4.7 Article

Network-based modeling of herb combinations in traditional Chinese medicine

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 22, Issue 5, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbab106

Keywords

natural products; herb combinations; network modeling; Traditional Chinese medicine (TCM); formulae; network pharmacology

Funding

  1. European Research Council [716063]
  2. Academy of Finland Research Fellow funding [317680]
  3. Helsinki Institute of Life Science Research
  4. China Scholarship Council [201706740080]
  5. Finland EDUFI Fellowship [TM-18-10928]

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Traditional Chinese medicine has been practiced for treating human diseases for thousands of years, where one of its advantages is the principle of herb compatibility in TCM formulae, consisting of multiple herbs to achieve maximum treatment effects. A network-based method was proposed to quantify interactions in herb pairs, revealing that frequently used herb pairs tend to affect neighboring proteins in the human interactome. The study provides a network pharmacology framework to explore herb combinations more effectively based on network topology.
Traditional Chinese medicine (TCM) has been practiced for thousands of years for treating human diseases. In comparison to modern medicine, one of the advantages of TCM is the principle of herb compatibility, known as TCM formulae. A TCM formula usually consists of multiple herbs to achieve the maximum treatment effects, where their interactions are believed to elicit the therapeutic effects. Despite being a fundamental component of TCM, the rationale of combining specific herb combinations remains unclear. In this study, we proposed a network-based method to quantify the interactions in herb pairs. We constructed a protein-protein interaction network for a given herb pair by retrieving the associated ingredients and protein targets, and determined multiple network-based distances including the closest, shortest, center, kernel, and separation, both at the ingredient and at the target levels. We found that the frequently used herb pairs tend to have shorter distances compared to random herb pairs, suggesting that a therapeutic herb pair is more likely to affect neighboring proteins in the human interactome. Furthermore, we found that the center distance determined at the ingredient level improves the discrimination of top-frequent herb pairs from random herb pairs, suggesting the rationale of considering the topologically important ingredients for inferring the mechanisms of action of TCM. Taken together, we have provided a network pharmacology framework to quantify the degree of herb interactions, which shall help explore the space of herb combinations more effectively to identify the synergistic compound interactions based on network topology.

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