[Application of large-scale gene expression profiling in modern research of traditional Chinese medicine].

Q3 Pharmacology, Toxicology and Pharmaceutics
Feng-Ming Chen, Ran-Ran Zhao, Xing-Xing Han, Huan Li, Zhi-Shu Tang
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引用次数: 0

Abstract

Large-scale gene expression profiling generates or integrates massive data of gene expression under drug induction and employs artificial intelligence algorithms for pattern matching and association analysis. This approach facilitates the identification of complex relationships and functional networks between drugs, genes, and diseases, thereby significantly advancing drug research. Traditional Chinese medicine(TCM), with its characteristic multi-component, multi-target, and multi-pathway mechanisms, poses challenges to conventional methodologies in the comprehensive elucidation of its biological effects. The drug discovery strategy that combines large-scale gene expression profiling with artificial intelligence offers distinct advantages since it does not need the prior knowledge of specific drug targets or mechanisms. This article comprehensively reviews the innovative applications of large-scale gene expression profiling in TCM research as well as the recent advancements in the development of these technologies, the optimization of pattern matching algorithms, and the construction of related databases. In summary, the integration of large-scale gene expression profiling with artificial intelligence provides a powerful hypothesis-generating tool for the modern application and theoretical innovation of TCM.

[大规模基因表达谱在现代中药研究中的应用]。
大规模基因表达谱生成或整合药物诱导下的大量基因表达数据,并采用人工智能算法进行模式匹配和关联分析。这种方法有助于识别药物、基因和疾病之间的复杂关系和功能网络,从而显著推进药物研究。中医药以其多组分、多靶点、多途径机制的特点,对其生物学效应的综合阐释提出了挑战。将大规模基因表达谱与人工智能相结合的药物发现策略具有明显的优势,因为它不需要事先了解特定的药物靶点或机制。本文综述了大规模基因表达谱在中药研究中的创新应用,以及这些技术的发展、模式匹配算法的优化和相关数据库的构建等方面的最新进展。综上所述,大规模基因表达谱与人工智能的结合为中医的现代应用和理论创新提供了强大的假设生成工具。
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来源期刊
Zhongguo Zhongyao Zazhi
Zhongguo Zhongyao Zazhi Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
1.50
自引率
0.00%
发文量
581
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