| Literature DB >> 23762149 |
Gui-Biao Zhang1, Qing-Ya Li, Qi-Long Chen, Shi-Bing Su.
Abstract
The dominant paradigm of "one gene, one target, one disease" has influenced many aspects of drug discovery strategy. However, in recent years, it has been appreciated that many effective drugs act on multiple targets rather than a single one. As an integrated multidisciplinary concept, network pharmacology, which is based on system biology and polypharmacology, affords a novel network mode of "multiple targets, multiple effects, complex diseases" and replaces the "magic bullets" by "magic shotguns." Chinese herbal medicine (CHM) has been recognized as one of the most important strategies in complementary and alternative medicine. Though CHM has been practiced for a very long time, its effectiveness and beneficial contribution to public health has not been fully recognized. Also, the knowledge on the mechanisms of CHM formulas is scarce. In the present review, the concept and significance of network pharmacology is briefly introduced. The application and potential role of network pharmacology in the CHM fields is also discussed, such as data collection, target prediction, network visualization, multicomponent interaction, and network toxicology. Furthermore, the developing tendency of network pharmacology is also summarized, and its role in CHM research is discussed.Entities:
Year: 2013 PMID: 23762149 PMCID: PMC3671675 DOI: 10.1155/2013/621423
Source DB: PubMed Journal: Evid Based Complement Alternat Med ISSN: 1741-427X Impact factor: 2.629
Brief introduction of network pharmacological technologies methods and tools.
| Mainly experimental techniques and tools in network pharmacology | |||
|---|---|---|---|
| Technique | Application fields | Advantage | Literatures |
|
| |||
| HTS/HCS | Massive data acquisition | Homogeneous, multidimensional phenotypic detection, dynamic real-time monitoring, and visualization | [ |
| PCR chip | Massive data acquisition | Dual high throughput, strong specificity, high sensitivity, and good repeatability | [ |
| SPR | Massive data acquisition | No marks, high-throughput, high-precision, and real-time detection | [ |
| BLI | Massive data acquisition | No marks, high-throughput, high-precision, and real-time detection | [ |
| Cytoscape | Network visualization | Graphic operation, construct simple network, plugin support for analysis, and easy to use | [ |
| GUESS | Network visualization | Graphic operation, command line, and script support for analysis | [ |
| Pajek | Network visualization | Graphic operation, building large-scale network | [ |
| Network topology information calculation | Network analysis | Classify and sequence the nodes, reflect hidden information | [ |
| Random network creation and comparison | Network analysis | Verify reliability of existing network | [ |
| Network layer and clustering | Network analysis | Simplify the complexity of network, find out potential information | [ |
Figure 1Developing tendency of network pharmacology study. The publications of network pharmacology study in Web of Knowledge, PubMed, and CNKI databases from 2007 to 2012. All results were screened in manual way.
Figure 2Network pharmacology approach for CHM research. For the discovery of CHM-derived targets, effect prediction, mechanism clarification, and new drug assistant discovery using network pharmacology approach. It analyzes the information from public data, high-throughput experimental data, and TCM data and constructs a “CHM-TCM syndrome disease” interaction network using technologies of network expansion, optimization, comparison, knockout, and addition. Finally, it carries out computational and experimental verifications.