Gao Jiaxuan, Xiang Xiaoyang, Yan Qunfang, Ding Yanrui
School of Science, Jiangnan University, Wuxi, Jiangsu, PR China.
J Ethnopharmacol. 2024 Jun 28;328:118100. doi: 10.1016/j.jep.2024.118100. Epub 2024 Mar 26.
Traditional Chinese medicine, with the feature of synergistic effects of multi-component, multi-pathway and multi-target, plays an important role in the treatment of cancer, cardiovascular and cerebrovascular diseases, etc. However, chemical components in traditional Chinese medicine are complex and most of the pharmacological mechanisms remain unclear, especially the relationships of chemical components change during the metabolic process.
Our aim is to provide a method based on complex network theory to analyze the causality and dynamic correlation of substances in the metabolic process of traditional Chinese medicine.
We proposed a framework named CDCS-TCM to analyze the causality and dynamic correlation between substances in the metabolic process of traditional Chinese medicine. Our method mainly consists two parts. The first part is to discover the local and global causality by the causality network. The second part is to investigate the dynamic correlations and identify the essential substance by dynamic substance correlation network.
We developed a CDCS-TCM method to analyze the causality and dynamic correlation of substances. Using the XiangDan Injection for ischemic stroke as an example, we have identified the important substances in the metabolic process including substance pairs with strong causality and the dynamic changes of the core effector substance clusters.
The proposed framework will be useful for exploring the correlations of active ingredients in traditional Chinese medicine more effectively and will provide a new perspective for the elucidation of drug action mechanisms and the new drug discovery.
中药具有多成分、多途径、多靶点协同作用的特点,在癌症、心脑血管疾病等的治疗中发挥着重要作用。然而,中药中的化学成分复杂,大多数药理机制仍不清楚,尤其是化学成分在代谢过程中的变化关系。
我们的目的是提供一种基于复杂网络理论的方法,以分析中药代谢过程中物质的因果关系和动态相关性。
我们提出了一个名为CDCS-TCM的框架,用于分析中药代谢过程中物质之间的因果关系和动态相关性。我们的方法主要由两部分组成。第一部分是通过因果关系网络发现局部和全局因果关系。第二部分是通过动态物质相关网络研究动态相关性并识别关键物质。
我们开发了一种CDCS-TCM方法来分析物质的因果关系和动态相关性。以香丹注射液治疗缺血性中风为例,我们确定了代谢过程中的重要物质,包括具有强因果关系的物质对和核心效应物质簇的动态变化。
所提出的框架将有助于更有效地探索中药中活性成分的相关性,并为阐明药物作用机制和新药发现提供新的视角。