Chem. J. Chinese Universities ›› 2000, Vol. 21 ›› Issue (10): 1473.

• Articles • Previous Articles     Next Articles

Studies on Quantitative Structure-activity Relationships of Benzodiazepines Using Fuzzy Neural Networks

LIU Ping, CHENG Yi-Yu   

  1. Dept. of Chem. Eng. & Bioeng., Zhejiang University, Hangzhou 310027, China
  • Received:1999-12-02 Online:2000-10-24 Published:2000-10-24

Abstract: In this paper, a new fuzzy neural network based on genetic algorithms is proposed for quantitative structure-activity relationship(QSAR) studies of benzodiazepines. The method based on GA+FL+NNallows supervised learning of fuzzy rules from significant examples and is affected unsusceptibly by the problem of local extremes. The network's knowledge base has a linguistic representation. This makes it easy for pharmaceutical chemists to understand and interpret. It is possible to introduce current knowledge acquired by researchers simply by adding one or more fuzzy rules to the network's knowledge base. Once the fuzzy knowledge base extracted from examples, it can predict the pharmacological activity of compounds at a high precision. The obtained fuzzy rules can also provide useful guidelines for synthesizing new compounds with a high pharmacological activity.

Key words: Fuzzy neural networks(FNN), Fuzzy logic(FL), Neural networks(NN), Genetic algorithms(GA), QSAR

CLC Number: 

TrendMD: