MOE Key Laboratory of Bioinformatics and Bioinformatics Division, TNLIST / Department of Automation, Tsinghua University, Beijing, China.
BMC Bioinformatics. 2010 Dec 14;11 Suppl 11(Suppl 11):S6. doi: 10.1186/1471-2105-11-S11-S6.
Traditional Chinese Medicine (TCM) is characterized by the wide use of herbal formulae, which are capable of systematically treating diseases determined by interactions among various herbs. However, the combination rule of TCM herbal formulae remains a mystery due to the lack of appropriate methods.
From a network perspective, we established a method called Distance-based Mutual Information Model (DMIM) to identify useful relationships among herbs in numerous herbal formulae. DMIM combines mutual information entropy and "between-herb-distance" to score herb interactions and construct herb network. To evaluate the efficacy of the DMIM-extracted herb network, we conducted in vitro assays to measure the activities of strongly connected herbs and herb pairs. Moreover, using the networked Liu-wei-di-huang (LWDH) formula as an example, we proposed a novel concept of "co-module" across herb-biomolecule-disease multilayer networks to explore the potential combination mechanism of herbal formulae.
DMIM, when used for retrieving herb pairs, achieves a good balance among the herb's frequency, independence, and distance in herbal formulae. A herb network constructed by DMIM from 3865 Collaterals-related herbal formulae can not only nicely recover traditionally-defined herb pairs and formulae, but also generate novel anti-angiogenic herb ingredients (e.g. Vitexicarpin with IC50=3.2 μM, and Timosaponin A-III with IC50=3.4 μM) as well as herb pairs with synergistic or antagonistic effects. Based on gene and phenotype information associated with both LWDH herbs and LWDH-treated diseases, we found that LWDH-treated diseases show high phenotype similarity and identified certain "co-modules" enriched in cancer pathways and neuro-endocrine-immune pathways, which may be responsible for the action of treating different diseases by the same LWDH formula.
DMIM is a powerful method to identify the combination rule of herbal formulae and lead to new discoveries. We also provide the first evidence that the co-module across multilayer networks may underlie the combination mechanism of herbal formulae and demonstrate the potential of network biology approaches in the studies of TCM.
中医药(TCM)的特点是广泛使用方剂,这些方剂能够通过各种草药之间的相互作用系统地治疗疾病。然而,由于缺乏适当的方法,TCM 方剂的组合规律仍然是一个谜。
从网络的角度,我们建立了一种名为基于距离的互信息模型(DMIM)的方法,以识别大量方剂中草药之间的有用关系。DMIM 结合互信息熵和“草药间距离”来评分草药相互作用并构建草药网络。为了评估 DMIM 提取的草药网络的功效,我们进行了体外测定以测量强连接草药和草药对的活性。此外,我们以网络刘-维-地-黄(LWDH)方剂为例,提出了一个跨草药-生物分子-疾病多层网络的“共同模块”的新概念,以探索方剂的潜在组合机制。
DMIM 在检索草药对时,在草药方剂中的草药频率、独立性和距离之间取得了很好的平衡。DMIM 从 3865 种络病相关方剂构建的草药网络不仅可以很好地恢复传统定义的草药对和方剂,还可以生成新的抗血管生成草药成分(例如,IC50=3.2 μM 的牡荆素和 IC50=3.4 μM 的知母皂苷 A-III)以及具有协同或拮抗作用的草药对。基于与 LWDH 草药和 LWDH 治疗疾病相关的基因和表型信息,我们发现 LWDH 治疗的疾病具有很高的表型相似性,并确定了某些富含癌症途径和神经内分泌免疫途径的“共同模块”,这可能是同一 LWDH 方剂治疗不同疾病的作用机制。
DMIM 是一种强大的方法,可以识别方剂的组合规律并带来新的发现。我们还提供了第一个证据,即跨多层网络的共同模块可能是方剂组合机制的基础,并展示了网络生物学方法在中医药研究中的潜力。