State Key Laboratory of Component-based Chinese Medicine, Tianjin University of Traditional Chinese Medicine, Tianjin, 301617, PR China; Key Laboratory of Pharmacology of Traditional Chinese Medicine Formulae, Ministry of Education, Tianjin University of Traditional Chinese Medicine, Tianjin, 301617, PR China.
School of Chinese Materia Medica, Tianjin University of Traditional Chinese Medicine, Tianjin, 301617, PR China.
Talanta. 2022 Jan 15;237:122873. doi: 10.1016/j.talanta.2021.122873. Epub 2021 Sep 30.
In the clinical application of Traditional Chinese Medicine (TCM) substitutes, the consistency evaluation of TCM substitutes from different sources is recognized as the main bottleneck. As the most widely used analytical method in TCM consistency evaluation, fingerprint similarity evaluation suffers from insufficient method sensitivity and poor conformity with the actual characteristics of TCM, which is difficult to adapt to the analytical needs of complex substance systems of TCM. This work aims to develop an effective and more accurate method for consistency evaluation using omics strategy and machine learning algorithms. The natural calculus bovis (NCB) were graded into three groups according to the similarity to in vitro cultured bovis (IVCB), and chemical markers between samples of each grade were screened out. Support vector machine (SVM) models with different kernels were then constructed by using the chemical markers as feature variables. The results showed that the classification accuracy of the SVM classifier of NCB and the consistency evaluation SVM model classifier was 95.74% and 100.0%, respectively. The approach demonstrated in the study presented a good analytical performance with higher sensitivity, accuracy for consistency evaluation of TCM.
在中药(TCM)代用品的临床应用中,不同来源的 TCM 代用品的一致性评价被认为是主要瓶颈。作为 TCM 一致性评价中最广泛使用的分析方法,指纹相似度评价方法存在方法灵敏度不足、与 TCM 实际特征的一致性差等问题,难以适应 TCM 复杂物质体系的分析需求。本工作旨在利用组学策略和机器学习算法开发一种更有效、更准确的一致性评价方法。根据与体外培养的牛(IVCB)的相似性,将天然牛(NCB)分为三组,并筛选出每组样本之间的化学标志物。然后,使用化学标志物作为特征变量,构建具有不同核函数的支持向量机(SVM)模型。结果表明,NCB 的 SVM 分类器和一致性评价 SVM 模型分类器的分类准确率分别为 95.74%和 100.0%。研究中提出的方法具有较高的灵敏度和准确性,为 TCM 的一致性评价提供了良好的分析性能。