药物重新定位
机制(生物学)
重新调整用途
系统药理学
破译
药物发现
药物开发
计算机科学
疾病
医学
计算生物学
药品
数据科学
生物信息学
药理学
生物
认识论
哲学
病理
生态学
作者
Xiang Li,Ziqi LIU,Jie Liao,Chen Qian,Xiaoyan Lu,Xiaohui Fan
标识
DOI:10.1016/s1875-5364(23)60429-7
摘要
Pharmacodynamics material basis and effective mechanisms are the two main issues to decipher the mechnisms of action of Traditional Chinese medicines (TCMs) for the treatment of diseases. TCMs, in “multi-component, multi-target, multi-pathway” paradigm, show satisfactory clinical results in complex diseases. New ideas and methods are urgently needed to explain the complex interactions between TCMs and diseases. Network pharmacology (NP) provides a novel paradigm to uncover and visualize the underlying interaction networks of TCMs against multifactorial diseases. The development and application of NP has promoted the safety, efficacy, and mechanism investigations of TCMs, which then reinforces the credibility and popularity of TCMs. The current organ-centricity of medicine and the “one disease-one target-one drug” dogma obstruct the understanding of complex diseases and the development of effective drugs. Therefore, more attentions should be paid to shift from “phenotype and symptom” to “endotype and cause” in understanding and redefining current diseases. In the past two decades, with the advent of advanced and intelligent technologies (such as metabolomics, proteomics, transcriptomics, single-cell omics, and artificial intelligence), NP has been improved and deeply implemented, and presented its great value and potential as the next drug-discovery paradigm. NP is developed to cure causal mechanisms instead of treating symptoms. This review briefly summarizes the recent research progress on NP application in TCMs for efficacy research, mechanism elucidation, target prediction, safety evaluation, drug repurposing, and drug design.
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