[Overview of research and development of polypeptide drugs and traditional Chinese medicine-peptides].

中医药 药物发现 传统医学 计算生物学 化学 医学 生物 生物化学 替代医学 病理
作者
Xiaonan Yang,Li-Jun Ruan,Xing Jiang,Zhi-Jun Song,Kunhua Wei,Shuangshuang Qin,Ying Liang,Xiaoli Hou,Xijun Wang,Jianhua Miao
出处
期刊:PubMed 卷期号:47 (22): 5978-5990 被引量:3
标识
DOI:10.19540/j.cnki.cjcmm.20220726.601
摘要

Peptide is a compound consisting of 2-50 amino acids, which is intermediate between small molecule and protein. It is characterized by a variety of biological activities, easy absorption, strong specific targeting, and few side effects and has become one of the hotspots in biomedical research in recent years. Chinese medicine contains a large number of peptides. The traditional processing methods such as decocting and boiling can effectively boost peptides to exert their due biological activities. At present, however, the research on Chinese medicinal components in laboratory generally employs high-concentration alcohol extraction method, which may cause the peptides to be ignored in many natural Chinese medicines. Substantial studies have revealed that the peptides in Chinese medicine are important material basis responsible for the traditional efficacy. Based on years of research and literature retrieval, this study put forward the concept of "traditional Chinese medicine(TCM)-peptides", referring to the components consisting of two or more amino acids with molecular weight between small molecules and proteins that can express the efficacy of Chinese medicine. Furthermore, this study also summarized the extraction and separation of TCM-peptides, and structure determination methods and routes, predicted the research prospect of modern research methods of TCM-peptides based on "holistic view" and big data. The artificial intelligence prediction was combined with high-throughput screening technology to improve the discovery efficiency and accuracy of TCM-peptides, and holographic images between TCM-peptides and biological targets were established to provide references for the innovative drug design and related health product development of TCM-peptides based on TCM theories.
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