Implementation of Principal Component Analysis-Cluster Analysis on The Extraction of Green Tea Leaf (Camellia sinensis (L.) Kuntze)

Q3 Biochemistry, Genetics and Molecular Biology
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引用次数: 1

Abstract

Several green tea leaf extraction studies only describe the results of the extraction method or the different types of solvents that produce the highest levels of polyphenols or caffeine without further analysis by statistical analysis. In addition, the statistical analysis method still often used is a statistical analysis of variance, which has weaknesses. This study used PCA and CA methods to analyze samples based on the solvent's effect on temperature and pH. The solvents used in extracting green tea leaves were hot distilled water at ±95oC, distilled water, citrate buffer pH 4.3, and phosphate buffer pH 7.4 without heating (±25oC). The parameters analyzed were yield, water content, total ash content, acid insoluble ash content, total polyphenol content, and caffeine in green tea leaf extract (Camellia sinensis (L.) Kuntze). Classification with PCA results in a 2-dimensional data reduction that represents all data. Therefore, PC1 can extract as much as 68.7% of the information, and PC2 can extract 22.9% of the information. Cumulatively, PC1 and PC2 extracted as much as 91.5% of the information. Classification with CA resulted in 3 clusters. The third cluster, namely numbers 2 and 3, is the cluster that has the closest similarity with the distance between the cluster centroids of 2.08564 and the similarity level of 56.7850%.
主成分分析聚类分析在绿茶叶提取中的应用
一些绿茶叶提取研究只描述了提取方法或产生最高多酚或咖啡因水平的不同类型溶剂的结果,而没有通过统计分析进行进一步分析。此外,仍然经常使用的统计分析方法是方差的统计分析,这有弱点。本研究根据溶剂对温度和pH的影响,使用PCA和CA方法对样品进行分析。提取绿茶叶所用的溶剂为±95℃的热蒸馏水、蒸馏水、pH 4.3的柠檬酸盐缓冲液和pH 7.4的磷酸盐缓冲液,无需加热(±25℃)。分析的参数为绿茶叶提取物(Camellia sinensis(L.)Kuntze)的产量、含水量、总灰分、酸不溶性灰分、总多酚含量和咖啡因。使用主成分分析的分类产生了表示所有数据的二维数据缩减。因此,PC1可以提取多达68.7%的信息,PC2可以提取22.9%的信息。PC1和PC2累计提取了91.5%的信息。用CA分类得到3个聚类。第三个聚类,即数字2和3,是具有最相似性的聚类,聚类质心之间的距离为2.08564,相似性水平为56.7850%。
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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
256
期刊介绍: Biointerface Research in Applied Chemistry is an international and interdisciplinary research journal that focuses on all aspects of nanoscience, bioscience and applied chemistry. Submissions are solicited in all topical areas, ranging from basic aspects of the science materials to practical applications of such materials. With 6 issues per year, the first one published on the 15th of February of 2011, Biointerface Research in Applied Chemistry is an open-access journal, making all research results freely available online. The aim is to publish original papers, short communications as well as review papers highlighting interdisciplinary research, the potential applications of the molecules and materials in the bio-field. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible.
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