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一种基于质量综合评价指标的中药质量评价模型。

A quality-comprehensive-evaluation-index-based model for evaluating traditional Chinese medicine quality.

作者信息

Chen Jia, Li Lin-Fu, Lin Zhao-Zhou, Cheng Xian-Long, Wei Feng, Ma Shuang-Cheng

机构信息

Institute for Control of Chinese Traditional Medicine and Ethnic Medicine (ICCTMEM), National Institutes for Food and Drug Control (NIFDC), No. 31, Huatuo Road, Daxing District, Beijing, 102629, China.

College of Pharmacy, Gannan Medical University, No. 1, Yixueyuan Road, Zhanggong District, Ganzhou, 341000, China.

出版信息

Chin Med. 2023 Jul 28;18(1):89. doi: 10.1186/s13020-023-00782-0.

Abstract

BACKGROUND

Evaluating traditional Chinese medicine (TCM) quality is a powerful method to ensure TCM safety. TCM quality evaluation methods primarily include characterization evaluations and separate physical, chemical, and biological evaluations; however, these approaches have limitations. Nevertheless, researchers have recently integrated evaluation methods, advancing the emergence of frontier research tools, such as TCM quality markers (Q-markers). These studies are largely based on biological activity, with weak correlations between the quality indices and quality. However, these TCM quality indices focus on the individual efficacies of single bioactive components and, therefore, do not accurately represent the TCM quality. Conventionally, provenance, place of origin, preparation, and processing are the key attributes influencing TCM quality. In this study, we identified TCM-attribute-based quality indices and developed a comprehensive multiweighted multi-index-based TCM quality composite evaluation index (QCEI) for grading TCM quality.

METHODS

The area of origin, number of growth years, and harvest season are considered key TCM quality attributes. In this study, licorice was the model TCM to investigate the quality indicators associated with key factors that are considered to influence TCM quality using multivariate statistical analysis, identify biological-evaluation-based pharmacological activity indicators by network pharmacology, establish real quality indicators, and develop a QCEI-based model for grading TCM quality using a machine learning model. Finally, to determine whether different licorice quality grades differently reduced the inflammatory response, TNF-α and IL-1β levels were measured in RAW 264.7 cells using ELISA analysis.

RESULTS

The 21 quality indices are suitable candidates for establishing a method for grading licorice quality. A computer model was established using SVM analysis to predict the TCM quality composite evaluation index (TCM QCEI). The tenfold cross validation accuracy was 90.26%. Licorice diameter; total flavonoid content; similarities of HPLC chromatogram fingerprints recorded at 250 and 330 nm; contents of liquiritin apioside, liquiritin, glycyrrhizic acid, and liquiritigenin; and pharmacological activity quality index were identified as the key indices for constructing the model for evaluating licorice quality and determining which model contribution rates were proportionally weighted in the model. The ELISA analysis results preliminarily suggest that the inflammatory responses were likely better reduced by premium-grade than by first-class licorice.

CONCLUSIONS

In the present study, traditional sensory characterization and modern standardized processes based on production process and pharmacological efficacy evaluation were integrated for use in the assessment of TCM quality. Multidimensional quality evaluation indices were integrated with a machine learning model to identify key quality indices and their corresponding weight coefficients, to establish a multiweighted multi-index and comprehensive quality index, and to construct a QCEI-based model for grading TCM quality. Our results could facilitate and guide the development of TCM quality control research.

摘要

背景

评估中药质量是确保中药安全的有力方法。中药质量评估方法主要包括特征评估以及单独的物理、化学和生物学评估;然而,这些方法存在局限性。尽管如此,研究人员最近整合了评估方法,推动了前沿研究工具的出现,如中药质量标志物(Q-标志物)。这些研究大多基于生物活性,质量指标与质量之间的相关性较弱。然而,这些中药质量指标侧重于单一生物活性成分的个体功效,因此不能准确代表中药质量。传统上,产地、来源、制备和加工是影响中药质量的关键属性。在本研究中,我们确定了基于中药属性的质量指标,并开发了一种基于多权重多指标的综合中药质量综合评价指数(QCEI)来对中药质量进行分级。

方法

产地面积、生长年份和采收季节被视为中药质量的关键属性。在本研究中,甘草是用于研究与影响中药质量的关键因素相关的质量指标的模型中药,使用多元统计分析,通过网络药理学确定基于生物评价的药理活性指标,建立实际质量指标,并使用机器学习模型开发基于QCEI的中药质量分级模型。最后,为了确定不同质量等级的甘草是否对炎症反应的减轻程度不同,使用ELISA分析在RAW 264.7细胞中测量TNF-α和IL-1β水平。

结果

这21个质量指标是建立甘草质量分级方法的合适候选指标。使用支持向量机(SVM)分析建立了一个计算机模型来预测中药质量综合评价指数(TCM QCEI)。十倍交叉验证准确率为90.26%。甘草直径;总黄酮含量;在250和330 nm处记录的HPLC色谱指纹图谱的相似度;甘草苷元、甘草苷、甘草酸和甘草素的含量;以及药理活性质量指标被确定为构建甘草质量评估模型和确定模型中各模型贡献率按比例加权的关键指标。ELISA分析结果初步表明,优质等级甘草可能比一级甘草更能有效减轻炎症反应。

结论

在本研究中,将传统的感官特征与基于生产过程和药理功效评估的现代标准化流程相结合,用于中药质量评估。将多维质量评估指标与机器学习模型相结合,以识别关键质量指标及其相应的权重系数,建立多权重多指标综合质量指数,并构建基于QCEI的中药质量分级模型。我们的结果可为中药质量控制研究的发展提供便利和指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3c8/10375775/1d415495b9c6/13020_2023_782_Fig1_HTML.jpg

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