Wang Yi, Wang Xuewei, Cheng Yiyu
Pharmaceutical Informatics Institute, College of Pharmaceutical Sciences, Zhejiang University, Zheda Road 38#, Hangzhou 310027, China.
Chem Biol Drug Des. 2006 Sep;68(3):166-72. doi: 10.1111/j.1747-0285.2006.00431.x.
Herbal medicine has been successfully applied in clinical therapeutics throughout the world. Following the concept of quantitative composition-activity relationship, the presented study proposes a computational strategy to predict bioactivity of herbal medicine and design new botanical drug. As a case, the quantitative relationship between chemical composition and decreasing cholesterol effect of Qi-Xue-Bing-Zhi-Fang, a widely used herbal medicine in China, was investigated. Quantitative composition-activity relationship models generated by multiple linear regression, artificial neural networks, and support vector regression exhibited different capabilities of predictive accuracy. Moreover, the proportion of two active components of Qi-Xue-Bing-Zhi-Fang was optimized based on the quantitative composition-activity relationship model to obtain new formulation. Validation experiments showed that the optimized herbal medicine has greater activity. The results indicate that the presented method is an efficient approach to botanical drug design.
草药医学已在全球临床治疗中得到成功应用。遵循定量成分-活性关系的概念,本研究提出一种计算策略,用于预测草药医学的生物活性并设计新型植物药。作为一个案例,研究了中国广泛使用的草药气血并治方的化学成分与降胆固醇效果之间的定量关系。通过多元线性回归、人工神经网络和支持向量回归生成的定量成分-活性关系模型表现出不同的预测准确性能力。此外,基于定量成分-活性关系模型对气血并治方的两种活性成分比例进行了优化,以获得新配方。验证实验表明,优化后的草药具有更强的活性。结果表明,所提出的方法是一种有效的植物药设计方法。