Abstract
Traditional Chinese medicines (TCMs) are attracting increased global attention because of their potential to provide novel therapeutic agents based on substantial historical records of efficacy in man. Many strategies have been designed for the screening and selection of bioactive compounds from these complex natural products mixtures. Biological fingerprinting analysis (BFA), based on small molecule-biomacromolecule interactions in complex systems, has been applied to screen the multiple bioactive compounds in natural products. Here we review the chromatographic and MS approaches used for BFA of natural products with targeting absorption, distribution, metabolism, elimination and toxicity (ADME/Tox) properties. Such chromatographic methods cover a wide range of applications including liposome, serum proteins, liver homogenate and DNA profiling. MS methods for the characterization of molecular interactions between natural products and target molecules by ESI and MALDI-TOF MS are also discussed.
Keywords: Biological fingerprinting analysis (BFA), natural products, traditional Chinese medicine, screening, bioactive compounds, ADME/Tox, small molecule-biomacromolecule binding
Mini-Reviews in Medicinal Chemistry
Title: Biological Fingerprinting Analysis of Traditional Chinese Medicines with Targeting ADME/Tox Property for Screening of Bioactive Compounds by Chromatographic and MS Methods
Volume: 7 Issue: 1
Author(s): Xingye Su, Liang Kong, Xiaoyuan Lei, Lianghai Hu, Mingliang Ye and Hanfa Zou
Affiliation:
Keywords: Biological fingerprinting analysis (BFA), natural products, traditional Chinese medicine, screening, bioactive compounds, ADME/Tox, small molecule-biomacromolecule binding
Abstract: Traditional Chinese medicines (TCMs) are attracting increased global attention because of their potential to provide novel therapeutic agents based on substantial historical records of efficacy in man. Many strategies have been designed for the screening and selection of bioactive compounds from these complex natural products mixtures. Biological fingerprinting analysis (BFA), based on small molecule-biomacromolecule interactions in complex systems, has been applied to screen the multiple bioactive compounds in natural products. Here we review the chromatographic and MS approaches used for BFA of natural products with targeting absorption, distribution, metabolism, elimination and toxicity (ADME/Tox) properties. Such chromatographic methods cover a wide range of applications including liposome, serum proteins, liver homogenate and DNA profiling. MS methods for the characterization of molecular interactions between natural products and target molecules by ESI and MALDI-TOF MS are also discussed.
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Cite this article as:
Su Xingye, Kong Liang, Lei Xiaoyuan, Hu Lianghai, Ye Mingliang and Zou Hanfa, Biological Fingerprinting Analysis of Traditional Chinese Medicines with Targeting ADME/Tox Property for Screening of Bioactive Compounds by Chromatographic and MS Methods, Mini-Reviews in Medicinal Chemistry 2007; 7 (1) . https://dx.doi.org/10.2174/138955707779317830
DOI https://dx.doi.org/10.2174/138955707779317830 |
Print ISSN 1389-5575 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5607 |
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