College of Pharmacy, Changchun University of Chinese Medicine, Changchun, Jilin, China.

State Key Laboratory Breeding Base of Dao-di Herbs, National Resource Center for Chinese Materia Medical, China Academy of Chinese Medical Sciences, Beijing, China.

出版信息

PLoS One. 2017 Sep 7;12(9):e0183047. doi: 10.1371/journal.pone.0183047. eCollection 2017.

Abstract

BACKGROUND

Daodi-herb is a part of Chinese culture, which has been naturally selected by traditional Chinese medicine clinical practice for many years. Sweet wormwood herb is a kind of Daodi-herb, and comes from Artemisia annua L. Artemisinin is a kind of effective antimalarial drug being extracted from A. annua. Because of artemisinin, Sweet wormwood herb earns a reputation. Based on the Pharmacopoeia of the People's Republic of China (PPRC), Sweet wormwood herb can be used to resolve summerheat-heat, and prevent malaria. Besides, it also has other medical efficacies. A. annua, a medicinal plant that is widely distributed in the world contains many kinds of chemical composition. Research has shown that compatibility of artemisinin, scopoletin, arteannuin B and arteannuic acid has antimalarial effect. Compatibility of scopoletin, arteannuin B and arteannuic acid is conducive to resolving summerheat-heat. Chemical constituents in A. annua vary significantly according to geographical locations. So, distribution of A. annua may play a key role in the characteristics of efficacy and chemical constituents of Sweet wormwood herb. It is of great significance to study this relationship.

OBJECTIVES

We mainly analyzed the relationship between the chemical constituents (arteannuin B, artemisinin, artemisinic acid, and scopoletin) with special efficacy in A. annua that come from different provinces in china, and analyzed the relationship between chemical constituents and spatial distribution, in order to find out the relationship between efficacy, chemical constituents and distribution.

METHODS

A field survey was carried out to collect A. annua plant samples. A global positioning system (GPS) was used for obtaining geographical coordinates of sampling sites. Chemical constituents in A. annua were determined by liquid chromatography tandem an atmospheric pressure ionization-electrospray mass spectrometry. Relationship between chemical constituents including proportions, correlation analysis (CoA), principal component analysis (PCA) and cluster analysis (ClA) was displayed through Excel and R software version2.3.2(R), while the one between efficacy, chemical constituents and spatial distribution was presented through ArcGIS10.0, Excel and R software.

RESULTS

According to the results of CoA, arteannuin B content presented a strong positive correlation with artemisinic acid content (p = 0), and a strong negative correlation with artemisinin content (p = 0). Scopoletin content presented a strong positive correlation with artemisinin content (p = 0), and a strong negative correlation with artemisinic acid content (p = 0). According to the results of PCA, the first two principal components accounted for 81.57% of the total accumulation contribution rate. The contribution of the first principal component is about 45.12%, manly including arteannuin B and artemisinic acid. The contribution of the second principal component is 36.45% of the total, manly including artemisinin and scopoletin. According to the ClA by using the principal component scores, 19 provinces could be divided into two groups. In terms of provinces in group one, the proportions of artemisinin are all higher than 80%. Based on the results of PCA, ClA, percentages and scatter plot analysis, chemical types are defined as "QHYS type", "INT type" and "QHS type."

CONCLUSION

As a conclusion, this paper shows the relationship between efficacy, chemical constituents and distribution. Sweet wormwood herb with high arteannuin B and artemisinic acid content, mainly distributes in northern China. Sweet wormwood herb with high artemisinin and scopoletin content has the medical function of preventing malaria, which mainly distributes in southern China. In this paper, it is proved that Sweet wormwood Daodi herb growing in particular geographic regions, has more significant therapeutical effect and higher chemical constituents compared with other same kind of CMM. And also, it has proved the old saying in China that Sweet wormwood Daodi herb which has been used to resolve summerheat-heat and prevent malaria, which distributed in central China. But in modern time, Daodi Sweet wormwood herb mainly has been used to extract artemisinin and prevent malaria, so the Daod-region has transferred to the southern China.

摘要

背景

道地药材是中国文化的一部分,多年来一直经过中医临床实践的自然筛选。青蒿是道地药材的一种,来源于黄花蒿。青蒿素是从黄花蒿中提取的一种有效的抗疟药物。由于青蒿素,青蒿声名远扬。根据《中华人民共和国药典》,青蒿可用于清热解暑、预防疟疾。此外,它还具有其他药用功效。黄花蒿作为一种广泛分布于世界各地的药用植物,含有多种化学成分。研究表明,青蒿素、东莨菪内酯、青蒿甲素和青蒿酸的配伍具有抗疟作用。东莨菪内酯、青蒿甲素和青蒿酸的配伍有利于清热解暑。黄花蒿中的化学成分因地理位置不同而有显著差异。因此,黄花蒿的分布可能对青蒿的功效特点和化学成分起关键作用。研究这种关系具有重要意义。

目的

主要分析中国不同省份黄花蒿中具有特殊功效的化学成分(青蒿甲素、青蒿素、青蒿酸和东莨菪内酯)之间的关系,并分析化学成分与空间分布之间的关系,以找出功效、化学成分与分布之间的关系。

方法

进行实地调查以采集黄花蒿植物样本。使用全球定位系统(GPS)获取采样点的地理坐标。通过液相色谱串联大气压电离 - 电喷雾质谱法测定黄花蒿中的化学成分。通过Excel和R软件版本2.3.2(R)展示化学成分之间的关系,包括比例、相关性分析(CoA)、主成分分析(PCA)和聚类分析(ClA),而通过ArcGIS10.0、Excel和R软件展示功效、化学成分与空间分布之间的关系。

结果

根据相关性分析结果,青蒿甲素含量与青蒿酸含量呈强正相关(p = 0),与青蒿素含量呈强负相关(p = 0)。东莨菪内酯含量与青蒿素含量呈强正相关(p = 0),与青蒿酸含量呈强负相关(p = 0)。根据主成分分析结果,前两个主成分占总累积贡献率的81.57%。第一主成分的贡献率约为45.12%,主要包括青蒿甲素和青蒿酸。第二主成分的贡献率占总量的36.45%,主要包括青蒿素和东莨菪内酯。根据使用主成分得分的聚类分析,19个省份可分为两组。在第一组省份中,青蒿素的比例均高于80%。根据主成分分析、聚类分析、百分比和散点图分析结果,将化学类型定义为“QHYS型”、“INT型”和“QHS型”。

结论

总之,本文展示了功效、化学成分与分布之间的关系。青蒿甲素和青蒿酸含量高的青蒿主要分布在中国北方。青蒿素和东莨菪内酯含量高的青蒿具有预防疟疾的药用功能,主要分布在中国南方。本文证明,生长在特定地理区域的道地青蒿药材,与其他同类中药材相比,具有更显著的治疗效果和更高的化学成分含量。并且,也证明了中国那句古话,过去用于清热解暑、预防疟疾的道地青蒿分布在中部地区。但在现代,道地青蒿主要用于提取青蒿素和预防疟疾,所以道地产区已转移到中国南方。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/64ab/5589120/4f1629628990/pone.0183047.g001.jpg

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